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I=3D"><div class=3D"t m0 x1 h2 y1 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div clas=
s=3D"t m0 x2 h2 y2 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2=
 h3"><div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o =
2020.<span class=3D"_ _0"></span> N=C3=BAmero 2, Abril<span class=3D"_ _0">=
</span>-Junio </div></div><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x=
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><div class=3D"t m0 x2 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"=
t m0 x2 h6 y6 ff3 fs0 fc0 sc0 ls0 ws0">LA <span class=3D"_ _1"> </span>M=C3=
=9ASICA <span class=3D"_ _1"> </span>COMO <span class=3D"_ _1"> </span>MEDI=
O <span class=3D"_ _1"> </span>DE <span class=3D"_ _1"> </span>ENSE=C3=91AN=
ZA-APRENDIZAJE <span class=3D"_ _1"> </span>DE <span class=3D"_ _1"> </span=
>LOS <span class=3D"_ _1"> </span>NI=C3=91OS <span class=3D"_ _1"> </span>D=
EL </div><div class=3D"t m0 x2 h6 y7 ff3 fs0 fc0 sc0 ls0 ws0">CENTRO <span =
class=3D"_ _2"> </span>DE <span class=3D"_ _2"> </span>EDUCACI=C3=93N <span=
 class=3D"_ _2"> </span>INICIAL <span class=3D"_ _2"> </span>GABRIELA <span=
 class=3D"_ _2"> </span>MISTRAL <span class=3D"_ _2"> </span>DEL <span clas=
s=3D"_ _2"> </span>CANT=C3=93N </div><div class=3D"t m0 x2 h6 y8 ff3 fs0 fc=
0 sc0 ls0 ws0">PORTOVIEJO </div><div class=3D"t m0 x2 h4 y9 ff4 fs0 fc0 sc0=
 ls0 ws0">M=C3=9ASICA COMO MEDIO DE ENSE=C3=91ANZA-APRENDIZAJE DE NI=C3=91O=
S </div><div class=3D"t m0 x2 h7 ya ff4 fs2 fc0 sc0 ls0 ws0">AUTORES:   G=
=C3=A9nesis L<span class=3D"_ _3"></span>isbeth Ayala Morillo</div><div cla=
ss=3D"c x6 yb w0 h0"><div class=3D"t m0 x7 h8 yc ff4 fs3 fc0 sc0 ls0 ws0">1=
</div></div><div class=3D"t m0 x8 h9 ya ff3 fs2 fc0 sc0 ls0 ws0"> </div><di=
v class=3D"t m0 x2 h9 yd ff3 fs2 fc0 sc0 ls0 ws0">                <span cla=
ss=3D"_ _4"> </span><span class=3D"ff4">Letty Araceli Delgado <span class=
=3D"_ _3"></span>Cede=C3=B1o</span></div><div class=3D"c x6 yb w0 h0"><div =
class=3D"t m0 x7 h8 ye ff4 fs3 fc0 sc0 ls0 ws0">2</div></div><div class=3D"=
t m0 x8 h7 yd ff4 fs2 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2 h7 yf f=
f4 fs2 fc0 sc0 ls0 ws0">        <span class=3D"_ _5"> </span> <span class=
=3D"_ _6"> </span>Jos=C3=A9 Grismald<span class=3D"_ _3"></span>o Pico Miel=
es</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x9 h8 y10 ff4 fs3 f=
c0 sc0 ls0 ws0">3</div></div><div class=3D"t m0 xa h4 yf ff4 fs0 fc0 sc0 ls=
0 ws0"> </div><div class=3D"t m0 x2 h7 y11 ff4 fs2 fc0 sc0 ls0 ws0">DIRECCI=
=C3=93N <span class=3D"_ _3"></span>PARA CORRESPON<span class=3D"_ _3"></sp=
an>DENCIA: <span class=3D"fc2">ayalag616@<span class=3D"_ _3"></span>gmail.=
com<span class=3D"fc0">  </span></span></div><div class=3D"c x0 y12 w4 ha">=
<div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0">Fecha de recepci=C3=
=B3<span class=3D"_ _0"></span>n:  </div></div><div class=3D"c xb y12 w5 ha=
"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">28<span class=3D"ls=
0"> </span></div></div><div class=3D"c xc y12 w6 ha"><div class=3D"t m0 x3 =
h4 y13 ff1 fs1 fc0 sc0 ls0 ws0">- </div></div><div class=3D"c xd y12 w5 ha"=
><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">01<span class=3D"ls0=
"> </span></div></div><div class=3D"c xe y12 w6 ha"><div class=3D"t m0 x3 h=
4 y13 ff1 fs1 fc0 sc0 ls0 ws0">- </div></div><div class=3D"c xf y12 w3 ha">=
<div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">2020<span class=3D"ls=
0"> </span></div></div><div class=3D"c x10 y12 w7 ha"><div class=3D"t m0 x3=
 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0"> </div></div><div class=3D"c x11 y12 w8 ha=
"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0"> </div></div><div c=
lass=3D"c x12 y12 w8 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 w=
s0"> </div></div><div class=3D"c x13 y12 w8 ha"><div class=3D"t m0 x3 h4 y1=
3 ff1 fs1 fc0 sc0 ls0 ws0"> </div></div><div class=3D"c x8 y12 w7 ha"><div =
class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0"> </div></div><div class=3D=
"c x14 y12 w8 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0"> </=
div></div><div class=3D"c x15 y12 w7 ha"><div class=3D"t m0 x3 h4 y13 ff1 f=
s1 fc0 sc0 ls0 ws0"> </div></div><div class=3D"c x16 y12 w8 ha"><div class=
=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0"> </div></div><div class=3D"c x1=
7 y12 w9 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0">Fecha de=
 aceptaci=C3=B3<span class=3D"_ _0"></span>n: </div></div><div class=3D"c x=
18 y12 w5 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">15<span=
 class=3D"ls0"> </span></div></div><div class=3D"c x19 y12 w6 ha"><div clas=
s=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0">- </div></div><div class=3D"c =
x1a y12 w5 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">03<spa=
n class=3D"ls0"> </span></div></div><div class=3D"c x1b y12 wa ha"><div cla=
ss=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls0 ws0">- </div></div><div class=3D"c=
 x1c y12 w3 ha"><div class=3D"t m0 x3 h4 y13 ff1 fs1 fc0 sc0 ls1 ws0">2020<=
span class=3D"ls0"> </span></div></div><div class=3D"t m0 x2 h7 y14 ff4 fs2=
 fc0 sc0 ls0 ws0">RESUMEN  </div><div class=3D"t m0 x2 h7 y15 ff4 fs2 fc0 s=
c0 ls0 ws0">El principal objetivo de la educaci=C3=B3n de los ni=C3=B1os es=
 su utilidad para mejorar calidad de vida </div><div class=3D"t m0 x2 h7 y1=
6 ff5 fs2 fc0 sc0 ls0 ws0">presente <span class=3D"_ _0"></span>y <span cla=
ss=3D"_ _0"></span>futura <span class=3D"_ _0"></span>en <span class=3D"_ _=
0"></span>todos <span class=3D"_ _0"></span>los <span class=3D"_ _0"></span=
>=C3=A1mbitos, =E2=80=9Csocial, <span class=3D"_ _0"></span>cultural, <span=
 class=3D"_ _0"></span>psicol=C3=B3gi<span class=3D"_ _3"></span>co=E2=80=
=9D; <span class=3D"_ _0"></span>es <span class=3D"_ _0"></span>decir, <spa=
n class=3D"_ _0"></span>lograr <span class=3D"_ _0"></span>que, <span class=
=3D"_ _0"></span>a </div><div class=3D"t m0 x2 h7 y17 ff4 fs2 fc0 sc0 ls0 w=
s0">trav=C3=A9s <span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </spa=
n>su <span class=3D"_ _7"> </span>educaci=C3=B3n, <span class=3D"_ _7"> </s=
pan>m<span class=3D"_ _3"></span>ejore <span class=3D"_ _7"> </span>su <spa=
n class=3D"_ _7"> </span>comportamiento <span class=3D"_ _7"> </span>person=
al <span class=3D"_ _7"> </span>e<span class=3D"_ _3"></span>n <span class=
=3D"_ _7"> </span>relaci=C3=B3n <span class=3D"_ _7"> </span>con <span clas=
s=3D"_ _7"> </span>los <span class=3D"_ _7"> </span>dem=C3=A1s<span class=
=3D"_ _0"></span>.  </div><div class=3D"t m0 x2 h7 y18 ff4 fs2 fc0 sc0 ls0 =
ws0">Partiendo de <span class=3D"_ _0"></span>esta <span class=3D"_ _0"></s=
pan>premisa la <span class=3D"_ _0"></span>educaci=C3=B3n <span class=3D"_ =
_0"></span>m<span class=3D"_ _3"></span>usical pue<span class=3D"_ _0"></sp=
an>de aportar <span class=3D"_ _0"></span>mucho para <span class=3D"_ _0"><=
/span>el <span class=3D"_ _0"></span>cumplim<span class=3D"_ _3"></span>ien=
to </div><div class=3D"t m0 x2 h7 y19 ff4 fs2 fc0 sc0 ls0 ws0">de <span cla=
ss=3D"_ _1"> </span>este <span class=3D"_ _1"> </span>objetivo. <span class=
=3D"_ _1"></span>La <span class=3D"_ _1"></span>m=C3=BAsica <span class=3D"=
_ _1"></span>es <span class=3D"_ _1"></span>un <span class=3D"_ _1"> </span=
>fen=C3=B3m<span class=3D"_ _3"></span>eno <span class=3D"_ _1"> </span>fis=
iol=C3=B3gico <span class=3D"_ _1"> </span>natural, <span class=3D"_ _1"></=
span>=C3=ADntimo <span class=3D"_ _1"></span>y <span class=3D"_ _1"></span>=
personal,<span class=3D"_ _3"></span> <span class=3D"_ _1"> </span>que <spa=
n class=3D"_ _1"> </span>se </div><div class=3D"t m0 x2 h7 y1a ff4 fs2 fc0 =
sc0 ls0 ws0">encuentra <span class=3D"_ _0"></span>dentro <span class=3D"_ =
_0"></span>de <span class=3D"_ _0"></span>cada <span class=3D"_ _0"></span>=
persona <span class=3D"_ _0"></span>-la <span class=3D"_ _0"></span>voz-y <=
span class=3D"_ _0"></span>del <span class=3D"_ _8"></span>sentido <span cl=
ass=3D"_ _0"></span>de <span class=3D"_ _0"></span>la <span class=3D"_ _0">=
</span>audici=C3=B3n; <span class=3D"_ _0"></span>responden <span class=3D"=
_ _0"></span>a <span class=3D"_ _0"></span>eventos </div><div class=3D"t m0=
 x2 h7 y1b ff4 fs2 fc0 sc0 ls0 ws0">emocionales qu<span class=3D"_ _3"></sp=
an>e <span class=3D"_ _0"></span>se pres<span class=3D"_ _3"></span>entan e=
n el <span class=3D"_ _0"></span>pulso,<span class=3D"_ _3"></span> l<span =
class=3D"_ _0"></span>a<span class=3D"_ _3"></span> respiraci=C3=B3n, la ad=
renalina, as=C3=AD como el flujo, tal </div><div class=3D"t m0 x2 h7 y1c ff=
4 fs2 fc0 sc0 ls0 ws0">como <span class=3D"_ _1"></span>l<span class=3D"_ _=
3"></span>o <span class=3D"_ _1"></span>s<span class=3D"_ _3"></span>e=C3=
=B1ala <span class=3D"_ _1"></span>W<span class=3D"_ _3"></span>ill<span cl=
ass=3D"_ _3"></span>en <span class=3D"_ _1"></span>(1994). <span class=3D"_=
 _1"></span>La<span class=3D"_ _3"></span> <span class=3D"_ _1"></span>u<sp=
an class=3D"_ _3"></span>til<span class=3D"_ _3"></span>izaci=C3=B3n <span =
class=3D"_ _1"></span>de <span class=3D"_ _9"></span>la <span class=3D"_ _9=
"></span>m=C3=BAsica <span class=3D"_ _9"></span>co<span class=3D"_ _0"></s=
pan>mo <span class=3D"_ _9"></span>medio <span class=3D"_ _1"></span>d<span=
 class=3D"_ _3"></span>e <span class=3D"_ _9"></span>ense=C3=B1anza <span c=
lass=3D"_ _9"></span>en <span class=3D"_ _1"></span>la<span class=3D"_ _3">=
</span> </div><div class=3D"t m0 x2 h7 y1d ff4 fs2 fc0 sc0 ls0 ws0">actuali=
dad <span class=3D"_ _9"></span>es <span class=3D"_ _1"> </span>muy <span c=
lass=3D"_ _1"></span>im<span class=3D"_ _3"></span>portante <span class=3D"=
_ _1"></span>p<span class=3D"_ _3"></span>orque <span class=3D"_ _1"></span=
>a <span class=3D"_ _9"></span>trav=C3=A9s <span class=3D"_ _1"> </span>de =
<span class=3D"_ _9"></span>ell<span class=3D"_ _0"></span>a <span class=3D=
"_ _9"></span>el <span class=3D"_ _1"> </span>e<span class=3D"_ _0"></span>=
stud<span class=3D"_ _3"></span>iante <span class=3D"_ _1"></span>desar<spa=
n class=3D"_ _3"></span>rolla <span class=3D"_ _1"></span>destr<span class=
=3D"_ _3"></span>ezas <span class=3D"_ _9"></span>y </div><div class=3D"t m=
0 x2 h7 y1e ff4 fs2 fc0 sc0 ls0 ws0">actitudes que le <span class=3D"_ _0">=
</span>motiva<span class=3D"_ _3"></span>n <span class=3D"_ _0"></span>a re=
alizar acciones de integraci=C3=B3n y <span class=3D"_ _0"></span>solida<sp=
an class=3D"_ _3"></span>ridad social <span class=3D"_ _0"></span>qu<span c=
lass=3D"_ _3"></span>e <span class=3D"_ _0"></span>benefici<span class=3D"_=
 _3"></span>a </div><div class=3D"t m0 x2 h7 y1f ff4 fs2 fc0 sc0 ls0 ws0">d=
e manera sign<span class=3D"_ _3"></span>ificativa a<span class=3D"_ _3"></=
span> los grupos donde <span class=3D"_ _3"></span>el estudiante de d<span =
class=3D"_ _3"></span>esenvuelve y apl<span class=3D"_ _3"></span>ica la co=
nduct<span class=3D"_ _3"></span>a </div><div class=3D"t m0 x2 h7 y20 ff4 f=
s2 fc0 sc0 ls0 ws0">aprendida <span class=3D"_ _1"></span>a <span class=3D"=
_ _1"></span>tr<span class=3D"_ _3"></span>av=C3=A9s <span class=3D"_ _1"><=
/span>del <span class=3D"_ _1"></span>c<span class=3D"_ _3"></span>oro. <sp=
an class=3D"_ _1"></span>En <span class=3D"_ _1"></span>este <span class=3D=
"_ _1"></span>sentid<span class=3D"_ _3"></span>o, <span class=3D"_ _1"> </=
span>la <span class=3D"_ _1"></span>pr=C3=A1cti<span class=3D"_ _3"></span>=
ca <span class=3D"_ _1"> </span>coral <span class=3D"_ _1"></span>d<span cl=
ass=3D"_ _3"></span>urante <span class=3D"_ _1"></span>la <span class=3D"_ =
_1"></span>infa<span class=3D"_ _3"></span>ncia <span class=3D"_ _1"> </spa=
n>se <span class=3D"_ _9"></span>est=C3=A1 </div><div class=3D"t m0 x2 h7 y=
21 ff4 fs2 fc0 sc0 ls0 ws0">erigiendo <span class=3D"_ _9"></span>como <spa=
n class=3D"_ _9"></span>una <span class=3D"_ _9"></span>herramienta <span c=
lass=3D"_ _9"></span>de <span class=3D"_ _1"></span>pr<span class=3D"_ _3">=
</span>imer <span class=3D"_ _9"></span>orden <span class=3D"_ _9"></span>p=
ara <span class=3D"_ _1"></span>f<span class=3D"_ _3"></span>avorecer <span=
 class=3D"_ _9"></span>la <span class=3D"_ _9"></span>convivencia <span cla=
ss=3D"_ _9"></span>escolar. <span class=3D"_ _9"></span>El </div><div class=
=3D"t m0 x2 h7 y22 ff4 fs2 fc0 sc0 ls0 ws0">beneficio <span class=3D"_ _1">=
 </span>de <span class=3D"_ _1"></span>desar<span class=3D"_ _3"></span>rol=
lar <span class=3D"_ _1"> </span>las <span class=3D"_ _1"> </span>habilidad=
<span class=3D"_ _3"></span>es <span class=3D"_ _1"> </span>cognitivas <spa=
n class=3D"_ _1"> </span>socio <span class=3D"_ _7"> </span>-<span class=3D=
"_ _3"></span> <span class=3D"_ _1"></span>afectiv<span class=3D"_ _3"></sp=
an>as <span class=3D"_ _1"> </span>a <span class=3D"_ _1"> </span>trav=C3=
=A9s <span class=3D"_ _1"> </span>de <span class=3D"_ _1"> </span>la <span =
class=3D"_ _1"> </span>pr=C3=A1ctica<span class=3D"_ _3"></span> </div><div=
 class=3D"t m0 x2 h7 y23 ff4 fs2 fc0 sc0 ls0 ws0">musical es <span class=3D=
"_ _0"></span>consid<span class=3D"_ _3"></span>erar al <span class=3D"_ _0=
"></span>estudiant<span class=3D"_ _3"></span>e <span class=3D"_ _0"></span=
>protago<span class=3D"_ _3"></span>nista de <span class=3D"_ _0"></span>un=
a experiencia<span class=3D"_ _3"></span> musi<span class=3D"_ _0"></span>c=
al compuesta por </div><div class=3D"t m0 x2 h7 y24 ff4 fs2 fc0 sc0 ls0 ws0=
">actividades <span class=3D"_ _8"></span>que <span class=3D"_ _9"></span>s=
al<span class=3D"_ _3"></span>en <span class=3D"_ _9"></span>de <span class=
=3D"_ _8"></span>la <span class=3D"_ _9"></span>cotidianidad, <span class=
=3D"_ _8"></span>pero <span class=3D"_ _8"></span>que <span class=3D"_ _9">=
</span>no <span class=3D"_ _9"></span>dejan <span class=3D"_ _8"></span>de =
<span class=3D"_ _9"></span>pr<span class=3D"_ _3"></span>oporcionar <span =
class=3D"_ _8"></span>conocimientos<span class=3D"_ _3"></span> </div><div =
class=3D"t m0 x2 h7 y25 ff4 fs2 fc0 sc0 ls0 ws0">te=C3=B3ricos <span class=
=3D"_ _7"> </span>y <span class=3D"_ _7"> </span>a<span class=3D"_ _3"></sp=
an>d<span class=3D"_ _3"></span>em=C3=A1s <span class=3D"_ _7"> </span>pot<=
span class=3D"_ _3"></span>encian <span class=3D"_ _7"> </span>el <span cla=
ss=3D"_ _7"> </span>d<span class=3D"_ _3"></span>esarr<span class=3D"_ _3">=
</span>ollo <span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>l<=
span class=3D"_ _3"></span>a <span class=3D"_ _7"> </span>s<span class=3D"_=
 _3"></span>ensibilidad,<span class=3D"_ _3"></span> <span class=3D"_ _7"> =
</span>la <span class=3D"_ _7"> </span>cr<span class=3D"_ _3"></span>eativi=
dad <span class=3D"_ _7"> </span>y<span class=3D"_ _3"></span> <span class=
=3D"_ _7"> </span>h<span class=3D"_ _3"></span>abilidad<span class=3D"_ _3"=
></span>es </div><div class=3D"t m0 x2 h7 y26 ff4 fs2 fc0 sc0 ls0 ws0">intr=
apersona<span class=3D"_ _3"></span>les e interperso<span class=3D"_ _3"></=
span>nales. </div><div class=3D"t m0 x2 h7 y27 ff4 fs2 fc0 sc0 ls0 ws0">PAL=
ABRAS <span class=3D"_ _a"> </span>CLAVE: <span class=3D"_ _a"> </span>Educ=
aci=C3=B3n <span class=3D"_ _a"> </span>musical; <span class=3D"_ _a"> </sp=
an>aprendizaje; <span class=3D"_ _a"> </span>habilidades <span class=3D"_ _=
a"> </span>cognitivas;<span class=3D"_ _3"></span> <span class=3D"_ _a"> </=
span>did=C3=A1ctica;  </div><div class=3D"t m0 x2 h7 y28 ff4 fs2 fc0 sc0 ls=
0 ws0">pedag=C3=B3gico. </div><div class=3D"c x6 yb w0 h0"><div class=3D"t =
m0 x2 h2 y29 ff1 fs0 fc0 sc0 ls0 ws0">                                     =
           </div></div><div class=3D"t m0 x1d h2 y29 ff1 fs0 fc0 sc0 ls0 ws=
0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 hb y2a ff1 fs4=
 fc0 sc0 ls0 ws0">1</div></div><div class=3D"t m0 x1e h4 y2b ff1 fs1 fc0 sc=
0 ls0 ws0"> Licenciada en Educaci=C3=B3<span class=3D"_ _0"></span>n. Gradu=
ada de <span class=3D"_ _0"></span>la Facultad de Filosof=C3=ADa, Letras y =
C<span class=3D"_ _0"></span>iencias de la Educaci=C3=B3n. Universidad<span=
 class=3D"_ _0"></span> T=C3=A9cnica </div><div class=3D"t m0 x2 h4 y2c ff1=
 fs1 fc0 sc0 ls0 ws0">de Manab=C3=AD. Ecuado<span class=3D"_ _0"></span>r. =
</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 hb y2d ff1 fs4 fc0=
 sc0 ls0 ws0">2</div></div><div class=3D"t m0 x1e h4 y2e ff1 fs1 fc0 sc0 ls=
0 ws0"> <span class=3D"_ _7"> </span>Magis<span class=3D"_ _3"></span>ter. =
<span class=3D"_ _7"> </span>Docente <span class=3D"_ _7"> </span>de <span =
class=3D"_ _7"> </span>la <span class=3D"_ _1"></span>Facultad <span class=
=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>Fil<span class=3D"_ _3"><=
/span>osof=C3=ADa, <span class=3D"_ _7"> </span>Letras <span class=3D"_ _7"=
> </span>y <span class=3D"_ _7"> </span>C<span class=3D"_ _3"></span>iencia=
s <span class=3D"_ _7"> </span>d<span class=3D"_ _3"></span>e <span class=
=3D"_ _7"> </span>la <span class=3D"_ _7"> </span>E<span class=3D"_ _3"></s=
pan>ducaci=C3=B3n. <span class=3D"_ _7"> </span>Un<span class=3D"_ _3"></sp=
an>iversidad <span class=3D"_ _7"> </span>T=C3=A9cnica <span class=3D"_ _7"=
> </span>de <span class=3D"_ _7"> </span>Ma<span class=3D"_ _3"></span>nab=
=C3=AD. </div><div class=3D"t m0 x2 h4 y2f ff1 fs1 fc0 sc0 ls0 ws0">Ecuador=
. E<span class=3D"_ _0"></span>-m<span class=3D"_ _3"></span>ail: <span cla=
ss=3D"fc3">ldel<span class=3D"_ _0"></span>gado@utm.edu.ec<span class=3D"_ =
_0"></span></span> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2=
 hb y30 ff1 fs4 fc0 sc0 ls0 ws0">3</div></div><div class=3D"t m0 x1e h4 y31=
 ff1 fs1 fc0 sc0 ls0 ws0"> <span class=3D"_ _7"> </span>Magis<span class=3D=
"_ _3"></span>ter. <span class=3D"_ _7"> </span>Docente <span class=3D"_ _7=
"> </span>de <span class=3D"_ _7"> </span>la <span class=3D"_ _1"></span>Fa=
cultad <span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>Fil<spa=
n class=3D"_ _3"></span>osof=C3=ADa, <span class=3D"_ _7"> </span>Letras <s=
pan class=3D"_ _7"> </span>y <span class=3D"_ _7"> </span>C<span class=3D"_=
 _3"></span>iencias <span class=3D"_ _7"> </span>d<span class=3D"_ _3"></sp=
an>e <span class=3D"_ _7"> </span>la <span class=3D"_ _7"> </span>E<span cl=
ass=3D"_ _3"></span>ducaci=C3=B3n. <span class=3D"_ _7"> </span>Un<span cla=
ss=3D"_ _3"></span>iversidad <span class=3D"_ _7"> </span>T=C3=A9cnica <spa=
n class=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>Ma<span class=3D"_=
 _3"></span>nab=C3=AD. </div><div class=3D"t m0 x2 h4 y32 ff1 fs1 fc0 sc0 l=
s0 ws0">Ecuador. E<span class=3D"_ _0"></span>-m<span class=3D"_ _3"></span=
>ail: <span class=3D"fc2">jpico<span class=3D"_ _0"></span>@utm.edu.ec</spa=
n> <span class=3D"ff6 fs5"> </span>  </div><a class=3D"l" href=3D"mailto:ay=
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.910000px;background-color:rgba(255,255,255,0.000001);"></div></a><a class=
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CQfgAAQPoBAADpBwCAtQBRcR/KCccCPwAAAABJRU5ErkJggg=3D=3D"><div class=3D"t m0 =
x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20 h4 y34 ff1=
 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0"></span>Ay<s=
pan class=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rillo, Letty Ar=
aceli Delgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9 Grismaldo =
P<span class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></span> </div><=
div class=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c=
 x1f y3 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0">158<spa=
n class=3D"ls0"> </span></div></div><div class=3D"c x21 y3 w2 h3"><div clas=
s=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=C3=ADa, <s=
pan class=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n<span class=
=3D"_ _0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=A9cnica de =
Manab=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><div class=3D=
"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x22 h6 y=
36 ff3 fs0 fc0 sc0 ls0 ws0">MUSIC <span class=3D"_ _b"> </span>AS <span cla=
ss=3D"_ _b"> </span>A <span class=3D"_ _b"> </span>MEANS <span class=3D"_ _=
c"> </span>OF <span class=3D"_ _b"> </span>TEACHING-LEARNING <span class=3D=
"_ _c"> </span>OF <span class=3D"_ _b"> </span>THE <span class=3D"_ _b"> </=
span>CHILDREN <span class=3D"_ _b"> </span>OF <span class=3D"_ _b"> </span>=
THE </div><div class=3D"t m0 x22 h6 y37 ff3 fs0 fc0 sc0 ls0 ws0">GABRIELA <=
span class=3D"_ _d"> </span>MISTRAL <span class=3D"_ _d"> </span>INITIAL <s=
pan class=3D"_ _d"> </span>EDUCATION <span class=3D"_ _d"> </span>CENTER <s=
pan class=3D"_ _d"> </span>OF <span class=3D"_ _d"> </span>THE <span class=
=3D"_ _d"> </span>PORTOVIEJO </div><div class=3D"t m0 x22 h6 y38 ff3 fs0 fc=
0 sc0 ls0 ws0">CANTON </div><div class=3D"t m0 x22 h7 y39 ff4 fs2 fc0 sc0 l=
s0 ws0">ABSTRACT  </div><div class=3D"t m0 x22 h7 y3a ff4 fs2 fc0 sc0 ls0 w=
s0">The <span class=3D"_ _1"></span>m<span class=3D"_ _3"></span>ain <span =
class=3D"_ _9"></span>objective <span class=3D"_ _9"></span>of <span class=
=3D"_ _1"></span>childr<span class=3D"_ _3"></span>en's <span class=3D"_ _9=
"></span>e<span class=3D"_ _0"></span>ducation <span class=3D"_ _9"></span>=
is <span class=3D"_ _9"></span>its <span class=3D"_ _1"></span>us<span clas=
s=3D"_ _3"></span>efulness <span class=3D"_ _9"></span>to <span class=3D"_ =
_1"></span>im<span class=3D"_ _3"></span>prove <span class=3D"_ _1"></span>=
pr<span class=3D"_ _3"></span>esent <span class=3D"_ _9"></span>and <span c=
lass=3D"_ _1"></span>f<span class=3D"_ _3"></span>uture </div><div class=3D=
"t m0 x22 h7 y3b ff4 fs2 fc0 sc0 ls0 ws0">quality <span class=3D"_ _7"> </s=
pan>o<span class=3D"_ _3"></span>f <span class=3D"_ _7"> </span>l<span clas=
s=3D"_ _3"></span>ife <span class=3D"_ _7"> </span>in <span class=3D"_ _7">=
 </span>a<span class=3D"_ _3"></span>ll <span class=3D"_ _7"> </span>a<span=
 class=3D"_ _3"></span>reas, <span class=3D"_ _7"> </span>"s<span class=3D"=
_ _3"></span>ocial, <span class=3D"_ _7"> </span>c<span class=3D"_ _3"></sp=
an>ultural,<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>psycho=
l<span class=3D"_ _3"></span>ogical"; <span class=3D"_ _7"> </span>tha<span=
 class=3D"_ _3"></span>t <span class=3D"_ _7"> </span>i<span class=3D"_ _3"=
></span>s, <span class=3D"_ _7"> </span>a<span class=3D"_ _3"></span>chieve=
 <span class=3D"_ _7"> </span>that,<span class=3D"_ _3"></span> <span class=
=3D"_ _7"> </span>thr<span class=3D"_ _3"></span>ough </div><div class=3D"t=
 m0 x22 h7 y3c ff4 fs2 fc0 sc0 ls0 ws0">their <span class=3D"_ _7"> </span>=
ed<span class=3D"_ _3"></span>ucation, <span class=3D"_ _7"> </span>im<span=
 class=3D"_ _3"></span>prove <span class=3D"_ _7"> </span>t<span class=3D"_=
 _3"></span>heir <span class=3D"_ _7"> </span>pers<span class=3D"_ _3"></sp=
an>onal <span class=3D"_ _7"> </span>b<span class=3D"_ _3"></span>ehavior <=
span class=3D"_ _7"> </span>in <span class=3D"_ _7"> </span>r<span class=3D=
"_ _3"></span>el<span class=3D"_ _0"></span>ati<span class=3D"_ _3"></span>=
on <span class=3D"_ _7"> </span>to <span class=3D"_ _7"> </span>o<span clas=
s=3D"_ _3"></span>thers. <span class=3D"_ _7"> </span>S<span class=3D"_ _3"=
></span>tarting <span class=3D"_ _7"> </span>f<span class=3D"_ _3"></span>r=
om <span class=3D"_ _7"> </span>thi<span class=3D"_ _3"></span>s </div><div=
 class=3D"t m0 x22 h7 y3d ff4 fs2 fc0 sc0 ls0 ws0">premise, music e<span cl=
ass=3D"_ _0"></span>ducatio<span class=3D"_ _3"></span>n <span class=3D"_ _=
0"></span>can contribute a <span class=3D"_ _0"></span>lot <span class=3D"_=
 _0"></span>for the ful<span class=3D"_ _0"></span>f<span class=3D"_ _3"></=
span>illment of <span class=3D"_ _0"></span>this objective. Music <span cla=
ss=3D"_ _0"></span>is a </div><div class=3D"t m0 x22 h7 y3e ff4 fs2 fc0 sc0=
 ls0 ws0">natural, intima<span class=3D"_ _3"></span>te and personal ph<spa=
n class=3D"_ _3"></span>ysiological ph<span class=3D"_ _3"></span>enomenon =
that is fo<span class=3D"_ _3"></span>und within each per<span class=3D"_ _=
3"></span>son <span class=3D"_ _0"></span>-</div><div class=3D"t m0 x22 h7 =
y3f ff4 fs2 fc0 sc0 ls0 ws0">the <span class=3D"_ _1"> </span>voice- <span =
class=3D"_ _1"></span>and <span class=3D"_ _1"></span>th<span class=3D"_ _3=
"></span>e <span class=3D"_ _1"> </span>sense <span class=3D"_ _1"></span>o=
f <span class=3D"_ _9"></span>he<span class=3D"_ _0"></span>ari<span class=
=3D"_ _3"></span>ng; <span class=3D"_ _1"> </span>respond <span class=3D"_ =
_1"></span>to <span class=3D"_ _1"></span>em<span class=3D"_ _3"></span>oti=
onal <span class=3D"_ _1"></span>ev<span class=3D"_ _3"></span>ents <span c=
lass=3D"_ _1"></span>that <span class=3D"_ _1"></span>occ<span class=3D"_ _=
3"></span>ur <span class=3D"_ _1"> </span>in <span class=3D"_ _1"> </span>t=
he <span class=3D"_ _1"></span>puls<span class=3D"_ _3"></span>e, </div><di=
v class=3D"t m0 x22 h7 ye ff4 fs2 fc0 sc0 ls0 ws0">breathing, adrenaline,<s=
pan class=3D"_ _3"></span> <span class=3D"_ _0"></span>as <span class=3D"_ =
_0"></span>wel<span class=3D"_ _3"></span>l <span class=3D"_ _0"></span>as =
the <span class=3D"_ _0"></span>flow, as <span class=3D"_ _0"></span>pointe=
d out <span class=3D"_ _0"></span>by Willen <span class=3D"_ _0"></span>(19=
94). The use <span class=3D"_ _0"></span>of <span class=3D"_ _0"></span>mu<=
span class=3D"_ _3"></span>sic </div><div class=3D"t m0 x22 h7 y40 ff4 fs2 =
fc0 sc0 ls0 ws0">as <span class=3D"_ _1"></span>a <span class=3D"_ _9"></sp=
an>means <span class=3D"_ _1"></span>of <span class=3D"_ _9"></span>educati=
on <span class=3D"_ _1"></span>toda<span class=3D"_ _3"></span>y <span clas=
s=3D"_ _1"></span>is <span class=3D"_ _9"></span>very <span class=3D"_ _1">=
 </span>important <span class=3D"_ _9"></span>because <span class=3D"_ _1">=
</span>thr<span class=3D"_ _3"></span>ough <span class=3D"_ _1"></span>it <=
span class=3D"_ _9"></span>the <span class=3D"_ _1"></span>stud<span class=
=3D"_ _3"></span>ent <span class=3D"_ _1"> </span>develop<span class=3D"_ _=
3"></span>s </div><div class=3D"t m0 x22 h7 y41 ff4 fs2 fc0 sc0 ls0 ws0">sk=
ills <span class=3D"_ _1"> </span>and <span class=3D"_ _1"> </span>attitude=
s <span class=3D"_ _1"> </span>that <span class=3D"_ _1"> </span>motivate <=
span class=3D"_ _1"> </span>him <span class=3D"_ _1"> </span>to <span class=
=3D"_ _1"> </span>perform <span class=3D"_ _1"> </span>integration <span cl=
ass=3D"_ _1"></span>an<span class=3D"_ _3"></span>d <span class=3D"_ _1"> <=
/span>social <span class=3D"_ _1"> </span>solidarity <span class=3D"_ _1"> =
</span>actions<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h7 =
y42 ff4 fs2 fc0 sc0 ls0 ws0">that <span class=3D"_ _b"> </span>s<span class=
=3D"_ _3"></span>ignificant<span class=3D"_ _3"></span>ly <span class=3D"_ =
_b"> </span>b<span class=3D"_ _3"></span>enefit <span class=3D"_ _b"> </spa=
n>t<span class=3D"_ _3"></span>h<span class=3D"_ _3"></span>e <span class=
=3D"_ _b"> </span>g<span class=3D"_ _3"></span>roups <span class=3D"_ _b"> =
</span>wh<span class=3D"_ _3"></span>ere<span class=3D"_ _3"></span> <span =
class=3D"_ _b"> </span>th<span class=3D"_ _3"></span>e <span class=3D"_ _b"=
> </span>st<span class=3D"_ _3"></span>udent <span class=3D"_ _b"> </span>d=
<span class=3D"_ _3"></span>evelop<span class=3D"_ _3"></span>s <span class=
=3D"_ _b"> </span>a<span class=3D"_ _3"></span>nd <span class=3D"_ _b"> </s=
pan>a<span class=3D"_ _3"></span>pply <span class=3D"_ _b"> </span>th<span =
class=3D"_ _3"></span>e <span class=3D"_ _e"> </span>learned </div><div cla=
ss=3D"t m0 x22 h7 y43 ff4 fs2 fc0 sc0 ls0 ws0">behavior <span class=3D"_ _f=
"> </span>through <span class=3D"_ _f"> </span>the<span class=3D"_ _3"></sp=
an> <span class=3D"_ _f"> </span>choir. <span class=3D"_ _f"> </span>In <sp=
an class=3D"_ _f"> </span>this <span class=3D"_ _f"> </span>sense, <span cl=
ass=3D"_ _f"> </span>choral <span class=3D"_ _f"> </span>practic<span class=
=3D"_ _3"></span>e <span class=3D"_ _a"> </span>d<span class=3D"_ _3"></spa=
n>uring <span class=3D"_ _f"> </span>childho<span class=3D"_ _3"></span>od =
<span class=3D"_ _f"> </span>is <span class=3D"_ _f"> </span>being </div><d=
iv class=3D"t m0 x22 h7 y44 ff4 fs2 fc0 sc0 ls0 ws0">established <span clas=
s=3D"_ _0"></span>as <span class=3D"_ _8"></span>a <span class=3D"_ _8"></s=
pan>tool <span class=3D"_ _8"></span>of <span class=3D"_ _8"></span>the<spa=
n class=3D"_ _0"></span> <span class=3D"_ _0"></span>first <span class=3D"_=
 _8"></span>order <span class=3D"_ _8"></span>to <span class=3D"_ _8"></spa=
n>favor <span class=3D"_ _0"></span>school <span class=3D"_ _8"></span>coex=
istence. <span class=3D"_ _0"></span>The <span class=3D"_ _8"></span>benefi=
t <span class=3D"_ _8"></span>of <span class=3D"_ _8"></span>developing<spa=
n class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h7 y14 ff4 fs2 fc0 sc=
0 ls0 ws0">socio <span class=3D"_ _a"> </span>- <span class=3D"_ _f"> </spa=
n>affective <span class=3D"_ _a"> </span>c<span class=3D"_ _3"></span>ognit=
ive <span class=3D"_ _f"> </span>skills <span class=3D"_ _a"> </span>thr<sp=
an class=3D"_ _3"></span>ough <span class=3D"_ _f"> </span>musical <span cl=
ass=3D"_ _a"> </span>pract<span class=3D"_ _3"></span>ice <span class=3D"_ =
_a"> </span>is<span class=3D"_ _3"></span> <span class=3D"_ _a"> </span>to =
<span class=3D"_ _f"> </span>consider <span class=3D"_ _a"> </span>t<span c=
lass=3D"_ _3"></span>he <span class=3D"_ _a"> </span>stu<span class=3D"_ _3=
"></span>dent<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h7 y=
45 ff4 fs2 fc0 sc0 ls0 ws0">protagonist of a<span class=3D"_ _3"></span> mu=
sical exp<span class=3D"_ _3"></span>erience compos<span class=3D"_ _3"></s=
pan>ed of activities that <span class=3D"_ _3"></span>come out of <span cla=
ss=3D"_ _3"></span>everyda<span class=3D"_ _0"></span>y lif<span class=3D"_=
 _3"></span>e, but </div><div class=3D"t m0 x22 h7 y46 ff4 fs2 fc0 sc0 ls0 =
ws0">that <span class=3D"_ _b"> </span>do<span class=3D"_ _3"></span> <span=
 class=3D"_ _b"> </span>n<span class=3D"_ _3"></span>ot <span class=3D"_ _b=
"> </span>sto<span class=3D"_ _3"></span>p <span class=3D"_ _b"> </span>pr<=
span class=3D"_ _3"></span>oviding <span class=3D"_ _e"> </span>theoretical=
 <span class=3D"_ _b"> </span>k<span class=3D"_ _3"></span>nowledg<span cla=
ss=3D"_ _3"></span>e <span class=3D"_ _b"> </span>an<span class=3D"_ _3"></=
span>d <span class=3D"_ _b"> </span>a<span class=3D"_ _3"></span>lso <span =
class=3D"_ _e"> </span>e<span class=3D"_ _0"></span>nhanc<span class=3D"_ _=
3"></span>e <span class=3D"_ _b"> </span>the <span class=3D"_ _e"> </span>d=
evelopment <span class=3D"_ _e"> </span>of </div><div class=3D"t m0 x22 h7 =
y47 ff4 fs2 fc0 sc0 ls0 ws0">sensitivity, cr<span class=3D"_ _3"></span>eat=
ivity and intrap<span class=3D"_ _3"></span>ersonal and i<span class=3D"_ _=
3"></span>nterpersonal <span class=3D"_ _3"></span>skills.<span class=3D"_ =
_0"></span> </div><div class=3D"t m0 x22 h4 y18 ff4 fs2 fc0 sc0 ls0 ws0">KE=
YWORDS: M<span class=3D"_ _3"></span>usic education; l<span class=3D"_ _3">=
</span>earning; cognitive s<span class=3D"_ _3"></span>kills; didactics; <s=
pan class=3D"_ _3"></span>pedagogical. <span class=3D"fs0"> </span></div><d=
iv class=3D"t m0 x22 h4 y1a ff4 fs0 fc0 sc0 ls0 ws0">INTRODUCCI=C3=93N </di=
v><div class=3D"t m0 x22 h4 y48 ff4 fs0 fc0 sc0 ls0 ws0">En <span class=3D"=
_ _0"></span>los <span class=3D"_ _8"></span>actuales <span class=3D"_ _8">=
</span>momentos <span class=3D"_ _8"></span>se <span class=3D"_ _8"></span>=
ha <span class=3D"_ _8"></span>percibido <span class=3D"_ _8"></span>que <s=
pan class=3D"_ _8"></span>la <span class=3D"_ _8"></span>ense=C3=B1anza <sp=
an class=3D"_ _8"></span>con <span class=3D"_ _8"></span>m=C3=BAsica <span =
class=3D"_ _0"></span>benefi<span class=3D"_ _0"></span>cia <span class=3D"=
_ _0"></span>y </div><div class=3D"t m0 x22 h4 y49 ff4 fs0 fc0 sc0 ls0 ws0"=
>complementa <span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>m=
=C3=BAltiples <span class=3D"_ _7"> </span>formas <span class=3D"_ _1"> </s=
pan>el <span class=3D"_ _7"> </span>aprendizaje <span class=3D"_ _7"> </spa=
n>en <span class=3D"_ _7"> </span>la <span class=3D"_ _7"> </span>educaci=
=C3=B3n <span class=3D"_ _7"> </span>infantil. <span class=3D"_ _1"> </span=
>Se <span class=3D"_ _7"> </span>cree </div><div class=3D"t m0 x22 h4 y4a f=
f4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _0"></span>todos <span class=
=3D"_ _8"></span>nacen <span class=3D"_ _8"></span>con <span class=3D"_ _0"=
></span>habilidades <span class=3D"_ _8"></span>innatas <span class=3D"_ _8=
"></span>para <span class=3D"_ _8"></span>responder <span class=3D"_ _8"></=
span>a <span class=3D"_ _0"></span>la <span class=3D"_ _8"></span>m=C3=BAsi=
ca <span class=3D"_ _8"></span>y <span class=3D"_ _0"></span>al <span class=
=3D"_ _8"></span>desarrollo </div><div class=3D"t m0 x22 h4 y4b ff4 fs0 fc0=
 sc0 ls0 ws0">desde <span class=3D"_ _7"> </span>ni=C3=B1<span class=3D"_ _=
3"></span>os. <span class=3D"_ _7"> </span>Sin <span class=3D"_ _1"></span>=
embargo, <span class=3D"_ _1"> </span>sin <span class=3D"_ _7"> </span>una =
<span class=3D"_ _1"> </span>apropiada <span class=3D"_ _7"> </span>directr=
iz <span class=3D"_ _1"> </span>esta <span class=3D"_ _7"> </span>mencionad=
a <span class=3D"_ _1"> </span>habilidad </div><div class=3D"t m0 x22 h4 y4=
c ff4 fs0 fc0 sc0 ls0 ws0">musical <span class=3D"_ _e"> </span>podr=C3=ADa=
 <span class=3D"_ _e"> </span>verse <span class=3D"_ _e"> </span>disminuida=
 <span class=3D"_ _e"> </span>o <span class=3D"_ _e"> </span>perderse <span=
 class=3D"_ _e"> </span>en <span class=3D"_ _e"> </span>el <span class=3D"_=
 _e"> </span>proceso. <span class=3D"_ _e"> </span>Consecuentemente <span c=
lass=3D"_ _e"> </span>es </div><div class=3D"t m0 x22 h4 y4d ff4 fs0 fc0 sc=
0 ls0 ws0">necesario <span class=3D"_ _8"></span>que <span class=3D"_ _9"><=
/span>las <span class=3D"_ _8"></span>personas <span class=3D"_ _8"></span>=
implicadas <span class=3D"_ _9"></span>en <span class=3D"_ _8"></span>la <s=
pan class=3D"_ _9"></span>formaci=C3=B3n <span class=3D"_ _8"></span>y <spa=
n class=3D"_ _9"></span>educaci=C3=B3n <span class=3D"_ _8"></span>de <span=
 class=3D"_ _8"></span>los <span class=3D"_ _9"></span>ni=C3=B1os, <span cl=
ass=3D"_ _8"></span>es </div><div class=3D"t m0 x22 h4 y4e ff4 fs0 fc0 sc0 =
ls0 ws0">decir,  padres  y <span class=3D"_ _f"> </span>educadores,  consid=
eren  a <span class=3D"_ _f"> </span>la  m=C3=BAsica  como  una <span class=
=3D"_ _f"> </span>herramienta  de </div><div class=3D"t m0 x22 h4 y4f ff4 f=
s0 fc0 sc0 ls0 ws0">aprendizaje.  </div><div class=3D"t m0 x22 h4 y50 ff4 f=
s0 fc0 sc0 ls0 ws0">La <span class=3D"_ _1"></span>m=C3=BAsica <span class=
=3D"_ _1"></span>existe <span class=3D"_ _9"></span>co<span class=3D"_ _0">=
</span>mo <span class=3D"_ _1"></span>parte <span class=3D"_ _9"></span>inn=
ata <span class=3D"_ _1"></span>de <span class=3D"_ _1"> </span>la <span cl=
ass=3D"_ _1"></span>naturaleza, <span class=3D"_ _1"></span>pues <span clas=
s=3D"_ _1"></span>donde <span class=3D"_ _1"></span>ocurren <span class=3D"=
_ _9"></span>soni<span class=3D"_ _0"></span>dos </div><div class=3D"t m0 x=
22 h4 y51 ff4 fs0 fc0 sc0 ls0 ws0">vive <span class=3D"_ _c"> </span>la  m=
=C3=BAsica <span class=3D"_ _b"> </span>dependiendo <span class=3D"_ _c"> <=
/span>en  la <span class=3D"_ _b"> </span>organizaci=C3=B3n  de <span class=
=3D"_ _b"> </span>los  sonidos <span class=3D"_ _b"> </span>de  acuerdo <sp=
an class=3D"_ _c"> </span>a <span class=3D"_ _c"> </span>la </div><div clas=
s=3D"t m0 x22 h4 y52 ff4 fs0 fc0 sc0 ls0 ws0">comprensi=C3=B3n <span class=
=3D"_ _8"></span>de <span class=3D"_ _9"></span>quien <span class=3D"_ _8">=
</span>la <span class=3D"_ _9"></span>percibe <span class=3D"_ _8"></span>p=
a<span class=3D"_ _0"></span>ra <span class=3D"_ _8"></span>crear, <span cl=
ass=3D"_ _9"></span>interpretar <span class=3D"_ _8"></span>o <span class=
=3D"_ _9"></span>escuchar. <span class=3D"_ _9"></span> <span class=3D"_ _8=
"></span>Se <span class=3D"_ _8"></span>relacio<span class=3D"_ _0"></span>=
na <span class=3D"_ _8"></span>a </div><div class=3D"t m0 x22 h4 y53 ff4 fs=
0 fc0 sc0 ls0 ws0">las <span class=3D"_ _7"> </span>artes <span class=3D"_ =
_7"> </span>por <span class=3D"_ _7"> </span>su <span class=3D"_ _7"> </spa=
n>v=C3=ADn<span class=3D"_ _3"></span>culo <span class=3D"_ _7"> </span>con=
 <span class=3D"_ _1"> </span>el <span class=3D"_ _7"> </span>mundo <span c=
lass=3D"_ _7"> </span>que <span class=3D"_ _7"> </span>la <span class=3D"_ =
_7"> </span>rodea. <span class=3D"_ _1"> </span>Considerada <span class=3D"=
_ _7"> </span>como <span class=3D"_ _7"> </span>ciencia <span class=3D"_ _7=
"> </span>y </div><div class=3D"t m0 x22 h4 y54 ff4 fs0 fc0 sc0 ls0 ws0">ar=
te, <span class=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>los <span =
class=3D"_ _1"></span>actuales <span class=3D"_ _1"> </span>momentos <span =
class=3D"_ _7"> </span> <span class=3D"_ _1"></span> <span class=3D"_ _1"> =
</span>ha <span class=3D"_ _7"> </span>tomado <span class=3D"_ _1"></span>p=
rimac=C3=ADa <span class=3D"_ _1"> </span>sobre <span class=3D"_ _7"> </spa=
n>todas <span class=3D"_ _1"></span>las <span class=3D"_ _1"> </span>artes,=
 <span class=3D"_ _7"> </span>dado<span class=3D"_ _3"></span> </div><div c=
lass=3D"t m0 x22 h4 y55 ff4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _1"> =
</span>su <span class=3D"_ _1"> </span>fuerza <span class=3D"_ _7"> </span>=
comu<span class=3D"_ _3"></span>nicativa, <span class=3D"_ _1"></span>excit=
a <span class=3D"_ _1"> </span>o <span class=3D"_ _1"> </span>relaja, <span=
 class=3D"_ _1"> </span>tr<span class=3D"_ _0"></span>ansporta <span class=
=3D"_ _1"> </span>y <span class=3D"_ _1"> </span>motiva, <span class=3D"_ _=
1"> </span>emociona <span class=3D"_ _7"> </span>y <span class=3D"_ _1"></s=
pan>h<span class=3D"_ _3"></span>ace </div><div class=3D"t m0 x22 h4 y56 ff=
4 fs0 fc0 sc0 ls0 ws0">pensar: <span class=3D"_ _2"> </span>superando <span=
 class=3D"_ _2"> </span>en <span class=3D"_ _10"> </span>muchos <span class=
=3D"_ _2"> </span>aspectos, <span class=3D"_ _2"> </span>al <span class=3D"=
_ _2"> </span>lenguaje <span class=3D"_ _2"> </span>pl=C3=A1stico <span cla=
ss=3D"_ _10"> </span>y <span class=3D"_ _2"> </span>verbal, </div><div clas=
s=3D"t m0 x22 h4 y57 ff4 fs0 fc0 sc0 ls0 ws0">configur=C3=A1ndose como un m=
edio comunicativo excepcional. </div><div class=3D"t m0 x22 h4 y2a ff4 fs0 =
fc0 sc0 ls0 ws0">Siendo <span class=3D"_ _1"></span>un <span class=3D"_ _1"=
></span>instrumento <span class=3D"_ _1"></span>de <span class=3D"_ _1"></s=
pan>comunicaci=C3=B3n, <span class=3D"_ _1"></span>la <span class=3D"_ _1">=
</span>m=C3=BAsica <span class=3D"_ _1"></span> <span class=3D"_ _1"></span=
>reviste <span class=3D"_ _1"></span>su <span class=3D"_ _1"></span>importa=
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8AAOD9AACA9wMAAB8Bev0fizEWLooAAAAASUVORK5CYII=3D"><div class=3D"t m0 x2 h5 =
y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=3D"_ _0"></span>nosis. =
Revista de Filosof=C3=ADa, Let<span class=3D"_ _0"></span>ras y Ciencias de=
 la Educaci=C3=B3n <span class=3D"_ _0"></span><span class=3D"ls1">        =
                      <span class=3D"_ _3"></span>     <span class=3D"ls0">=
            ISSN </span>2588<span class=3D"ls0">-0578 </span></span></div><=
div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0">M=C3=9ASICA COMO MEDIO=
 <span class=3D"_ _0"></span>DE ENSE=C3=91<span class=3D"_ _0"></span>ANZA-=
APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91OS<span class=3D"_ _0"><=
/span><span class=3D"fs6"> </span></div><div class=3D"t m0 x2 h2 y5e ff1 fs=
0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2 h3"><div class=3D"t m0 x=
3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o 2020.<span class=3D"_ _0"=
></span> N=C3=BAmero 2, Abril<span class=3D"_ _0"></span>-Junio </div></div=
><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 l=
s1 ws0">159<span class=3D"ls0"> </span></div></div><div class=3D"t m0 x2 h2=
 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2 h4 y5f ff4 fs0 fc=
0 sc0 ls0 ws0">porque <span class=3D"_ _f"> </span>no <span class=3D"_ _f">=
 </span>siempre <span class=3D"_ _f"> </span>el <span class=3D"_ _f"> </spa=
n>proceso <span class=3D"_ _a"> </span>  aprendizaje <span class=3D"_ _a"> =
</span>-  ense=C3=B1anza<span class=3D"_ _0"></span> <span class=3D"_ _f"> =
</span>resulta <span class=3D"_ _f"> </span>agradable <span class=3D"_ _f">=
 </span>y/o </div><div class=3D"t m0 x2 h4 y60 ff4 fs0 fc0 sc0 ls0 ws0">mot=
ivador, <span class=3D"_ _0"></span>puesto <span class=3D"_ _8"></span>q<sp=
an class=3D"_ _0"></span>ue <span class=3D"_ _0"></span>ellos <span class=
=3D"_ _8"></span>y <span class=3D"_ _8"></span>ellas <span class=3D"_ _0"><=
/span>pued<span class=3D"_ _0"></span>en <span class=3D"_ _0"></span>apreci=
ar <span class=3D"_ _8"></span>como <span class=3D"_ _8"></span>algo <span =
class=3D"_ _8"></span>mon=C3=B3tono <span class=3D"_ _8"></span>y <span cla=
ss=3D"_ _8"></span>aburrido </div><div class=3D"t m0 x2 h4 y61 ff4 fs0 fc0 =
sc0 ls0 ws0">por <span class=3D"_ _8"></span>las <span class=3D"_ _8"></spa=
n>actividades <span class=3D"_ _8"></span>y <span class=3D"_ _9"></span>tar=
eas <span class=3D"_ _0"></span>obligadas. <span class=3D"_ _9"></span>Esto=
 <span class=3D"_ _0"></span>pued<span class=3D"_ _0"></span>e <span class=
=3D"_ _8"></span>ocurrir <span class=3D"_ _8"></span>por <span class=3D"_ _=
8"></span>falta <span class=3D"_ _8"></span>de <span class=3D"_ _9"></span>=
inter=C3=A9s <span class=3D"_ _8"></span>por <span class=3D"_ _0"></span>la=
 </div><div class=3D"t m0 x2 h4 y62 ff4 fs0 fc0 sc0 ls0 ws0">asignatura, <s=
pan class=3D"_ _0"></span>motivaci=C3=B3n <span class=3D"_ _0"></span>del <=
span class=3D"_ _8"></span>profesor, <span class=3D"_ _0"></span>insuficien=
te <span class=3D"_ _0"></span>o <span class=3D"_ _8"></span>inapropiados <=
span class=3D"_ _0"></span>recursos <span class=3D"_ _0"></span>did=C3=A1ct=
icos, </div><div class=3D"t m0 x2 h4 y39 ff4 fs0 fc0 sc0 ls0 ws0">ambiente =
<span class=3D"_ _0"></span>familiar <span class=3D"_ _0"></span>en <span c=
lass=3D"_ _0"></span>la <span class=3D"_ _0"></span>que los <span class=3D"=
_ _0"></span>ni=C3=B1os <span class=3D"_ _0"></span>y <span class=3D"_ _0">=
</span>ni=C3=B1as <span class=3D"_ _0"></span>se <span class=3D"_ _0"></spa=
n>desarrollan, <span class=3D"_ _0"></span>estilo <span class=3D"_ _0"></sp=
an>de <span class=3D"_ _0"></span>ense=C3=B1anza <span class=3D"_ _0"></spa=
n>del<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y63 ff4 fs=
0 fc0 sc0 ls0 ws0">profesor o estilo de aprendizaje de los ni=C3=B1os y ni=
=C3=B1as.  </div><div class=3D"t m0 x2 h4 y8 ff4 fs0 fc0 sc0 ls0 ws0">Descr=
ita <span class=3D"_ _a"> </span>esta <span class=3D"_ _a"> </span>situaci=
=C3=B3n <span class=3D"_ _a"> </span>del <span class=3D"_ _a"> </span>proce=
so <span class=3D"_ _a"> </span>de <span class=3D"_ _f"> </span>aprendizaje=
 <span class=3D"_ _a"> </span>en <span class=3D"_ _a"> </span>los <span cla=
ss=3D"_ _a"> </span>ni=C3=B1os, <span class=3D"_ _a"> </span>es <span class=
=3D"_ _a"> </span>necesario </div><div class=3D"t m0 x2 h4 y64 ff4 fs0 fc0 =
sc0 ls0 ws0">puntualizar <span class=3D"_ _d"> </span>tambi=C3=A9n <span cl=
ass=3D"_ _a"> </span>que <span class=3D"_ _d"> </span>el <span class=3D"_ _=
a"> </span>uso <span class=3D"_ _d"> </span>de <span class=3D"_ _11"> </spa=
n>la <span class=3D"_ _11"> </span>m=C3=BAsica <span class=3D"_ _d"> </span=
>como <span class=3D"_ _a"> </span>m<span class=3D"_ _0"></span>edio <span =
class=3D"_ _11"> </span>de <span class=3D"_ _11"> </span>aprendizaj<span cl=
ass=3D"_ _0"></span>e <span class=3D"_ _d"> </span><span class=3D"ff5">=E2=
=80=93<span class=3D"_ _3"></span><span class=3D"ff4"> </span></span></div>=
<div class=3D"t m0 x2 h4 y65 ff4 fs0 fc0 sc0 ls0 ws0">ense=C3=B1anza no nec=
esariamente puede <span class=3D"_ _0"></span>llevar a que la din=C3=A1mica=
 del <span class=3D"_ _0"></span>proceso sea exitosa </div><div class=3D"t =
m0 x2 h4 y66 ff4 fs0 fc0 sc0 ls0 ws0">por <span class=3D"_ _d"> </span>dive=
rsos <span class=3D"_ _d"> </span>factores <span class=3D"_ _d"> </span>psi=
comotrices <span class=3D"_ _d"> </span>impl=C3=ADcitos; <span class=3D"_ _=
11"> </span>as=C3=AD <span class=3D"_ _d"> </span>tenemos, <span class=3D"_=
 _d"> </span>desarrollo <span class=3D"_ _d"> </span>de <span class=3D"_ _d=
"> </span>las<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y6=
7 ff4 fs0 fc0 sc0 ls0 ws0">habilidades <span class=3D"_ _8"></span>musical<=
span class=3D"_ _0"></span>es <span class=3D"_ _8"></span>en <span class=3D=
"_ _9"></span>ellos, <span class=3D"_ _8"></span>gusto <span class=3D"_ _9"=
></span>por <span class=3D"_ _9"></span>la <span class=3D"_ _8"></span>m=C3=
=BAsica <span class=3D"_ _9"></span>a <span class=3D"_ _8"></span>usar, <sp=
an class=3D"_ _9"></span>problemas <span class=3D"_ _9"></span>auditivos <s=
pan class=3D"_ _8"></span>no </div><div class=3D"t m0 x2 h4 y68 ff4 fs0 fc0=
 sc0 ls0 ws0">detectados, <span class=3D"_ _5"> </span>personalidad <span c=
lass=3D"_ _5"> </span>en <span class=3D"_ _12"> </span>formaci=C3=B3n <span=
 class=3D"_ _5"> </span>de <span class=3D"_ _12"> </span>ni=C3=B1os <span c=
lass=3D"_ _5"> </span>y <span class=3D"_ _5"> </span>ni<span class=3D"_ _3"=
></span>=C3=B1as, <span class=3D"_ _5"> </span>etc. <span class=3D"_ _12"> =
</span>Por <span class=3D"_ _5"> </span>todo <span class=3D"_ _5"> </span>l=
o<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y69 ff4 fs0 fc=
0 sc0 ls0 ws0">anteriormente <span class=3D"_ _1"></span>acotado <span clas=
s=3D"_ _1"></span>y <span class=3D"_ _9"></span>porque <span class=3D"_ _1"=
></span>desde <span class=3D"_ _1"></span>el <span class=3D"_ _1"></span>pu=
nto <span class=3D"_ _1"></span>de <span class=3D"_ _1"></span>vista <span =
class=3D"_ _9"></span>de <span class=3D"_ _1"> </span>la <span class=3D"_ _=
1"></span>did=C3=A1ctica, <span class=3D"_ _1"></span>ense=C3=B1ar <span cl=
ass=3D"_ _1"></span>y </div><div class=3D"t m0 x2 h4 y6a ff4 fs0 fc0 sc0 ls=
0 ws0">aprender <span class=3D"_ _1"></span>nuevos <span class=3D"_ _9"></s=
pan>conocimientos <span class=3D"_ _1"></span>mediante <span class=3D"_ _9"=
></span>este <span class=3D"_ _1"></span>sistema <span class=3D"_ _9"></spa=
n>se <span class=3D"_ _1"></span>caracterizan <span class=3D"_ _9"></span>p=
or <span class=3D"_ _1"></span>ser <span class=3D"_ _9"></span>m=C3=A1s </d=
iv><div class=3D"t m0 x2 h4 y6b ff4 fs0 fc0 sc0 ls0 ws0">duraderos <span cl=
ass=3D"_ _b"> </span>se <span class=3D"_ _e"> </span>hace <span class=3D"_ =
_b"> </span>absolutamente <span class=3D"_ _b"> </span>imprescindible <span=
 class=3D"_ _e"> </span> <span class=3D"_ _b"> </span> <span class=3D"_ _b"=
> </span>realizar <span class=3D"_ _e"> </span>un <span class=3D"_ _b"> </s=
pan>diagn=C3=B3stico <span class=3D"_ _b"> </span>de <span class=3D"_ _e"> =
</span>la </div><div class=3D"t m0 x2 h4 y44 ff4 fs0 fc0 sc0 ls0 ws0">m=C3=
=BAsica <span class=3D"_ _9"></span>como <span class=3D"_ _1"></span>medio =
<span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>aprendizaje <spa=
n class=3D"_ _1"></span>- <span class=3D"_ _1"></span>ense=C3=B1anza <span =
class=3D"_ _9"></span>en <span class=3D"_ _9"></span>el <span class=3D"_ _1=
"></span>proceso <span class=3D"_ _9"></span>de <span class=3D"_ _9"></span=
>los <span class=3D"_ _1"></span>ni=C3=B1os <span class=3D"_ _9"></span>y <=
span class=3D"_ _1"></span>ni=C3=B1as </div><div class=3D"t m0 x2 h4 y6c ff=
4 fs0 fc0 sc0 ls0 ws0">del <span class=3D"_ _1"></span>subnivel <span class=
=3D"_ _9"></span>inicial <span class=3D"_ _1"></span>2 <span class=3D"_ _9"=
></span>con <span class=3D"_ _1"></span>5 <span class=3D"_ _9"></span>a=C3=
=B1os<span class=3D"_ _0"></span> <span class=3D"_ _9"></span>de <span clas=
s=3D"_ _1"></span>edad <span class=3D"_ _1"></span>del <span class=3D"_ _9"=
></span>Centro <span class=3D"_ _1"></span>de <span class=3D"_ _1"></span>E=
ducaci=C3=B3n <span class=3D"_ _9"></span>Inicial <span class=3D"_ _1"></sp=
an>Gabriela </div><div class=3D"t m0 x2 h4 y6d ff4 fs0 fc0 sc0 ls0 ws0">Mis=
tral, <span class=3D"_ _7"> </span>de <span class=3D"_ _1"> </span>la <span=
 class=3D"_ _7"> </span>parroquia <span class=3D"_ _7"> </span>12 <span cla=
ss=3D"_ _1"> </span>de <span class=3D"_ _7"> </span>marzo, <span class=3D"_=
 _1"> </span>Cant=C3=B3n <span class=3D"_ _7"> </span>Portoviejo <span clas=
s=3D"_ _7"> </span>d<span class=3D"_ _3"></span>urante <span class=3D"_ _7"=
> </span>el <span class=3D"_ _1"> </span>periodo <span class=3D"_ _7"> </sp=
an>2018.<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y6e ff4=
 fs0 fc0 sc0 ls0 ws0">Con <span class=3D"_ _0"></span>la <span class=3D"_ _=
8"></span>finalidad <span class=3D"_ _8"></span>de <span class=3D"_ _0"></s=
pan>hacer <span class=3D"_ _8"></span>recomendaciones <span class=3D"_ _8">=
</span>y <span class=3D"_ _8"></span>sugerencias <span class=3D"_ _8"></spa=
n>adem=C3=A1s <span class=3D"_ _8"></span>de <span class=3D"_ _8"></span>un=
a <span class=3D"_ _8"></span>propuesta </div><div class=3D"t m0 x2 h4 y17 =
ff4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _a"> </span>permitan <span cl=
ass=3D"_ _f"> </span>aprovechar <span class=3D"_ _a"> </span>esta <span cla=
ss=3D"_ _a"> </span>herramienta <span class=3D"_ _f"> </span>did=C3=A1ctica=
 <span class=3D"_ _a"> </span>para <span class=3D"_ _a"> </span>el <span cl=
ass=3D"_ _f"> </span>mejoramiento <span class=3D"_ _a"> </span>del<span cla=
ss=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y6f ff4 fs0 fc0 sc0 ls0 =
ws0">proceso de aprendizaje de los ni=C3=B1os.  </div><div class=3D"t m0 x2=
 h4 y70 ff4 fs0 fc0 sc0 ls0 ws0">Adem=C3=A1s, <span class=3D"_ _c"> </span>=
se  identifi<span class=3D"_ _3"></span>ca <span class=3D"_ _c"> </span>qu=
=C3=A9 <span class=3D"_ _c"> </span>aspectos <span class=3D"_ _c"> </span>p=
ersonales <span class=3D"_ _b"> </span>en  la <span class=3D"_ _c"> </span>=
formaci=C3=B3n <span class=3D"_ _b"> </span>de  los <span class=3D"_ _c"> <=
/span>ni=C3=B1os <span class=3D"_ _b"> </span>se </div><div class=3D"t m0 x=
2 h4 y71 ff4 fs0 fc0 sc0 ls0 ws0">favorecen <span class=3D"_ _9"></span>con=
 <span class=3D"_ _1"></span>la <span class=3D"_ _9"></span>aplicaci=C3=B3n=
 <span class=3D"_ _9"></span>de <span class=3D"_ _1"></span>m=C3=BAsica <sp=
an class=3D"_ _9"></span>como <span class=3D"_ _9"></span>instrumento <span=
 class=3D"_ _1"></span>did=C3=A1ctico <span class=3D"_ _9"></span>en <span =
class=3D"_ _9"></span>el <span class=3D"_ _1"></span>aula; <span class=3D"_=
 _9"></span>toda </div><div class=3D"t m0 x2 h4 y72 ff4 fs0 fc0 sc0 ls0 ws0=
">vez <span class=3D"_ _7"> </span>que, <span class=3D"_ _7"> </span>como <=
span class=3D"_ _e"> </span>se <span class=3D"_ _7"> </span>sabe <span clas=
s=3D"_ _7"> </span>la <span class=3D"_ _7"> </span>m=C3=BAsica <span class=
=3D"_ _e"> </span>incide <span class=3D"_ _7"> </span>en <span class=3D"_ _=
7"> </span>el <span class=3D"_ _7"> </span>comportamiento, <span class=3D"_=
 _7"> </span>desarrollo <span class=3D"_ _e"> </span>motriz,<span class=3D"=
_ _3"></span> </div><div class=3D"t m0 x2 h4 y73 ff4 fs0 fc0 sc0 ls0 ws0">i=
ntelectual y f=C3=ADsico <span class=3D"_ _0"></span>de los ni=C3=B1os. <sp=
an class=3D"_ _0"></span>Tambi=C3=A9n se determinar=C3=A1 si <span class=3D=
"_ _0"></span>las actividades realizadas </div><div class=3D"t m0 x2 h4 y1e=
 ff4 fs0 fc0 sc0 ls0 ws0">por <span class=3D"_ _a"> </span>los <span class=
=3D"_ _a"> </span>ni=C3=B1os <span class=3D"_ _a"> </span>con<span class=3D=
"_ _3"></span> <span class=3D"_ _a"> </span>la <span class=3D"_ _a"> </span=
>aplicaci=C3=B3n <span class=3D"_ _a"> </span>de <span class=3D"_ _a"> </sp=
an>l<span class=3D"_ _3"></span>a <span class=3D"_ _a"> </span>m=C3=BAsica =
<span class=3D"_ _a"> </span>como <span class=3D"_ _a"> </span>did=C3=A1cti=
ca <span class=3D"_ _a"> </span> <span class=3D"_ _a"> </span> <span class=
=3D"_ _a"> </span>favorece<span class=3D"_ _3"></span>n <span class=3D"_ _a=
"> </span>su </div><div class=3D"t m0 x2 h4 y74 ff4 fs0 fc0 sc0 ls0 ws0">ap=
rendizaje. <span class=3D"_ _c"> </span>Finalmente,  es <span class=3D"_ _b=
"> </span>imprescindible <span class=3D"_ _c"> </span>establecer <span clas=
s=3D"_ _c"> </span>el <span class=3D"_ _b"> </span>n<span class=3D"_ _0"></=
span>ivel <span class=3D"_ _b"> </span>de <span class=3D"_ _c"> </span>acep=
taci=C3=B3n  po<span class=3D"_ _3"></span>r </div><div class=3D"t m0 x2 h4=
 y75 ff4 fs0 fc0 sc0 ls0 ws0">parte <span class=3D"_ _7"> </span>de <span c=
lass=3D"_ _7"> </span>los <span class=3D"_ _e"> </span>docentes <span class=
=3D"_ _7"> </span>profesores <span class=3D"_ _7"> </span>en <span class=3D=
"_ _7"> </span>la <span class=3D"_ _7"> </span>m=C3=BAsica <span class=3D"_=
 _e"> </span>como <span class=3D"_ _7"> </span>medio <span class=3D"_ _7"> =
</span>de <span class=3D"_ _e"> </span>aprendizaje <span class=3D"_ _7"> </=
span>en <span class=3D"_ _7"> </span>los </div><div class=3D"t m0 x2 h4 y76=
 ff4 fs0 fc0 sc0 ls0 ws0">ni=C3=B1os; <span class=3D"_ _5"> </span>puesto <=
span class=3D"_ _12"> </span>que <span class=3D"_ _5"> </span>los <span cla=
ss=3D"_ _5"> </span>diferentes <span class=3D"_ _12"> </span>enfoques <span=
 class=3D"_ _5"> </span>metodol=C3=B3gicos <span class=3D"_ _5"> </span>pro=
puestos <span class=3D"_ _12"> </span>en <span class=3D"_ _5"> </span>los <=
/div><div class=3D"t m0 x2 h4 y77 ff4 fs0 fc0 sc0 ls0 ws0">programas <span =
class=3D"_ _a"> </span>educativ<span class=3D"_ _0"></span>os <span class=
=3D"_ _a"> </span>gubernamentales <span class=3D"_ _11"> </span>no <span cl=
ass=3D"_ _a"> </span>consideran <span class=3D"_ _11"> </span>este <span cl=
ass=3D"_ _a"> </span>aspecto <span class=3D"_ _11"> </span>como <span class=
=3D"_ _11"> </span>algo<span class=3D"_ _3"></span> </div><div class=3D"t m=
0 x2 h4 y78 ff4 fs0 fc0 sc0 ls0 ws0">fundamental.  </div><div class=3D"t m0=
 x2 h4 y25 ff4 fs0 fc0 sc0 ls0 ws0">Dado <span class=3D"_ _b"> </span>que <=
span class=3D"_ _b"> </span>en <span class=3D"_ _c"> </span>la <span class=
=3D"_ _b"> </span>formaci=C3=B3n <span class=3D"_ _b"> </span>del <span cla=
ss=3D"_ _c"> </span>ser <span class=3D"_ _b"> </span>humano <span class=3D"=
_ _b"> </span>no <span class=3D"_ _b"> </span>solamente <span class=3D"_ _c=
"> </span>se <span class=3D"_ _b"> </span>debe <span class=3D"_ _b"> </span=
>considerar <span class=3D"_ _c"> </span>el </div><div class=3D"t m0 x2 h4 =
y79 ff4 fs0 fc0 sc0 ls0 ws0">aspecto <span class=3D"_ _8"></span>f=C3=ADsic=
o <span class=3D"_ _8"></span>si <span class=3D"_ _8"></span>no <span class=
=3D"_ _9"></span>tambi=C3=A9n <span class=3D"_ _0"></span>el <span class=3D=
"_ _8"></span>aspecto <span class=3D"_ _8"></span>intelectual, <span class=
=3D"_ _8"></span>es <span class=3D"_ _8"></span>necesario <span class=3D"_ =
_8"></span>tomar <span class=3D"_ _9"></span>en <span class=3D"_ _0"></span=
>cuenta <span class=3D"_ _8"></span>un </div><div class=3D"t m0 x2 h4 y7a f=
f4 fs0 fc0 sc0 ls0 ws0">factor <span class=3D"_ _1"></span>importante <span=
 class=3D"_ _1"></span>de <span class=3D"_ _1"></span>desarrollo <span clas=
s=3D"_ _9"></span>el <span class=3D"_ _1"></span>mismo <span class=3D"_ _1"=
></span>que <span class=3D"_ _1"></span>con <span class=3D"_ _1"></span>la =
<span class=3D"_ _9"></span>m=C3=BAsic<span class=3D"_ _0"></span>a, <span =
class=3D"_ _1"></span>las <span class=3D"_ _9"></span>artes <span class=3D"=
_ _1"></span>pl=C3=A1sticas, <span class=3D"_ _1"></span>el </div><div clas=
s=3D"t m0 x2 h4 y7b ff4 fs0 fc0 sc0 ls0 ws0">drama <span class=3D"_ _a"> </=
span>pueden <span class=3D"_ _a"> </span>ocupar <span class=3D"_ _a"> </spa=
n>un <span class=3D"_ _a"> </span>lugar <span class=3D"_ _a"> </span>descol=
lante <span class=3D"_ _a"> </span>en <span class=3D"_ _a"> </span>la <span=
 class=3D"_ _a"> </span>educaci=C3=B3n <span class=3D"_ _a"> </span>armonio=
sa <span class=3D"_ _a"> </span>de <span class=3D"_ _a"> </span>l<span clas=
s=3D"_ _3"></span>a </div><div class=3D"t m0 x2 h4 y7c ff4 fs0 fc0 sc0 ls0 =
ws0">infancia. <span class=3D"_ _b"> </span> <span class=3D"_ _e"> </span>E=
l <span class=3D"_ _b"> </span>conocimiento <span class=3D"_ _b"> </span>de=
 <span class=3D"_ _e"> </span>las <span class=3D"_ _b"> </span>reacciones <=
span class=3D"_ _e"> </span>de <span class=3D"_ _b"> </span>los <span class=
=3D"_ _b"> </span>ni=C3=B1os <span class=3D"_ _e"> </span>ante <span class=
=3D"_ _b"> </span>la <span class=3D"_ _e"> </span>m=C3=BAsica <span class=
=3D"_ _b"> </span>puede<span class=3D"_ _3"></span> </div><div class=3D"t m=
0 x2 h4 y7d ff4 fs0 fc0 sc0 ls0 ws0">definir <span class=3D"_ _8"></span>qu=
e <span class=3D"_ _9"></span>ese <span class=3D"_ _8"></span>ni=C3=B1o <sp=
an class=3D"_ _8"></span>posee<span class=3D"_ _0"></span> <span class=3D"_=
 _8"></span>sensibilidad <span class=3D"_ _9"></span>hacia <span class=3D"_=
 _8"></span>la <span class=3D"_ _9"></span>m=C3=BAsica <span class=3D"_ _8"=
></span>lo <span class=3D"_ _9"></span>que <span class=3D"_ _0"></span>ser=
=C3=ADa <span class=3D"_ _9"></span>valiosa <span class=3D"_ _8"></span>par=
a <span class=3D"_ _9"></span>su </div><div class=3D"t m0 x2 h4 y7e ff4 fs0=
 fc0 sc0 ls0 ws0">educaci=C3=B3n. <span class=3D"_ _9"></span>Esta <span cl=
ass=3D"_ _1"></span>sensibilidad <span class=3D"_ _9"></span>puede <span cl=
ass=3D"_ _9"></span>ser <span class=3D"_ _1"></span>emocional, <span class=
=3D"_ _9"></span>sensual, <span class=3D"_ _1"></span>f=C3=ADsica <span cla=
ss=3D"_ _9"></span>o <span class=3D"_ _9"></span>intelectual. <span class=
=3D"_ _1"></span>Por </div><div class=3D"t m0 x2 h4 y7f ff4 fs0 fc0 sc0 ls0=
 ws0">tal <span class=3D"_ _7"> </span>raz=C3=B3n <span class=3D"_ _1"> </s=
pan>se <span class=3D"_ _7"> </span>hace <span class=3D"_ _7"> </span>n<spa=
n class=3D"_ _3"></span>ecesario <span class=3D"_ _7"> </span>que <span cla=
ss=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>los <span class=3D"_ _7=
"> </span>centros <span class=3D"_ _1"> </span>de <span class=3D"_ _7"> </s=
pan>educaci=C3=B3n <span class=3D"_ _7"> </span>se <span class=3D"_ _1"> </=
span>impulse <span class=3D"_ _7"> </span>las <span class=3D"_ _7"> </span>=
a<span class=3D"_ _3"></span>rtes </div><div class=3D"t m0 x2 h4 y80 ff4 fs=
0 fc0 sc0 ls0 ws0">musicales <span class=3D"_ _7"> </span>como <span class=
=3D"_ _7"> </span>est=C3=ADmulo <span class=3D"_ _7"> </span>para <span cla=
ss=3D"_ _1"> </span>qu<span class=3D"_ _0"></span>e <span class=3D"_ _7"> <=
/span>el <span class=3D"_ _7"> </span>p<span class=3D"_ _3"></span>roceso <=
span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </span>interaprendizaj=
e <span class=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>los <span cl=
ass=3D"_ _7"> </span>ni=C3=B1os <span class=3D"_ _7"> </span>se<span class=
=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y81 ff4 fs0 fc0 sc0 ls0 ws=
0">asimile de manera significativa. </div><div class=3D"t m0 x2 h4 y82 ff4 =
fs0 fc0 sc0 ls0 ws0">Al <span class=3D"_ _9"></span>considerar <span class=
=3D"_ _8"></span>a <span class=3D"_ _9"></span>la <span class=3D"_ _9"></sp=
an>m=C3=BAsica <span class=3D"_ _9"></span>como <span class=3D"_ _9"></span=
>un <span class=3D"_ _9"></span>m=C3=A9todo <span class=3D"_ _9"></span>de =
<span class=3D"_ _8"></span>ense=C3=B1anza <span class=3D"_ _9"></span>se <=
span class=3D"_ _9"></span>tiene <span class=3D"_ _9"></span>que <span clas=
s=3D"_ _9"></span>mencionar <span class=3D"_ _9"></span>a </div><div class=
=3D"t m0 x2 h4 y30 ff5 fs0 fc0 sc0 ls0 ws0">Jacques <span class=3D"_ _7"> <=
/span>Dalcroze <span class=3D"_ _e"> </span>afirma <span class=3D"_ _e"> </=
span>que <span class=3D"_ _e"> </span>=E2=80=9CEl <span class=3D"_ _7"> </s=
pan>cuerp<span class=3D"_ _0"></span>o <span class=3D"_ _7"> </span>es <spa=
n class=3D"_ _e"> </span>la <span class=3D"_ _7"> </span>fuente, <span clas=
s=3D"_ _e"> </span>el <span class=3D"_ _e"> </span>instrumento <span class=
=3D"_ _e"> </span>y <span class=3D"_ _e"> </span>la <span class=3D"_ _7"> <=
/span>ac<span class=3D"_ _0"></span>ci=C3=B3n </div></div><div class=3D"pi"=
 data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.000000,0.00000=
0,0.000000]}"></div></div>
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RDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAI=
h+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AACA6AcAANEPAACIfgAAQ=
PQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAA=
oh8AABD9AADAv4vr+VTpo0+3u/cHAADr0f+Yxkof/Xh5en8AALDK7z0AACD6AQAA0Q8AAIh+AAB=
A9AMAAKIfAAAQ/QAAgOgHAADRDwAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AACIfgAAQPQDAA=
CiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAKIfAAAQ/QDvdutAAAAAAECQv/UgF0UAgPQDAADSD=
wAASD8AACD9AACA9AMAgPQDAADSDwAASD8AACD9AACA9AMAANIPAABIPwAArAU1XivGbtpKPQAA=
AABJRU5ErkJggg=3D=3D"><div class=3D"t m0 x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"=
> </div><div class=3D"t m0 x20 h4 y34 ff1 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis=
 Lisbeth <span class=3D"_ _0"></span>Ay<span class=3D"_ _3"></span>ala Mo<s=
pan class=3D"_ _0"></span>rillo, Letty Araceli Delgado Cede<span class=3D"_=
 _0"></span>=C3=B1o, Jos=C3=A9 Grismaldo P<span class=3D"_ _0"></span>ico M=
ieles<span class=3D"_ _0"></span> </div><div class=3D"t m0 x1 h2 y35 ff1 fs=
0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x1f y3 wb h3"><div class=3D"t m0 =
x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0">160<span class=3D"ls0"> </span></div></di=
v><div class=3D"c x21 y3 w2 h3"><div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0=
 ls0 ws0"> Facultad de Filosof=C3=ADa, <span class=3D"_ _0"></span>Letras y=
 Ciencias de la Educaci=C3=B3n<span class=3D"_ _0"></span>. Universidad<spa=
n class=3D"_ _0"></span> T=C3=A9cnica de Manab=C3=AD. <span class=3D"_ _0">=
</span>ECUADOR. </div></div><div class=3D"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls=
0 ws0"> </div><div class=3D"t m0 x22 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">primer=
a <span class=3D"_ _7"> </span>de <span class=3D"_ _1"></span>todo <span cl=
ass=3D"_ _7"> </span><span class=3D"ff5">conocimiento <span class=3D"_ _1">=
 </span>ulterior=E2=80=9D. <span class=3D"_ _7"> </span></span>(D=C3=ADaz, =
<span class=3D"_ _1"> </span>2008)</div><div class=3D"c x6 yb w0 h0"><div c=
lass=3D"t m0 x23 he y83 ff4 fs6 fc0 sc0 ls0 ws0">4</div></div><div class=3D=
"t m0 x24 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">. <span class=3D"_ _7"> </span> <=
span class=3D"_ _1"></span>Esta <span class=3D"_ _7"> </span>apreciaci=C3=
=B3n <span class=3D"_ _1"> </span>considera </div><div class=3D"t m0 x22 h4=
 y37 ff4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _a"> </span>el <span cla=
ss=3D"_ _11"> </span>cuerpo <span class=3D"_ _a"> </span>humano <span class=
=3D"_ _11"> </span>ante <span class=3D"_ _a"> </span>una <span class=3D"_ _=
11"> </span>reacci=C3=B3n <span class=3D"_ _a"> </span>auditiva <span class=
=3D"_ _11"> </span>relacionada <span class=3D"_ _a"> </span>a <span class=
=3D"_ _11"> </span>los <span class=3D"_ _a"> </span>so<span class=3D"_ _0">=
</span>nidos </div><div class=3D"t m0 x22 h4 y38 ff4 fs0 fc0 sc0 ls0 ws0">m=
usicales <span class=3D"_ _11"> </span>puede <span class=3D"_ _11"> </span>=
acceder <span class=3D"_ _11"> </span>a <span class=3D"_ _11"> </span>manif=
estaciones <span class=3D"_ _a"> </span>de <span class=3D"_ _11"> </span>di=
ferentes <span class=3D"_ _11"> </span>maneras; <span class=3D"_ _11"> </sp=
an>a <span class=3D"_ _11"> </span>sonidos </div><div class=3D"t m0 x22 h4 =
y84 ff4 fs0 fc0 sc0 ls0 ws0">agradables <span class=3D"_ _b"> </span>mayor =
<span class=3D"_ _b"> </span>atenci=C3=B3n, <span class=3D"_ _b"> </span>ma=
yor <span class=3D"_ _e"> </span>relajaci=C3=B3n <span class=3D"_ _b"> </sp=
an>para <span class=3D"_ _b"> </span>escuchar <span class=3D"_ _b"> </span>=
permitiendo <span class=3D"_ _b"> </span>obtener </div><div class=3D"t m0 x=
22 h4 y85 ff4 fs0 fc0 sc0 ls0 ws0">mejores <span class=3D"_ _9"></span>bene=
ficios <span class=3D"_ _1"></span>d<span class=3D"_ _3"></span>e <span cla=
ss=3D"_ _9"></span>manera <span class=3D"_ _1"></span>consciente<span class=
=3D"_ _3"></span> <span class=3D"_ _9"></span>a <span class=3D"_ _1"></span=
>estos <span class=3D"_ _9"></span>agradables <span class=3D"_ _9"></span>s=
onidos <span class=3D"_ _9"></span>que <span class=3D"_ _9"></span>la <span=
 class=3D"_ _1"></span>m=C3=BAsi<span class=3D"_ _3"></span>ca </div><div c=
lass=3D"t m0 x22 h4 y86 ff4 fs0 fc0 sc0 ls0 ws0">proporciona eficazmente. <=
/div><div class=3D"t m0 x22 h4 y87 ff4 fs0 fc0 sc0 ls0 ws0">No <span class=
=3D"_ _e"> </span>se <span class=3D"_ _b"> </span>encuentra <span class=3D"=
_ _7"> </span>ninguna <span class=3D"_ _b"> </span>asignatura <span class=
=3D"_ _7"> </span>e<span class=3D"_ _0"></span>n <span class=3D"_ _e"> </sp=
an>el <span class=3D"_ _e"> </span>curr=C3=ADculum <span class=3D"_ _b"> </=
span>que <span class=3D"_ _e"> </span>tenga <span class=3D"_ _e"> </span>ta=
nto <span class=3D"_ _e"> </span>correl<span class=3D"_ _0"></span>ato </di=
v><div class=3D"t m0 x22 h4 y88 ff4 fs0 fc0 sc0 ls0 ws0">cotidiano <span cl=
ass=3D"_ _7"> </span>como <span class=3D"_ _1"></span>lo <span class=3D"_ _=
7"> </span>h<span class=3D"_ _3"></span>ace <span class=3D"_ _7"> </span>la=
 <span class=3D"_ _1"></span>m=C3=BAsica. <span class=3D"_ _7"> </span>Es <=
span class=3D"_ _7"> </span>u<span class=3D"_ _3"></span>n <span class=3D"_=
 _7"> </span>espacio <span class=3D"_ _1"></span>lleno <span class=3D"_ _7"=
> </span>de<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>potenc=
ialidades <span class=3D"_ _1"> </span>par<span class=3D"_ _0"></span>a <sp=
an class=3D"_ _7"> </span>el<span class=3D"_ _3"></span> </div><div class=
=3D"t m0 x22 h4 y89 ff4 fs0 fc0 sc0 ls0 ws0">aprendizaje de otras disciplin=
as (Watson, 2016).</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x15=
 he y8a ff4 fs6 fc0 sc0 ls0 ws0">5</div></div><div class=3D"t m0 x25 h4 y89=
 ff4 fs0 fc0 sc0 ls0 ws0"> Considerando lo manifestado por el </div><div cl=
ass=3D"t m0 x22 h4 y8b ff4 fs0 fc0 sc0 ls0 ws0">autor  se <span class=3D"_ =
_c"> </span>concuerda  en  que  el <span class=3D"_ _c"> </span>ser  humano=
  tiene  sus <span class=3D"_ _c"> </span>potencialidades  en  su  yo<span =
class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 y8c ff4 fs0 fc0 sc0 =
ls0 ws0">interior; en otras <span class=3D"_ _0"></span>palabras, la m=C3=
=BAsica no solame<span class=3D"_ _0"></span>nte rodea a la persona <span c=
lass=3D"_ _0"></span>si no que est=C3=A1 </div><div class=3D"t m0 x22 h4 y8=
d ff4 fs0 fc0 sc0 ls0 ws0">en <span class=3D"_ _b"> </span>su <span class=
=3D"_ _e"> </span>interior <span class=3D"_ _b"> </span>y <span class=3D"_ =
_b"> </span>como <span class=3D"_ _e"> </span>est=C3=A1 <span class=3D"_ _b=
"> </span>intr=C3=ADnsecamente <span class=3D"_ _b"> </span>relacionada <sp=
an class=3D"_ _b"> </span>en <span class=3D"_ _e"> </span>el <span class=3D=
"_ _b"> </span>aprendizaje <span class=3D"_ _b"> </span>p<span class=3D"_ _=
3"></span>uede </div><div class=3D"t m0 x22 h4 y8e ff4 fs0 fc0 sc0 ls0 ws0"=
>potenciarlo <span class=3D"_ _7"> </span>y <span class=3D"_ _e"> </span>nu=
trirlo <span class=3D"_ _e"> </span>en <span class=3D"_ _e"> </span>otras <=
span class=3D"_ _7"> </span>=C3=A1reas <span class=3D"_ _e"> </span>como <s=
pan class=3D"_ _e"> </span>matem=C3=A1ticas, <span class=3D"_ _7"> </span>l=
enguaje, <span class=3D"_ _e"> </span>idiomas, <span class=3D"_ _e"> </span=
>entre </div><div class=3D"t m0 x22 h4 y42 ff4 fs0 fc0 sc0 ls0 ws0">otras; =
sin mencionar <span class=3D"_ _0"></span>que el ritmo <span class=3D"_ _0"=
></span> ayuda a <span class=3D"_ _0"></span>ser consciente <span class=3D"=
_ _0"></span>de los <span class=3D"_ _0"></span>movimientos, lo q<span clas=
s=3D"_ _0"></span>ue </div><div class=3D"t m0 x22 h4 y8f ff4 fs0 fc0 sc0 ls=
0 ws0">es <span class=3D"_ _7"> </span>importante <span class=3D"_ _1"></sp=
an>para <span class=3D"_ _7"> </span>la <span class=3D"_ _1"></span>educaci=
=C3=B3n <span class=3D"_ _7"> </span>f=C3=ADsica; <span class=3D"_ _1"></sp=
an>adem=C3=A1s, <span class=3D"_ _7"> </span>en <span class=3D"_ _1"></span=
>una <span class=3D"_ _7"> </span>interpretaci=C3=B3n <span class=3D"_ _1">=
</span>musical <span class=3D"_ _7"> </span>se<span class=3D"_ _3"></span> =
</div><div class=3D"t m0 x22 h4 y90 ff4 fs0 fc0 sc0 ls0 ws0">debe valorar l=
os silencios y las pausas que son elementos primordiales. </div><div class=
=3D"t m0 x22 h4 y91 ff4 fs0 fc0 sc0 ls0 ws0">De  tal <span class=3D"_ _c"> =
</span>forma  que  uno  de <span class=3D"_ _c"> </span>los  primeros  ritm=
os <span class=3D"_ _c"> </span>fue  el  Jazz  que <span class=3D"_ _b"> </=
span>contribuye  a  la </div><div class=3D"t m0 x22 h4 y92 ff4 fs0 fc0 sc0 =
ls0 ws0">convivencia <span class=3D"_ _12"> </span>en <span class=3D"_ _12"=
> </span>los <span class=3D"_ _12"> </span>centros <span class=3D"_ _12"> <=
/span>educativos, <span class=3D"_ _12"> </span>as=C3=AD <span class=3D"_ _=
12"> </span>mismo <span class=3D"_ _12"> </span>logra <span class=3D"_ _12"=
> </span>desarrollar <span class=3D"_ _12"> </span>diversas </div><div clas=
s=3D"t m0 x22 h4 y93 ff4 fs0 fc0 sc0 ls0 ws0">habilidades <span class=3D"_ =
_7"> </span>como: <span class=3D"_ _7"> </span>el <span class=3D"_ _7"> </s=
pan>trabajo <span class=3D"_ _7"> </span>colaborativo, <span class=3D"_ _7"=
> </span>las <span class=3D"_ _7"> </span>habilidades <span class=3D"_ _7">=
 </span>y <span class=3D"_ _7"> </span>destrezas, <span class=3D"_ _7"> </s=
pan>potencia <span class=3D"_ _7"> </span>el </div><div class=3D"t m0 x22 h=
4 y94 ff4 fs0 fc0 sc0 ls0 ws0">acto <span class=3D"_ _7"> </span>educativo =
<span class=3D"_ _1"></span>y <span class=3D"_ _7"> </span>pri<span class=
=3D"_ _3"></span>ncipalmente <span class=3D"_ _1"> </span>nutre <span class=
=3D"_ _7"> </span>el <span class=3D"_ _1"> </span>verdadero <span class=3D"=
_ _7"> </span>aprendizaje <span class=3D"_ _1"> </span>en <span class=3D"_ =
_7"> </span>otras <span class=3D"_ _1"> </span>=C3=A1reas <span class=3D"_ =
_7"> </span>del<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4=
 y95 ff4 fs0 fc0 sc0 ls0 ws0">conocimiento.  </div><div class=3D"t m0 x22 h=
4 y96 ff4 fs0 fc0 sc0 ls0 ws0">(Loaiza, 2014)</div><div class=3D"c x6 yb w0=
 h0"><div class=3D"t m0 x26 he y1a ff4 fs6 fc0 sc0 ls0 ws0">6</div></div><d=
iv class=3D"t m0 x27 h4 y96 ff4 fs0 fc0 sc0 ls0 ws0"> en <span class=3D"_ _=
0"></span>un <span class=3D"_ _0"></span>art=C3=ADculo manifiesta <span cla=
ss=3D"_ _0"></span>que <span class=3D"_ _0"></span>ense=C3=B1ar arte <span =
class=3D"_ _0"></span>es importante <span class=3D"_ _0"></span>porque que =
</div><div class=3D"t m0 x22 h4 y97 ff4 fs0 fc0 sc0 ls0 ws0">hay <span clas=
s=3D"_ _1"> </span>cosas <span class=3D"_ _1"> </span>esenciale<span class=
=3D"_ _0"></span>s <span class=3D"_ _1"> </span>que <span class=3D"_ _1"> <=
/span>no<span class=3D"_ _0"></span> <span class=3D"_ _1"></span>se <span c=
lass=3D"_ _1"> </span>olvidan<span class=3D"_ _0"></span> <span class=3D"_ =
_1"></span>como <span class=3D"_ _1"> </span>observar,<span class=3D"_ _0">=
</span> <span class=3D"_ _1"></span>sentir, <span class=3D"_ _1"> </span>ex=
presar, <span class=3D"_ _7"> </span>imagin<span class=3D"_ _3"></span>ar, =
</div><div class=3D"t m0 x22 h4 y98 ff4 fs0 fc0 sc0 ls0 ws0">pensar,  recor=
dar,  de  tal <span class=3D"_ _f"> </span>manera  que  conlleva  a <span c=
lass=3D"_ _f"> </span>un  desarrollo  intelectual  como </div><div class=3D=
"t m0 x22 h4 y99 ff4 fs0 fc0 sc0 ls0 ws0">recompensa <span class=3D"_ _e"> =
</span>y <span class=3D"_ _e"> </span>que <span class=3D"_ _e"> </span>los =
<span class=3D"_ _e"> </span>ni=C3=B1os <span class=3D"_ _e"> </span>se <sp=
an class=3D"_ _e"> </span>desenvuelvan <span class=3D"_ _7"> </span>en <spa=
n class=3D"_ _e"> </span>un <span class=3D"_ _e"> </span>ambiente <span cla=
ss=3D"_ _e"> </span>cultural <span class=3D"_ _e"> </span>y <span class=3D"=
_ _e"> </span>afectivo </div><div class=3D"t m0 x22 h4 y9a ff4 fs0 fc0 sc0 =
ls0 ws0">donde <span class=3D"_ _7"> </span>disfruten <span class=3D"_ _1">=
 </span>las <span class=3D"_ _7"> </span>manifestaciones <span class=3D"_ _=
7"> </span>art=C3=ADsticas <span class=3D"_ _1"> </span>con <span class=3D"=
_ _7"> </span>respeto <span class=3D"_ _7"> </span>ante <span class=3D"_ _1=
"> </span>las <span class=3D"_ _7"> </span>diversidades <span class=3D"_ _1=
"> </span>y </div><div class=3D"t m0 x22 h4 y9b ff4 fs0 fc0 sc0 ls0 ws0">so=
bre todo a expresarse con naturalidad.  </div><div class=3D"t m0 x22 h4 y76=
 ff4 fs0 fc0 sc0 ls0 ws0">Con <span class=3D"_ _9"></span>todos <span class=
=3D"_ _9"></span> <span class=3D"_ _9"></span>estos <span class=3D"_ _9"></=
span>as<span class=3D"_ _0"></span>pectos <span class=3D"_ _9"></span>cabe =
<span class=3D"_ _9"></span>indicar <span class=3D"_ _9"></span>que <span c=
lass=3D"_ _9"></span>en <span class=3D"_ _1"></span>base <span class=3D"_ _=
8"></span>a<span class=3D"_ _0"></span> <span class=3D"_ _9"></span>la <spa=
n class=3D"_ _9"></span>inclusi=C3=B3<span class=3D"_ _0"></span>n <span cl=
ass=3D"_ _9"></span>de <span class=3D"_ _9"></span>la <span class=3D"_ _9">=
</span>ense=C3=B1anza </div><div class=3D"t m0 x22 h4 y77 ff4 fs0 fc0 sc0 l=
s0 ws0">de <span class=3D"_ _a"> </span>arte <span class=3D"_ _f"> </span>e=
n <span class=3D"_ _f"> </span>la <span class=3D"_ _a"> </span>m=C3=BAsica =
<span class=3D"_ _f"> </span>dentro <span class=3D"_ _a"> </span>de <span c=
lass=3D"_ _f"> </span>un <span class=3D"_ _f"> </span>programa<span class=
=3D"_ _0"></span> <span class=3D"_ _f"> </span>escolar; <span class=3D"_ _a=
"> </span>los <span class=3D"_ _f"> </span>ni=C3=B1os <span class=3D"_ _a">=
 </span>se <span class=3D"_ _f"> </span>muestran </div><div class=3D"t m0 x=
22 h4 y78 ff4 fs0 fc0 sc0 ls0 ws0">interesados <span class=3D"_ _a"> </span=
>por <span class=3D"_ _f"> </span>aprender <span class=3D"_ _f"> </span>a <=
span class=3D"_ _a"> </span>desarrolla<span class=3D"_ _3"></span>r <span c=
lass=3D"_ _a"> </span>sus <span class=3D"_ _f"> </span>habilidades <span cl=
ass=3D"_ _f"> </span>cognitivas, <span class=3D"_ _a"> </span>motrices <spa=
n class=3D"_ _f"> </span>de </div><div class=3D"t m0 x22 h4 y9c ff4 fs0 fc0=
 sc0 ls0 ws0">actividades <span class=3D"_ _5"> </span>art=C3=ADsticas <spa=
n class=3D"_ _13"> </span>como <span class=3D"_ _5"> </span>por <span class=
=3D"_ _13"> </span>ejemplo <span class=3D"_ _13"> </span>la <span class=3D"=
_ _5"> </span>m=C3=BAsica, <span class=3D"_ _13"> </span>el <span class=3D"=
_ _5"> </span>teatro, <span class=3D"_ _13"> </span>los <span class=3D"_ _5=
"> </span>rincones </div><div class=3D"t m0 x22 h4 y9d ff4 fs0 fc0 sc0 ls0 =
ws0">pedag=C3=B3gicos <span class=3D"_ _b"> </span>musicales <span class=3D=
"_ _c"> </span>y <span class=3D"_ _b"> </span>con <span class=3D"_ _b"> </s=
pan>ello <span class=3D"_ _c"> </span>afloran <span class=3D"_ _b"> </span>=
sus <span class=3D"_ _b"> </span>expresiones <span class=3D"_ _c"> </span>a=
rt=C3=ADsticas <span class=3D"_ _b"> </span>y <span class=3D"_ _b"> </span>=
musicales </div><div class=3D"t m0 x22 h4 y9e ff4 fs0 fc0 sc0 ls0 ws0">prop=
ias <span class=3D"_ _d"> </span>y <span class=3D"_ _12"> </span>ajenas <sp=
an class=3D"_ _d"> </span>ayud=C3=A1ndoles <span class=3D"_ _14"> </span>a =
<span class=3D"_ _d"> </span>pre<span class=3D"_ _0"></span>sentarse <span =
class=3D"_ _d"> </span>y <span class=3D"_ _14"> </span>expresa<span class=
=3D"_ _0"></span>r <span class=3D"_ _d"> </span>lo <span class=3D"_ _14"> <=
/span>que <span class=3D"_ _14"> </span>sienten <span class=3D"_ _12"> </sp=
an>con<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 y9f ff4 =
fs0 fc0 sc0 ls0 ws0">naturalidad sin poses <span class=3D"_ _0"></span>d=C3=
=A1ndole confianza en <span class=3D"_ _0"></span>s=C3=AD mismo; es decir <=
span class=3D"_ _0"></span>siendo ellos originales </div><div class=3D"t m0=
 x22 h4 ya0 ff4 fs0 fc0 sc0 ls0 ws0">en sus manifestaciones. </div><div cla=
ss=3D"t m0 x22 h4 y7d ff4 fs0 fc0 sc0 ls0 ws0">La <span class=3D"_ _0"></sp=
an>educaci=C3=B3n <span class=3D"_ _0"></span>musical <span class=3D"_ _0">=
</span>se <span class=3D"_ _8"></span>ha <span class=3D"_ _0"></span>consti=
tuido <span class=3D"_ _0"></span>en <span class=3D"_ _0"></span>los <span =
class=3D"_ _0"></span>=C3=BAltimos <span class=3D"_ _8"></span>a=C3=B1os co=
mo <span class=3D"_ _8"></span>uno <span class=3D"_ _0"></span>de <span cla=
ss=3D"_ _0"></span>los <span class=3D"_ _0"></span>pilares </div><div class=
=3D"t m0 x22 h4 y7e ff4 fs0 fc0 sc0 ls0 ws0">para su <span class=3D"_ _0"><=
/span>desarrollo. <span class=3D"_ _0"></span>Con <span class=3D"_ _0"></sp=
an>el objetivo <span class=3D"_ _0"></span>de <span class=3D"_ _0"></span>r=
eflexionar <span class=3D"_ _0"></span>sobre el <span class=3D"_ _0"></span=
>papel <span class=3D"_ _0"></span>que la <span class=3D"_ _0"></span>m=C3=
=BAsica <span class=3D"_ _0"></span>puede </div><div class=3D"c x6 yb w0 h0=
"><div class=3D"t m0 x22 h2 y58 ff1 fs0 fc0 sc0 ls0 ws0">                  =
                              </div></div><div class=3D"t m0 x28 h2 y58 ff1=
 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m=
0 x22 hb y2d ff1 fs4 fc0 sc0 ls0 ws0">4</div></div><div class=3D"t m0 x29 h=
4 y2e ff1 fs1 fc0 sc0 ls0 ws0">D=C3=ADaz, L. (2008)<span class=3D"_ _0"></s=
pan>. L<span class=3D"_ _3"></span>a M=C3=BAsi<span class=3D"_ _0"></span>c=
a como parte del ap<span class=3D"_ _0"></span>redizaje educativo<span clas=
s=3D"ls1">. </span><span class=3D"ff7">Rev<span class=3D"_ _0"></span>ista =
de musica culta<span class=3D"_ _0"></span>.</span> </div><div class=3D"c x=
6 yb w0 h0"><div class=3D"t m0 x22 hb ya1 ff1 fs4 fc0 sc0 ls0 ws0">5</div><=
/div><div class=3D"t m0 x29 h4 y2f ff1 fs1 fc0 sc0 ls0 ws0">Watson, <span c=
lass=3D"_ _15"> </span>G. <span class=3D"_ _15"> </span>(10 <span class=3D"=
_ _15"> </span>de <span class=3D"_ _15"> </span>Marzo<span class=3D"_ _0"><=
/span> <span class=3D"_ _15"> </span>de <span class=3D"_ _15"> </span>2016)=
. <span class=3D"_ _15"> </span>Educaci=C3=B3n <span class=3D"_ _15"> </spa=
n>202<span class=3D"_ _0"></span>0. <span class=3D"_ _15"> </span>Obtenido =
<span class=3D"_ _15"> </span>de <span class=3D"_ _15"> </span>Educaci=C3=
=B3n <span class=3D"_ _15"> </span>2020: </div><div class=3D"t m0 x22 h4 y3=
1 ff1 fs1 fc0 sc0 ls0 ws0">http://educacion2020<span class=3D"_ _0"></span>=
.cl/noticias/musica<span class=3D"_ _0"></span>-una-aliada-<span class=3D"l=
s2">en</span>-la-formacion-<span class=3D"ls1">de</span>-nuestros<span clas=
s=3D"_ _0"></span>-ninos-ninas-y-jovenes<span class=3D"_ _0"></span> </div>=
<div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 hb y5b ff1 fs4 fc0 sc0 =
ls0 ws0">6</div></div><div class=3D"t m0 x29 h4 y32 ff1 fs1 fc0 sc0 ls0 ws0=
">Loaiza, C. (201<span class=3D"_ _0"></span>4). =C2=BFPor qu=C3=A9 ense=C3=
=B1ar Arte en la Escuela?<span class=3D"_ _0"></span> Colima: Sentidos crea=
tivo<span class=3D"_ _0"></span>s.<span class=3D"_ _0"></span> </div></div>=
<div class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000=
,1.000000,0.000000,0.000000]}"></div></div>
<div id=3D"pf5" class=3D"pf w0 h0" data-page-no=3D"5"><div class=3D"pc pc5 =
w0 h0"><img class=3D"bi x0 y0 w1 hd" alt=3D"" src=3D"data:image/png;base64,=
iVBORw0KGgoAAAANSUhEUgAAA/0AAAVwCAIAAACRo6gLAAAACXBIWXMAABYlAAAWJQFJUiTwAAA=
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D9AACA7gcAAHQ/AACg+wEAAN0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAg=
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0P0AAIDuBwAAdD8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAAuh8AAND9AAC=
A7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAA=
DQ/QAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AADofgAAQPcDAAC6HwAA0P0AA=
IDuBwAAdD8AAKD7AQAA3Q8AALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwCA7gcA=
AHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QA=
AgO4HAAB0PwAAoPsBAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0AAIDuBw=
AAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9A=
ACA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4H=
AAB0PwAAoPsBAADdDwAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8=
AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND9AACA7g=
cAAHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AADQ/QAAwIpiBQAAc=
Mb7+Zi4+9v6hAAA8NPndZ/35d3zAQCA9el+AADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3=
AwAAuh8AAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wPwbbe=
OBQAAAAAG+VtPY0dRBADeDwAAeD8AAOD9AACA9wMAAN4PAADeDwAAeD8AAOD9AACA9wMAAN4PAA=
B4PwAA4P0AAID3AwCA9wMAAN4PAAB4PwAA8BGjIiWJwvO1oAAAAABJRU5ErkJggg=3D=3D"><di=
v class=3D"t m0 x2 h5 y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=
=3D"_ _0"></span>nosis. Revista de Filosof=C3=ADa, Let<span class=3D"_ _0">=
</span>ras y Ciencias de la Educaci=C3=B3n <span class=3D"_ _0"></span><spa=
n class=3D"ls1">                              <span class=3D"_ _3"></span> =
    <span class=3D"ls0">            ISSN </span>2588<span class=3D"ls0">-05=
78 </span></span></div><div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0=
">M=C3=9ASICA COMO MEDIO <span class=3D"_ _0"></span>DE ENSE=C3=91<span cla=
ss=3D"_ _0"></span>ANZA-APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91=
OS<span class=3D"_ _0"></span><span class=3D"fs6"> </span></div><div class=
=3D"t m0 x2 h2 y5e ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2=
 h3"><div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o =
2020.<span class=3D"_ _0"></span> N=C3=BAmero 2, Abril<span class=3D"_ _0">=
</span>-Junio </div></div><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x=
5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0">161<span class=3D"ls0"> </span></div></div=
><div class=3D"t m0 x2 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"=
t m0 x2 h4 y5f ff4 fs0 fc0 sc0 ls0 ws0">cumplir <span class=3D"_ _7"> </spa=
n>en <span class=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>adquisici=
=C3=B3n <span class=3D"_ _e"> </span>de <span class=3D"_ _7"> </span>la <sp=
an class=3D"_ _e"> </span>competencia <span class=3D"_ _e"> </span>intercul=
tural. <span class=3D"_ _e"> </span>(P=C3=A9rez, <span class=3D"_ _7"> </sp=
an>2014)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2a he ya2 ff=
4 fs6 fc0 sc0 ls0 ws0">7</div></div><div class=3D"t m0 x2b h4 y5f ff4 fs0 f=
c0 sc0 ls0 ws0"> <span class=3D"_ _7"> </span>Esto <span class=3D"_ _e"> </=
span>se </div><div class=3D"t m0 x2 h4 y60 ff4 fs0 fc0 sc0 ls0 ws0">explica=
 <span class=3D"_ _b"> </span>porque <span class=3D"_ _7"> </span>la <span =
class=3D"_ _b"> </span>m=C3=BAsica <span class=3D"_ _e"> </span>permite <sp=
an class=3D"_ _b"> </span>reflexionar <span class=3D"_ _e"> </span>sobre <s=
pan class=3D"_ _b"> </span>el <span class=3D"_ _e"> </span>rol <span class=
=3D"_ _e"> </span>que <span class=3D"_ _b"> </span>tiene <span class=3D"_ _=
e"> </span>dentro <span class=3D"_ _b"> </span>de <span class=3D"_ _e"> </s=
pan>la </div><div class=3D"t m0 x2 h4 y61 ff4 fs0 fc0 sc0 ls0 ws0">sociedad=
 <span class=3D"_ _e"> </span>y <span class=3D"_ _e"> </span>principalmente=
 <span class=3D"_ _e"> </span>dentro <span class=3D"_ _e"> </span>de<span c=
lass=3D"_ _0"></span> <span class=3D"_ _7"> </span>la<span class=3D"_ _0"><=
/span> <span class=3D"_ _e"> </span>educaci=C3=B3n <span class=3D"_ _e"> </=
span>por <span class=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>inter=
relaci=C3=B3n <span class=3D"_ _b"> </span>que <span class=3D"_ _7"> </span=
>existe </div><div class=3D"t m0 x2 h4 y62 ff4 fs0 fc0 sc0 ls0 ws0">dentro =
<span class=3D"_ _b"> </span>del <span class=3D"_ _7"> </span>aula <span cl=
ass=3D"_ _b"> </span>de <span class=3D"_ _e"> </span>clases <span class=3D"=
_ _b"> </span>cuando <span class=3D"_ _7"> </span>se <span class=3D"_ _b"> =
</span>escucha <span class=3D"_ _e"> </span>m=C3=BAsica; <span class=3D"_ _=
b"> </span>los <span class=3D"_ _7"> </span>sonidos <span class=3D"_ _b"> <=
/span>musicales <span class=3D"_ _e"> </span>sin </div><div class=3D"t m0 x=
2 h4 y39 ff4 fs0 fc0 sc0 ls0 ws0">importar la cultura de donde provengan si=
mplemente son agradables al o=C3=ADdo. </div><div class=3D"t m0 x2 h4 y7 ff=
4 fs0 fc0 sc0 ls0 ws0">La <span class=3D"_ _b"> </span>m=C3=BAsica <span cl=
ass=3D"_ _b"> </span>en <span class=3D"_ _c"> </span>la <span class=3D"_ _b=
"> </span>p<span class=3D"_ _0"></span>rovincia <span class=3D"_ _b"> </spa=
n>ha <span class=3D"_ _b"> </span>tenido  grandes <span class=3D"_ _b"> </s=
pan>cambios <span class=3D"_ _b"> </span>que <span class=3D"_ _c"> </span>p=
ermiten <span class=3D"_ _b"> </span>conocer <span class=3D"_ _c"> </span>l=
a </div><div class=3D"t m0 x2 h4 y8 ff4 fs0 fc0 sc0 ls0 ws0">cultura <span =
class=3D"_ _7"> </span>desde <span class=3D"_ _e"> </span>peque=C3=B1os <sp=
an class=3D"_ _e"> </span>pueblos <span class=3D"_ _e"> </span>hasta <span =
class=3D"_ _e"> </span>grandes <span class=3D"_ _e"> </span>ciudades, <span=
 class=3D"_ _e"> </span>el <span class=3D"_ _7"> </span>talento <span class=
=3D"_ _e"> </span>manabita <span class=3D"_ _e"> </span>ha </div><div class=
=3D"t m0 x2 h4 y64 ff4 fs0 fc0 sc0 ls0 ws0">progresado <span class=3D"_ _e"=
> </span>y <span class=3D"_ _e"> </span>existen <span class=3D"_ _e"> </spa=
n>artistas <span class=3D"_ _e"> </span>destacados, <span class=3D"_ _e"> <=
/span>los <span class=3D"_ _e"> </span>docentes <span class=3D"_ _e"> </spa=
n>son <span class=3D"_ _e"> </span>tambi=C3=A9n <span class=3D"_ _e"> </spa=
n>los <span class=3D"_ _e"> </span>mentores </div><div class=3D"t m0 x2 h4 =
y65 ff4 fs0 fc0 sc0 ls0 ws0">para <span class=3D"_ _b"> </span>utilizar <sp=
an class=3D"_ _b"> </span>la <span class=3D"_ _b"> </span>m=C3=BAsica <span=
 class=3D"_ _b"> </span>como <span class=3D"_ _b"> </span>una <span class=
=3D"_ _b"> </span>herramienta <span class=3D"_ _b"> </span>fundamental, <sp=
an class=3D"_ _b"> </span>para <span class=3D"_ _b"> </span>motivar <span c=
lass=3D"_ _b"> </span>a <span class=3D"_ _b"> </span>los </div><div class=
=3D"t m0 x2 h4 y66 ff4 fs0 fc0 sc0 ls0 ws0">estudiantes <span class=3D"_ _7=
"> </span>en <span class=3D"_ _1"> </span>la <span class=3D"_ _7"> </span>c=
omprensi=C3=B3n <span class=3D"_ _7"> </span>y <span class=3D"_ _1"> </span=
>memorizaci=C3=B3n <span class=3D"_ _7"> </span>de <span class=3D"_ _7"> </=
span>los <span class=3D"_ _1"> </span>contenidos <span class=3D"_ _7"> </sp=
an>acad=C3=A9micos <span class=3D"_ _7"> </span>que </div><div class=3D"t m=
0 x2 h4 y67 ff4 fs0 fc0 sc0 ls0 ws0">contribuye a la integraci=C3=B3n socia=
l.  </div><div class=3D"t m0 x2 h4 ya3 ff4 fs0 fc0 sc0 ls0 ws0">En <span cl=
ass=3D"_ _9"></span>Ecuador <span class=3D"_ _9"></span>se <span class=3D"_=
 _9"></span>busca <span class=3D"_ _9"></span>fortalecer <span class=3D"_ _=
1"></span>la <span class=3D"_ _8"></span>m<span class=3D"_ _0"></span>=C3=
=BAsica <span class=3D"_ _9"></span>a <span class=3D"_ _9"></span>trav=C3=
=A9s <span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>varios <spa=
n class=3D"_ _9"></span>medios <span class=3D"_ _9"></span>y <span class=3D=
"_ _9"></span>colocarlos <span class=3D"_ _9"></span>al </div><div class=3D=
"t m0 x2 h4 ya4 ff4 fs0 fc0 sc0 ls0 ws0">mismo <span class=3D"_ _9"></span>=
nivel <span class=3D"_ _9"></span>que <span class=3D"_ _9"></span>los <span=
 class=3D"_ _9"></span>extranjeros, <span class=3D"_ _9"></span>por <span c=
lass=3D"_ _9"></span>tal <span class=3D"_ _9"></span>motivo <span class=3D"=
_ _1"></span>los <span class=3D"_ _8"></span>docentes <span class=3D"_ _9">=
</span>deben <span class=3D"_ _1"></span>involucrar <span class=3D"_ _8"></=
span>a <span class=3D"_ _9"></span>los </div><div class=3D"t m0 x2 h4 ya5 f=
f4 fs0 fc0 sc0 ls0 ws0">estudiantes <span class=3D"_ _14"> </span>a <span c=
lass=3D"_ _14"> </span>este <span class=3D"_ _12"> </span>medio <span class=
=3D"_ _d"> </span>cultural <span class=3D"_ _14"> </span>importante <span c=
lass=3D"_ _12"> </span>para <span class=3D"_ _d"> </span>desarrollar <span =
class=3D"_ _14"> </span>habilidades <span class=3D"_ _12"> </span>y </div><=
div class=3D"t m0 x2 h4 ya6 ff4 fs0 fc0 sc0 ls0 ws0">destrezas en este arte=
.  </div><div class=3D"t m0 x2 h4 y14 ff4 fs0 fc0 sc0 ls0 ws0">Ya  (Malbr=
=C3=A1n, <span class=3D"_ _f"> </span>2011)</div><div class=3D"c x6 yb w0 h=
0"><div class=3D"t m0 xd he ya7 ff4 fs6 fc0 sc0 ls0 ws0">8</div></div><div =
class=3D"t m0 x2c h4 y14 ff4 fs0 fc0 sc0 ls0 ws0">  propone <span class=3D"=
_ _f"> </span>una <span class=3D"_ _f"> </span>metodolog=C3=ADa <span class=
=3D"_ _f"> </span>pedag=C3=B3gica  musical <span class=3D"_ _f"> </span> <s=
pan class=3D"_ _f"> </span>ideada  por  </div><div class=3D"t m0 x2 h4 y45 =
ff4 fs0 fc0 sc0 ls0 ws0">algunos  compositores,  pedagogos  y  psic=C3=B3lo=
gos  a  partir  d<span class=3D"_ _3"></span>el  siglo  XIX  (que  e<span c=
lass=3D"_ _3"></span>stos </div><div class=3D"t m0 x2 h4 ya8 ff4 fs0 fc0 sc=
0 ls0 ws0">tambi=C3=A9n <span class=3D"_ _1"></span>se <span class=3D"_ _1"=
></span>basaron <span class=3D"_ _1"></span>en <span class=3D"_ _1"></span>=
autores <span class=3D"_ _1"></span>como <span class=3D"_ _1"></span>Rousse=
au, <span class=3D"_ _1"></span>Pestalozzi, <span class=3D"_ _1"></span>Fro=
ebel <span class=3D"_ _1"></span>y <span class=3D"_ _1"></span>Herbart) <sp=
an class=3D"_ _1"></span>que </div><div class=3D"t m0 x2 h4 ya9 ff4 fs0 fc0=
 sc0 ls0 ws0">establecieron <span class=3D"_ _8"></span>las <span class=3D"=
_ _9"></span>bases <span class=3D"_ _9"></span>sobre <span class=3D"_ _8"><=
/span>el <span class=3D"_ _9"></span>conocimiento <span class=3D"_ _9"></sp=
an>del <span class=3D"_ _8"></span>desarrollo <span class=3D"_ _9"></span>d=
e <span class=3D"_ _8"></span>la <span class=3D"_ _9"></span>musicalidad <s=
pan class=3D"_ _9"></span>en <span class=3D"_ _8"></span>el </div><div clas=
s=3D"t m0 x2 h4 yaa ff4 fs0 fc0 sc0 ls0 ws0">ser <span class=3D"_ _7"> </sp=
an>humano <span class=3D"_ _7"> </span>por <span class=3D"_ _7"> </span>el =
<span class=3D"_ _1"> </span> <span class=3D"_ _7"> </span>papel, <span cla=
ss=3D"_ _7"> </span>cada <span class=3D"_ _7"> </span>vez <span class=3D"_ =
_7"> </span>m<span class=3D"_ _3"></span>=C3=A1s <span class=3D"_ _7"> </sp=
an>determinante <span class=3D"_ _7"> </span>la <span class=3D"_ _1"></span=
>m=C3=BAsica <span class=3D"_ _7"> </span>en <span class=3D"_ _7"> </span>l=
os <span class=3D"_ _7"> </span>procesos </div><div class=3D"t m0 x2 h4 y19=
 ff4 fs0 fc0 sc0 ls0 ws0">educativos <span class=3D"_ _7"> </span>en <span =
class=3D"_ _e"> </span>Educaci=C3=B3n <span class=3D"_ _7"> </span>I<span c=
lass=3D"_ _0"></span>nfantil; <span class=3D"_ _7"> </span>adem=C3=A1s, <sp=
an class=3D"_ _7"> </span> <span class=3D"_ _e"> </span>(Serrada, <span cla=
ss=3D"_ _e"> </span>2007)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t=
 m0 x2d he y95 ff4 fs6 fc0 sc0 ls0 ws0">9</div></div><div class=3D"t m0 x18=
 h4 y19 ff4 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _7"> </span>indica <span=
 class=3D"_ _e"> </span> <span class=3D"_ _e"> </span>que <span class=3D"_ =
_7"> </span>muchos </div><div class=3D"t m0 x2 h4 yab ff4 fs0 fc0 sc0 ls0 w=
s0">investigadores <span class=3D"_ _0"></span>han <span class=3D"_ _0"></s=
pan>estudiado <span class=3D"_ _0"></span>la <span class=3D"_ _0"></span>im=
portancia y <span class=3D"_ _0"></span>el <span class=3D"_ _0"></span>valo=
r <span class=3D"_ _0"></span>for<span class=3D"_ _0"></span>mativo <span c=
lass=3D"_ _0"></span>que <span class=3D"_ _0"></span>tiene <span class=3D"_=
 _0"></span>la m=C3=BAsica </div><div class=3D"t m0 x2 h4 yac ff4 fs0 fc0 s=
c0 ls0 ws0">en las personas, <span class=3D"_ _0"></span>sobre todo en <spa=
n class=3D"_ _0"></span>la primera etapa de <span class=3D"_ _0"></span>edu=
caci=C3=B3n infantil, no <span class=3D"_ _0"></span>solo aporta </div><div=
 class=3D"t m0 x2 h4 yad ff4 fs0 fc0 sc0 ls0 ws0">conocimientos <span class=
=3D"_ _1"> </span>y <span class=3D"_ _7"> </span>des<span class=3D"_ _3"></=
span>arrollo <span class=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>e=
l <span class=3D"_ _1"></span> <span class=3D"_ _1"> </span>ser <span class=
=3D"_ _7"> </span>h<span class=3D"_ _3"></span>umano <span class=3D"_ _1"><=
/span>sino <span class=3D"_ _7"> </span>que <span class=3D"_ _1"></span>lo =
<span class=3D"_ _1"></span>hace <span class=3D"_ _1"> </span>libre, <span =
class=3D"_ _7"> </span>inteligen<span class=3D"_ _3"></span>te <span class=
=3D"_ _1"> </span>y </div><div class=3D"t m0 x2 h4 yae ff4 fs0 fc0 sc0 ls0 =
ws0">solidario. </div><div class=3D"t m0 x2 h4 y4b ff4 fs0 fc0 sc0 ls0 ws0"=
>DESARROLLO </div><div class=3D"t m0 x2 h4 yaf ff4 fs0 fc0 sc0 ls0 ws0">Hay=
 <span class=3D"_ _0"></span>que <span class=3D"_ _8"></span>considerar <sp=
an class=3D"_ _8"></span>a <span class=3D"_ _0"></span>la <span class=3D"_ =
_8"></span>m=C3=BAsica <span class=3D"_ _8"></span>como <span class=3D"_ _0=
"></span>una <span class=3D"_ _8"></span>fuente <span class=3D"_ _8"></span=
>important=C3=ADsima <span class=3D"_ _0"></span>de <span class=3D"_ _8"></=
span>est=C3=ADmulos <span class=3D"_ _8"></span>en <span class=3D"_ _0"></s=
pan>el </div><div class=3D"t m0 x2 h4 yb0 ff4 fs0 fc0 sc0 ls0 ws0">plano <s=
pan class=3D"_ _f"> </span>de <span class=3D"_ _a"> </span>la <span class=
=3D"_ _f"> </span>percepci=C3=B3n <span class=3D"_ _f"> </span>y <span clas=
s=3D"_ _a"> </span>una <span class=3D"_ _f"> </span>gran <span class=3D"_ _=
f"> </span>h<span class=3D"_ _0"></span>erramienta <span class=3D"_ _f"> </=
span>potenciadora <span class=3D"_ _a"> </span>de  la <span class=3D"_ _a">=
 </span>capacidad </div><div class=3D"t m0 x2 h4 yb1 ff4 fs0 fc0 sc0 ls0 ws=
0">expresiva. <span class=3D"_ _b"> </span>En <span class=3D"_ _e"> </span>=
ese <span class=3D"_ _b"> </span>sentido <span class=3D"_ _b"> </span>(L=C3=
=B3pez, <span class=3D"_ _e"> </span>2010)</div><div class=3D"c x6 yb w0 h0=
"><div class=3D"t m0 x2e he y77 ff4 fs6 fc0 sc0 ls1 ws0">10</div></div><div=
 class=3D"t m0 x2f h4 yb1 ff4 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _b"> <=
/span>se=C3=B1ala <span class=3D"_ _e"> </span>que, <span class=3D"_ _b"> <=
/span>en <span class=3D"_ _b"> </span>el <span class=3D"_ _e"> </span>plano=
 <span class=3D"_ _b"> </span>intelectual, <span class=3D"_ _e"> </span>la =
</div><div class=3D"t m0 x2 h4 yb2 ff4 fs0 fc0 sc0 ls0 ws0">m=C3=BAsica <sp=
an class=3D"_ _8"></span>es <span class=3D"_ _9"></span>donde <span class=
=3D"_ _8"></span>el <span class=3D"_ _8"></span>ni=C3=B1o <span class=3D"_ =
_9"></span>puede <span class=3D"_ _8"></span>expresar <span class=3D"_ _8">=
</span>una <span class=3D"_ _9"></span>serie <span class=3D"_ _8"></span>de=
 <span class=3D"_ _8"></span>senti<span class=3D"_ _0"></span>mientos <span=
 class=3D"_ _8"></span>y <span class=3D"_ _9"></span>emociones. <span class=
=3D"_ _0"></span>Es </div><div class=3D"t m0 x2 h4 y50 ff4 fs0 fc0 sc0 ls0 =
ws0">decir, <span class=3D"_ _1"></span>la <span class=3D"_ _9"></span>m=C3=
=BAsica <span class=3D"_ _1"></span>en <span class=3D"_ _1"></span>la <span=
 class=3D"_ _9"></span>ense=C3=B1anza <span class=3D"_ _1"></span>potencia =
<span class=3D"_ _9"></span>diversas <span class=3D"_ _1"></span>capacidade=
s <span class=3D"_ _1"></span>entre <span class=3D"_ _9"></span>el <span cl=
ass=3D"_ _1"></span>alumnado </div><div class=3D"t m0 x2 h4 y51 ff4 fs0 fc0=
 sc0 ls0 ws0">como <span class=3D"_ _14"> </span>la <span class=3D"_ _14"> =
</span>concentraci=C3=B3n, <span class=3D"_ _12"> </span>la <span class=3D"=
_ _d"> </span>atenci=C3=B3n, <span class=3D"_ _14"> </span>el <span class=
=3D"_ _14"> </span>autocontrol, <span class=3D"_ _12"> </span>adem=C3=A1s <=
span class=3D"_ _d"> </span>de <span class=3D"_ _14"> </span>la <span class=
=3D"_ _12"> </span>expresi<span class=3D"_ _3"></span>=C3=B3n </div><div cl=
ass=3D"t m0 x2 h4 y52 ff4 fs0 fc0 sc0 ls0 ws0">anteriormente citada. </div>=
<div class=3D"t m0 x2 h4 yb3 ff4 fs0 fc0 sc0 ls0 ws0">Precisamente el tiemp=
o espec=C3=ADfico dedicado a m=C3=BAsica en<span class=3D"_ _0"></span> Edu=
caci=C3=B3n Infantil permite a </div><div class=3D"t m0 x2 h4 yb4 ff4 fs0 f=
c0 sc0 ls0 ws0">los <span class=3D"_ _11"> </span>ni=C3=B1os <span class=3D=
"_ _11"> </span>disfrutar <span class=3D"_ _11"> </span>cantando, <span cla=
ss=3D"_ _11"> </span>bailando <span class=3D"_ _11"> </span>y <span class=
=3D"_ _d"> </span>tocando <span class=3D"_ _a"> </span>instru<span class=3D=
"_ _0"></span>mentos, <span class=3D"_ _11"> </span>en <span class=3D"_ _11=
"> </span>definitiva, </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0=
 x2 h2 y56 ff1 fs0 fc0 sc0 ls0 ws0">                                       =
         </div></div><div class=3D"t m0 x1d h2 y56 ff1 fs0 fc0 sc0 ls0 ws0"=
> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 hb yb5 ff1 fs4 f=
c0 sc0 ls0 ws0">7</div></div><div class=3D"t m0 x1e h4 yb6 ff1 fs1 fc0 sc0 =
ls0 ws0"> <span class=3D"_ _9"></span>P=C3=A9rez, <span class=3D"_ _9"></sp=
an>S. <span class=3D"_ _1"></span>(2014). <span class=3D"_ _9"></span>La <s=
pan class=3D"_ _9"></span>m=C3=BAsica <span class=3D"_ _9"></span>como <spa=
n class=3D"_ _9"></span>herramienta <span class=3D"_ _9"></span>para <span =
class=3D"_ _1"></span>desarrollar <span class=3D"_ _9"></span>la <span clas=
s=3D"_ _9"></span>competencia <span class=3D"_ _9"></span>intercult<span cl=
ass=3D"_ _0"></span>ural <span class=3D"_ _9"></span>en <span class=3D"_ _9=
"></span>el <span class=3D"_ _9"></span>aula. <span class=3D"_ _9"></span>S=
cielo, <span class=3D"_ _9"></span>36<span class=3D"_ _0"></span>(145), </d=
iv><div class=3D"t m0 x2 h4 yb7 ff1 fs1 fc0 sc0 ls1 ws0">175<span class=3D"=
ls0">-</span>187.<span class=3D"ls0"> </span></div><div class=3D"c x6 yb w0=
 h0"><div class=3D"t m0 x2 hb y80 ff1 fs4 fc0 sc0 ls0 ws0">8</div></div><di=
v class=3D"t m0 x1e h4 yb8 ff1 fs1 fc0 sc0 ls0 ws0"> <span class=3D"_ _b"> =
</span>Malbr=C3=A1n, <span class=3D"_ _b"> </span>S. <span class=3D"_ _b"> =
</span>(2011) <span class=3D"_ _b"> </span>Educaci=C3=B3n <span class=3D"_ =
_b"> </span>musical <span class=3D"_ _b"> </span>en <span class=3D"_ _b"> <=
/span>la <span class=3D"_ _b"> </span>escuela <span class=3D"_ _b"> </span>=
infantil. <span class=3D"_ _b"> </span>En <span class=3D"_ _b"> </span>D=C3=
=ADaz, <span class=3D"_ _b"> </span>Maravilla<span class=3D"_ _0"></span>s =
<span class=3D"_ _b"> </span>&amp;<span class=3D"_ _3"></span> <span class=
=3D"_ _b"> </span>Ria=C3=B1o <span class=3D"_ _b"> </span>Gal=C3=A1n, <span=
 class=3D"_ _b"> </span>ME. <span class=3D"_ _b"> </span>(2011) </div><div =
class=3D"t m0 x2 h4 yb9 ff1 fs1 fc0 sc0 ls0 ws0">Fundamentos Musicale<span =
class=3D"_ _0"></span>s y Did=C3=A1cticos en Educaci=C3=B3n I<span class=3D=
"_ _0"></span>nf<span class=3D"_ _3"></span>antil. <span class=3D"_ _0"></s=
pan>Editorial: Universidad de <span class=3D"_ _0"></span>Cantabria.<span c=
lass=3D"_ _0"></span> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0=
 x2 hf yba ff1 fs6 fc0 sc0 ls0 ws0">9</div></div><div class=3D"t m0 x1e h2 =
ybb ff1 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _0"></span><span class=3D"fs=
1">Ser<span class=3D"_ _0"></span>rada <span class=3D"_ _0"></span>Fo<span =
class=3D"_ _0"></span>nseca, <span class=3D"_ _0"></span>M. <span class=3D"=
_ _8"></span>(2007). <span class=3D"_ _0"></span>Integraci=C3=B3n <span cla=
ss=3D"_ _8"></span>de <span class=3D"_ _8"></span>actividad<span class=3D"_=
 _0"></span>es <span class=3D"_ _0"></span>l=C3=BAdicas <span class=3D"_ _8=
"></span>en <span class=3D"_ _8"></span>la <span class=3D"_ _8"></span>aten=
ci=C3=B3n <span class=3D"_ _8"></span>educativa <span class=3D"_ _8"></span=
>d<span class=3D"_ _0"></span>el <span class=3D"_ _0"></span>ni=C3=B1o <spa=
n class=3D"_ _8"></span>ho<span class=3D"_ _0"></span>spitalizad<span class=
=3D"_ _0"></span>o. <span class=3D"_ _8"></span><span class=3D"ff7">Educere=
, </span></span></div><div class=3D"t m0 x2 h2 y2f ff7 fs1 fc0 sc0 ls1 ws0"=
>11<span class=3D"ff1 ls0">(39).<span class=3D"fs0">  </span></span></div><=
div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 hb y30 ff1 fs4 fc0 sc0 ls=
0 ws0">10</div></div><div class=3D"t m0 x30 h4 y31 ff1 fs1 fc0 sc0 ls0 ws0"=
> <span class=3D"_ _8"></span>L=C3=B3pez<span class=3D"_ _0"></span> <span =
class=3D"_ _8"></span>Cha<span class=3D"_ _0"></span>m<span class=3D"_ _3">=
</span>orro, <span class=3D"_ _9"></span>I. <span class=3D"_ _9"></span>(20=
10). <span class=3D"_ _8"></span>El <span class=3D"_ _9"></span>juego <span=
 class=3D"_ _9"></span>en <span class=3D"_ _8"></span>la <span class=3D"_ _=
9"></span>educaci=C3=B3n <span class=3D"_ _8"></span>i<span class=3D"_ _0">=
</span>nfantil <span class=3D"_ _9"></span>y <span class=3D"_ _8"></span>pr=
i<span class=3D"_ _0"></span>m<span class=3D"_ _3"></span>aria. <span class=
=3D"_ _9"></span>Autodidacta <span class=3D"_ _9"></span>Revista <span clas=
s=3D"_ _9"></span>Online, <span class=3D"_ _9"></span>19<span class=3D"_ _8=
"></span>-37. <span class=3D"_ _9"></span>doi:1989-</div><div class=3D"t m0=
 x2 h4 y32 ff1 fs1 fc0 sc0 ls1 ws0">9041<span class=3D"ls0"> </span></div><=
/div><div class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.0=
00000,1.000000,0.000000,0.000000]}"></div></div>
<div id=3D"pf6" class=3D"pf w0 h0" data-page-no=3D"6"><div class=3D"pc pc6 =
w0 h0"><img class=3D"bi x1f y0 w1 hc" alt=3D"" src=3D"data:image/png;base64=
,iVBORw0KGgoAAAANSUhEUgAAA/wAAAVsCAIAAAAKdQHVAAAACXBIWXMAABYlAAAWJQFJUiTwAA=
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ANiP/vdy7vTRL/eP9wcAALv83gMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AAC=
A6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAA=
AQ/QAAIPoBAADRDwAAiH4AWNutAwEAAAAAQf7Wg1wUASD9AACA9AMAANIPAABIPwAASD8AACD9A=
ACA9AMAANIPAABIPwAAIP0AAID0AwDAWvXuJchGncgRAAAAAElFTkSuQmCC"><div class=3D"=
t m0 x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20 h4 y3=
4 ff1 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0"></span=
>Ay<span class=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rillo, Let=
ty Araceli Delgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9 Grism=
aldo P<span class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></span> </=
div><div class=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=
=3D"c x1f y3 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0">16=
2<span class=3D"ls0"> </span></div></div><div class=3D"c x21 y3 w2 h3"><div=
 class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=C3=AD=
a, <span class=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n<span =
class=3D"_ _0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=A9cnic=
a de Manab=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><div cla=
ss=3D"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x22=
 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">participando <span class=3D"_ _b"> </span>=
de <span class=3D"_ _e"> </span>la <span class=3D"_ _b"> </span>actividad <=
span class=3D"_ _b"> </span>musical <span class=3D"_ _e"> </span>e<span cla=
ss=3D"_ _0"></span>n <span class=3D"_ _b"> </span>primera <span class=3D"_ =
_e"> </span>persona <span class=3D"_ _b"> </span>o <span class=3D"_ _b"> </=
span>como <span class=3D"_ _e"> </span>espectador <span class=3D"_ _b"> </s=
pan>del </div><div class=3D"t m0 x22 h4 y37 ff4 fs0 fc0 sc0 ls0 ws0">hecho =
<span class=3D"_ _1"></span>musical. <span class=3D"_ _1"></span>La <span c=
lass=3D"_ _1"></span>m=C3=BAsica, <span class=3D"_ _9"></span>como <span cl=
ass=3D"_ _1"></span>apuntan <span class=3D"_ _1"></span>numerosos <span cla=
ss=3D"_ _1"></span>autores, <span class=3D"_ _9"></span>entre <span class=
=3D"_ _1"></span>ellos <span class=3D"_ _1"> </span>Willems, </div><div cla=
ss=3D"t m0 x22 h4 y38 ff4 fs0 fc0 sc0 ls0 ws0">sobre <span class=3D"_ _9"><=
/span>todo <span class=3D"_ _9"></span>con <span class=3D"_ _9"></span>la <=
span class=3D"_ _9"></span>melod=C3=ADa, <span class=3D"_ _9"></span>tiene =
<span class=3D"_ _9"></span>un <span class=3D"_ _9"></span>enorme <span cla=
ss=3D"_ _9"></span>poder <span class=3D"_ _9"></span>afectivo, <span class=
=3D"_ _9"></span>evocador <span class=3D"_ _9"></span>de <span class=3D"_ _=
9"></span>situaciones </div><div class=3D"t m0 x22 h4 y84 ff4 fs0 fc0 sc0 l=
s0 ws0">gratificantes. <span class=3D"_ _b"> </span>Est=C3=A1 <span class=
=3D"_ _b"> </span>demostrado <span class=3D"_ _e"> </span>que <span class=
=3D"_ _b"> </span>a <span class=3D"_ _b"> </span>trav=C3=A9s <span class=3D=
"_ _b"> </span>de <span class=3D"_ _e"> </span>la <span class=3D"_ _b"> </s=
pan>m=C3=BAsica <span class=3D"_ _b"> </span>se <span class=3D"_ _b"> </spa=
n>pueden <span class=3D"_ _e"> </span>rememorar </div><div class=3D"t m0 x2=
2 h4 y85 ff4 fs0 fc0 sc0 ls0 ws0">momentos vividos cargados de significaci=
=C3=B3n afectiva. </div><div class=3D"t m0 x22 h4 ybc ff4 fs0 fc0 sc0 ls0 w=
s0">Con <span class=3D"_ _b"> </span>respecto <span class=3D"_ _b"> </span>=
al <span class=3D"_ _c"> </span>valor <span class=3D"_ _b"> </span>socializ=
ador <span class=3D"_ _c"> </span>de <span class=3D"_ _b"> </span>la <span =
class=3D"_ _c"> </span>educaci=C3=B3n <span class=3D"_ _b"> </span>musical =
<span class=3D"_ _b"> </span>en <span class=3D"_ _c"> </span>estas <span cl=
ass=3D"_ _b"> </span>edades, <span class=3D"_ _b"> </span>es<span class=3D"=
_ _0"></span> </div><div class=3D"t m0 x22 h4 y87 ff4 fs0 fc0 sc0 ls0 ws0">=
enorme, <span class=3D"_ _0"></span>siendo <span class=3D"_ _0"></span>una =
<span class=3D"_ _0"></span>actividad <span class=3D"_ _0"></span>en la <sp=
an class=3D"_ _0"></span>que <span class=3D"_ _0"></span>todos <span class=
=3D"_ _0"></span>participan <span class=3D"_ _0"></span>a <span class=3D"_ =
_0"></span>la <span class=3D"_ _0"></span>vez <span class=3D"_ _0"></span>t=
anto <span class=3D"_ _0"></span>con <span class=3D"_ _0"></span>el <span c=
lass=3D"_ _0"></span>mismo<span class=3D"_ _3"></span> </div><div class=3D"=
t m0 x22 h4 y88 ff4 fs0 fc0 sc0 ls0 ws0">papel <span class=3D"_ _0"></span>=
como <span class=3D"_ _0"></span>con <span class=3D"_ _8"></span>papeles <s=
pan class=3D"_ _0"></span>diferentes <span class=3D"_ _0"></span>dentro <sp=
an class=3D"_ _0"></span>de <span class=3D"_ _8"></span>la <span class=3D"_=
 _0"></span>actividad, <span class=3D"_ _0"></span>pero <span class=3D"_ _0=
"></span>persiguiendo <span class=3D"_ _8"></span>todo <span class=3D"_ _0"=
></span>un </div><div class=3D"t m0 x22 h4 y89 ff4 fs0 fc0 sc0 ls0 ws0">mis=
mo <span class=3D"_ _8"></span>fin: <span class=3D"_ _8"></span>que <span c=
lass=3D"_ _8"></span>salga <span class=3D"_ _9"></span>bien <span class=3D"=
_ _0"></span>y <span class=3D"_ _9"></span>se <span class=3D"_ _0"></span>d=
isfrute <span class=3D"_ _9"></span>mientras <span class=3D"_ _8"></span>se=
 <span class=3D"_ _9"></span>realiza <span class=3D"_ _8"></span>la <span c=
lass=3D"_ _8"></span>acci=C3=B3n <span class=3D"_ _8"></span>de <span class=
=3D"_ _8"></span>estimular <span class=3D"_ _9"></span>el </div><div class=
=3D"t m0 x22 h4 y8b ff4 fs0 fc0 sc0 ls0 ws0">o=C3=ADdo de <span class=3D"_ =
_0"></span>la <span class=3D"_ _0"></span>persona con <span class=3D"_ _0">=
</span>m=C3=BAsica. Cabe <span class=3D"_ _0"></span>se=C3=B1alar que <span=
 class=3D"_ _0"></span>tambi=C3=A9n potencia <span class=3D"_ _0"></span>la=
 adquisici=C3=B3n de </div><div class=3D"t m0 x22 h4 y8c ff4 fs0 fc0 sc0 ls=
0 ws0">valores sociales como el respeto al turno de actuaci=C3=B3n y al sil=
encio. </div><div class=3D"t m0 x22 h4 ybd ff4 fs0 fc0 sc0 ls0 ws0">Seg=C3=
=BAn <span class=3D"_ _7"> </span>los <span class=3D"_ _1"> </span>referent=
es <span class=3D"_ _7"> </span>a <span class=3D"_ _7"> </span>la <span cla=
ss=3D"_ _1"> </span>consideraci=C3=B3n<span class=3D"_ _0"></span> <span cl=
ass=3D"_ _7"> </span>de <span class=3D"_ _1"> </span>la <span class=3D"_ _7=
"> </span>m=C3=BAsica <span class=3D"_ _7"> </span>en <span class=3D"_ _1">=
 </span>c<span class=3D"_ _0"></span>uanto <span class=3D"_ _7"> </span>al =
<span class=3D"_ _7"> </span>aprendizaje <span class=3D"_ _1"> </span>se </=
div><div class=3D"t m0 x22 h4 ybe ff5 fs0 fc0 sc0 ls0 ws0">debe <span class=
=3D"_ _0"></span>remontar <span class=3D"_ _8"></span>al <span class=3D"_ _=
8"></span>siglo <span class=3D"_ _8"></span>XVIII <span class=3D"_ _8"></sp=
an>cuando <span class=3D"_ _8"></span>Juan <span class=3D"_ _0"></span>Jaco=
bo <span class=3D"_ _8"></span>Rousseau <span class=3D"_ _8"></span>public=
=C3=B3 <span class=3D"_ _8"></span>=E2=80=9CEmilio=E2=80=9D <span class=3D"=
_ _0"></span>mismo </div><div class=3D"t m0 x22 h4 ybf ff4 fs0 fc0 sc0 ls0 =
ws0">que <span class=3D"_ _7"> </span>propone <span class=3D"_ _7"> </span>=
un <span class=3D"_ _e"> </span>plan <span class=3D"_ _7"> </span>de <span =
class=3D"_ _e"> </span>ense=C3=B1anza <span class=3D"_ _7"> </span>musical =
<span class=3D"_ _e"> </span>de <span class=3D"_ _7"> </span>canciones <spa=
n class=3D"_ _7"> </span>simples, <span class=3D"_ _e"> </span>especialment=
e </div><div class=3D"t m0 x22 h4 yc0 ff4 fs0 fc0 sc0 ls0 ws0">para <span c=
lass=3D"_ _9"></span>ni=C3=B1os <span class=3D"_ _9"></span>luego <span cla=
ss=3D"_ _9"></span>Pestalozzi <span class=3D"_ _9"></span>seguidor <span cl=
ass=3D"_ _9"></span>de <span class=3D"_ _9"></span>las <span class=3D"_ _9"=
></span>ideas <span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>Ro=
usseau <span class=3D"_ _9"></span>dio <span class=3D"_ _9"></span>importan=
cia <span class=3D"_ _9"></span>a <span class=3D"_ _9"></span>la </div><div=
 class=3D"t m0 x22 h4 yc1 ff4 fs0 fc0 sc0 ls0 ws0">m=C3=BAsica para el ni=
=C3=B1o desde su primer a=C3=B1o de vida.  </div><div class=3D"t m0 x22 h4 =
y6d ff4 fs0 fc0 sc0 ls0 ws0">Fr=C3=B6bel, quien fue <span class=3D"_ _0"></=
span>el precursor de los jardines de <span class=3D"_ _0"></span>infantes e=
n su gran obra <span class=3D"_ _0"></span>"Canciones </div><div class=3D"t=
 m0 x22 h4 y6e ff4 fs0 fc0 sc0 ls0 ws0">para <span class=3D"_ _0"></span>la=
 <span class=3D"_ _0"></span>madre <span class=3D"_ _8"></span>y <span clas=
s=3D"_ _0"></span>el <span class=3D"_ _8"></span>ni=C3=B1o" <span class=3D"=
_ _0"></span>sostiene <span class=3D"_ _8"></span>que <span class=3D"_ _0">=
</span>cre<span class=3D"_ _0"></span>ar <span class=3D"_ _0"></span>melod=
=C3=ADas <span class=3D"_ _0"></span>para <span class=3D"_ _0"></span>los<s=
pan class=3D"_ _0"></span> <span class=3D"_ _0"></span>ni=C3=B1os <span cla=
ss=3D"_ _0"></span>y <span class=3D"_ _0"></span>sugieren<span class=3D"_ _=
0"></span> <span class=3D"_ _0"></span>a <span class=3D"_ _0"></span>las<sp=
an class=3D"_ _0"></span> </div><div class=3D"t m0 x22 h4 y17 ff4 fs0 fc0 s=
c0 ls0 ws0">madres <span class=3D"_ _a"> </span>de <span class=3D"_ _f"> </=
span>que <span class=3D"_ _a"> </span>motiven <span class=3D"_ _a"> </span>=
a <span class=3D"_ _a"> </span>los <span class=3D"_ _f"> </span>ni<span cla=
ss=3D"_ _0"></span>=C3=B1os <span class=3D"_ _a"> </span>para <span class=
=3D"_ _f"> </span>que <span class=3D"_ _a"> </span>escuchen <span class=3D"=
_ _a"> </span>y <span class=3D"_ _a"> </span>produzcan <span class=3D"_ _f"=
> </span>soni<span class=3D"_ _0"></span>dos </div><div class=3D"t m0 x22 h=
4 y6f ff4 fs0 fc0 sc0 ls0 ws0">armoniosos haciendo escuchar canciones con m=
ayor frecuencia.  </div><div class=3D"t m0 x22 h4 y70 ff4 fs0 fc0 sc0 ls0 w=
s0">Posteriormente <span class=3D"_ _9"></span>Dalcroze <span class=3D"_ _1=
"></span>un <span class=3D"_ _9"></span>Vien=C3=A9s, <span class=3D"_ _9"><=
/span>que <span class=3D"_ _9"></span>fue <span class=3D"_ _1"></span>pedag=
ogo <span class=3D"_ _9"></span>compositor <span class=3D"_ _9"></span>y <s=
pan class=3D"_ _9"></span>m=C3=BAsico <span class=3D"_ _1"></span>cre=C3=B3=
<span class=3D"_ _3"></span> <span class=3D"_ _9"></span>su </div><div clas=
s=3D"t m0 x22 h4 y71 ff4 fs0 fc0 sc0 ls0 ws0">famoso <span class=3D"_ _0"><=
/span>m=C3=A9todo <span class=3D"_ _8"></span>de <span class=3D"_ _8"></spa=
n>r=C3=ADtmica <span class=3D"_ _0"></span>que <span class=3D"_ _8"></span>=
se <span class=3D"_ _8"></span>reflejaba <span class=3D"_ _0"></span>en <sp=
an class=3D"_ _8"></span>el <span class=3D"_ _8"></span>movimiento <span cl=
ass=3D"_ _0"></span>y <span class=3D"_ _8"></span>la <span class=3D"_ _8"><=
/span>expresi=C3=B3<span class=3D"_ _0"></span>n <span class=3D"_ _0"></spa=
n>corporal; </div><div class=3D"t m0 x22 h4 y72 ff4 fs0 fc0 sc0 ls0 ws0">si=
n embargo, not=C3=B3 lo dif=C3=ADcil para sus alumnos escribir acorde<span =
class=3D"_ _0"></span>s y entendi=C3=B3 que el error </div><div class=3D"t =
m0 x22 h4 y73 ff4 fs0 fc0 sc0 ls0 ws0">estaba en inducirlo a escribir antes=
 que aprender a escuchar. </div><div class=3D"t m0 x22 h4 yc2 ff4 fs0 fc0 s=
c0 ls0 ws0">Consecuentemente <span class=3D"_ _a"> </span>de <span class=3D=
"_ _11"> </span>acuerdo <span class=3D"_ _a"> </span>a <span class=3D"_ _11=
"> </span>Willens <span class=3D"_ _11"> </span>la <span class=3D"_ _a"> </=
span>propuesta <span class=3D"_ _11"> </span>pedag=C3=B3gica <span class=3D=
"_ _a"> </span>musical <span class=3D"_ _11"> </span>del </div><div class=
=3D"t m0 x22 h4 yc3 ff4 fs0 fc0 sc0 ls0 ws0">pedagogo <span class=3D"_ _8">=
</span>Dalcroze <span class=3D"_ _8"></span>no <span class=3D"_ _9"></span>=
es <span class=3D"_ _0"></span>solo <span class=3D"_ _9"></span>un <span cl=
ass=3D"_ _0"></span>m=C3=A9todo <span class=3D"_ _8"></span>de <span class=
=3D"_ _9"></span>educaci=C3=B3n <span class=3D"_ _0"></span>social, <span c=
lass=3D"_ _8"></span>sino <span class=3D"_ _8"></span>que <span class=3D"_ =
_9"></span>propone <span class=3D"_ _0"></span>que </div><div class=3D"t m0=
 x22 h4 yc4 ff4 fs0 fc0 sc0 ls0 ws0">a trav=C3=A9s de la actividad musical =
las perso<span class=3D"_ _0"></span>nas pueden conocerse a s=C3=AD mismos,=
 es d<span class=3D"_ _0"></span>ecir </div><div class=3D"t m0 x22 h4 yc5 f=
f4 fs0 fc0 sc0 ls0 ws0">adentrarse <span class=3D"_ _1"> </span>en <span cl=
ass=3D"_ _7"> </span>sus <span class=3D"_ _1"></span>cualidades <span class=
=3D"_ _1"> </span>y <span class=3D"_ _7"> </span>limitaciones, <span class=
=3D"_ _1"></span>pero <span class=3D"_ _1"> </span>tambi=C3=A9n <span class=
=3D"_ _7"> </span>no <span class=3D"_ _1"></span>solo <span class=3D"_ _1">=
 </span>quedarse <span class=3D"_ _7"> </span>en <span class=3D"_ _1"></spa=
n>el </div><div class=3D"t m0 x22 h4 yc6 ff4 fs0 fc0 sc0 ls0 ws0">diagn=C3=
=B3stico sino <span class=3D"_ _0"></span>saber <span class=3D"_ _0"></span=
>corregir <span class=3D"_ _0"></span>y dominar <span class=3D"_ _0"></span=
>sus limitaciones. <span class=3D"_ _0"></span>Se <span class=3D"_ _0"></sp=
an>debe tomar <span class=3D"_ _0"></span>en cue<span class=3D"_ _0"></span=
>nta </div><div class=3D"t m0 x22 h4 yc7 ff4 fs0 fc0 sc0 ls0 ws0">entonces,=
 <span class=3D"_ _16"> </span>que <span class=3D"_ _16"> </span>tanto <spa=
n class=3D"_ _16"> </span>el <span class=3D"_ _16"> </span>sentido <span cl=
ass=3D"_ _16"> </span>muscular <span class=3D"_ _13"> </span>y <span class=
=3D"_ _16"> </span>corporal <span class=3D"_ _16"> </span>debe <span class=
=3D"_ _16"> </span>ser <span class=3D"_ _16"> </span>puesto <span class=3D"=
_ _16"> </span>en </div><div class=3D"t m0 x22 h4 y25 ff4 fs0 fc0 sc0 ls0 w=
s0">funcionamiento <span class=3D"_ _b"> </span>siempre, <span class=3D"_ _=
b"> </span>de <span class=3D"_ _b"> </span>tal <span class=3D"_ _e"> </span=
>forma <span class=3D"_ _b"> </span>que <span class=3D"_ _b"> </span>el <sp=
an class=3D"_ _b"> </span>cuerpo <span class=3D"_ _e"> </span>se <span clas=
s=3D"_ _b"> </span>empodere <span class=3D"_ _b"> </span>del <span class=3D=
"_ _b"> </span>ritmo <span class=3D"_ _e"> </span>que </div><div class=3D"t=
 m0 x22 h4 y79 ff4 fs0 fc0 sc0 ls0 ws0">conlleva <span class=3D"_ _7"> </sp=
an>a <span class=3D"_ _1"></span>mejorar <span class=3D"_ _7"> </span>su <s=
pan class=3D"_ _1"></span>desarrollo <span class=3D"_ _7"> </span>corporal,=
 <span class=3D"_ _1"></span>as=C3=AD <span class=3D"_ _7"> </span>como <sp=
an class=3D"_ _1"></span>su <span class=3D"_ _7"> </span>nivel <span class=
=3D"_ _1"> </span>intelectual, <span class=3D"_ _7"> </span>para <span clas=
s=3D"_ _1"> </span>este </div><div class=3D"t m0 x22 h6 y7a ff4 fs0 fc0 sc0=
 ls0 ws0">autor la pedagog=C3=ADa musical es completa<span class=3D"ff3">. =
</span></div><div class=3D"t m0 x22 h4 yc8 ff4 fs0 fc0 sc0 ls0 ws0">Finalme=
nte, <span class=3D"_ _0"></span>la <span class=3D"_ _0"></span>pedagoga <s=
pan class=3D"_ _0"></span>Italiana <span class=3D"_ _0"></span>Montessori, =
<span class=3D"_ _0"></span>tambi=C3=A9n <span class=3D"_ _0"></span>se <sp=
an class=3D"_ _0"></span>preocup=C3=B3 <span class=3D"_ _0"></span>y <span =
class=3D"_ _0"></span>puso <span class=3D"_ _0"></span>inter=C3=A9<span cla=
ss=3D"_ _0"></span>s en </div><div class=3D"t m0 x22 h4 yc9 ff4 fs0 fc0 sc0=
 ls0 ws0">la  formaci=C3=B3n <span class=3D"_ _c"> </span>de  los  ni=C3=B1=
os <span class=3D"_ _c"> </span>utilizando  la  m=C3=BAsica; <span class=3D=
"_ _c"> </span>consider=C3=B3  que  los <span class=3D"_ _c"> </span>ni=C3=
=B1os  desde </div><div class=3D"t m0 x22 h4 yca ff4 fs0 fc0 sc0 ls0 ws0">t=
empranas <span class=3D"_ _9"></span>edades <span class=3D"_ _8"></span>se =
<span class=3D"_ _9"></span>les <span class=3D"_ _9"></span>debe <span clas=
s=3D"_ _9"></span>iniciar <span class=3D"_ _9"></span>en <span class=3D"_ _=
8"></span>la <span class=3D"_ _9"></span>pr=C3=A1ctica <span class=3D"_ _9"=
></span>musical <span class=3D"_ _8"></span>sin <span class=3D"_ _9"></span=
>condicionamientos, </div><div class=3D"t m0 x22 h6 ycb ff4 fs0 fc0 sc0 ls0=
 ws0">despu=C3=A9s <span class=3D"_ _7"> </span>se <span class=3D"_ _1"> </=
span>a=C3=B1adir=C3=A1 <span class=3D"_ _7"> </span>objetivos <span class=
=3D"_ _7"> </span>de <span class=3D"_ _1"> </span>aprendizaje<span class=3D=
"ff3">".</span> <span class=3D"_ _7"> </span>(Willems, <span class=3D"_ _7"=
> </span>19<span class=3D"_ _3"></span>93).</div><div class=3D"c x6 yb w0 h=
0"><div class=3D"t m0 x31 he ycc ff4 fs6 fc0 sc0 ls1 ws0">11</div></div><di=
v class=3D"t m0 x32 h4 ycb ff4 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _7"> =
</span>Lo <span class=3D"_ _1"> </span>que <span class=3D"_ _7"> </span>exp=
lica <span class=3D"_ _7"> </span>l<span class=3D"_ _3"></span>a<span class=
=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 ycd ff4 fs0 fc0 sc0 ls0 w=
s0">autora <span class=3D"_ _9"></span>y <span class=3D"_ _9"></span>enfati=
za <span class=3D"_ _9"></span>el <span class=3D"_ _9"></span>respeto <span=
 class=3D"_ _9"></span>en <span class=3D"_ _9"></span>la <span class=3D"_ _=
9"></span>libre <span class=3D"_ _9"></span>expresi=C3=B3n, <span class=3D"=
_ _9"></span>adem=C3=A1s <span class=3D"_ _9"></span>motivaba <span class=
=3D"_ _9"></span>el <span class=3D"_ _9"></span>desarrollo <span class=3D"_=
 _9"></span>de </div><div class=3D"t m0 x22 h4 yce ff4 fs0 fc0 sc0 ls0 ws0"=
>los <span class=3D"_ _8"></span>sentidos <span class=3D"_ _8"></span>con <=
span class=3D"_ _8"></span>los <span class=3D"_ _9"></span>ejercicios <span=
 class=3D"_ _8"></span>de <span class=3D"_ _8"></span>marcha <span class=3D=
"_ _8"></span>y <span class=3D"_ _9"></span>carrera, <span class=3D"_ _0"><=
/span>as=C3=AD <span class=3D"_ _9"></span>mismo <span class=3D"_ _0"></spa=
n>enfatiz=C3=B3 <span class=3D"_ _9"></span>la <span class=3D"_ _0"></span>=
educaci=C3=B3n </div><div class=3D"t m0 x22 h4 ycf ff4 fs0 fc0 sc0 ls0 ws0"=
>del <span class=3D"_ _7"> </span>o=C3=ADdo <span class=3D"_ _7"> </span>de=
l <span class=3D"_ _7"> </span>ni=C3=B1o <span class=3D"_ _1"> </span>con <=
span class=3D"_ _7"> </span>ejercicios <span class=3D"_ _7"> </span>de <spa=
n class=3D"_ _7"> </span>reconocimiento <span class=3D"_ _7"> </span>de <sp=
an class=3D"_ _7"> </span>timbre, <span class=3D"_ _1"> </span>altura, <spa=
n class=3D"_ _7"> </span>intensidad <span class=3D"_ _7"> </span>y </div><d=
iv class=3D"t m0 x22 h4 y82 ff4 fs0 fc0 sc0 ls0 ws0">duraci=C3=B3n <span cl=
ass=3D"_ _9"></span>del <span class=3D"_ _1"></span>sonido. <span class=3D"=
_ _9"></span>A <span class=3D"_ _9"></span>medida <span class=3D"_ _1"></sp=
an>que <span class=3D"_ _9"></span>evoluciona <span class=3D"_ _1"></span>l=
os <span class=3D"_ _9"></span>ni=C3=B1os, <span class=3D"_ _9"></span>la <=
span class=3D"_ _1"></span>m=C3=BAsica <span class=3D"_ _9"></span>como <sp=
an class=3D"_ _9"></span>medio <span class=3D"_ _1"></span>de<span class=3D=
"_ _3"></span> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 h2=
 yd0 ff1 fs0 fc0 sc0 ls0 ws0">                                             =
   </div></div><div class=3D"t m0 x28 h2 yd0 ff1 fs0 fc0 sc0 ls0 ws0"> </di=
v><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 hb y5b ff1 fs4 fc0 sc=
0 ls0 ws0">11</div></div><div class=3D"t m0 x33 h4 y32 ff1 fs1 fc0 sc0 ls0 =
ws0"> Willems, E. (199<span class=3D"_ _0"></span>3). Ritmo musical. Buenos=
 Aires: Eudeba.<span class=3D"_ _0"></span> </div></div><div class=3D"pi" d=
ata-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.000000,0.000000,=
0.000000]}"></div></div>
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A6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQ=
BA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PA=
ADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4A=
AED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8=
AAOh+AADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAHQ/AACg+wEAAN0PAADofg=
AAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAED3A=
wAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA+HfrmYeSmBRcpKoMAQC4mn0/AAD0F7tG=
AABoz74fAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDAAC=
6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAN=
D9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AADgPjECA=
AA4Y3+/Ju7+qvIJAQDgp8/2nPfl/ecDAAD96X4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA=
QPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3A/B=
tt44FAAAAAAb5W09jR1EEAN4PAAB4PwAA4P0AAID3AwAA3g8AAN4PAAB4PwAA4P0AAID3AwAA3g=
8AAHg/AADg/QAAgPcDAID3AwAA3g8AAHg/AADwEZESJYke3PIaAAAAAElFTkSuQmCC"><div cl=
ass=3D"t m0 x2 h5 y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=3D"_ =
_0"></span>nosis. Revista de Filosof=C3=ADa, Let<span class=3D"_ _0"></span=
>ras y Ciencias de la Educaci=C3=B3n <span class=3D"_ _0"></span><span clas=
s=3D"ls1">                              <span class=3D"_ _3"></span>     <s=
pan class=3D"ls0">            ISSN </span>2588<span class=3D"ls0">-0578 </s=
pan></span></div><div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0">M=C3=
=9ASICA COMO MEDIO <span class=3D"_ _0"></span>DE ENSE=C3=91<span class=3D"=
_ _0"></span>ANZA-APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91OS<spa=
n class=3D"_ _0"></span><span class=3D"fs6"> </span></div><div class=3D"t m=
0 x2 h2 y5e ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2 h3"><d=
iv class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o 2020.<s=
pan class=3D"_ _0"></span> N=C3=BAmero 2, Abril<span class=3D"_ _0"></span>=
-Junio </div></div><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x5 h5 y4=
 ff2 fs1 fc1 sc0 ls1 ws0">163<span class=3D"ls0"> </span></div></div><div c=
lass=3D"t m0 x2 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2=
 h4 y5f ff4 fs0 fc0 sc0 ls0 ws0">aprendizaje  estimula <span class=3D"_ _f"=
> </span>directamente <span class=3D"_ _f"> </span>su  com<span class=3D"_ =
_0"></span>portamiento  haciendo <span class=3D"_ _f"> </span>que <span cla=
ss=3D"_ _f"> </span>la  melod=C3=ADa </div><div class=3D"t m0 x2 h4 y60 ff4=
 fs0 fc0 sc0 ls0 ws0">permita el desarrollo musical en toda su magnitud.  <=
/div><div class=3D"t m0 x2 h4 yd1 ff4 fs0 fc0 sc0 ls0 ws0">De <span class=
=3D"_ _8"></span>los <span class=3D"_ _8"></span>estudios <span class=3D"_ =
_9"></span>sobre <span class=3D"_ _8"></span>la <span class=3D"_ _8"></span=
>influencia<span class=3D"_ _0"></span> <span class=3D"_ _0"></span>de <spa=
n class=3D"_ _9"></span>la <span class=3D"_ _8"></span>m=C3=BAsica <span cl=
ass=3D"_ _9"></span>en <span class=3D"_ _0"></span>el<span class=3D"_ _0"><=
/span> <span class=3D"_ _8"></span>cerebro <span class=3D"_ _8"></span>que =
<span class=3D"_ _9"></span>se <span class=3D"_ _8"></span>han <span class=
=3D"_ _8"></span>realizado, </div><div class=3D"t m0 x2 h4 y2 ff4 fs0 fc0 s=
c0 ls0 ws0">destacamos <span class=3D"_ _0"></span>el <span class=3D"_ _0">=
</span>publicado <span class=3D"_ _0"></span>por <span class=3D"_ _0"></spa=
n>Jean-<span class=3D"ff5">Paul <span class=3D"_ _0"></span>Despins <span c=
lass=3D"_ _0"></span>en <span class=3D"_ _0"></span>su <span class=3D"_ _0"=
></span>libro <span class=3D"_ _0"></span>=E2=80=9CLa <span class=3D"_ _0">=
</span>m=C3=BAsica <span class=3D"_ _0"></span>y <span class=3D"_ _0"></spa=
n>el <span class=3D"_ _0"></span>cerebro=E2=80=9D </span></div><div class=
=3D"t m0 x2 h4 y6 ff4 fs0 fc0 sc0 ls0 ws0">En <span class=3D"_ _1"> </span>=
el <span class=3D"_ _7"> </span>analiza <span class=3D"_ _1"></span>las <sp=
an class=3D"_ _1"> </span>funciones <span class=3D"_ _7"> </span>espec=C3=
=ADficas <span class=3D"_ _1"></span>de <span class=3D"_ _1"></span>cada <s=
pan class=3D"_ _1"> </span>hemisferio <span class=3D"_ _7"> </span>cerebral=
. <span class=3D"_ _1"></span>Se <span class=3D"_ _1"> </span>atribuye <spa=
n class=3D"_ _1"> </span>al </div><div class=3D"t m0 x2 h4 y7 ff4 fs0 fc0 s=
c0 ls0 ws0">hemisferio <span class=3D"_ _1"> </span>izquierdo <span class=
=3D"_ _1"> </span>lo <span class=3D"_ _7"> </span>relativo <span class=3D"_=
 _1"></span>al <span class=3D"_ _1"></span>pensamiento <span class=3D"_ _1"=
></span>l=C3=B3gico-anal=C3=ADtico <span class=3D"_ _1"> </span>y <span cla=
ss=3D"_ _7"> </span>todo <span class=3D"_ _9"></span>lo <span class=3D"_ _7=
"> </span>relativo<span class=3D"_ _3"></span> <span class=3D"_ _1"></span>=
al </div><div class=3D"t m0 x2 h4 y8 ff4 fs0 fc0 sc0 ls0 ws0">lenguaje <spa=
n class=3D"_ _7"> </span>oral <span class=3D"_ _1"> </span>y <span class=3D=
"_ _7"> </span>escrito. <span class=3D"_ _7"> </span>En <span class=3D"_ _1=
"> </span>m=C3=BAsica <span class=3D"_ _7"> </span>regula <span class=3D"_ =
_7"> </span>el <span class=3D"_ _1"> </span>ritmo <span class=3D"_ _7"> </s=
pan>y <span class=3D"_ _7"> </span>la <span class=3D"_ _1"> </span>ejecuci=
=C3=B3n <span class=3D"_ _7"> </span>instrumental. <span class=3D"_ _7"> </=
span>El<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y64 ff4 =
fs0 fc0 sc0 ls0 ws0">hemisferio <span class=3D"_ _7"> </span>derecho <span =
class=3D"_ _1"></span>es <span class=3D"_ _7"> </span>el <span class=3D"_ _=
1"></span>art=C3=ADfice <span class=3D"_ _7"> </span>de <span class=3D"_ _1=
"></span>totalidades, <span class=3D"_ _1"> </span>capaz <span class=3D"_ _=
7"> </span>de <span class=3D"_ _1"> </span>relacionar <span class=3D"_ _7">=
 </span>el <span class=3D"_ _1"> </span>todo <span class=3D"_ _7"> </span>c=
on <span class=3D"_ _1"> </span>la </div><div class=3D"t m0 x2 h4 y65 ff4 f=
s0 fc0 sc0 ls0 ws0">parte. <span class=3D"_ _1"> </span>Su <span class=3D"_=
 _7"> </span>visi=C3=B3n <span class=3D"_ _1"></span>es <span class=3D"_ _1=
"></span>ante <span class=3D"_ _1"> </span>todo <span class=3D"_ _7"> </spa=
n>hol=C3=ADstica <span class=3D"_ _1"></span>en <span class=3D"_ _1"> </spa=
n>la <span class=3D"_ _7"> </span>percepci=C3=B3n <span class=3D"_ _1"></sp=
an>de<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>modelos, <sp=
an class=3D"_ _1"></span>estructur<span class=3D"_ _3"></span>as <span clas=
s=3D"_ _7"> </span>y<span class=3D"_ _3"></span> </div><div class=3D"t m0 x=
2 h4 y66 ff4 fs0 fc0 sc0 ls0 ws0">configuraciones. En m=C3=BAsica domina la=
s funciones tonales y mel=C3=B3dicas. </div><div class=3D"t m0 x2 h4 ye ff4=
 fs0 fc0 sc0 ls0 ws0">Est=C3=A1 <span class=3D"_ _8"></span>comprobado <spa=
n class=3D"_ _8"></span>que <span class=3D"_ _8"></span>l<span class=3D"_ _=
0"></span>os <span class=3D"_ _0"></span>m=C3=BAsicos <span class=3D"_ _9">=
</span>no <span class=3D"_ _0"></span>utilizan <span class=3D"_ _8"></span>=
m=C3=A1s <span class=3D"_ _8"></span>un <span class=3D"_ _9"></span>hemisfe=
rio <span class=3D"_ _0"></span>que <span class=3D"_ _8"></span>otro, <span=
 class=3D"_ _9"></span>sino <span class=3D"_ _0"></span>que </div><div clas=
s=3D"t m0 x2 h4 ya3 ff4 fs0 fc0 sc0 ls0 ws0">emplean <span class=3D"_ _e"> =
</span>los <span class=3D"_ _e"> </span>dos <span class=3D"_ _e"> </span>a =
<span class=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>vez, <span cla=
ss=3D"_ _e"> </span>algo <span class=3D"_ _e"> </span>que <span class=3D"_ =
_e"> </span>no <span class=3D"_ _7"> </span>sucede <span class=3D"_ _e"> </=
span>con <span class=3D"_ _e"> </span>otras <span class=3D"_ _e"> </span>ma=
terias. <span class=3D"_ _e"> </span>La <span class=3D"_ _e"> </span>ense=
=C3=B1anza </div><div class=3D"t m0 x2 h4 ya4 ff4 fs0 fc0 sc0 ls0 ws0">gene=
ral <span class=3D"_ _1"> </span>est=C3=A1 <span class=3D"_ _7"> </span>pr=
=C3=A1ctic<span class=3D"_ _3"></span>amente <span class=3D"_ _1"> </span>b=
asada <span class=3D"_ _7"> </span>en <span class=3D"_ _1"></span>la <span =
class=3D"_ _1"> </span>l=C3=B3gica <span class=3D"_ _7"> </span>y <span cla=
ss=3D"_ _1"></span>el<span class=3D"_ _3"></span> <span class=3D"_ _7"> </s=
pan>lenguaje, <span class=3D"_ _1"></span>que <span class=3D"_ _1"></span>c=
orresponden <span class=3D"_ _1"> </span>al </div><div class=3D"t m0 x2 h4 =
ya5 ff4 fs0 fc0 sc0 ls0 ws0">hemisferio <span class=3D"_ _1"> </span>izquie=
rdo. <span class=3D"_ _7"> </span>La <span class=3D"_ _1"></span>activaci=
=C3=B3n <span class=3D"_ _7"> </span>por <span class=3D"_ _1"></span>igual =
<span class=3D"_ _1"> </span>del <span class=3D"_ _7"> </span>hemisferio <s=
pan class=3D"_ _1"></span>derecho <span class=3D"_ _7"> </span>en <span cla=
ss=3D"_ _1"></span>la <span class=3D"_ _1"></span>pr=C3=A1ctica </div><div =
class=3D"t m0 x2 h4 ya6 ff4 fs0 fc0 sc0 ls0 ws0">musical <span class=3D"_ _=
1"></span>ayuda <span class=3D"_ _1"></span>a <span class=3D"_ _1"></span>o=
btener <span class=3D"_ _1"> </span>una <span class=3D"_ _1"> </span>percep=
ci=C3=B3n <span class=3D"_ _1"> </span>integradora <span class=3D"_ _1"> </=
span>de <span class=3D"_ _1"> </span>la<span class=3D"_ _0"></span> <span c=
lass=3D"_ _1"></span>realidad <span class=3D"_ _1"></span>que <span class=
=3D"_ _1"></span>incluye <span class=3D"_ _1"> </span>la </div><div class=
=3D"t m0 x2 h4 yd2 ff4 fs0 fc0 sc0 ls0 ws0">gran <span class=3D"_ _a"> </sp=
an>cantidad <span class=3D"_ _a"> </span>de <span class=3D"_ _a"> </span>i<=
span class=3D"_ _3"></span>nformaci=C3=B3n <span class=3D"_ _a"> </span>no =
<span class=3D"_ _a"> </span>verbal <span class=3D"_ _a"> </span>que <span =
class=3D"_ _a"> </span>recibimos <span class=3D"_ _f"> </span>continuamente=
, <span class=3D"_ _a"> </span>lo <span class=3D"_ _a"> </span>que </div><d=
iv class=3D"t m0 x2 h4 yd3 ff4 fs0 fc0 sc0 ls0 ws0">contribuye en edades te=
mpranas <span class=3D"_ _0"></span>a ampliar el conocimi<span class=3D"_ _=
0"></span>ento del mundo y de la <span class=3D"_ _0"></span>vida, y<span c=
lass=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 yd4 ff4 fs0 fc0 sc0 ls=
0 ws0">a <span class=3D"_ _8"></span>la <span class=3D"_ _9"></span>madurac=
i=C3=B3n <span class=3D"_ _8"></span>cog<span class=3D"_ _0"></span>nitiva =
<span class=3D"_ _8"></span>del <span class=3D"_ _9"></span>individuo <span=
 class=3D"_ _8"></span>integrado <span class=3D"_ _9"></span>en <span class=
=3D"_ _8"></span>su <span class=3D"_ _9"></span>medio <span class=3D"_ _9">=
</span>de <span class=3D"_ _8"></span>una <span class=3D"_ _8"></span>maner=
a <span class=3D"_ _9"></span>m=C3=A1s </div><div class=3D"t m0 x2 h4 yd5 f=
f4 fs0 fc0 sc0 ls0 ws0">completa. </div><div class=3D"t m0 x2 h4 yaa ff4 fs=
0 fc0 sc0 ls0 ws0">Los <span class=3D"_ _0"></span>elementos <span class=3D=
"_ _0"></span>fundamentales de <span class=3D"_ _0"></span>la <span class=
=3D"_ _0"></span>m=C3=BAsica: <span class=3D"_ _0"></span>el <span class=3D=
"_ _0"></span>ritmo, <span class=3D"_ _0"></span>la melod=C3=ADa <span clas=
s=3D"_ _0"></span>y <span class=3D"_ _0"></span>la <span class=3D"_ _0"></s=
pan>armon=C3=ADa, tienen </div><div class=3D"t m0 x2 h4 y19 ff4 fs0 fc0 sc0=
 ls0 ws0">una <span class=3D"_ _9"></span>estrecha <span class=3D"_ _9"></s=
pan>relaci=C3=B3n <span class=3D"_ _9"></span>con <span class=3D"_ _9"></sp=
an>la <span class=3D"_ _9"></span>vida <span class=3D"_ _9"></span>huma<spa=
n class=3D"_ _0"></span>na. <span class=3D"_ _9"></span>As=C3=AD <span clas=
s=3D"_ _9"></span>lo <span class=3D"_ _9"></span>manifiest<span class=3D"_ =
_0"></span>a <span class=3D"_ _9"></span>el <span class=3D"_ _9"></span>ped=
agogo <span class=3D"_ _9"></span>y <span class=3D"_ _9"></span>m=C3=BAsico=
, </div><div class=3D"t m0 x2 h4 yab ff4 fs0 fc0 sc0 ls0 ws0">(Willems, <sp=
an class=3D"_ _0"></span>1993)</div><div class=3D"c x6 yb w0 h0"><div class=
=3D"t m0 x34 he yd6 ff4 fs6 fc0 sc0 ls1 ws0">12</div></div><div class=3D"t =
m0 x20 h4 yab ff5 fs0 fc0 sc0 ls0 ws0">. <span class=3D"_ _0"></span>que<sp=
an class=3D"_ _0"></span> <span class=3D"_ _0"></span>dice <span class=3D"_=
 _8"></span>=E2=80=9Cel <span class=3D"_ _8"></span>ritmo <span class=3D"_ =
_8"></span>est=C3=A1 <span class=3D"_ _8"></span>ligado <span class=3D"_ _8=
"></span>a <span class=3D"_ _8"></span>la <span class=3D"_ _8"></span>vida =
<span class=3D"_ _8"></span>fisiol=C3=B3gica; <span class=3D"_ _8"></span>l=
a <span class=3D"_ _8"></span>melod=C3=ADa, <span class=3D"_ _8"></span>a <=
span class=3D"_ _0"></span>la </div><div class=3D"t m0 x2 h4 yac ff5 fs0 fc=
0 sc0 ls0 ws0">vida <span class=3D"_ _8"></span>afectiva, <span class=3D"_ =
_8"></span>y <span class=3D"_ _8"></span>la <span class=3D"_ _9"></span>arm=
on=C3=ADa, <span class=3D"_ _0"></span>a <span class=3D"_ _8"></span>la <sp=
an class=3D"_ _8"></span>vida <span class=3D"_ _9"></span>mental=E2=80=9D. =
<span class=3D"_ _0"></span>(p=C3=A1g. <span class=3D"_ _8"></span>23). <sp=
an class=3D"_ _8"></span>En <span class=3D"_ _8"></span>efecto, <span class=
=3D"_ _9"></span>la <span class=3D"_ _0"></span>vida <span class=3D"_ _9"><=
/span>fisiol=C3=B3gica </div><div class=3D"t m0 x2 h4 yad ff4 fs0 fc0 sc0 l=
s0 ws0">es <span class=3D"_ _e"> </span>esencialmente <span class=3D"_ _e">=
 </span>r=C3=ADtmica, <span class=3D"_ _e"> </span>la <span class=3D"_ _e">=
 </span>vida <span class=3D"_ _e"> </span>afectiva <span class=3D"_ _7"> </=
span>se <span class=3D"_ _b"> </span>ve <span class=3D"_ _7"> </span>enorme=
mente <span class=3D"_ _e"> </span>influenciada <span class=3D"_ _e"> </spa=
n>por <span class=3D"_ _7"> </span>la </div><div class=3D"t m0 x2 h4 yae ff=
4 fs0 fc0 sc0 ls0 ws0">melod=C3=ADa <span class=3D"_ _b"> </span>en <span c=
lass=3D"_ _e"> </span>especial, <span class=3D"_ _b"> </span>las <span clas=
s=3D"_ _b"> </span>melod=C3=ADas <span class=3D"_ _e"> </span>rom=C3=A1ntic=
as), <span class=3D"_ _b"> </span>as=C3=AD <span class=3D"_ _e"> </span>com=
o <span class=3D"_ _b"> </span>en <span class=3D"_ _b"> </span>la <span cla=
ss=3D"_ _e"> </span>armon=C3=ADa <span class=3D"_ _b"> </span>act=C3=BAa <s=
pan class=3D"_ _e"> </span>el<span class=3D"_ _0"></span> </div><div class=
=3D"t m0 x2 h4 yd7 ff4 fs0 fc0 sc0 ls0 ws0">plano puramente mental. </div><=
div class=3D"t m0 x2 h4 y20 ff4 fs0 fc0 sc0 ls0 ws0">La m=C3=BAsica <span c=
lass=3D"_ _0"></span>es <span class=3D"_ _0"></span>un medio <span class=3D=
"_ _0"></span>id=C3=B3neo para <span class=3D"_ _0"></span>ense=C3=B1ar al =
<span class=3D"_ _0"></span>ni=C3=B1o <span class=3D"_ _0"></span>la import=
ancia <span class=3D"_ _0"></span>del ritmo, <span class=3D"_ _0"></span>ya=
 que </div><div class=3D"t m0 x2 h4 y4d ff4 fs0 fc0 sc0 ls0 ws0">este <span=
 class=3D"_ _7"> </span>es <span class=3D"_ _7"> </span>un <span class=3D"_=
 _e"> </span>elemento <span class=3D"_ _7"> </span>esencial <span class=3D"=
_ _e"> </span>de <span class=3D"_ _7"> </span>la <span class=3D"_ _e"> </sp=
an>m=C3=BAsica. <span class=3D"_ _e"> </span>Al <span class=3D"_ _7"> </spa=
n>hablar <span class=3D"_ _7"> </span>de<span class=3D"_ _0"></span> <span =
class=3D"_ _7"> </span>la <span class=3D"_ _e"> </span>m=C3=BAsica, <span c=
lass=3D"_ _7"> </span>es <span class=3D"_ _7"> </span>neces<span class=3D"_=
 _0"></span>ario </div><div class=3D"t m0 x2 h4 y4e ff4 fs0 fc0 sc0 ls0 ws0=
">resaltar <span class=3D"_ _9"></span>la <span class=3D"_ _9"></span>impor=
tancia <span class=3D"_ _9"></span>del <span class=3D"_ _9"></span>canto <s=
pan class=3D"_ _1"></span>en <span class=3D"_ _8"></span>la<span class=3D"_=
 _0"></span> <span class=3D"_ _9"></span>educaci=C3=B3n <span class=3D"_ _9=
"></span>general <span class=3D"_ _9"></span>no <span class=3D"_ _1"></span=
>solo <span class=3D"_ _8"></span>musical <span class=3D"_ _9"></span>del <=
span class=3D"_ _1"></span>ni=C3=B1o.<span class=3D"_ _3"></span> </div><di=
v class=3D"t m0 x2 h4 y4f ff4 fs0 fc0 sc0 ls0 ws0">Por <span class=3D"_ _1"=
></span>ejemplo, <span class=3D"_ _1"></span>el <span class=3D"_ _9"></span=
>cant<span class=3D"_ _0"></span>o <span class=3D"_ _1"></span>trasciende <=
span class=3D"_ _9"></span>la <span class=3D"_ _1"></span>propia <span clas=
s=3D"_ _1"></span>educaci=C3=B3n <span class=3D"_ _1"></span>musical <span =
class=3D"_ _1"></span>del <span class=3D"_ _1"></span>ni=C3=B1o <span class=
=3D"_ _9"></span>y <span class=3D"_ _1"></span>del <span class=3D"_ _1"></s=
pan>adulto </div><div class=3D"t m0 x2 h4 yd8 ff4 fs0 fc0 sc0 ls0 ws0">para=
 <span class=3D"_ _1"></span>formar <span class=3D"_ _9"></span>parte <span=
 class=3D"_ _1"></span>d<span class=3D"_ _3"></span>e <span class=3D"_ _1">=
</span>una <span class=3D"_ _9"></span>de <span class=3D"_ _1"></span>las <=
span class=3D"_ _9"></span>actividades <span class=3D"_ _1"></span>m=C3=A1s=
 <span class=3D"_ _9"></span>beneficiosas <span class=3D"_ _1"></span>para =
<span class=3D"_ _9"></span>el <span class=3D"_ _1"></span>ser <span class=
=3D"_ _9"></span>humano, </div><div class=3D"t m0 x2 h4 yd9 ff4 fs0 fc0 sc0=
 ls0 ws0">practicada  en  todas  las  culturas  y  civilizaciones.  Y  fina=
lmente,  en  cuanto  a  la </div><div class=3D"t m0 x2 h4 yda ff4 fs0 fc0 s=
c0 ls0 ws0">armon=C3=ADa <span class=3D"_ _14"> </span>(la <span class=3D"_=
 _14"> </span>percep<span class=3D"_ _0"></span>ci=C3=B3n <span class=3D"_ =
_14"> </span>y <span class=3D"_ _14"> </span>la <span class=3D"_ _12"> </sp=
an>conciencia <span class=3D"_ _d"> </span>m=C3=A1s <span class=3D"_ _12"> =
</span>elevada <span class=3D"_ _d"> </span>del <span class=3D"_ _12"> </sp=
an>sonido), <span class=3D"_ _d"> </span>exige <span class=3D"_ _14"> </spa=
n>u<span class=3D"_ _0"></span>na<span class=3D"_ _3"></span> </div><div cl=
ass=3D"t m0 x2 h4 ydb ff4 fs0 fc0 sc0 ls0 ws0">participaci=C3=B3n <span cla=
ss=3D"_ _9"></span>de <span class=3D"_ _8"></span>la <span class=3D"_ _1"><=
/span>mente, <span class=3D"_ _8"></span>en <span class=3D"_ _9"></span>ese=
 <span class=3D"_ _9"></span>sentido <span class=3D"_ _9"></span>desarrolla=
 <span class=3D"_ _8"></span>las <span class=3D"_ _9"></span>facultad<span =
class=3D"_ _0"></span>es <span class=3D"_ _9"></span>cognitivas <span class=
=3D"_ _9"></span>de <span class=3D"_ _9"></span>los </div><div class=3D"t m=
0 x2 h4 ydc ff4 fs0 fc0 sc0 ls0 ws0">estudiantes, siendo este, uno de los o=
bjetivos de la educaci=C3=B3n ecuatoriana. </div><div class=3D"t m0 x2 h4 y=
55 ff4 fs0 fc0 sc0 ls0 ws0">Esa <span class=3D"_ _a"> </span>estrecha <span=
 class=3D"_ _f"> </span>relaci=C3=B3n <span class=3D"_ _f"> </span>de <span=
 class=3D"_ _a"> </span>los <span class=3D"_ _f"> </span>elementos <span cl=
ass=3D"_ _a"> </span>de <span class=3D"_ _f"> </span>la <span class=3D"_ _a=
"> </span>m=C3=BAsica <span class=3D"_ _f"> </span>con <span class=3D"_ _f"=
> </span>la <span class=3D"_ _a"> </span>vida <span class=3D"_ _f"> </span>=
humana <span class=3D"_ _f"> </span>se </div><div class=3D"t m0 x2 h4 y56 f=
f4 fs0 fc0 sc0 ls0 ws0">manifiesta, m=C3=A1s concretamente, en <span class=
=3D"_ _0"></span>la educaci=C3=B3n del ni=C3=B1o <span class=3D"_ _0"></spa=
n>y del adolescente, donde se </div><div class=3D"t m0 x2 h4 y57 ff4 fs0 fc=
0 sc0 ls0 ws0">observa <span class=3D"_ _7"> </span>la <span class=3D"_ _1"=
> </span>importancia <span class=3D"_ _7"> </span>del <span class=3D"_ _7">=
 </span>desarrollo <span class=3D"_ _1"> </span>del <span class=3D"_ _7"> <=
/span>cuerpo <span class=3D"_ _7"> </span>f=C3=ADsico, <span class=3D"_ _1"=
> </span>emocional <span class=3D"_ _7"> </span>y <span class=3D"_ _7"> </s=
pan>mental <span class=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>su =
</div><div class=3D"t m0 x2 h4 ydd ff4 fs0 fc0 sc0 ls0 ws0">evoluci=C3=B3n =
<span class=3D"_ _8"></span>(y <span class=3D"_ _9"></span>por <span class=
=3D"_ _8"></span>este <span class=3D"_ _9"></span>orden), <span class=3D"_ =
_8"></span>lo <span class=3D"_ _9"></span>mismo <span class=3D"_ _8"></span=
>que <span class=3D"_ _9"></span>se <span class=3D"_ _8"></span>observa <sp=
an class=3D"_ _9"></span>en <span class=3D"_ _8"></span>la <span class=3D"_=
 _9"></span>m=C3=BAsica, <span class=3D"_ _8"></span>a <span class=3D"_ _9"=
></span>lo <span class=3D"_ _8"></span>largo <span class=3D"_ _8"></span>de=
 <span class=3D"_ _9"></span>la </div><div class=3D"t m0 x2 h4 yde ff4 fs0 =
fc0 sc0 ls0 ws0">historia, <span class=3D"_ _7"> </span>la <span class=3D"_=
 _7"> </span>aparici=C3=B3n <span class=3D"_ _7"> </span>del <span class=3D=
"_ _e"> </span>ritmo, <span class=3D"_ _7"> </span>de <span class=3D"_ _7">=
 </span>la <span class=3D"_ _7"> </span>melod=C3=ADa <span class=3D"_ _7"> =
</span>y <span class=3D"_ _e"> </span>la <span class=3D"_ _7"> </span>armon=
=C3=ADa. <span class=3D"_ _7"> </span>Por <span class=3D"_ _7"> </span>eso,=
 <span class=3D"_ _e"> </span>los <span class=3D"_ _e"> </span>grandes </di=
v><div class=3D"t m0 x2 h4 y2d ff4 fs0 fc0 sc0 ls0 ws0">pedagogos <span cla=
ss=3D"_ _1"></span>de <span class=3D"_ _9"></span>la <span class=3D"_ _1"><=
/span>m=C3=BAsica <span class=3D"_ _9"></span>-como <span class=3D"_ _1"></=
span>el <span class=3D"_ _9"></span>ya <span class=3D"_ _1"></span>citado <=
span class=3D"_ _9"></span>Willems<span class=3D"_ _0"></span>- <span class=
=3D"_ _9"></span>insisten <span class=3D"_ _1"></span>en <span class=3D"_ _=
9"></span>la <span class=3D"_ _1"></span>importancia <span class=3D"_ _1"><=
/span>de<span class=3D"_ _3"></span>l </div><div class=3D"c x6 yb w0 h0"><d=
iv class=3D"t m0 x2 h2 yd0 ff1 fs0 fc0 sc0 ls0 ws0">                       =
                         </div></div><div class=3D"t m0 x1d h2 yd0 ff1 fs0 =
fc0 sc0 ls0 ws0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 =
hb y5b ff1 fs4 fc0 sc0 ls0 ws0">12</div></div><div class=3D"t m0 x30 h4 y32=
 ff1 fs1 fc0 sc0 ls0 ws0"> Willems, E. (199<span class=3D"_ _0"></span>3). =
Ritmo musical. Buenos <span class=3D"_ _0"></span>Aires: Eudeba. </div></di=
v><div class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.0000=
00,1.000000,0.000000,0.000000]}"></div></div>
<div id=3D"pf8" class=3D"pf w0 h0" data-page-no=3D"8"><div class=3D"pc pc8 =
w0 h0"><img class=3D"bi x1f y0 w1 hc" alt=3D"" src=3D"data:image/png;base64=
,iVBORw0KGgoAAAANSUhEUgAAA/wAAAVsCAIAAAAKdQHVAAAACXBIWXMAABYlAAAWJQFJUiTwAA=
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EAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABgeGv3jiRmgpNUlREAgLNFcwAAw=
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AABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8=
AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAAg+g=
EAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEP=
wAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPSbAAAARD8AADCwvB73QR99e3+8PwAA=
6Ef/d7sO+ui358/7AwCALsd7AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAoh8AABD=
9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAK=
IfAABEPwAAIPoBAADRDwB7u3UgAAAAACDI33qQiyIApB8AAJB+AABA+gEAAOkHAADpBwAApB8AA=
JB+AABA+gEAAOkHAACkHwAAkH4AAFgL88AlyPRT3kQAAAAASUVORK5CYII=3D"><div class=
=3D"t m0 x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20 h=
4 y34 ff1 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0"></=
span>Ay<span class=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rillo,=
 Letty Araceli Delgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9 G=
rismaldo P<span class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></span=
> </div><div class=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div c=
lass=3D"c x1f y3 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0=
">164<span class=3D"ls0"> </span></div></div><div class=3D"c x21 y3 w2 h3">=
<div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=
=C3=ADa, <span class=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n=
<span class=3D"_ _0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=
=A9cnica de Manab=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><=
div class=3D"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t=
 m0 x22 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">desarrollo <span class=3D"_ _9"></s=
pan>del <span class=3D"_ _9"></span>cuerpo <span class=3D"_ _9"></span>f=C3=
=ADsico <span class=3D"_ _9"></span>a <span class=3D"_ _9"></span>trav=C3=
=A9s <span class=3D"_ _9"></span>del <span class=3D"_ _1"></span>ritmo <spa=
n class=3D"_ _9"></span>musical <span class=3D"_ _9"></span>(el <span class=
=3D"_ _9"></span>arte <span class=3D"_ _9"></span>del <span class=3D"_ _9">=
</span>movimiento <span class=3D"_ _9"></span>en <span class=3D"_ _9"></spa=
n>la </div><div class=3D"t m0 x22 h4 y37 ff4 fs0 fc0 sc0 ls0 ws0">R=C3=ADtm=
ica <span class=3D"_ _0"></span>de <span class=3D"_ _8"></span>Jaques-<span=
 class=3D"_ _0"></span>Dalcroze <span class=3D"_ _0"></span>o <span class=
=3D"_ _8"></span>en <span class=3D"_ _8"></span>la <span class=3D"_ _8"></s=
pan>Euritmia <span class=3D"_ _8"></span>de <span class=3D"_ _8"></span>R. =
<span class=3D"_ _8"></span>Steiner, <span class=3D"_ _8"></span>por <span =
class=3D"_ _8"></span>ejemplo), <span class=3D"_ _8"></span>del <span class=
=3D"_ _8"></span>cu<span class=3D"_ _0"></span>erpo </div><div class=3D"t m=
0 x22 h4 y38 ff4 fs0 fc0 sc0 ls0 ws0">emocional <span class=3D"_ _e"> </spa=
n>a <span class=3D"_ _e"> </span>trav=C3=A9s <span class=3D"_ _e"> </span>d=
e <span class=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>melod=C3=ADa=
 <span class=3D"_ _e"> </span>y <span class=3D"_ _e"> </span>el <span class=
=3D"_ _7"> </span>canto, <span class=3D"_ _b"> </span>y <span class=3D"_ _7=
"> </span>del <span class=3D"_ _e"> </span>cuerpo <span class=3D"_ _7"> </s=
pan>mental <span class=3D"_ _b"> </span>a <span class=3D"_ _7"> </span>trav=
=C3=A9s <span class=3D"_ _e"> </span>de <span class=3D"_ _7"> </span>la </d=
iv><div class=3D"t m0 x22 h4 y84 ff4 fs0 fc0 sc0 ls0 ws0">armon=C3=ADa. <sp=
an class=3D"_ _b"> </span> <span class=3D"_ _b"> </span>Este <span class=3D=
"_ _b"> </span>aut<span class=3D"_ _3"></span>or <span class=3D"_ _b"> </sp=
an>remarca <span class=3D"_ _b"> </span>que <span class=3D"_ _b"> </span>un=
 <span class=3D"_ _b"> </span>eficaz <span class=3D"_ _e"> </span>desarroll=
o <span class=3D"_ _b"> </span>afectivo <span class=3D"_ _b"> </span>del <s=
pan class=3D"_ _b"> </span>ni=C3=B1o <span class=3D"_ _b"> </span>sucede </=
div><div class=3D"t m0 x22 h4 y85 ff4 fs0 fc0 sc0 ls0 ws0">cuando  canta  y=
 <span class=3D"_ _f"> </span>que  el  canto <span class=3D"_ _f"> </span>e=
s  uno  de <span class=3D"_ _f"> </span>los  medios  naturales <span class=
=3D"_ _f"> </span>para  formar  su </div><div class=3D"t m0 x22 h4 y86 ff4 =
fs0 fc0 sc0 ls0 ws0">personalidad. </div><div class=3D"t m0 x22 h4 y87 ff4 =
fs0 fc0 sc0 ls0 ws0">Posiblemente  la  educaci=C3=B3n  musical,  d<span cla=
ss=3D"_ _0"></span>e  manera  general,  ha  sido  relegada  a<span class=3D=
"_ _0"></span>  un<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22=
 h4 y88 ff4 fs0 fc0 sc0 ls0 ws0">segundo <span class=3D"_ _b"> </span>plano=
 <span class=3D"_ _b"> </span>en <span class=3D"_ _b"> </span>los <span cla=
ss=3D"_ _e"> </span>sistemas <span class=3D"_ _b"> </span>educativos, <span=
 class=3D"_ _b"> </span>se <span class=3D"_ _b"> </span>ha <span class=3D"_=
 _b"> </span>cre=C3=ADdo <span class=3D"_ _e"> </span>q<span class=3D"_ _0"=
></span>ue <span class=3D"_ _b"> </span>su <span class=3D"_ _b"> </span>ens=
e=C3=B1anza <span class=3D"_ _e"> </span>est=C3=A1 </div><div class=3D"t m0=
 x22 h4 y89 ff4 fs0 fc0 sc0 ls0 ws0">dentro <span class=3D"_ _b"> </span>de=
 <span class=3D"_ _b"> </span>la <span class=3D"_ _b"> </span>distra<span c=
lass=3D"_ _3"></span>cci=C3=B3n <span class=3D"_ _b"> </span>antes <span cl=
ass=3D"_ _e"> </span>que <span class=3D"_ _b"> </span>de <span class=3D"_ _=
b"> </span>una <span class=3D"_ _b"> </span>estrategia <span class=3D"_ _e"=
> </span>para <span class=3D"_ _b"> </span>una <span class=3D"_ _b"> </span=
>mejor <span class=3D"_ _b"> </span>forma<span class=3D"_ _3"></span>ci=C3=
=B3n </div><div class=3D"t m0 x22 h4 y8b ff4 fs0 fc0 sc0 ls0 ws0">humanista=
 de los estudiantes.  </div><div class=3D"t m0 x22 h4 yd ff4 fs0 fc0 sc0 ls=
0 ws0">(Buzzian <span class=3D"_ _1"></span>&amp; <span class=3D"_ _1"></sp=
an>Herrera, <span class=3D"_ _9"></span>2014)</div><div class=3D"c x6 yb w0=
 h0"><div class=3D"t m0 x35 he ye ff4 fs6 fc0 sc0 ls1 ws0">13</div></div><d=
iv class=3D"t m0 xe h4 yd ff4 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _1"></=
span>vas <span class=3D"_ _1"></span>mucho <span class=3D"_ _9"></span>m=C3=
=A1s <span class=3D"_ _1"></span>all=C3=A1, <span class=3D"_ _1"></span>al =
<span class=3D"_ _1"></span>sostener <span class=3D"_ _9"></span>que <span =
class=3D"_ _1"> </span>la <span class=3D"_ _1"></span>pr=C3=A1ctica <span c=
lass=3D"_ _1"></span>de <span class=3D"_ _9"></span>la </div><div class=3D"=
t m0 x22 h4 ybd ff4 fs0 fc0 sc0 ls0 ws0">m=C3=BAsica, <span class=3D"_ _a">=
 </span>ense=C3=B1a <span class=3D"_ _f"> </span>a <span class=3D"_ _a"> </=
span>los <span class=3D"_ _a"> </span>estudiantes <span class=3D"_ _f"> </s=
pan>a <span class=3D"_ _a"> </span>vivir <span class=3D"_ _f"> </span>en <s=
pan class=3D"_ _a"> </span>democracia <span class=3D"_ _a"> </span>dando <s=
pan class=3D"_ _f"> </span>a <span class=3D"_ _a"> </span>entender <span cl=
ass=3D"_ _f"> </span>la </div><div class=3D"t m0 x22 h4 ybe ff4 fs0 fc0 sc0=
 ls0 ws0">importancia <span class=3D"_ _d"> </span>del <span class=3D"_ _d"=
> </span>canto <span class=3D"_ _d"> </span>para <span class=3D"_ _d"> </sp=
an>desarrollar <span class=3D"_ _d"> </span>ciudadanos <span class=3D"_ _d"=
> </span>soli<span class=3D"_ _0"></span>darios <span class=3D"_ _d"> </spa=
n>y <span class=3D"_ _d"> </span>responsables, </div><div class=3D"t m0 x22=
 h4 ybf ff4 fs0 fc0 sc0 ls0 ws0">tambi=C3=A9n <span class=3D"_ _e"> </span>=
considera <span class=3D"_ _b"> </span>que <span class=3D"_ _7"> </span>sol=
o <span class=3D"_ _b"> </span>en <span class=3D"_ _7"> </span>la <span cla=
ss=3D"_ _b"> </span>ense=C3=B1anza <span class=3D"_ _e"> </span>de <span cl=
ass=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>m=C3=BAsica <span clas=
s=3D"_ _b"> </span>los <span class=3D"_ _7"> </span>estudiantes <span class=
=3D"_ _b"> </span>est=C3=A1n<span class=3D"_ _3"></span> </div><div class=
=3D"t m0 x22 h4 yc0 ff4 fs0 fc0 sc0 ls0 ws0">alegres, <span class=3D"_ _9">=
</span>porque <span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>lo=
 <span class=3D"_ _9"></span>contrario <span class=3D"_ _9"></span>la <span=
 class=3D"_ _9"></span>clase <span class=3D"_ _9"></span>no <span class=3D"=
_ _9"></span>es <span class=3D"_ _9"></span>educativa. <span class=3D"_ _9"=
></span>Se <span class=3D"_ _9"></span>puede <span class=3D"_ _9"></span>af=
irmar <span class=3D"_ _9"></span>entonces </div><div class=3D"t m0 x22 h4 =
yc1 ff4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _12"> </span>la <span cla=
ss=3D"_ _12"> </span>m=C3=BAsica <span class=3D"_ _12"> </span>es <span cla=
ss=3D"_ _12"> </span>un <span class=3D"_ _14"> </span>medio <span class=3D"=
_ _12"> </span>id=C3=B3neo <span class=3D"_ _12"> </span>para <span class=
=3D"_ _12"> </span>aprender <span class=3D"_ _12"> </span>por <span class=
=3D"_ _12"> </span>ejemplo <span class=3D"_ _12"> </span>a <span class=3D"_=
 _14"> </span>resp<span class=3D"_ _0"></span>irar </div><div class=3D"t m0=
 x22 h4 y91 ff4 fs0 fc0 sc0 ls0 ws0">correctamente, <span class=3D"_ _7"> <=
/span>esa <span class=3D"_ _7"> </span>funci=C3=B3n <span class=3D"_ _e"> <=
/span>tan <span class=3D"_ _7"> </span>b=C3=A1sica <span class=3D"_ _7"> </=
span>e <span class=3D"_ _e"> </span>importante <span class=3D"_ _7"> </span=
>en <span class=3D"_ _7"> </span>la <span class=3D"_ _e"> </span>vida <span=
 class=3D"_ _e"> </span>humana <span class=3D"_ _7"> </span>y <span class=
=3D"_ _7"> </span>que <span class=3D"_ _e"> </span>se </div><div class=3D"t=
 m0 x22 h4 y92 ff4 fs0 fc0 sc0 ls0 ws0">realiza <span class=3D"_ _12"> </sp=
an>generalmente <span class=3D"_ _14"> </span>de <span class=3D"_ _12"> </s=
pan>una <span class=3D"_ _14"> </span>forma <span class=3D"_ _12"> </span>l=
igera <span class=3D"_ _12"> </span>y <span class=3D"_ _14"> </span>superfi=
cial. <span class=3D"_ _12"> </span>Aprender <span class=3D"_ _12"> </span>=
a <span class=3D"_ _14"> </span>realizar </div><div class=3D"t m0 x22 h4 y9=
3 ff4 fs0 fc0 sc0 ls0 ws0">inspiraciones <span class=3D"_ _12"> </span>y <s=
pan class=3D"_ _14"> </span>espiraciones <span class=3D"_ _12"> </span>lent=
as <span class=3D"_ _14"> </span>y <span class=3D"_ _12"> </span>profundas,=
 <span class=3D"_ _12"> </span>a <span class=3D"_ _14"> </span>contener <sp=
an class=3D"_ _12"> </span>debidamente <span class=3D"_ _12"> </span>l<span=
 class=3D"_ _3"></span>a </div><div class=3D"t m0 x22 h4 y94 ff4 fs0 fc0 sc=
0 ls0 ws0">respiraci=C3=B3n, <span class=3D"_ _1"></span>trae <span class=
=3D"_ _1"></span>co<span class=3D"_ _3"></span>nsigo <span class=3D"_ _1"><=
/span>muchos <span class=3D"_ _9"></span>beneficios <span class=3D"_ _1"></=
span>para <span class=3D"_ _1"></span>el <span class=3D"_ _1"></span>equili=
b<span class=3D"_ _3"></span>rio <span class=3D"_ _1"></span>emocional <spa=
n class=3D"_ _9"></span>y <span class=3D"_ _1"> </span>un <span class=3D"_ =
_1"></span>gran </div><div class=3D"t m0 x22 h4 y95 ff4 fs0 fc0 sc0 ls0 ws0=
">bienestar <span class=3D"_ _9"></span>general. <span class=3D"_ _9"></spa=
n>Las <span class=3D"_ _9"></span>clases <span class=3D"_ _1"></span>de <sp=
an class=3D"_ _9"></span>canto <span class=3D"_ _9"></span>deben <span clas=
s=3D"_ _9"></span>iniciar <span class=3D"_ _9"></span>al <span class=3D"_ _=
1"></span>ni=C3=B1o <span class=3D"_ _9"></span>en <span class=3D"_ _9"></s=
pan>el <span class=3D"_ _9"></span>empleo <span class=3D"_ _9"></span>adecu=
ado </div><div class=3D"t m0 x22 h4 ydf ff4 fs0 fc0 sc0 ls0 ws0">del diafra=
gma tanto para el canto como para una correcta respiraci=C3=B3n. </div><div=
 class=3D"t m0 x22 h4 y97 ff4 fs0 fc0 sc0 ls0 ws0">Si <span class=3D"_ _0">=
</span>bien <span class=3D"_ _0"></span>es <span class=3D"_ _0"></span>cier=
to <span class=3D"_ _0"></span>que, <span class=3D"_ _0"></span>en <span cl=
ass=3D"_ _0"></span>todo <span class=3D"_ _0"></span>el <span class=3D"_ _0=
"></span>mundo <span class=3D"_ _0"></span>durante <span class=3D"_ _0"></s=
pan>la <span class=3D"_ _0"></span>civilizaci=C3=B3n, <span class=3D"_ _0">=
</span>la <span class=3D"_ _0"></span>cultura <span class=3D"_ _0"></span>m=
usical <span class=3D"_ _0"></span>se </div><div class=3D"t m0 x22 h4 y98 f=
f4 fs0 fc0 sc0 ls0 ws0">convirti=C3=B3 <span class=3D"_ _1"> </span>en <spa=
n class=3D"_ _1"> </span>la <span class=3D"_ _7"> </span>cuna<span class=3D=
"_ _3"></span> <span class=3D"_ _1"></span>donde <span class=3D"_ _1"> </sp=
an>el <span class=3D"_ _7"> </span>ni=C3=B1o<span class=3D"_ _3"></span> <s=
pan class=3D"_ _1"></span>inicia <span class=3D"_ _1"></span>sus <span clas=
s=3D"_ _1"></span>primeras <span class=3D"_ _1"> </span>manifestaciones <sp=
an class=3D"_ _1"> </span>musicales, </div><div class=3D"t m0 x22 h4 y99 ff=
4 fs0 fc0 sc0 ls0 ws0">por <span class=3D"_ _9"></span>ello <span class=3D"=
_ _9"></span>su <span class=3D"_ _9"></span>canto <span class=3D"_ _9"></sp=
an>es <span class=3D"_ _9"></span>por <span class=3D"_ _9"></span>naturalez=
a <span class=3D"_ _9"></span>propia. <span class=3D"_ _1"></span> <span cl=
ass=3D"_ _8"></span>Por <span class=3D"_ _9"></span>tal <span class=3D"_ _1=
"></span>raz=C3=B3n, <span class=3D"_ _8"></span>se <span class=3D"_ _9"></=
span>considera <span class=3D"_ _9"></span>que <span class=3D"_ _1"></span>=
toda <span class=3D"_ _8"></span>la<span class=3D"_ _0"></span> </div><div =
class=3D"t m0 x22 h4 y9a ff4 fs0 fc0 sc0 ls0 ws0">acci=C3=B3n <span class=
=3D"_ _9"></span>musical <span class=3D"_ _9"></span>surge <span class=3D"_=
 _9"></span>en <span class=3D"_ _9"></span>el <span class=3D"_ _9"></span>s=
er <span class=3D"_ _9"></span>humano <span class=3D"_ _1"></span>desde <sp=
an class=3D"_ _9"></span>el <span class=3D"_ _9"></span>mismo <span class=
=3D"_ _9"></span>momento <span class=3D"_ _9"></span>de <span class=3D"_ _9=
"></span>su <span class=3D"_ _9"></span>existen<span class=3D"_ _0"></span>=
cia, </div><div class=3D"t m0 x22 h4 y9b ff4 fs0 fc0 sc0 ls0 ws0">convirti=
=C3=A9ndose <span class=3D"_ _b"> </span>en <span class=3D"_ _b"> </span>un=
 <span class=3D"_ _b"> </span>instrumento <span class=3D"_ _b"> </span>moti=
<span class=3D"_ _0"></span>vador <span class=3D"_ _b"> </span>que <span cl=
ass=3D"_ _b"> </span>impulse <span class=3D"_ _b"> </span>los <span class=
=3D"_ _b"> </span>sonidos <span class=3D"_ _b"> </span>musical<span class=
=3D"_ _0"></span>es </div><div class=3D"t m0 x22 h4 ye0 ff4 fs0 fc0 sc0 ls0=
 ws0">como parte integradora del aprendizaje.  </div><div class=3D"t m0 x22=
 h4 y77 ff4 fs0 fc0 sc0 ls0 ws0">Seg=C3=BAn <span class=3D"_ _9"></span>lo =
<span class=3D"_ _9"></span>que <span class=3D"_ _9"></span>afirma <span cl=
ass=3D"_ _9"></span>la <span class=3D"_ _9"></span>doctora <span class=3D"_=
 _9"></span>Gertraud <span class=3D"_ _9"></span>Berka-Schmid, <span class=
=3D"_ _9"></span>psicoterapeuta <span class=3D"_ _9"></span>y <span class=
=3D"_ _9"></span>profesora </div><div class=3D"t m0 x22 h4 y78 ff4 fs0 fc0 =
sc0 ls0 ws0">de <span class=3D"_ _0"></span>la <span class=3D"_ _8"></span>=
Universidad <span class=3D"_ _8"></span>de <span class=3D"_ _8"></span>M=C3=
=BAsica <span class=3D"_ _8"></span>y <span class=3D"_ _0"></span>Arte <spa=
n class=3D"_ _8"></span>de <span class=3D"_ _8"></span>Viena, <span class=
=3D"_ _0"></span>el <span class=3D"_ _8"></span>canto <span class=3D"_ _8">=
</span>deber=C3=ADa <span class=3D"_ _8"></span>ser <span class=3D"_ _8"></=
span>necesario <span class=3D"_ _0"></span>siempre </div><div class=3D"t m0=
 x22 h4 y9c ff4 fs0 fc0 sc0 ls0 ws0">como <span class=3D"_ _1"></span>un <s=
pan class=3D"_ _1"></span>medio <span class=3D"_ _9"></span>de <span class=
=3D"_ _1"></span>relajaci=C3=B3n <span class=3D"_ _1"></span>como <span cla=
ss=3D"_ _1"></span>si <span class=3D"_ _1"></span>fuera <span class=3D"_ _9=
"></span>tratamiento <span class=3D"_ _1"> </span>diario <span class=3D"_ _=
1"></span>en <span class=3D"_ _1"></span>nuestro <span class=3D"_ _9"></spa=
n>entorno, </div><div class=3D"t m0 x22 h4 y9d ff4 fs0 fc0 sc0 ls0 ws0">ayu=
da <span class=3D"_ _b"> </span>al <span class=3D"_ _e"> </span>cuerpo. <sp=
an class=3D"_ _b"> </span>Se <span class=3D"_ _e"> </span>observa <span cla=
ss=3D"_ _b"> </span>que <span class=3D"_ _b"> </span>tant<span class=3D"_ _=
3"></span>o <span class=3D"_ _e"> </span>padres <span class=3D"_ _b"> </spa=
n>y <span class=3D"_ _b"> </span>maestro<span class=3D"_ _3"></span>s <span=
 class=3D"_ _b"> </span>privan <span class=3D"_ _e"> </span>del <span class=
=3D"_ _b"> </span>arte <span class=3D"_ _e"> </span>de <span class=3D"_ _b"=
> </span>la </div><div class=3D"t m0 x22 h4 y9e ff4 fs0 fc0 sc0 ls0 ws0">m=
=C3=BAsica <span class=3D"_ _d"> </span>sin <span class=3D"_ _d"> </span>sa=
ber <span class=3D"_ _d"> </span>que <span class=3D"_ _d"> </span>ayuda <sp=
an class=3D"_ _d"> </span>al <span class=3D"_ _d"> </span>proceso <span cla=
ss=3D"_ _d"> </span>de <span class=3D"_ _d"> </span>aprendizaje<span class=
=3D"_ _3"></span>. <span class=3D"_ _d"> </span>En <span class=3D"_ _d"> </=
span>relaci=C3=B3n <span class=3D"_ _d"> </span>con <span class=3D"_ _d"> <=
/span>el<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 y9f ff=
4 fs0 fc0 sc0 ls0 ws0">aprendizaje, <span class=3D"_ _1"></span>los <span c=
lass=3D"_ _1"></span>educadores <span class=3D"_ _1"></span>cuentan <span c=
lass=3D"_ _9"></span>co<span class=3D"_ _0"></span>n <span class=3D"_ _1"><=
/span>bastantes <span class=3D"_ _9"></span>recurso<span class=3D"_ _0"></s=
pan>s <span class=3D"_ _1"></span>a <span class=3D"_ _1"></span>la <span cl=
ass=3D"_ _9"></span>hora <span class=3D"_ _1"> </span>de <span class=3D"_ _=
1"></span>ense=C3=B1ar, </div><div class=3D"t m0 x22 h4 ya0 ff4 fs0 fc0 sc0=
 ls0 ws0">aunque <span class=3D"_ _7"> </span>algunos <span class=3D"_ _7">=
 </span>no <span class=3D"_ _7"> </span>los <span class=3D"_ _1"> </span>co=
nsideren. <span class=3D"_ _7"> </span>Recursos <span class=3D"_ _7"> </spa=
n>como <span class=3D"_ _7"> </span>la <span class=3D"_ _7"> </span>voz, <s=
pan class=3D"_ _7"> </span>los <span class=3D"_ _1"> </span>ojos, <span cla=
ss=3D"_ _7"> </span>las <span class=3D"_ _7"> </span>manos, <span class=3D"=
_ _7"> </span>el </div><div class=3D"t m0 x22 h4 ye1 ff4 fs0 fc0 sc0 ls0 ws=
0">modo  de <span class=3D"_ _f"> </span>usar <span class=3D"_ _f"> </span>=
el <span class=3D"_ _f"> </span>cuerpo, <span class=3D"_ _f"> </span>las <s=
pan class=3D"_ _f"> </span>palabras <span class=3D"_ _f"> </span>y  por <sp=
an class=3D"_ _f"> </span>supuesto <span class=3D"_ _f"> </span>la <span cl=
ass=3D"_ _f"> </span>m=C3=BAsica. <span class=3D"_ _f"> </span>Todos  est<s=
pan class=3D"_ _0"></span>os </div><div class=3D"t m0 x22 h4 ye2 ff4 fs0 fc=
0 sc0 ls0 ws0">recursos <span class=3D"_ _9"></span>y <span class=3D"_ _8">=
</span>muchos <span class=3D"_ _9"></span>otros <span class=3D"_ _9"></span=
>se <span class=3D"_ _8"></span>pueden <span class=3D"_ _9"></span>y <span =
class=3D"_ _9"></span>deben <span class=3D"_ _8"></span>utiliz<span class=
=3D"_ _0"></span>ar <span class=3D"_ _8"></span>en <span class=3D"_ _9"></s=
pan>el <span class=3D"_ _9"></span>aula, <span class=3D"_ _8"></span>pero <=
span class=3D"_ _9"></span>se <span class=3D"_ _9"></span>sabe <span class=
=3D"_ _8"></span>que <span class=3D"_ _9"></span>la </div><div class=3D"t m=
0 x22 h4 ye3 ff4 fs0 fc0 sc0 ls0 ws0">educaci=C3=B3n <span class=3D"_ _8"><=
/span>hist=C3=B3ricamente, <span class=3D"_ _8"></span>y <span class=3D"_ _=
8"></span>todav=C3=ADa <span class=3D"_ _9"></span>hoy, <span class=3D"_ _0=
"></span>se <span class=3D"_ _9"></span>sirve <span class=3D"_ _0"></span>d=
e <span class=3D"_ _9"></span>unas <span class=3D"_ _0"></span>herramientas=
 <span class=3D"_ _9"></span>b=C3=A1sicas. <span class=3D"_ _0"></span>Es <=
/div><div class=3D"t m0 x22 h4 ye4 ff4 fs0 fc0 sc0 ls0 ws0">interesante  ve=
r, <span class=3D"_ _f"> </span>tambi=C3=A9n, <span class=3D"_ _f"> </span>=
que <span class=3D"_ _f"> </span>las <span class=3D"_ _f"> </span>personas =
<span class=3D"_ _f"> </span>que <span class=3D"_ _f"> </span>ense=C3=B1an =
<span class=3D"_ _f"> </span>conocen  muy<span class=3D"_ _0"></span>  bien=
 <span class=3D"_ _f"> </span>la </div><div class=3D"t m0 x22 h4 ye5 ff4 fs=
0 fc0 sc0 ls0 ws0">disciplina <span class=3D"_ _8"></span>que <span class=
=3D"_ _9"></span>imparten, <span class=3D"_ _9"></span>pero <span class=3D"=
_ _8"></span>no <span class=3D"_ _9"></span>siempre <span class=3D"_ _8"></=
span>saben <span class=3D"_ _9"></span>suficiente <span class=3D"_ _8"></sp=
an>s<span class=3D"_ _0"></span>obre <span class=3D"_ _9"></span>la <span c=
lass=3D"_ _8"></span>manera <span class=3D"_ _9"></span>como <span class=3D=
"_ _8"></span>la<span class=3D"_ _0"></span> </div><div class=3D"c x6 yb w0=
 h0"><div class=3D"t m0 x22 h2 ye6 ff1 fs0 fc0 sc0 ls0 ws0">               =
                                 </div></div><div class=3D"t m0 x28 h2 ye6 =
ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"=
t m0 x22 hb y30 ff1 fs4 fc0 sc0 ls0 ws0">13</div></div><div class=3D"t m0 x=
33 h4 y31 ff1 fs1 fc0 sc0 ls0 ws0"> Buzzian, Benaisa, <span class=3D"_ _0">=
</span>&amp; Herrera, T<span class=3D"_ _0"></span>orres, L. (2014). M=C3=
=BAsica y emociones en ni=C3=B1os de <span class=3D"_ _0"></span>4 a 8 a=C3=
=B1os. Dedica, r<span class=3D"_ _0"></span>e<span class=3D"_ _0"></span>vi=
sta de educa=C3=A7=C3=A3o </div><div class=3D"t m0 x22 h4 y32 ff1 fs1 fc0 s=
c0 ls0 ws0">e humanidades. </div></div><div class=3D"pi" data-data=3D"{&quo=
t;ctm&quot;:[1.000000,0.000000,0.000000,1.000000,0.000000,0.000000]}"></div=
></div>
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A6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQ=
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ADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4A=
AED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8=
AAOh+AADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAHQ/AACg+wEAAN0PAADofg=
AAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAED3A=
wAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA+HfrmYeSmBRcpKoMAQC4mn0/AAD0F7tG=
AABoz74fAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDAAC=
6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAN=
D9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AADgPjECA=
AA4Y3+/Ju7+qvIJAQDgp8/2nPfl/ecDAAD96X4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA=
QPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3A/B=
tt44FAAAAAAb5W09jR1EEAN4PAAB4PwAA4P0AAID3AwAA3g8AAN4PAAB4PwAA4P0AAID3AwAA3g=
8AAHg/AADg/QAAgPcDAID3AwAA3g8AAHg/AADwEZESJYke3PIaAAAAAElFTkSuQmCC"><div cl=
ass=3D"t m0 x2 h5 y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=3D"_ =
_0"></span>nosis. Revista de Filosof=C3=ADa, Let<span class=3D"_ _0"></span=
>ras y Ciencias de la Educaci=C3=B3n <span class=3D"_ _0"></span><span clas=
s=3D"ls1">                              <span class=3D"_ _3"></span>     <s=
pan class=3D"ls0">            ISSN </span>2588<span class=3D"ls0">-0578 </s=
pan></span></div><div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0">M=C3=
=9ASICA COMO MEDIO <span class=3D"_ _0"></span>DE ENSE=C3=91<span class=3D"=
_ _0"></span>ANZA-APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91OS<spa=
n class=3D"_ _0"></span><span class=3D"fs6"> </span></div><div class=3D"t m=
0 x2 h2 y5e ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2 h3"><d=
iv class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o 2020.<s=
pan class=3D"_ _0"></span> N=C3=BAmero 2, Abril<span class=3D"_ _0"></span>=
-Junio </div></div><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x5 h5 y4=
 ff2 fs1 fc1 sc0 ls1 ws0">165<span class=3D"ls0"> </span></div></div><div c=
lass=3D"t m0 x2 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2=
 h4 y5f ff4 fs0 fc0 sc0 ls0 ws0">aprendieron, <span class=3D"_ _8"></span>n=
i <span class=3D"_ _9"></span>sobre <span class=3D"_ _8"></span>el <span cl=
ass=3D"_ _8"></span>modo <span class=3D"_ _9"></span>de <span class=3D"_ _8=
"></span>transmitirla <span class=3D"_ _8"></span>a <span class=3D"_ _9"></=
span>los <span class=3D"_ _8"></span>dem=C3=A1s. <span class=3D"_ _8"></spa=
n>Es <span class=3D"_ _9"></span>justamente <span class=3D"_ _8"></span>sob=
re <span class=3D"_ _9"></span>los </div><div class=3D"t m0 x2 h4 y60 ff4 f=
s0 fc0 sc0 ls0 ws0">modos de aprender y transmitir de lo que nos ocuparemos=
 en este apartado. </div><div class=3D"t m0 x2 h4 yd1 ff4 fs0 fc0 sc0 ls0 w=
s0">En <span class=3D"_ _1"></span>los <span class=3D"_ _9"></span>=C3=BAlt=
imos <span class=3D"_ _1"></span>veinte <span class=3D"_ _9"></span>a=C3=B1=
os, <span class=3D"_ _1"></span>especialmente, <span class=3D"_ _9"></span>=
La <span class=3D"_ _1"></span>Programaci=C3=B3n <span class=3D"_ _9"></spa=
n>Neuroling=C3=BC=C3=ADstica <span class=3D"_ _1"></span>(PNL) </div><div c=
lass=3D"t m0 x2 h4 y2 ff4 fs0 fc0 sc0 ls0 ws0">el <span class=3D"_ _7"> </s=
pan>cual <span class=3D"_ _7"> </span>utiliza <span class=3D"_ _7"> </span>=
la <span class=3D"_ _1"> </span>m=C3=BAsica <span class=3D"_ _7"> </span>co=
mo <span class=3D"_ _7"> </span>terapia,<span class=3D"_ _3"></span> <span =
class=3D"_ _7"> </span>ha <span class=3D"_ _7"> </span>tenido <span class=
=3D"_ _7"> </span>impacto <span class=3D"_ _1"> </span>en <span class=3D"_ =
_7"> </span>la <span class=3D"_ _7"> </span>ense=C3=B1anza <span class=3D"_=
 _7"> </span>en<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>un=
<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y6 ff4 fs0 fc0 =
sc0 ls0 ws0">sentido <span class=3D"_ _e"> </span>amplio. <span class=3D"_ =
_b"> </span>Se <span class=3D"_ _7"> </span>la <span class=3D"_ _b"> </span=
>ha <span class=3D"_ _7"> </span>usado <span class=3D"_ _b"> </span>en <spa=
n class=3D"_ _7"> </span>ent<span class=3D"_ _0"></span>renamientos <span c=
lass=3D"_ _e"> </span>de <span class=3D"_ _e"> </span>em<span class=3D"_ _0=
"></span>presas <span class=3D"_ _e"> </span>para <span class=3D"_ _e"> </s=
pan>el <span class=3D"_ _b"> </span>=C3=A1rea <span class=3D"_ _e"> </span>=
de </div><div class=3D"t m0 x2 h4 y7 ff4 fs0 fc0 sc0 ls0 ws0">ventas <span =
class=3D"_ _9"></span>y <span class=3D"_ _9"></span>entrevistas <span class=
=3D"_ _9"></span>de <span class=3D"_ _9"></span>recursos <span class=3D"_ _=
9"></span>humanos. <span class=3D"_ _9"></span>En <span class=3D"_ _9"></sp=
an>la <span class=3D"_ _9"></span>ense=C3=B1anza <span class=3D"_ _9"></spa=
n>espec=C3=ADfica, <span class=3D"_ _9"></span>hace <span class=3D"_ _9"></=
span>m=C3=A1s <span class=3D"_ _9"></span>o </div><div class=3D"t m0 x2 h4 =
y8 ff4 fs0 fc0 sc0 ls0 ws0">menos <span class=3D"_ _7"> </span>el <span cla=
ss=3D"_ _7"> </span>mismo <span class=3D"_ _7"> </span>tiempo, <span class=
=3D"_ _7"> </span>comenzaron <span class=3D"_ _7"> </span>los <span class=
=3D"_ _7"> </span>primeros <span class=3D"_ _7"> </span>m=C3=A9todos <span =
class=3D"_ _7"> </span>para <span class=3D"_ _7"> </span>ni=C3=B1os <span c=
lass=3D"_ _7"> </span>utilizando </div><div class=3D"t m0 x2 h4 y64 ff4 fs0=
 fc0 sc0 ls0 ws0">esta <span class=3D"_ _8"></span>herramienta <span class=
=3D"_ _9"></span>con <span class=3D"_ _8"></span>mucho <span class=3D"_ _8"=
></span>=C3=A9xito. <span class=3D"_ _9"></span>El <span class=3D"_ _8"></s=
pan>primero <span class=3D"_ _9"></span>en <span class=3D"_ _8"></span>desa=
rrollar <span class=3D"_ _8"></span>un <span class=3D"_ _9"></span>m=C3=A9t=
odo <span class=3D"_ _8"></span>para <span class=3D"_ _9"></span>ni=C3=B1os=
<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y65 ff4 fs0 fc0=
 sc0 ls0 ws0">fue  Herbert  Puchta,  Doctor  en  Pedagog=C3=ADa  de  la  Un=
iversidad  de  Graz  en  Viena,<span class=3D"_ _3"></span> </div><div clas=
s=3D"t m0 x2 h4 y66 ff4 fs0 fc0 sc0 ls0 ws0">Austria, <span class=3D"_ _1">=
 </span>Master <span class=3D"_ _7"> </span>Practitioner <span class=3D"_ _=
1"></span>en <span class=3D"_ _1"> </span>PNL <span class=3D"_ _7"> </span>=
y <span class=3D"_ _1"> </span>profesor <span class=3D"_ _7"> </span>de <sp=
an class=3D"_ _1"></span>la <span class=3D"_ _1"> </span>Academia <span cla=
ss=3D"_ _7"> </span>de <span class=3D"_ _1"></span>Pedagog=C3=ADa <span cla=
ss=3D"_ _1"> </span>en <span class=3D"_ _7"> </span>la </div><div class=3D"=
t m0 x2 h4 y67 ff4 fs0 fc0 sc0 ls0 ws0">Carrera de Entrenamiento Docente en=
 Graz. (O Connor, 2007)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m=
0 x2d he ye7 ff4 fs6 fc0 sc0 ls1 ws0">14</div></div><div class=3D"t m0 x36 =
h4 y67 ff4 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2 h4 ya3 ff4 fs0=
 fc0 sc0 ls0 ws0">La  Programaci=C3=B3n  Neurolinguistica  (PNL),  es  la  =
primera  se  incorpora  de  manera </div><div class=3D"t m0 x2 h4 ya4 ff4 f=
s0 fc0 sc0 ls0 ws0">oficial, la utilizaci=C3=B3n de la m=C3=BAsica en el ap=
rendizaje y sobre esa base ha elaborado un </div><div class=3D"t m0 x2 h4 y=
a5 ff4 fs0 fc0 sc0 ls0 ws0">grupo <span class=3D"_ _9"></span>de <span clas=
s=3D"_ _1"></span>estrategias <span class=3D"_ _9"></span>que <span class=
=3D"_ _9"></span>han <span class=3D"_ _1"></span>dado <span class=3D"_ _9">=
</span>resultado. <span class=3D"_ _9"></span>Es <span class=3D"_ _9"></spa=
n>un <span class=3D"_ _9"></span>grupo <span class=3D"_ _1"></span>de <span=
 class=3D"_ _9"></span>estrategias <span class=3D"_ _9"></span>pr=C3=A1ctic=
as </div><div class=3D"t m0 x2 h4 ya6 ff4 fs0 fc0 sc0 ls0 ws0">que <span cl=
ass=3D"_ _b"> </span>tienen <span class=3D"_ _b"> </span>como <span class=
=3D"_ _b"> </span>objetivo <span class=3D"_ _e"> </span>lograr <span class=
=3D"_ _b"> </span>un <span class=3D"_ _b"> </span>fin. <span class=3D"_ _b"=
> </span>Ofrece <span class=3D"_ _b"> </span>una <span class=3D"_ _e"> </sp=
an>vista <span class=3D"_ _b"> </span>positiva <span class=3D"_ _b"> </span=
>y <span class=3D"_ _b"> </span>pr=C3=A1ctica <span class=3D"_ _b"> </span>=
del </div><div class=3D"t m0 x2 h4 yd2 ff4 fs0 fc0 sc0 ls0 ws0">aprendizaje=
 para que las personas sean m=C3=A1s efectivos como aprendientes a cualquie=
r </div><div class=3D"t m0 x2 h4 yd3 ff4 fs0 fc0 sc0 ls0 ws0">edad. Como pa=
rte <span class=3D"_ _0"></span>de sus <span class=3D"_ _0"></span>estrateg=
ias la PNL <span class=3D"_ _0"></span>relaciona las pal<span class=3D"_ _0=
"></span>abras, los pensamientos </div><div class=3D"t m0 x2 h4 yd4 ff4 fs0=
 fc0 sc0 ls0 ws0">y <span class=3D"_ _8"></span>el <span class=3D"_ _9"></s=
pan>comportamiento <span class=3D"_ _8"></span>a <span class=3D"_ _9"></spa=
n>los <span class=3D"_ _8"></span>fines <span class=3D"_ _9"></span>y <span=
 class=3D"_ _8"></span>objetivos. <span class=3D"_ _9"></span>Se <span clas=
s=3D"_ _8"></span>centra <span class=3D"_ _9"></span>en <span class=3D"_ _8=
"></span>la <span class=3D"_ _9"></span>comunicaci=C3=B3n <span class=3D"_ =
_9"></span>efectiva <span class=3D"_ _8"></span>y </div><div class=3D"t m0 =
x2 h4 yd5 ff4 fs0 fc0 sc0 ls0 ws0">se  propone  como  herramienta  para  fa=
cilitar  el  aprendizaje,  la  comunicaci=C3=B3n,  el </div><div class=3D"t=
 m0 x2 h4 ye8 ff4 fs0 fc0 sc0 ls0 ws0">an=C3=A1lisis, etc.  </div><div clas=
s=3D"t m0 x2 h4 y19 ff4 fs0 fc0 sc0 ls0 ws0">En <span class=3D"_ _9"></span=
>relaci=C3=B3n <span class=3D"_ _1"></span>a <span class=3D"_ _9"></span>lo=
s <span class=3D"_ _9"></span>diversos <span class=3D"_ _1"></span>m=C3=A9t=
odos <span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>ense=C3=B1a=
nza <span class=3D"_ _1"></span>como <span class=3D"_ _9"></span>componente=
 <span class=3D"_ _9"></span>principal <span class=3D"_ _1"></span>en <span=
 class=3D"_ _9"></span>el </div><div class=3D"t m0 x2 h4 yab ff4 fs0 fc0 sc=
0 ls0 ws0">proceso <span class=3D"_ _7"> </span>pedag=C3=B3gico, <span clas=
s=3D"_ _7"> </span>el <span class=3D"_ _7"> </span>orden, <span class=3D"_ =
_7"> </span>la <span class=3D"_ _7"> </span>secue<span class=3D"_ _0"></spa=
n>ncia <span class=3D"_ _7"> </span>y <span class=3D"_ _7"> </span>la <span=
 class=3D"_ _7"> </span>organizaci=C3=B3n <span class=3D"_ _7"> </span>inte=
rna, <span class=3D"_ _7"> </span>as=C3=AD <span class=3D"_ _7"> </span>com=
o <span class=3D"_ _7"> </span>la </div><div class=3D"t m0 x2 h4 yac ff4 fs=
0 fc0 sc0 ls0 ws0">determinaci=C3=B3n <span class=3D"_ _e"> </span>y <span =
class=3D"_ _e"> </span>el <span class=3D"_ _e"> </span>camino <span class=
=3D"_ _e"> </span>a <span class=3D"_ _e"> </span>seguir <span class=3D"_ _b=
"> </span> <span class=3D"_ _7"> </span>implica <span class=3D"_ _e"> </spa=
n>una <span class=3D"_ _e"> </span>organiz<span class=3D"_ _0"></span>aci=
=C3=B3n <span class=3D"_ _e"> </span> <span class=3D"_ _e"> </span>desde <s=
pan class=3D"_ _e"> </span>el <span class=3D"_ _e"> </span>aspecto </div><d=
iv class=3D"t m0 x2 h4 yad ff4 fs0 fc0 sc0 ls0 ws0">interno, <span class=3D=
"_ _7"> </span>por <span class=3D"_ _1"></span>ello, <span class=3D"_ _7"> =
</span>se<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>consider=
a <span class=3D"_ _1"></span>necesario <span class=3D"_ _7"> </span>aplica=
r <span class=3D"_ _1"> </span>de <span class=3D"_ _7"> </span>acorde <span=
 class=3D"_ _7"> </span>a <span class=3D"_ _1"></span>lo <span class=3D"_ _=
7"> </span>planificado <span class=3D"_ _1"></span>en <span class=3D"_ _7">=
 </span>sus<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 yae =
ff4 fs0 fc0 sc0 ls0 ws0">aulas <span class=3D"_ _7"> </span>de <span class=
=3D"_ _1"> </span>clase, <span class=3D"_ _7"> </span>tomando <span class=
=3D"_ _7"> </span>en <span class=3D"_ _1"> </span>cuenta <span class=3D"_ _=
7"> </span>que<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span>es =
<span class=3D"_ _7"> </span>la <span class=3D"_ _1"></span>actividad <span=
 class=3D"_ _7"> </span>pri<span class=3D"_ _3"></span>mordial <span class=
=3D"_ _7"> </span>que <span class=3D"_ _1"> </span>conlleva <span class=3D"=
_ _7"> </span>al </div><div class=3D"t m0 x2 h4 yd7 ff4 fs0 fc0 sc0 ls0 ws0=
">cumplimiento <span class=3D"_ _12"> </span>de <span class=3D"_ _5"> </spa=
n>los <span class=3D"_ _12"> </span>objetivos <span class=3D"_ _12"> </span=
> <span class=3D"_ _12"> </span>en <span class=3D"_ _5"> </span>las <span c=
lass=3D"_ _12"> </span>diferentes <span class=3D"_ _12"> </span>programacio=
nes <span class=3D"_ _12"> </span>did=C3=A1cticas </div><div class=3D"t m0 =
x2 h4 ye9 ff4 fs0 fc0 sc0 ls0 ws0">establecidas  como  programas.  En  dich=
os  programas  de  estudios  se  encuentran </div><div class=3D"t m0 x2 h4 =
yea ff4 fs0 fc0 sc0 ls0 ws0">vinculados <span class=3D"_ _e"> </span>o <spa=
n class=3D"_ _b"> </span>relacionados <span class=3D"_ _7"> </span>los <spa=
n class=3D"_ _b"> </span>principales <span class=3D"_ _7"> </span>elementos=
 <span class=3D"_ _b"> </span>de <span class=3D"_ _7"> </span>la <span clas=
s=3D"_ _e"> </span>ense=C3=B1anza, <span class=3D"_ _b"> </span>tales <span=
 class=3D"_ _7"> </span>como </div><div class=3D"t m0 x2 h4 yeb ff4 fs0 fc0=
 sc0 ls0 ws0">objetivos, <span class=3D"_ _b"> </span>contenidos, <span cla=
ss=3D"_ _b"> </span>medios <span class=3D"_ _c"> </span>y <span class=3D"_ =
_b"> </span>m=C3=A9todos <span class=3D"_ _c"> </span>de <span class=3D"_ _=
b"> </span>ense=C3=B1anza, <span class=3D"_ _b"> </span>as=C3=AD <span clas=
s=3D"_ _c"> </span>mismo <span class=3D"_ _b"> </span>involucra <span class=
=3D"_ _b"> </span>los </div><div class=3D"t m0 x2 h4 yec ff4 fs0 fc0 sc0 ls=
0 ws0">actores <span class=3D"_ _11"> </span>principales <span class=3D"_ _=
a"> </span>del <span class=3D"_ _11"> </span>proceso <span class=3D"_ _11">=
 </span>acad=C3=A9mico <span class=3D"_ _11"> </span>como <span class=3D"_ =
_11"> </span>son <span class=3D"_ _11"> </span>los <span class=3D"_ _11"> <=
/span>docentes-estudiantes, </div><div class=3D"t m0 x2 h4 yed ff4 fs0 fc0 =
sc0 ls0 ws0">quienes constituyen los pilares para el =C3=A9xito en el inter=
aprendizaje.    </div><div class=3D"t m0 x2 h4 yd9 ff4 fs0 fc0 sc0 ls0 ws0"=
>Cabe <span class=3D"_ _d"> </span>destacar <span class=3D"_ _d"> </span>qu=
e <span class=3D"_ _d"> </span>en <span class=3D"_ _d"> </span>el <span cla=
ss=3D"_ _d"> </span>acto <span class=3D"_ _d"> </span>educativo <span class=
=3D"_ _d"> </span>se <span class=3D"_ _d"> </span>involucra <span class=3D"=
_ _d"> </span>tipos <span class=3D"_ _d"> </span>de <span class=3D"_ _d"> <=
/span>ense=C3=B1anza <span class=3D"_ _d"> </span>y </div><div class=3D"t m=
0 x2 h4 yda ff4 fs0 fc0 sc0 ls0 ws0">aprendizaje, <span class=3D"_ _0"></sp=
an>con <span class=3D"_ _0"></span>el <span class=3D"_ _8"></span>prop=C3=
=B3sito <span class=3D"_ _0"></span>de <span class=3D"_ _8"></span>empodera=
rse <span class=3D"_ _0"></span>de <span class=3D"_ _8"></span>nuevos <span=
 class=3D"_ _0"></span>sabe<span class=3D"_ _0"></span>res <span class=3D"_=
 _0"></span>en <span class=3D"_ _0"></span>el <span class=3D"_ _0"></span>c=
ual <span class=3D"_ _8"></span>ju<span class=3D"_ _0"></span>ega <span cla=
ss=3D"_ _0"></span>un </div><div class=3D"t m0 x2 h4 ydb ff4 fs0 fc0 sc0 ls=
0 ws0">papel <span class=3D"_ _1"></span>protag=C3=B3nico <span class=3D"_ =
_1"></span>la <span class=3D"_ _1"></span>actividad <span class=3D"_ _9"></=
span>informativa <span class=3D"_ _1"> </span>del <span class=3D"_ _1"></sp=
an>docente, <span class=3D"_ _1"></span>y <span class=3D"_ _1"></span>por <=
span class=3D"_ _1"></span>otro <span class=3D"_ _9"></span>lado <span clas=
s=3D"_ _1"></span>la <span class=3D"_ _1"></span>actividad </div><div class=
=3D"t m0 x2 h4 ydc ff4 fs0 fc0 sc0 ls0 ws0">cognoscitiva <span class=3D"_ _=
12"> </span>de <span class=3D"_ _14"> </span>los <span class=3D"_ _12"> </s=
pan>educandos. <span class=3D"_ _14"> </span> <span class=3D"_ _12"> </span=
>Por <span class=3D"_ _12"> </span>lo <span class=3D"_ _14"> </span>tanto, =
<span class=3D"_ _12"> </span>debe <span class=3D"_ _12"> </span>considerar=
se <span class=3D"_ _14"> </span>el <span class=3D"_ _12"> </span>trabajo <=
/div><div class=3D"t m0 x2 h4 yee ff4 fs0 fc0 sc0 ls0 ws0">independiente <s=
pan class=3D"_ _0"></span>bajo <span class=3D"_ _8"></span>l<span class=3D"=
_ _0"></span>a <span class=3D"_ _0"></span>direcci=C3=B3n <span class=3D"_ =
_8"></span>del <span class=3D"_ _8"></span>facilitador <span class=3D"_ _8"=
></span>que <span class=3D"_ _8"></span>gu=C3=ADa <span class=3D"_ _8"></sp=
an>y <span class=3D"_ _8"></span>supervisa <span class=3D"_ _8"></span>la <=
span class=3D"_ _8"></span>actividad. <span class=3D"_ _8"></span> <span cl=
ass=3D"_ _8"></span>De </div><div class=3D"t m0 x2 h4 yef ff4 fs0 fc0 sc0 l=
s0 ws0">acuerdo <span class=3D"_ _7"> </span>a <span class=3D"_ _1"> </span=
>lo <span class=3D"_ _7"> </span>expresado <span class=3D"_ _7"> </span>por=
 <span class=3D"_ _1"> </span>la <span class=3D"_ _7"> </span>UNESCO<span c=
lass=3D"_ _3"></span> <span class=3D"_ _7"> </span>(2000) <span class=3D"_ =
_7"> </span>privilegia <span class=3D"_ _1"></span>el <span class=3D"_ _7">=
 </span>trabajo <span class=3D"_ _1"> </span>en <span class=3D"_ _7"> </spa=
n>equipo <span class=3D"_ _1"> </span>que </div><div class=3D"t m0 x2 h4 yb=
5 ff4 fs0 fc0 sc0 ls0 ws0">conduce <span class=3D"_ _0"></span>al <span cla=
ss=3D"_ _8"></span>=C3=A9xito <span class=3D"_ _8"></span>pedag=C3=B3gico, =
<span class=3D"_ _8"></span>por <span class=3D"_ _8"></span>lo <span class=
=3D"_ _8"></span>tanto, <span class=3D"_ _8"></span>el <span class=3D"_ _8"=
></span>trabajo <span class=3D"_ _8"></span>cooperativo <span class=3D"_ _8=
"></span>es <span class=3D"_ _8"></span>el <span class=3D"_ _0"></span>m=C3=
=A1s <span class=3D"_ _8"></span>emplea<span class=3D"_ _0"></span>do<span =
class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 yf0 ff4 fs0 fc0 sc0 l=
s0 ws0">en los centros <span class=3D"_ _0"></span>de educaci=C3=B3n <span =
class=3D"_ _0"></span>en general como <span class=3D"_ _0"></span>proceso d=
e pen<span class=3D"_ _0"></span>samiento colectivo, en <span class=3D"_ _0=
"></span>el </div><div class=3D"t m0 x2 h4 yf1 ff4 fs0 fc0 sc0 ls0 ws0">que=
 <span class=3D"_ _9"></span>se <span class=3D"_ _8"></span>destaca <span c=
lass=3D"_ _9"></span>la <span class=3D"_ _9"></span>participaci=C3=B3n <spa=
n class=3D"_ _9"></span>tanto <span class=3D"_ _8"></span>del <span class=
=3D"_ _9"></span>docente <span class=3D"_ _9"></span>como <span class=3D"_ =
_8"></span>del <span class=3D"_ _9"></span>estudiante <span class=3D"_ _9">=
</span>en <span class=3D"_ _8"></span>relaci=C3=B3n <span class=3D"_ _9"></=
span>a </div><div class=3D"t m0 x2 h4 yf2 ff4 fs0 fc0 sc0 ls0 ws0">la adqui=
sici=C3=B3n de nuevos conocimientos. </div><div class=3D"c x6 yb w0 h0"><di=
v class=3D"t m0 x2 h2 yd0 ff1 fs0 fc0 sc0 ls0 ws0">                        =
                        </div></div><div class=3D"t m0 x1d h2 yd0 ff1 fs0 f=
c0 sc0 ls0 ws0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 h=
b y5b ff1 fs4 fc0 sc0 ls0 ws0">14</div></div><div class=3D"t m0 x30 h4 y32 =
ff1 fs1 fc0 sc0 ls0 ws0"> O Connor, J. (2<span class=3D"_ _0"></span>007). =
<span class=3D"ff7">Introducci=C3=B3n <span class=3D"_ _0"></span>a la PNL.=
</span> Barcelo<span class=3D"_ _0"></span>na: Espa=C3=B1a. </div></div><di=
v class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.=
000000,0.000000,0.000000]}"></div></div>
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A9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPAA=
CIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAABEPwAAIPoBAADRDwAAiH4AA=
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AEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0Aw=
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ARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AA=
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ABEPwAAIPoBAADRDwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8A=
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gAAQPQDAACiHwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0=
AwAAoh8AABD9AACA6AcAAEQ/AACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQBA9AMAAKI=
fAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAQP=
QDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAABEPwAAIPoBAADRDwAAiH4AAED0AwAAo=
h8AABD9AACA6AcAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ=
/QAAgOgHAABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAID=
oBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAE=
S/CQAAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAKIfAAAQ/QAAgOgHAABEPwAAIPoBA=
ADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAARD8AACD6AQAA0Q8A=
AIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AACA6AcAANEPAACIfgA=
AQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQBA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDw=
AAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+A=
ABA9AMAAKIfAABEPwAAIPoBAADRDwAAiH4AAED0AwAAP1i7dyQxExykqowAABzNST8AAEwuDhoB=
AGBuTvoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACiHwAAEP0AAIDoBwAARD8AACD=
6AQAA0Q8AAIh+AAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAAg+gEAAN=
EPAACIfgAAQPQDAACiHwAAEP0AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAADRDwAAi=
H4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQAA=
0Q8AAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9JgAAANEPAACIfgAAQPQDAACiHwA=
AEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAED0AwAAoh8AABD9AA=
CA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHA=
ABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0A=
AIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAiH4AAED0AwAAoh8AABD9AACA6Ac=
AAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AAAQ/QAAgOgHAABEPw=
AAIPoBAADRDwAAiH4AAED0AwCA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0AACD6A=
QAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAADRDwAAiH4AAED0AwAAoh8AADheHrfroI++PV/e=
HwAA9KP/vZ0HffTL/eP9AQBAl997AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAoh8=
AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9A=
MAAKIfAABEPwAAIPoBAADRD8C33ToQAAAAABDkbz3IRREASD8AACD9AACA9AMAANIPAADSDwAAS=
D8AACD9AACA9AMAANIPAABIPwAAIP0AALAWdL4lyLcHYjoAAAAASUVORK5CYII=3D"><div cla=
ss=3D"t m0 x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20=
 h4 y34 ff1 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0">=
</span>Ay<span class=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rill=
o, Letty Araceli Delgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9=
 Grismaldo P<span class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></sp=
an> </div><div class=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div=
 class=3D"c x1f y3 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls0 w=
s0">1<span class=3D"ls1">66</span> </div></div><div class=3D"c x21 y3 w2 h3=
"><div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=
=C3=ADa, <span class=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n=
<span class=3D"_ _0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=
=A9cnica de Manab=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><=
div class=3D"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t=
 m0 x22 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">En la <span class=3D"_ _0"></span>a=
ctividad <span class=3D"_ _0"></span>acad=C3=A9mica, <span class=3D"_ _0"><=
/span>uno de <span class=3D"_ _0"></span>los <span class=3D"_ _0"></span>m=
=C3=A9todos <span class=3D"_ _0"></span>fundamentales es <span class=3D"_ _=
0"></span>la oralidad. <span class=3D"_ _0"></span> <span class=3D"_ _0"></=
span> <span class=3D"_ _0"></span>En el </div><div class=3D"t m0 x22 h4 y37=
 ff4 fs0 fc0 sc0 ls0 ws0">acto <span class=3D"_ _a"> </span>acad=C3=A9mico,=
 <span class=3D"_ _a"> </span>la <span class=3D"_ _a"> </span>expresi=C3=B3=
n <span class=3D"_ _a"> </span>oral <span class=3D"_ _a"> </span>del <span =
class=3D"_ _f"> </span>maestro <span class=3D"_ _a"> </span>es <span class=
=3D"_ _a"> </span>un <span class=3D"_ _a"> </span>hilo <span class=3D"_ _a"=
> </span>conductor <span class=3D"_ _a"> </span>para <span class=3D"_ _a"> =
</span>un </div><div class=3D"t m0 x22 h4 y38 ff4 fs0 fc0 sc0 ls0 ws0">verd=
adero <span class=3D"_ _11"> </span>aprendizaje <span class=3D"_ _a"> </spa=
n>donde <span class=3D"_ _11"> </span>los <span class=3D"_ _11"> </span>edu=
candos <span class=3D"_ _11"> </span>se <span class=3D"_ _11"> </span>prove=
en <span class=3D"_ _a"> </span>de <span class=3D"_ _11"> </span>conocimien=
tos <span class=3D"_ _11"> </span>que </div><div class=3D"t m0 x22 h4 y84 f=
f4 fs0 fc0 sc0 ls0 ws0">conlleva <span class=3D"_ _1"> </span>a <span class=
=3D"_ _7"> </span>un <span class=3D"_ _1"></span>empoderamiento <span class=
=3D"_ _1"> </span>de <span class=3D"_ _7"> </span>conceptos <span class=3D"=
_ _1"></span>como <span class=3D"_ _1"> </span>parte <span class=3D"_ _7"> =
</span>d<span class=3D"_ _3"></span>e <span class=3D"_ _1"></span>la <span =
class=3D"_ _7"> </span>formaci=C3=B3n, <span class=3D"_ _1"></span>por <spa=
n class=3D"_ _1"></span>otro </div><div class=3D"t m0 x22 h4 y85 ff4 fs0 fc=
0 sc0 ls0 ws0">lado, constituye una de las fuentes relevantes para adquirir=
 y nutrirse de saberes. </div><div class=3D"t m0 x22 h4 ybc ff4 fs0 fc0 sc0=
 ls0 ws0">Entre  los <span class=3D"_ _f"> </span>m=C3=A9todos <span class=
=3D"_ _f"> </span>pedag=C3=B3gicos <span class=3D"_ _f"> </span>orales <spa=
n class=3D"_ _f"> </span>est=C3=A1n <span class=3D"_ _f"> </span>la  narrac=
i=C3=B3n,<span class=3D"_ _0"></span>  la <span class=3D"_ _f"> </span>conv=
ersaci=C3=B3n <span class=3D"_ _f"> </span>y <span class=3D"_ _f"> </span>l=
a </div><div class=3D"t m0 x22 h4 y87 ff4 fs0 fc0 sc0 ls0 ws0">explicaci=C3=
=B3n <span class=3D"_ _8"></span>cada <span class=3D"_ _9"></span>uno <span=
 class=3D"_ _9"></span>con <span class=3D"_ _8"></span>sus <span class=3D"_=
 _9"></span>caracter=C3=ADsticas <span class=3D"_ _8"></span>particulares; =
<span class=3D"_ _9"></span>adem=C3=A1s <span class=3D"_ _9"></span>de <spa=
n class=3D"_ _8"></span>esto <span class=3D"_ _8"></span>pode<span class=3D=
"_ _0"></span>mos </div><div class=3D"t m0 x22 h4 y88 ff4 fs0 fc0 sc0 ls0 w=
s0">agregar <span class=3D"_ _1"></span>trabajos <span class=3D"_ _9"></spa=
n>con <span class=3D"_ _1"></span>el <span class=3D"_ _9"></span>libro <spa=
n class=3D"_ _1"></span>de <span class=3D"_ _9"></span>texto, <span class=
=3D"_ _1"></span>la <span class=3D"_ _9"></span>inducci=C3=B3n <span class=
=3D"_ _1"></span>y <span class=3D"_ _9"></span>los <span class=3D"_ _1"></s=
pan>m=C3=A9todos <span class=3D"_ _9"></span>pr=C3=A1cticos <span class=3D"=
_ _1"></span>en <span class=3D"_ _9"></span>este </div><div class=3D"t m0 x=
22 h4 y89 ff4 fs0 fc0 sc0 ls0 ws0">=C3=BAltimo <span class=3D"_ _0"></span>=
se <span class=3D"_ _8"></span>incluye <span class=3D"_ _8"></span>aqu=C3=
=AD <span class=3D"_ _8"></span>la <span class=3D"_ _8"></span>ejercitaci=
=C3=B3n <span class=3D"_ _8"></span>talleres <span class=3D"_ _0"></span>do=
nde <span class=3D"_ _8"></span>los <span class=3D"_ _8"></span>ni=C3=B1os =
<span class=3D"_ _8"></span>adquieren <span class=3D"_ _8"></span>habilidad=
es </div><div class=3D"t m0 x22 h4 y8b ff4 fs0 fc0 sc0 ls0 ws0">como por ej=
emplo si aplicamos el ritmo y la m=C3=BAsica. </div><div class=3D"t m0 x22 =
h4 yd ff4 fs0 fc0 sc0 ls0 ws0">La <span class=3D"_ _b"> </span>acci=C3=B3n =
<span class=3D"_ _7"> </span>independ<span class=3D"_ _0"></span>iente <spa=
n class=3D"_ _e"> </span>y <span class=3D"_ _b"> </span>el <span class=3D"_=
 _e"> </span>trabajo <span class=3D"_ _b"> </span>conjunto, <span class=3D"=
_ _e"> </span>que <span class=3D"_ _b"> </span>se <span class=3D"_ _e"> </s=
pan>refiere <span class=3D"_ _b"> </span>al <span class=3D"_ _e"> </span>di=
alogo <span class=3D"_ _b"> </span>entre <span class=3D"_ _e"> </span>el </=
div><div class=3D"t m0 x22 h4 ybd ff4 fs0 fc0 sc0 ls0 ws0">profesor <span c=
lass=3D"_ _1"> </span>y <span class=3D"_ _1"> </span>el <span class=3D"_ _7=
"> </span>alumno, <span class=3D"_ _1"></span>por <span class=3D"_ _1"></sp=
an>ello <span class=3D"_ _1"></span>las <span class=3D"_ _1"> </span>clases=
 <span class=3D"_ _1"> </span>deben <span class=3D"_ _7"> </span>ser <span =
class=3D"_ _1"></span>din=C3=A1micas, <span class=3D"_ _1"></span>objetivas=
., <span class=3D"_ _1"> </span>tal <span class=3D"_ _7"> </span>como<span =
class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 ybe ff4 fs0 fc0 sc0 =
ls0 ws0">se=C3=B1ala <span class=3D"_ _12"> </span>(Llopis, <span class=3D"=
_ _14"> </span>2014)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x=
c he yf3 ff4 fs6 fc0 sc0 ls1 ws0">15</div></div><div class=3D"t m0 x28 h4 y=
be ff4 fs0 fc0 sc0 ls0 ws0">, <span class=3D"_ _12"> </span>indica <span cl=
ass=3D"_ _14"> </span>que <span class=3D"_ _12"> </span>los <span class=3D"=
_ _14"> </span>elementos <span class=3D"_ _12"> </span>intelectuales, <span=
 class=3D"_ _12"> </span>sentimientos,<span class=3D"_ _3"></span> </div><d=
iv class=3D"t m0 x22 h4 ybf ff4 fs0 fc0 sc0 ls0 ws0">actitudes <span class=
=3D"_ _7"> </span>y <span class=3D"_ _1"></span>h=C3=A1bitos, <span class=
=3D"_ _7"> </span>adem=C3=A1s <span class=3D"_ _1"> </span>de <span class=
=3D"_ _7"> </span>la <span class=3D"_ _1"> </span>conducta <span class=3D"_=
 _7"> </span>permanece <span class=3D"_ _1"> </span>a <span class=3D"_ _7">=
 </span>lo <span class=3D"_ _7"> </span>largo <span class=3D"_ _1"></span>d=
el <span class=3D"_ _7"> </span>tiempo <span class=3D"_ _1"></span>y <span =
class=3D"_ _7"> </span>se<span class=3D"_ _3"></span> </div><div class=3D"t=
 m0 x22 h4 yc0 ff4 fs0 fc0 sc0 ls0 ws0">expresan <span class=3D"_ _0"></spa=
n>en <span class=3D"_ _0"></span>las <span class=3D"_ _0"></span>distintas =
situaciones. <span class=3D"_ _0"></span> <span class=3D"_ _0"></span>Esto =
<span class=3D"_ _0"></span>se <span class=3D"_ _0"></span>explica <span cl=
ass=3D"_ _0"></span>porque <span class=3D"_ _0"></span>cada <span class=3D"=
_ _0"></span>ni=C3=B1o <span class=3D"_ _0"></span>presenta en </div><div c=
lass=3D"t m0 x22 h4 yc1 ff4 fs0 fc0 sc0 ls0 ws0">su <span class=3D"_ _0"></=
span>desarrollo <span class=3D"_ _0"></span>y <span class=3D"_ _0"></span>a=
 <span class=3D"_ _0"></span>largo de <span class=3D"_ _0"></span>su <span =
class=3D"_ _0"></span>vida <span class=3D"_ _0"></span>como persona <span c=
lass=3D"_ _0"></span>adulta <span class=3D"_ _0"></span>particularidades <s=
pan class=3D"_ _0"></span>psicol=C3=B3gicas </div><div class=3D"t m0 x22 h4=
 y91 ff4 fs0 fc0 sc0 ls0 ws0">sea <span class=3D"_ _1"></span>por <span cla=
ss=3D"_ _1"></span>la <span class=3D"_ _1"></span>edad, <span class=3D"_ _1=
"></span>por <span class=3D"_ _1"></span>las <span class=3D"_ _1"></span>ne=
cesidades <span class=3D"_ _1"></span>o <span class=3D"_ _1"></span>por <sp=
an class=3D"_ _1"></span>los <span class=3D"_ _1"></span>intereses <span cl=
ass=3D"_ _1"></span>que <span class=3D"_ _1"></span>se <span class=3D"_ _1"=
></span>manifiesten <span class=3D"_ _1"></span>lo <span class=3D"_ _1"></s=
pan>que </div><div class=3D"t m0 x22 h4 y92 ff4 fs0 fc0 sc0 ls0 ws0">viene =
<span class=3D"_ _8"></span>a <span class=3D"_ _9"></span>conformar <span c=
lass=3D"_ _8"></span>la <span class=3D"_ _8"></span>personalidad. <span cla=
ss=3D"_ _9"></span>Esto <span class=3D"_ _8"></span>justificar=C3=ADa <span=
 class=3D"_ _9"></span>tambi=C3=A9n <span class=3D"_ _0"></span>la <span cl=
ass=3D"_ _9"></span>diferenciaci=C3=B3n <span class=3D"_ _8"></span>en<span=
 class=3D"_ _0"></span> <span class=3D"_ _8"></span>las </div><div class=3D=
"t m0 x22 h4 y93 ff4 fs0 fc0 sc0 ls0 ws0">tareas <span class=3D"_ _a"> </sp=
an>educativas, <span class=3D"_ _11"> </span>ejercicios, <span class=3D"_ _=
a"> </span>actividades, <span class=3D"_ _11"> </span>procedimientos <span =
class=3D"_ _a"> </span>did=C3=A1cticos, <span class=3D"_ _11"> </span>medio=
s <span class=3D"_ _a"> </span>de </div><div class=3D"t m0 x22 h4 y94 ff4 f=
s0 fc0 sc0 ls0 ws0">ense=C3=B1anza, <span class=3D"_ _b"> </span>evaluaci=
=C3=B3n <span class=3D"_ _b"> </span>e <span class=3D"_ _c"> </span>inclusi=
ve <span class=3D"_ _b"> </span>niveles <span class=3D"_ _b"> </span>de <sp=
an class=3D"_ _c"> </span>ayuda <span class=3D"_ _b"> </span>para <span cla=
ss=3D"_ _b"> </span>mejorar <span class=3D"_ _b"> </span>y <span class=3D"_=
 _c"> </span>potenciar <span class=3D"_ _b"> </span>el </div><div class=3D"=
t m0 x22 h4 y95 ff4 fs0 fc0 sc0 ls0 ws0">proceso de aprendizaje; ser=C3=ADa=
 lo ideal en la ense=C3=B1anza. </div><div class=3D"t m0 x22 h4 y96 ff4 fs0=
 fc0 sc0 ls0 ws0">Los <span class=3D"_ _0"></span>enfoques <span class=3D"_=
 _0"></span>de <span class=3D"_ _8"></span>ense=C3=B1anza <span class=3D"_ =
_8"></span>y <span class=3D"_ _0"></span>las <span class=3D"_ _0"></span>co=
ncep<span class=3D"_ _0"></span>ciones <span class=3D"_ _0"></span>de <span=
 class=3D"_ _0"></span>ense=C3=B1anza <span class=3D"_ _8"></span>son <span=
 class=3D"_ _0"></span>dos <span class=3D"_ _8"></span>corrientes <span cla=
ss=3D"_ _8"></span>que </div><div class=3D"t m0 x22 h4 y97 ff4 fs0 fc0 sc0 =
ls0 ws0">tratan <span class=3D"_ _16"> </span>de <span class=3D"_ _16"> </s=
pan>aparecer <span class=3D"_ _16"> </span>como <span class=3D"_ _16"> </sp=
an>diferentes <span class=3D"_ _16"> </span>pero <span class=3D"_ _16"> </s=
pan>que <span class=3D"_ _16"> </span>tiene <span class=3D"_ _16"> </span>b=
ases <span class=3D"_ _16"> </span>conceptuales <span class=3D"_ _16"> </sp=
an>y </div><div class=3D"t m0 x22 h4 y98 ff4 fs0 fc0 sc0 ls0 ws0">epistemol=
=C3=B3gicas <span class=3D"_ _0"></span>comunes <span class=3D"_ _0"></span=
>(Fuensanta, <span class=3D"_ _0"></span>2012)</div><div class=3D"c x6 yb w=
0 h0"><div class=3D"t m0 x8 he yf4 ff4 fs6 fc0 sc0 ls1 ws0">16</div></div><=
div class=3D"t m0 x37 h4 y98 ff8 fs0 fc0 sc0 ls0 ws0"> <span class=3D"_ _0"=
></span><span class=3D"ff4">Lo <span class=3D"_ _0"></span>que <span class=
=3D"_ _0"></span>se <span class=3D"_ _0"></span>explica <span class=3D"_ _0=
"></span>porque los <span class=3D"_ _0"></span>enfoques </span></div><div =
class=3D"t m0 x22 h4 y99 ff4 fs0 fc0 sc0 ls0 ws0">aclaran <span class=3D"_ =
_7"> </span>como <span class=3D"_ _1"> </span>ense=C3=B1an <span class=3D"_=
 _7"> </span>los <span class=3D"_ _7"> </span>profesores <span class=3D"_ _=
1"> </span>en <span class=3D"_ _7"> </span>base <span class=3D"_ _7"> </spa=
n>a <span class=3D"_ _7"> </span>sus <span class=3D"_ _1"> </span>estrategi=
as <span class=3D"_ _7"> </span>e <span class=3D"_ _7"> </span>intenciones =
<span class=3D"_ _1"> </span>que </div><div class=3D"t m0 x22 h4 y9a ff4 fs=
0 fc0 sc0 ls0 ws0">aplican <span class=3D"_ _b"> </span>en <span class=3D"_=
 _b"> </span>el <span class=3D"_ _b"> </span>aula <span class=3D"_ _b"> </s=
pan>mientras <span class=3D"_ _b"> </span>que <span class=3D"_ _b"> </span>=
las <span class=3D"_ _b"> </span>concepciones <span class=3D"_ _b"> </span>=
se <span class=3D"_ _b"> </span>refi<span class=3D"_ _0"></span>eren <span =
class=3D"_ _b"> </span>a <span class=3D"_ _b"> </span>los <span class=3D"_ =
_b"> </span>conceptos <span class=3D"_ _b"> </span>o </div><div class=3D"t =
m0 x22 h4 y9b ff4 fs0 fc0 sc0 ls0 ws0">creencias <span class=3D"_ _1"></spa=
n>que <span class=3D"_ _1"></span>los <span class=3D"_ _1"></span>docentes =
<span class=3D"_ _1"> </span>tienen <span class=3D"_ _1"> </span>de <span c=
lass=3D"_ _1"> </span>la <span class=3D"_ _1"> </span>ense=C3=B1anza <span =
class=3D"_ _1"> </span>y <span class=3D"_ _1"> </span>que <span class=3D"_ =
_1"> </span>e<span class=3D"_ _0"></span>n <span class=3D"_ _1"></span>base=
 <span class=3D"_ _1"></span>a <span class=3D"_ _1"></span>esto <span class=
=3D"_ _1"></span>ponen <span class=3D"_ _1"></span>en </div><div class=3D"t=
 m0 x22 h4 ye0 ff4 fs0 fc0 sc0 ls0 ws0">funcionamiento sus estrategias cuan=
do ense=C3=B1an. </div><div class=3D"t m0 x22 h4 y77 ff4 fs0 fc0 sc0 ls0 ws=
0">Para <span class=3D"_ _b"> </span>hablar <span class=3D"_ _c"> </span>de=
 <span class=3D"_ _b"> </span>recursos <span class=3D"_ _b"> </span>did=C3=
=A1cticos <span class=3D"_ _b"> </span>es <span class=3D"_ _c"> </span>nece=
sario <span class=3D"_ _b"> </span>definir <span class=3D"_ _b"> </span>el =
<span class=3D"_ _b"> </span>t=C3=A9rmino <span class=3D"_ _c"> </span>de <=
span class=3D"_ _b"> </span>did=C3=A1ctica. </div><div class=3D"t m0 x22 h4=
 y78 ff4 fs0 fc0 sc0 ls0 ws0">Siendo <span class=3D"_ _16"> </span>un <span=
 class=3D"_ _13"> </span>concep<span class=3D"_ _0"></span>to <span class=
=3D"_ _13"> </span>discutido, <span class=3D"_ _16"> </span>por <span class=
=3D"_ _16"> </span>consiguiente, <span class=3D"_ _16"> </span>existen <spa=
n class=3D"_ _16"> </span>una <span class=3D"_ _16"> </span>infinidad <span=
 class=3D"_ _16"> </span>d<span class=3D"_ _3"></span>e </div><div class=3D=
"t m0 x22 h4 y9c ff4 fs0 fc0 sc0 ls0 ws0">definiciones, <span class=3D"_ _e=
"> </span>entre <span class=3D"_ _e"> </span>las <span class=3D"_ _e"> </sp=
an>cuales <span class=3D"_ _e"> </span>est=C3=A1 <span class=3D"_ _e"> </sp=
an>por <span class=3D"_ _b"> </span>ejemplo <span class=3D"_ _7"> </span>qu=
ienes <span class=3D"_ _e"> </span>consideran <span class=3D"_ _e"> </span>=
a <span class=3D"_ _e"> </span>la <span class=3D"_ _e"> </span>did=C3=A1c<s=
pan class=3D"_ _0"></span>tica </div><div class=3D"t m0 x22 h4 y9d ff4 fs0 =
fc0 sc0 ls0 ws0">como parte de la pedagog=C3=ADa y que<span class=3D"_ _0">=
</span> su campo de estudio son lo<span class=3D"_ _0"></span>s m=C3=A9todo=
s y t=C3=A9cnicas de </div><div class=3D"t m0 x22 h4 y9e ff4 fs0 fc0 sc0 ls=
0 ws0">ense=C3=B1anza <span class=3D"_ _f"> </span>que <span class=3D"_ _a"=
> </span>se <span class=3D"_ _f"> </span>emplea <span class=3D"_ _f"> </spa=
n>en <span class=3D"_ _f"> </span>el <span class=3D"_ _a"> </span>proceso <=
span class=3D"_ _f"> </span>ense=C3=B1anza <span class=3D"_ _f"> </span>apr=
e<span class=3D"_ _0"></span>ndizaje <span class=3D"_ _a"> </span>(D=C3=ACa=
z,  2013)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x38 he yf5 f=
f4 fs6 fc0 sc0 ls1 ws0">17</div></div><div class=3D"t m0 x39 h4 y9e ff4 fs0=
 fc0 sc0 ls0 ws0">.  </div><div class=3D"t m0 x22 h4 y9f ff4 fs0 fc0 sc0 ls=
0 ws0">Significa que <span class=3D"_ _0"></span>la <span class=3D"_ _0"></=
span>did=C3=A1ctica comprende <span class=3D"_ _0"></span>todo el <span cla=
ss=3D"_ _0"></span>universo de <span class=3D"_ _0"></span>herramientas uti=
lizadas <span class=3D"_ _0"></span>por </div><div class=3D"t m0 x22 h4 ya0=
 ff4 fs0 fc0 sc0 ls0 ws0">el <span class=3D"_ _0"></span>profesorado <span =
class=3D"_ _8"></span>para <span class=3D"_ _8"></span>impartir <span class=
=3D"_ _8"></span>sus <span class=3D"_ _8"></span>conocimient<span class=3D"=
_ _0"></span>os <span class=3D"_ _0"></span>al <span class=3D"_ _8"></span>=
alumno. <span class=3D"_ _8"></span> <span class=3D"_ _8"></span>En <span c=
lass=3D"_ _8"></span>ese <span class=3D"_ _8"></span>mismo <span class=3D"_=
 _8"></span>contexto, </div><div class=3D"t m0 x22 h4 ye1 ff4 fs0 fc0 sc0 l=
s0 ws0">hay <span class=3D"_ _0"></span>quienes <span class=3D"_ _8"></span=
>afirma <span class=3D"_ _8"></span>que <span class=3D"_ _8"></span>la <spa=
n class=3D"_ _8"></span>did=C3=A1ctica <span class=3D"_ _8"></span>responde=
 <span class=3D"_ _8"></span>a <span class=3D"_ _8"></span>tres <span class=
=3D"_ _8"></span>preguntas <span class=3D"_ _8"></span>centrales: <span cla=
ss=3D"_ _8"></span>qu=C3=A9, <span class=3D"_ _0"></span>c<span class=3D"_ =
_0"></span>=C3=B3mo </div><div class=3D"t m0 x22 h4 ye2 ff4 fs0 fc0 sc0 ls0=
 ws0">y <span class=3D"_ _8"></span>porqu=C3=A9 <span class=3D"_ _9"></span=
>se <span class=3D"_ _8"></span>ense=C3=B1a.<span class=3D"_ _0"></span> <s=
pan class=3D"_ _8"></span>En <span class=3D"_ _9"></span>el <span class=3D"=
_ _8"></span>campo <span class=3D"_ _9"></span>espec=C3=ADfico <span class=
=3D"_ _8"></span>de <span class=3D"_ _9"></span>la <span class=3D"_ _8"></s=
pan>did=C3=A1ctica <span class=3D"_ _9"></span>del <span class=3D"_ _8"></s=
pan>lenguaje <span class=3D"_ _9"></span>musical, <span class=3D"_ _9"></sp=
an>se </div><div class=3D"t m0 x22 h4 ye3 ff4 fs0 fc0 sc0 ls0 ws0">puede <s=
pan class=3D"_ _b"> </span>afirmar <span class=3D"_ _b"> </span>que <span c=
lass=3D"_ _b"> </span>un <span class=3D"_ _b"> </span>profesor <span class=
=3D"_ _b"> </span>de <span class=3D"_ _b"> </span>artes <span class=3D"_ _b=
"> </span>debe <span class=3D"_ _b"> </span>emplear <span class=3D"_ _b"> <=
/span>recursos <span class=3D"_ _b"> </span>adecuados <span class=3D"_ _b">=
 </span>para </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 h2 y=
29 ff1 fs0 fc0 sc0 ls0 ws0">                                               =
 </div></div><div class=3D"t m0 x28 h2 y29 ff1 fs0 fc0 sc0 ls0 ws0"> </div>=
<div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 hb y2a ff1 fs4 fc0 sc0 =
ls0 ws0">15</div></div><div class=3D"t m0 x33 h4 y2b ff1 fs1 fc0 sc0 ls0 ws=
0"> <span class=3D"_ _1"></span>L<span class=3D"_ _3"></span>lopis, <span c=
lass=3D"_ _1"></span>J. <span class=3D"_ _1"></span>H. <span class=3D"_ _9"=
></span>(2014). <span class=3D"_ _1"></span>Beneficios <span class=3D"_ _9"=
></span>d<span class=3D"_ _0"></span>e <span class=3D"_ _1"></span>la <span=
 class=3D"_ _9"></span>pr=C3=A1ctica <span class=3D"_ _1"></span>de <span c=
lass=3D"_ _1"></span>la <span class=3D"_ _9"></span>m=C3=BAsica <span class=
=3D"_ _1"></span>a <span class=3D"_ _9"></span>lo <span class=3D"_ _1"></sp=
an>largo <span class=3D"_ _9"></span>dela <span class=3D"_ _1"></span>vida1=
. <span class=3D"_ _1"></span>El <span class=3D"_ _9"></span>desarro<span c=
lass=3D"_ _0"></span>llo <span class=3D"_ _1"></span>territo<span class=3D"=
_ _3"></span>rial <span class=3D"_ _1"></span>valenciano: </div><div class=
=3D"t m0 x22 h4 y2c ff1 fs1 fc0 sc0 ls0 ws0">Reflexiones en torno a <span c=
lass=3D"_ _0"></span>sus claves, 205.<span class=3D"_ _0"></span> </div><di=
v class=3D"c x6 yb w0 h0"><div class=3D"t m0 x22 hb y2d ff1 fs4 fc0 sc0 ls0=
 ws0">16</div></div><div class=3D"t m0 x33 h4 y2e ff1 fs1 fc0 sc0 ls0 ws0">=
 <span class=3D"_ _9"></span>Fuensanta <span class=3D"_ _9"></span>Hern=C3=
=A1ndez, <span class=3D"_ _9"></span>J.<span class=3D"_ _0"></span> <span c=
lass=3D"_ _8"></span>M.<span class=3D"_ _0"></span> <span class=3D"_ _9"></=
span>(enero<span class=3D"_ _0"></span>-abril <span class=3D"_ _9"></span>d=
e <span class=3D"_ _9"></span>2012). <span class=3D"_ _9"></span>Estudio <s=
pan class=3D"_ _9"></span>de <span class=3D"_ _9"></span>los <span class=3D=
"_ _9"></span>enfo<span class=3D"_ _0"></span>ques <span class=3D"_ _9"></s=
pan>de <span class=3D"_ _9"></span>ense=C3=B1a<span class=3D"_ _0"></span>n=
za <span class=3D"_ _9"></span>en <span class=3D"_ _9"></span>profesorado <=
span class=3D"_ _9"></span>de <span class=3D"_ _9"></span>educaci<span clas=
s=3D"_ _0"></span>=C3=B3n </div><div class=3D"t m0 x22 h4 y2f ff1 fs1 fc0 s=
c0 ls0 ws0">primaria. Pro<span class=3D"_ _0"></span>fesorado, 16(1), 62<sp=
an class=3D"_ _0"></span>-<span class=3D"ls1">73.<span class=3D"_ _3"></spa=
n><span class=3D"ls0"> </span></span></div><div class=3D"c x6 yb w0 h0"><di=
v class=3D"t m0 x22 hb y30 ff1 fs4 fc0 sc0 ls0 ws0">17</div></div><div clas=
s=3D"t m0 x33 h4 y31 ff1 fs1 fc0 sc0 ls0 ws0">  D=C3=ADaz,  D.  J.  (2013).=
  Tienes  las <span class=3D"_ _7"> </span>herramientas.  Aprende  a  utili=
zarlas.  Estrategias  y  consejos  para  maestros,  padres  y </div><div cl=
ass=3D"t m0 x22 h4 y32 ff1 fs1 fc0 sc0 ls0 ws0">estudiantes. Edit. Palilib<=
span class=3D"_ _0"></span>ro. Estados Unidos.<span class=3D"_ _0"></span> =
</div></div><div class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000=
000,0.000000,1.000000,0.000000,0.000000]}"></div></div>
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g+wEAAN0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAgO4HAAB0PwAAoPsBAA=
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AN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwA=
A6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQ=
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ADofgAAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsB=
AED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8=
AAOh+AABA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofg=
AAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdD=
wAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+=
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PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAgO4HAAB0PwAAoPsBAADdDwAA6H=
4AAED3AwAAuh8AAND9AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAOh+AABA9=
wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADo=
fgAAQPcDAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAoPsBAADdDwAA6H4AAED=
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PcDAAC6HwAA0P0AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAA6H4AAED3AwAA=
uh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AAB=
A9wMAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACg+wEAAN0PAADofgAAQPcDAA=
C6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AA=
ND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMA=
ALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAQPcDAAC6HwA=
A0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3Aw=
AAuh8AAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALofA=
ADQ/QAAgO4HAAB0PwAAoPsBAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0A=
AIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8=
AAND9AACA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/Q=
AAgO4HAAB0PwAAoPsBAADdDwAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6H=
wAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND9=
AACA7gcAAHQ/AACg+wEAAN0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAgO4=
HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P=
0AAIDuBwAAdD8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAAuh8AAND9AACA7=
gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ=
/QAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AADofgAAQPcDAAC6HwAA0P0AAID=
uBwAAdD8AAKD7AQAA3Q8AALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwCA7gcAAH=
Q/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAg=
O4HAAB0PwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAAC6HwAA0P0AAIDuBwAA=
dD8AAKD7AQAA3Q8AAOh+AABA9wMAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AAC=
g+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAOh+AABA9wMAALofAADQ/QAAgO4HAA=
B0PwAAoPsBAADdDwAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AA=
KD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcA=
AHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AADQ/QAAgO4HAAB0PwA=
AoPsBAADdDwAA6H4AAED3AwAAuh8AAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBw=
AA3Q8AAOh+AABA9wMAAP9ln3koiUnBTarKEACAu9n3AwBAf7FrBACA9uz7AQBA9wMAALofAADQ/=
QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6=
HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND=
9AACA7gcAAHQ/AACg+wEAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AADQ/QAAgO=
4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0=
P0AAIDuBwAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAED3AwAAuh8AAND9AACA=
7gcAAHQ/AACg+wEAAN0PAADofgAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAB=
0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAI=
DuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAND9AABAZzECA=
ACY8Xk9F+7+qvIJAQDgp+/7WPfl/ecDAAD96X4AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA=
QPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAADdDwAA6H4AAED3A3C=
2W8cCAAAAAIP8raexoygCAO8HAAC8HwAA8H4AAMD7AQAA7wcAAO8HAAC8HwAA8H4AAMD7AQAA7w=
cAALwfAADwfgAAwPsBAMD7AQAA7wcAALwfAAD4CE9sJYkVhlcDAAAAAElFTkSuQmCC"><div cl=
ass=3D"t m0 x2 h5 y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=3D"_ =
_0"></span>nosis. Revista de Filosof=C3=ADa, Let<span class=3D"_ _0"></span=
>ras y Ciencias de la Educaci=C3=B3n <span class=3D"_ _0"></span><span clas=
s=3D"ls1">                              <span class=3D"_ _3"></span>     <s=
pan class=3D"ls0">            ISSN </span>2588<span class=3D"ls0">-0578 </s=
pan></span></div><div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0">M=C3=
=9ASICA COMO MEDIO <span class=3D"_ _0"></span>DE ENSE=C3=91<span class=3D"=
_ _0"></span>ANZA-APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91OS<spa=
n class=3D"_ _0"></span><span class=3D"fs6"> </span></div><div class=3D"t m=
0 x2 h2 y5e ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2 h3"><d=
iv class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o 2020.<s=
pan class=3D"_ _0"></span> N=C3=BAmero 2, Abril<span class=3D"_ _0"></span>=
-Junio </div></div><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x5 h5 y4=
 ff2 fs1 fc1 sc0 ls1 ws0">167<span class=3D"ls0"> </span></div></div><div c=
lass=3D"t m0 x2 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2=
 h4 y5f ff4 fs0 fc0 sc0 ls0 ws0">estimular  y  desarrollar  las <span class=
=3D"_ _f"> </span>destrezas  del  alumno,  como <span class=3D"_ _f"> </spa=
n>el  saber,  leer,  escribir, </div><div class=3D"t m0 x2 h4 y60 ff4 fs0 f=
c0 sc0 ls0 ws0">escuchar y hablar. </div><div class=3D"t m0 x2 h4 yd1 ff4 f=
s0 fc0 sc0 ls0 ws0">Durante <span class=3D"_ _9"></span>el <span class=3D"_=
 _8"></span>proceso <span class=3D"_ _9"></span>de <span class=3D"_ _9"></s=
pan>interaprendizaje, <span class=3D"_ _9"></span>los <span class=3D"_ _9">=
</span>docentes <span class=3D"_ _8"></span>en <span class=3D"_ _9"></span>=
el <span class=3D"_ _9"></span>desarrollo <span class=3D"_ _9"></span>de <s=
pan class=3D"_ _9"></span>la <span class=3D"_ _9"></span>clase, <span class=
=3D"_ _8"></span>se </div><div class=3D"t m0 x2 h4 y2 ff4 fs0 fc0 sc0 ls0 w=
s0">proveen de herramientas adecuadas que apoyan la labor educativa, hacien=
do de esta </div><div class=3D"t m0 x2 h4 y6 ff4 fs0 fc0 sc0 ls0 ws0">una <=
span class=3D"_ _0"></span>actividad <span class=3D"_ _0"></span>din=C3=A1m=
ica <span class=3D"_ _8"></span>que <span class=3D"_ _0"></span>inducen <sp=
an class=3D"_ _0"></span>al <span class=3D"_ _8"></span>desempe=C3=B1o <spa=
n class=3D"_ _0"></span>profesional <span class=3D"_ _8"></span> <span clas=
s=3D"_ _0"></span> <span class=3D"_ _8"></span>de <span class=3D"_ _0"></sp=
an>manera <span class=3D"_ _0"></span>eficie<span class=3D"_ _0"></span>nte=
 </div><div class=3D"t m0 x2 h4 y7 ff4 fs0 fc0 sc0 ls0 ws0">y  eficaz. <spa=
n class=3D"_ _f"> </span> <span class=3D"_ _f"> </span>Por <span class=3D"_=
 _f"> </span>tal  r<span class=3D"_ _0"></span>az=C3=B3n,  las <span class=
=3D"_ _f"> </span>aplicaciones <span class=3D"_ _f"> </span>de <span class=
=3D"_ _f"> </span>los  insumo<span class=3D"_ _0"></span>s  did=C3=A1cticos=
 <span class=3D"_ _f"> </span>deben <span class=3D"_ _f"> </span>ser </div>=
<div class=3D"t m0 x2 h4 y8 ff4 fs0 fc0 sc0 ls0 ws0">seleccionados, organiz=
ados y puesto en la pr=C3=A1ctica educativa. <span class=3D"ff8"> </span></=
div><div class=3D"t m0 x2 h4 y9 ff4 fs0 fc0 sc0 ls0 ws0">Seg=C3=BAn <span c=
lass=3D"_ _7"> </span>(D=C3=ADaz, <span class=3D"_ _1"> </span>2008)</div><=
div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x28 he y88 ff4 fs6 fc0 sc0 l=
s1 ws0">18</div></div><div class=3D"t m0 x2c h4 y9 ff4 fs0 fc0 sc0 ls0 ws0"=
> <span class=3D"_ _7"> </span>los <span class=3D"_ _1"> </span>recursos <s=
pan class=3D"_ _7"> </span>y <span class=3D"_ _7"> </span>mate<span class=
=3D"_ _3"></span>riales <span class=3D"_ _7"> </span>did=C3=A1cticos <span =
class=3D"_ _1"> </span>son <span class=3D"_ _7"> </span>todo <span class=3D=
"_ _1"> </span>el <span class=3D"_ _7"> </span>conjunto <span class=3D"_ _7=
"> </span>de<span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 yf6=
 ff4 fs0 fc0 sc0 ls0 ws0">elementos, =C3=BAtiles <span class=3D"_ _0"></spa=
n>o <span class=3D"_ _0"></span>estrategias que <span class=3D"_ _0"></span=
>el profesor utiliza, <span class=3D"_ _0"></span>o <span class=3D"_ _0"></=
span>puede utilizar, <span class=3D"_ _0"></span>como soporte, </div><div c=
lass=3D"t m0 x2 h4 yf7 ff4 fs0 fc0 sc0 ls0 ws0">complemento <span class=3D"=
_ _11"> </span>o <span class=3D"_ _d"> </span>ayuda <span class=3D"_ _11"> =
</span>en <span class=3D"_ _d"> </span>su <span class=3D"_ _11"> </span>tar=
ea <span class=3D"_ _d"> </span>docente. <span class=3D"_ _11"> </span>Los =
<span class=3D"_ _d"> </span>recursos <span class=3D"_ _11"> </span>did=C3=
=A1cticos <span class=3D"_ _d"> </span>deber=C3=A1n </div><div class=3D"t m=
0 x2 h4 ye ff4 fs0 fc0 sc0 ls0 ws0">considerarse <span class=3D"_ _b"> </sp=
an>siempre <span class=3D"_ _b"> </span>como <span class=3D"_ _c"> </span>u=
n <span class=3D"_ _b"> </span>apoyo  para <span class=3D"_ _b"> </span>el =
<span class=3D"_ _b"> </span>proceso <span class=3D"_ _b"> </span>educativo=
. <span class=3D"_ _c"> </span>Los <span class=3D"_ _b"> </span>programas <=
/div><div class=3D"t m0 x2 h4 ya3 ff4 fs0 fc0 sc0 ls0 ws0">elaborados <span=
 class=3D"_ _11"> </span>por <span class=3D"_ _d"> </span>los <span class=
=3D"_ _11"> </span>propios <span class=3D"_ _d"> </span>profesores, <span c=
lass=3D"_ _11"> </span>bien <span class=3D"_ _d"> </span>individualmente, <=
span class=3D"_ _11"> </span>bien <span class=3D"_ _11"> </span>en <span cl=
ass=3D"_ _d"> </span>equipo<span class=3D"_ _3"></span>s </div><div class=
=3D"t m0 x2 h4 ya4 ff4 fs0 fc0 sc0 ls0 ws0">integrados <span class=3D"_ _0"=
></span>en <span class=3D"_ _0"></span>los <span class=3D"_ _8"></span>Cent=
ros <span class=3D"_ _0"></span>de <span class=3D"_ _0"></span>Estudios <sp=
an class=3D"_ _0"></span>Superiores. <span class=3D"_ _0"></span>Los <span =
class=3D"_ _0"></span>hay <span class=3D"_ _8"></span>para <span class=3D"_=
 _0"></span>aprender <span class=3D"_ _0"></span>ortograf=C3=ADa, </div><di=
v class=3D"t m0 x2 h4 ya5 ff4 fs0 fc0 sc0 ls0 ws0">lectura, <span class=3D"=
_ _a"> </span>operaciones <span class=3D"_ _f"> </span>matem=C3=A1ticas, <s=
pan class=3D"_ _a"> </span>t=C3=A9cnicas <span class=3D"_ _f"> </span>de <s=
pan class=3D"_ _a"> </span>estudio <span class=3D"_ _f"> </span>y<span clas=
s=3D"_ _0"></span> <span class=3D"_ _f"> </span>aprendizaje, <span class=3D=
"_ _a"> </span>geograf=C3=ADa, </div><div class=3D"t m0 x2 h4 ya6 ff4 fs0 f=
c0 sc0 ls0 ws0">f=C3=ADsica, ciencias naturales, m=C3=BAsica, econom=C3=ADa=
, etc. (Sanchez, 2012)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0=
 x3a he y8f ff4 fs6 fc0 sc0 ls1 ws0">19</div></div><div class=3D"t m0 x3b h=
4 ya6 ff4 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2 h4 y14 ff4 fs0 =
fc0 sc0 ls0 ws0">En <span class=3D"_ _7"> </span>concordancia <span class=
=3D"_ _e"> </span>con <span class=3D"_ _e"> </span>lo <span class=3D"_ _e">=
 </span>manifestado <span class=3D"_ _e"> </span>por <span class=3D"_ _e"> =
</span>el <span class=3D"_ _7"> </span>autor <span class=3D"_ _e"> </span>s=
e <span class=3D"_ _e"> </span>reafirma <span class=3D"_ _e"> </span>que <s=
pan class=3D"_ _7"> </span>los <span class=3D"_ _e"> </span>recursos <span =
class=3D"_ _e"> </span>o </div><div class=3D"t m0 x2 h4 y45 ff4 fs0 fc0 sc0=
 ls0 ws0">medios <span class=3D"_ _8"></span>did=C3=A1cticos <span class=3D=
"_ _9"></span>son <span class=3D"_ _8"></span>las <span class=3D"_ _9"></sp=
an>herramientas <span class=3D"_ _9"></span>principales <span class=3D"_ _8=
"></span>que <span class=3D"_ _8"></span>u<span class=3D"_ _0"></span>n <sp=
an class=3D"_ _9"></span>docente <span class=3D"_ _8"></span>emplea <span c=
lass=3D"_ _9"></span>para <span class=3D"_ _8"></span>su </div><div class=
=3D"t m0 x2 h4 ya8 ff4 fs0 fc0 sc0 ls0 ws0">proceso educativo, por <span cl=
ass=3D"_ _0"></span>tal raz=C3=B3n deben <span class=3D"_ _0"></span>integr=
arse permanentemente, adem=C3=A1s existen </div><div class=3D"t m0 x2 h4 ya=
9 ff4 fs0 fc0 sc0 ls0 ws0">una <span class=3D"_ _e"> </span>variedad <span =
class=3D"_ _e"> </span>de <span class=3D"_ _e"> </span>recursos <span class=
=3D"_ _e"> </span>que <span class=3D"_ _e"> </span>pueden<span class=3D"_ _=
0"></span> <span class=3D"_ _e"> </span>ser <span class=3D"_ _e"> </span>se=
leccionados <span class=3D"_ _e"> </span>por <span class=3D"_ _e"> </span>e=
l <span class=3D"_ _e"> </span>docente <span class=3D"_ _e"> </span>seg=C3=
=BAn <span class=3D"_ _e"> </span>la </div><div class=3D"t m0 x2 h4 yaa ff4=
 fs0 fc0 sc0 ls0 ws0">tem=C3=A1tica <span class=3D"_ _1"></span>de <span cl=
ass=3D"_ _9"></span>estudio. <span class=3D"_ _9"></span>Cabe <span class=
=3D"_ _1"></span>destacar <span class=3D"_ _9"></span>que, <span class=3D"_=
 _1"></span>si <span class=3D"_ _9"></span>alg=C3=BAn <span class=3D"_ _1">=
</span>docente <span class=3D"_ _9"></span>no <span class=3D"_ _1"></span>a=
plica <span class=3D"_ _9"></span>o <span class=3D"_ _1"></span>emplea <spa=
n class=3D"_ _1"></span>e<span class=3D"_ _3"></span>stas </div><div class=
=3D"t m0 x2 h4 y19 ff4 fs0 fc0 sc0 ls0 ws0">herramientas, <span class=3D"_ =
_7"> </span>el <span class=3D"_ _7"> </span>desarrollo <span class=3D"_ _7"=
> </span>de <span class=3D"_ _7"> </span>la <span class=3D"_ _1"> </span>te=
m=C3=A1t<span class=3D"_ _0"></span>ica <span class=3D"_ _7"> </span>es <sp=
an class=3D"_ _7"> </span>fracasado <span class=3D"_ _7"> </span>o <span cl=
ass=3D"_ _7"> </span>al <span class=3D"_ _1"> </span>menos <span class=3D"_=
 _7"> </span>no <span class=3D"_ _7"> </span>llega <span class=3D"_ _7"> </=
span>a <span class=3D"_ _7"> </span>un<span class=3D"_ _3"></span> </div><d=
iv class=3D"t m0 x2 h4 yab ff4 fs0 fc0 sc0 ls0 ws0">aprendizaje significati=
vo. </div><div class=3D"t m0 x2 h4 y48 ff4 fs0 fc0 sc0 ls0 ws0">La m=C3=BAs=
ica es <span class=3D"_ _0"></span>un elemento fundamental en esta <span cl=
ass=3D"_ _0"></span>primera etapa del sistema educativo. </div><div class=
=3D"t m0 x2 h4 y49 ff4 fs0 fc0 sc0 ls0 ws0">El <span class=3D"_ _9"></span>=
ni=C3=B1o <span class=3D"_ _1"></span>empieza <span class=3D"_ _9"></span>a=
 <span class=3D"_ _9"></span>expresarse <span class=3D"_ _1"></span>de <spa=
n class=3D"_ _9"></span>otra <span class=3D"_ _9"></span>manera <span class=
=3D"_ _9"></span>y <span class=3D"_ _1"></span>es <span class=3D"_ _9"></sp=
an>capaz <span class=3D"_ _1"></span>de <span class=3D"_ _9"></span>integra=
rse <span class=3D"_ _9"></span>activamente </div><div class=3D"t m0 x2 h4 =
y4a ff4 fs0 fc0 sc0 ls0 ws0">en la <span class=3D"_ _0"></span>sociedad, <s=
pan class=3D"_ _0"></span>porque la <span class=3D"_ _0"></span>m=C3=BAsica=
 le <span class=3D"_ _0"></span>ayuda a <span class=3D"_ _0"></span>lograr =
independencia <span class=3D"_ _0"></span>en <span class=3D"_ _0"></span>su=
s actividades </div><div class=3D"t m0 x2 h4 y4b ff4 fs0 fc0 sc0 ls0 ws0">h=
abituales, <span class=3D"_ _1"> </span>asumir <span class=3D"_ _7"> </span=
>el <span class=3D"_ _1"></span>cuidado <span class=3D"_ _1"> </span>de <sp=
an class=3D"_ _7"> </span>s=C3=AD <span class=3D"_ _1"></span>mi<span class=
=3D"_ _3"></span>smo <span class=3D"_ _7"> </span>y <span class=3D"_ _1"></=
span>del <span class=3D"_ _1"></span>entorno, <span class=3D"_ _1"> </span>=
y<span class=3D"_ _0"></span> <span class=3D"_ _7"> </span>ampliar <span cl=
ass=3D"_ _1"></span>su <span class=3D"_ _1"></span>mundo <span class=3D"_ _=
1"> </span>de </div><div class=3D"t m0 x2 h4 y20 ff4 fs0 fc0 sc0 ls0 ws0">r=
elaciones. (Gu=C3=ADa infantil 2017). </div><div class=3D"t m0 x2 h4 yb0 ff=
4 fs0 fc0 sc0 ls0 ws0">Los <span class=3D"_ _b"> </span>ni=C3=B1os/as <span=
 class=3D"_ _b"> </span>est=C3=A1n <span class=3D"_ _c"> </span>en <span cl=
ass=3D"_ _b"> </span>contacto <span class=3D"_ _c"> </span>incluso <span cl=
ass=3D"_ _b"> </span>antes <span class=3D"_ _b"> </span>de  nacer <span cla=
ss=3D"_ _b"> </span>con <span class=3D"_ _b"> </span>la <span class=3D"_ _b=
"> </span>m=C3=BAsica, <span class=3D"_ _c"> </span>con <span class=3D"_ _b=
"> </span>los </div><div class=3D"t m0 x2 h4 yb1 ff4 fs0 fc0 sc0 ls0 ws0">s=
onidos del ambient<span class=3D"_ _0"></span>e que le <span class=3D"_ _0"=
></span>rodea, de la <span class=3D"_ _0"></span>madre, el <span class=3D"_=
 _0"></span>padre, el beb=C3=A9 <span class=3D"_ _0"></span>se desarrolla e=
n <span class=3D"_ _0"></span>un </div><div class=3D"t m0 x2 h4 yb2 ff4 fs0=
 fc0 sc0 ls0 ws0">entorno <span class=3D"_ _0"></span>sonoro <span class=3D=
"_ _0"></span>diverso <span class=3D"_ _0"></span>y <span class=3D"_ _0"></=
span>complejo, por <span class=3D"_ _0"></span>lo <span class=3D"_ _0"></sp=
an>que <span class=3D"_ _0"></span>la <span class=3D"_ _0"></span>educaci=
=C3=B3n <span class=3D"_ _0"></span>musical <span class=3D"_ _0"></span>pue=
de <span class=3D"_ _0"></span>comenzar </div><div class=3D"t m0 x2 h4 y50 =
ff4 fs0 fc0 sc0 ls0 ws0">desde <span class=3D"_ _e"> </span>incluso <span c=
lass=3D"_ _e"> </span>antes <span class=3D"_ _e"> </span>de <span class=3D"=
_ _e"> </span>nacer <span class=3D"_ _e"> </span>el <span class=3D"_ _e"> <=
/span>beb=C3=A9; <span class=3D"_ _7"> </span>ya <span class=3D"_ _e"> </sp=
an>que <span class=3D"_ _e"> </span>la <span class=3D"_ _b"> </span>madre <=
span class=3D"_ _7"> </span>cuando <span class=3D"_ _7"> </span>canta <span=
 class=3D"_ _e"> </span>y <span class=3D"_ _b"> </span>escuc<span class=3D"=
_ _3"></span>ha </div><div class=3D"t m0 x2 h4 y51 ff4 fs0 fc0 sc0 ls0 ws0"=
>m=C3=BAsica <span class=3D"_ _0"></span>durante <span class=3D"_ _8"></spa=
n>el <span class=3D"_ _8"></span>embarazo, <span class=3D"_ _0"></span>tamb=
i=C3=A9n <span class=3D"_ _8"></span>es <span class=3D"_ _8"></span>escucha=
do <span class=3D"_ _8"></span>por <span class=3D"_ _8"></span>el <span cla=
ss=3D"_ _0"></span>beb=C3=A9 <span class=3D"_ _8"></span>en <span class=3D"=
_ _8"></span>gestaci=C3=B3n; <span class=3D"_ _0"></span>por <span class=3D=
"_ _8"></span>lo </div><div class=3D"t m0 x2 h4 y52 ff4 fs0 fc0 sc0 ls0 ws0=
">que <span class=3D"_ _1"></span>la <span class=3D"_ _9"></span>psicolog=
=C3=ADa <span class=3D"_ _1"></span>inf<span class=3D"_ _3"></span>antil <s=
pan class=3D"_ _1"></span>recomienda <span class=3D"_ _9"></span>a <span cl=
ass=3D"_ _1"></span>l<span class=3D"_ _3"></span>as <span class=3D"_ _1"></=
span>mujeres <span class=3D"_ _9"></span>embarazadas <span class=3D"_ _1"><=
/span>escuchar <span class=3D"_ _9"></span>m=C3=BAsica, </div><div class=3D=
"t m0 x2 h4 y53 ff4 fs0 fc0 sc0 ls0 ws0">principalmente cl=C3=A1sica e inst=
rumental.  Pascual, (2011, p.52).  </div><div class=3D"t m0 x2 h4 yb4 ff4 f=
s0 fc0 sc0 ls0 ws0">Reafirmando <span class=3D"_ _7"> </span>a <span class=
=3D"_ _7"> </span>Web<span class=3D"_ _0"></span>ber <span class=3D"_ _7"> =
</span>(1969), <span class=3D"_ _7"> </span>la <span class=3D"_ _e"> </span=
>experiencia <span class=3D"_ _7"> </span>del <span class=3D"_ _e"> </span>=
ni=C3=B1o/a <span class=3D"_ _7"> </span>con <span class=3D"_ _e"> </span>l=
a <span class=3D"_ _7"> </span>m=C3=BAsica <span class=3D"_ _7"> </span>es<=
span class=3D"_ _0"></span> <span class=3D"_ _7"> </span>doble. </div><div =
class=3D"t m0 x2 h4 yf8 ff4 fs0 fc0 sc0 ls0 ws0">Esto <span class=3D"_ _1">=
 </span>es, <span class=3D"_ _7"> </span>el <span class=3D"_ _1"> </span>ni=
=C3=B1o <span class=3D"_ _7"> </span>pu<span class=3D"_ _3"></span>ede <spa=
n class=3D"_ _7"> </span>aprender <span class=3D"_ _1"></span>diversos <spa=
n class=3D"_ _1"> </span>conceptos <span class=3D"_ _7"> </span>acerca <spa=
n class=3D"_ _1"></span>de <span class=3D"_ _7"> </span>los <span class=3D"=
_ _1"></span>elementos <span class=3D"_ _1"> </span>de <span class=3D"_ _7"=
> </span>la </div><div class=3D"t m0 x2 h4 ycc ff4 fs0 fc0 sc0 ls0 ws0">m=
=C3=BAsica <span class=3D"_ _10"> </span>(melod=C3=ADa, <span class=3D"_ _1=
0"> </span>ritmo, <span class=3D"_ _10"> </span>din=C3=A1mica,<span class=
=3D"ff5">=E2=80=A6), <span class=3D"_ _10"> </span>movi=C3=A9ndose, <span c=
lass=3D"_ _2"> </span>cantando, <span class=3D"_ _10"> </span>escuchando, <=
/span></div><div class=3D"t m0 x2 h4 yf9 ff4 fs0 fc0 sc0 ls0 ws0">respondie=
ndo <span class=3D"_ _1"></span>de <span class=3D"_ _1"></span>esta <span c=
lass=3D"_ _1"></span>manera <span class=3D"_ _1"></span>a <span class=3D"_ =
_1"></span>esas <span class=3D"_ _1"></span>situaciones <span class=3D"_ _1=
"></span>y <span class=3D"_ _1"></span>siendo <span class=3D"_ _1"></span>l=
a <span class=3D"_ _1"></span>audici=C3=B3n <span class=3D"_ _1"></span>un =
<span class=3D"_ _1"></span>requisito </div><div class=3D"t m0 x2 h4 yfa ff=
4 fs0 fc0 sc0 ls0 ws0">fundamental <span class=3D"_ _7"> </span>para <span =
class=3D"_ _1"> </span>todas <span class=3D"_ _7"> </span>esas <span class=
=3D"_ _7"> </span>actividades. <span class=3D"_ _1"> </span>Asimismo, <span=
 class=3D"_ _7"> </span>explica <span class=3D"_ _7"> </span>que <span clas=
s=3D"_ _1"> </span>es <span class=3D"_ _7"> </span>m=C3=A1s <span class=3D"=
_ _7"> </span>probable </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m=
0 x2 h2 y58 ff1 fs0 fc0 sc0 ls0 ws0">                                      =
          </div></div><div class=3D"t m0 x1d h2 y58 ff1 fs0 fc0 sc0 ls0 ws0=
"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x2 hb y2d ff1 fs4 =
fc0 sc0 ls0 ws0">18</div></div><div class=3D"t m0 x30 h4 y2e ff1 fs1 fc0 sc=
0 ls0 ws0"> D=C3=ADaz, L. (2008<span class=3D"_ _0"></span>). La M=C3=BAsic=
a como parte del apredizaj<span class=3D"_ _0"></span>e educativo . <span c=
lass=3D"_ _0"></span><span class=3D"ff7 ls1">Re<span class=3D"ls0">vista de=
 musica cu<span class=3D"_ _0"></span>lta</span></span> </div><div class=3D=
"c x6 yb w0 h0"><div class=3D"t m0 x2 hb ya1 ff1 fs4 fc0 sc0 ls0 ws0">19</d=
iv></div><div class=3D"t m0 x30 h4 y2f ff1 fs1 fc0 sc0 ls0 ws0"> <span clas=
s=3D"_ _0"></span>S=C3=A1nchez, <span class=3D"_ _0"></span>I.<span class=
=3D"_ _0"></span> <span class=3D"_ _0"></span>(Junio <span class=3D"_ _0"><=
/span>de <span class=3D"_ _8"></span>2012). <span class=3D"_ _0"></span>Rec=
urso<span class=3D"_ _0"></span>s <span class=3D"_ _0"></span>did=C3=A1ctic=
os <span class=3D"_ _8"></span>para <span class=3D"_ _8"></span>fortalecer =
<span class=3D"_ _0"></span>la<span class=3D"_ _0"></span> <span class=3D"_=
 _8"></span>ense=C3=B1anza <span class=3D"_ _0"></span>y <span class=3D"_ _=
0"></span>ap<span class=3D"_ _0"></span>rendizaje <span class=3D"_ _8"></sp=
an>de <span class=3D"_ _0"></span>la <span class=3D"_ _8"></span>econom=C3=
=ADa. <span class=3D"_ _0"></span>Obtenido <span class=3D"_ _8"></span>de <=
/div><div class=3D"t m0 x2 h4 y31 ff1 fs1 fc0 sc0 ls0 ws0">Recursos <span c=
lass=3D"_ _17"> </span>did=C3=A1cticos <span class=3D"_ _17"> </span>para <=
span class=3D"_ _17"> </span>fortalecer <span class=3D"_ _17"> </span>la <s=
pan class=3D"_ _17"> </span>ense=C3=B1anza <span class=3D"_ _17"> </span>y =
<span class=3D"_ _17"> </span>aprendizaje <span class=3D"_ _17"> </span>de =
<span class=3D"_ _17"> </span>la <span class=3D"_ _17"> </span>econom=C3=AD=
a: </div><div class=3D"t m0 x2 h4 y32 ff1 fs1 fc0 sc0 ls0 ws0">https://uvad=
oc.uva.es/bitstrea<span class=3D"_ _0"></span>m/10324<span class=3D"_ _0"><=
/span>/1391/1/TFM-E%201.<span class=3D"_ _0"></span>pdf </div></div><div cl=
ass=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.0000=
00,0.000000,0.000000]}"></div></div>
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IDoBwAARD8AACD6AQBA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcA=
AEQ/AAAg+gEAANEPAACIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QA=
AIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AACA6AcAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBw=
AARD8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAoh8AABD9AACA6AcAAEQ/A=
AAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoB=
AADRDwAAiH4AAED0AwAAoh8AABD9AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAA0Q8=
AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+g=
EAANEPAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AAAQ/QAAgOgHAABEPwAAIPoBAADRD=
wAAiH4AAED0AwAAoh8AAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0AACD6AQAA0Q8AAIh+=
AABA9AMAAKIfAAAQ/QAAgOgHAADRDwAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPQ=
DAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH=
4AABD9JgAAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ/QAAg=
OgHAABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAA=
RD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAA=
g+gEAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAA=
BEPwAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDoBwAARD8AA=
CD6AQAA0Q8AAIh+AAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwCA6AcAAEQ/AAAg+gEA=
ANEPAACIfgAAQPQDAACiHwAAEP0AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAADRDwA=
AiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQ=
AA0Q8AAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPA=
ACIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4A=
AED0AwAAoh8AABD9AACA6AcAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQBA9AM=
AAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfg=
AAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAABEPwAAIPoBAADRDwAAiH4AAED0A=
wAAoh8AABD9AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIf=
AAAQ/QAAgOgHAABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACiHwAAEP0=
AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh=
8AAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAAEP0AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/=
QAAgOgHAABEPwAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDo=
BwAARD8AACD6AQAA0Q8AAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwCA6AcAAEQ=
/AAAg+gEAANEPAACIfgAAQPQDAACiHwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIP=
pNAAAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AA=
Ih+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AAAg+gEAANEPAACIfgAA=
QPQDAACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAiH4AAED0AwA=
Aoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AA=
AQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwCA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDA=
ACiHwAAEP0AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAADRDwAAiH4AAED0AwAAoh8A=
ABD9AACA6AcAAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAKIfAAAQ/QA=
AgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHw=
AARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9A=
ACA6AcAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQBA9AMAAKIfAAAQ/QAAgOgH=
AABEPwAAIPoBAADRDwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAIDoBwAARD8=
AACD6AQAA0Q8AAIh+AABA9AMAAKIfAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AAAg+g=
EAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABgeGv3jiRmgpNUlREAgLNFcwAAw=
Nwc7wEAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ/QAAgOgH=
AABEPwAAIPoBAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8=
AACD6AQAA0Q8AAIh+AABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAAg+g=
EAANEPAACIfgAAQPQDAACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEP=
wAAiH4AAED0AwAAoh8AABD9AACA6AcAAEQ/AAAg+gEAQPSbAAAARD8AADCwvB73QR99e3+8PwAA=
6Ef/d7sO+ui358/7AwCALsd7AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAoh8AABD=
9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAK=
IfAABEPwAAIPoBAADRDwB7u3UgAAAAACDI33qQiyIApB8AAJB+AABA+gEAAOkHAADpBwAApB8AA=
JB+AABA+gEAAOkHAACkHwAAkH4AAFgL88AlyPRT3kQAAAAASUVORK5CYII=3D"><div class=
=3D"t m0 x1 h2 y33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20 h=
4 y34 ff1 fs1 fc0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0"></=
span>Ay<span class=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rillo,=
 Letty Araceli Delgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9 G=
rismaldo P<span class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></span=
> </div><div class=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div c=
lass=3D"c x1f y3 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0=
">168<span class=3D"ls0"> </span></div></div><div class=3D"c x21 y3 w2 h3">=
<div class=3D"t m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=
=C3=ADa, <span class=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n=
<span class=3D"_ _0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=
=A9cnica de Manab=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><=
div class=3D"t m0 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t=
 m0 x22 h4 y36 ff4 fs0 fc0 sc0 ls0 ws0">que <span class=3D"_ _8"></span>se =
<span class=3D"_ _9"></span>produzca <span class=3D"_ _8"></span>una <span =
class=3D"_ _9"></span>respuesta <span class=3D"_ _8"></span>afectiva <span =
class=3D"_ _9"></span>positiva <span class=3D"_ _8"></span>si <span class=
=3D"_ _9"></span>las <span class=3D"_ _8"></span>experiencias <span class=
=3D"_ _8"></span>surgen <span class=3D"_ _9"></span>y <span class=3D"_ _8">=
</span>parten </div><div class=3D"t m0 x22 h4 y37 ff4 fs0 fc0 sc0 ls0 ws0">=
de la vida cotidiana del ni=C3=B1o. </div><div class=3D"t m0 x22 h4 yfb ff4=
 fs0 fc0 sc0 ls0 ws0">Esto <span class=3D"_ _f"> </span>permite <span class=
=3D"_ _f"> </span>utilizar <span class=3D"_ _f"> </span>la <span class=3D"_=
 _f"> </span>m=C3=BAsica <span class=3D"_ _f"> </span>como <span class=3D"_=
 _f"> </span>una <span class=3D"_ _f"> </span>estrategia <span class=3D"_ _=
f"> </span>did=C3=A1ctica <span class=3D"_ _f"> </span>que <span class=3D"_=
 _f"> </span>tiene <span class=3D"_ _f"> </span>como </div><div class=3D"t =
m0 x22 h4 yfc ff4 fs0 fc0 sc0 ls0 ws0">ventaja  motivar  la  diversi=C3=B3n=
  contribuyendo  a  la  formaci=C3=B3n  que  generan  nuevas </div><div cla=
ss=3D"t m0 x22 h4 yfd ff4 fs0 fc0 sc0 ls0 ws0">maneras <span class=3D"_ _7"=
> </span>de <span class=3D"_ _7"> </span>adquirir <span class=3D"_ _7"> </s=
pan>conocimiento; <span class=3D"_ _1"> </span>y <span class=3D"_ _7"> </sp=
an>lo <span class=3D"_ _7"> </span>m=C3=A1s <span class=3D"_ _7"> </span>im=
portante, <span class=3D"_ _7"> </span>los <span class=3D"_ _7"> </span>ni=
=C3=B1os <span class=3D"_ _1"> </span>desarrollan <span class=3D"_ _7"> </s=
pan>su </div><div class=3D"t m0 x22 h4 ybc ff4 fs0 fc0 sc0 ls0 ws0">intelig=
encia <span class=3D"_ _0"></span>social <span class=3D"_ _0"></span>e<span=
 class=3D"_ _0"></span>ntre <span class=3D"_ _0"></span>todos <span class=
=3D"_ _0"></span>los<span class=3D"_ _0"></span> <span class=3D"_ _0"></spa=
n>que <span class=3D"_ _0"></span>se <span class=3D"_ _8"></span>encuentran=
 <span class=3D"_ _0"></span>involu<span class=3D"_ _0"></span>crados <span=
 class=3D"_ _0"></span>en <span class=3D"_ _0"></span>esta <span class=3D"_=
 _8"></span>estrategia </div><div class=3D"t m0 x22 h4 y87 ff4 fs0 fc0 sc0 =
ls0 ws0">por decir padres, maestros, amigos, familiares entre otros. </div>=
<div class=3D"t m0 x22 h4 yfe ff4 fs0 fc0 sc0 ls0 ws0">Entre <span class=3D=
"_ _9"></span>los <span class=3D"_ _1"></span>beneficios <span class=3D"_ _=
9"></span>que <span class=3D"_ _9"></span>propende <span class=3D"_ _1"></s=
pan>la <span class=3D"_ _9"></span>m=C3=BAsica <span class=3D"_ _9"></span>=
en <span class=3D"_ _9"></span>los <span class=3D"_ _1"></span>ni=C3=B1os/a=
s <span class=3D"_ _9"></span>constan: <span class=3D"_ _9"></span>un <span=
 class=3D"_ _1"></span>aumento<span class=3D"_ _3"></span> </div><div class=
=3D"t m0 x22 h4 y3e ff4 fs0 fc0 sc0 ls0 ws0">en <span class=3D"_ _0"></span=
>la <span class=3D"_ _8"></span>capacidad <span class=3D"_ _8"></span>de <s=
pan class=3D"_ _0"></span>memoria, <span class=3D"_ _8"></span>atenci=C3=B3=
n <span class=3D"_ _8"></span>y <span class=3D"_ _8"></span>concentraci=C3=
=B3n, <span class=3D"_ _8"></span>en <span class=3D"_ _8"></span>la <span c=
lass=3D"_ _0"></span>manera <span class=3D"_ _8"></span>de <span class=3D"_=
 _8"></span>expresarse; </div><div class=3D"t m0 x22 h4 yff ff4 fs0 fc0 sc0=
 ls0 ws0">estimula <span class=3D"_ _0"></span>la <span class=3D"_ _8"></sp=
an>imaginaci=C3=B3n <span class=3D"_ _8"></span>infantil; <span class=3D"_ =
_8"></span>al <span class=3D"_ _8"></span>combinarse <span class=3D"_ _0"><=
/span>con <span class=3D"_ _8"></span>el <span class=3D"_ _8"></span>baile =
<span class=3D"_ _8"></span>estimula <span class=3D"_ _8"></span>los <span =
class=3D"_ _8"></span>sentidos, <span class=3D"_ _8"></span>el </div><div c=
lass=3D"t m0 x22 h4 yd ff4 fs0 fc0 sc0 ls0 ws0">equilibrio <span class=3D"_=
 _b"> </span>y <span class=3D"_ _b"> </span>el <span class=3D"_ _c"> </span=
>desarrollo <span class=3D"_ _b"> </span>muscular; <span class=3D"_ _c"> </=
span>brinda <span class=3D"_ _b"> </span>la <span class=3D"_ _b"> </span>op=
ortunidad <span class=3D"_ _c"> </span>para <span class=3D"_ _b"> </span>qu=
e <span class=3D"_ _b"> </span>interact<span class=3D"_ _0"></span>=C3=BAen=
 </div><div class=3D"t m0 x22 h4 ybd ff4 fs0 fc0 sc0 ls0 ws0">entre <span c=
lass=3D"_ _7"> </span>s=C3=AD <span class=3D"_ _7"> </span>y <span class=3D=
"_ _7"> </span>con <span class=3D"_ _1"> </span>los <span class=3D"_ _7"> <=
/span>adultos. <span class=3D"_ _7"> </span>(Sarget, <span class=3D"_ _7"> =
</span>2003)</div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x3c he y1=
00 ff4 fs6 fc0 sc0 ls1 ws0">20</div></div><div class=3D"t m0 x3d h4 ybd ff4=
 fs0 fc0 sc0 ls0 ws0">. <span class=3D"_ _7"> </span>Considerando <span cla=
ss=3D"_ _7"> </span>el <span class=3D"_ _7"> </span>criterio <span class=3D=
"_ _7"> </span>emitido <span class=3D"_ _1"> </span>cabe </div><div class=
=3D"t m0 x22 h4 ybe ff4 fs0 fc0 sc0 ls0 ws0">indicar <span class=3D"_ _a"> =
</span>que <span class=3D"_ _f"> </span>el <span class=3D"_ _a"> </span>des=
arrollo <span class=3D"_ _a"> </span>psicosocial <span class=3D"_ _f"> </sp=
an>facilita <span class=3D"_ _a"> </span>a <span class=3D"_ _a"> </span>los=
 <span class=3D"_ _f"> </span>ni=C3=B1os <span class=3D"_ _a"> </span>un <s=
pan class=3D"_ _f"> </span>desarrollo <span class=3D"_ _a"> </span>en <span=
 class=3D"_ _a"> </span>sus </div><div class=3D"t m0 x22 h4 ybf ff4 fs0 fc0=
 sc0 ls0 ws0">capacidades <span class=3D"_ _a"> </span>intelectuales, <span=
 class=3D"_ _f"> </span>as=C3=AD <span class=3D"_ _a"> </span>como <span cl=
ass=3D"_ _a"> </span>e<span class=3D"_ _3"></span>stimula <span class=3D"_ =
_a"> </span>la <span class=3D"_ _a"> </span>imagina<span class=3D"_ _3"></s=
pan>ci=C3=B3n <span class=3D"_ _a"> </span>cuando <span class=3D"_ _f"> </s=
pan>desarrolla </div><div class=3D"t m0 x22 h4 yc0 ff4 fs0 fc0 sc0 ls0 ws0"=
>movimientos <span class=3D"_ _0"></span>y <span class=3D"_ _8"></span>se <=
span class=3D"_ _8"></span>articulan <span class=3D"_ _0"></span>los <span =
class=3D"_ _8"></span>sentidos, <span class=3D"_ _0"></span>haciendo <span =
class=3D"_ _8"></span>que <span class=3D"_ _8"></span>interact=C3=BAen <spa=
n class=3D"_ _0"></span>en <span class=3D"_ _8"></span>el <span class=3D"_ =
_8"></span>medi<span class=3D"_ _0"></span>o <span class=3D"_ _0"></span>en=
 <span class=3D"_ _8"></span>el </div><div class=3D"t m0 x22 h4 yc1 ff4 fs0=
 fc0 sc0 ls0 ws0">que se desenvuelven.  </div><div class=3D"t m0 x22 h4 y6d=
 ff4 fs0 fc0 sc0 ls0 ws0">En <span class=3D"_ _8"></span>muchas <span class=
=3D"_ _8"></span>ocasiones <span class=3D"_ _8"></span>los <span class=3D"_=
 _9"></span>ni=C3=B1os <span class=3D"_ _0"></span>presentan <span class=3D=
"_ _8"></span>dificultades <span class=3D"_ _8"></span>para <span class=3D"=
_ _9"></span>adquirir <span class=3D"_ _0"></span>un <span class=3D"_ _9"><=
/span>aprendizaje<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 =
h4 y6e ff4 fs0 fc0 sc0 ls0 ws0">efectivo <span class=3D"_ _0"></span>dentro=
 <span class=3D"_ _0"></span>del <span class=3D"_ _8"></span>aula <span cla=
ss=3D"_ _0"></span>de <span class=3D"_ _8"></span>clase; <span class=3D"_ _=
0"></span>es <span class=3D"_ _8"></span>necesario <span class=3D"_ _8"></s=
pan>conocer <span class=3D"_ _0"></span>el <span class=3D"_ _0"></span>esta=
<span class=3D"_ _0"></span>do <span class=3D"_ _0"></span>emocional <span =
class=3D"_ _0"></span>en <span class=3D"_ _0"></span>el<span class=3D"_ _0"=
></span> <span class=3D"_ _0"></span>que </div><div class=3D"t m0 x22 h4 y1=
7 ff4 fs0 fc0 sc0 ls0 ws0">se encuentre inmers<span class=3D"_ _0"></span>o=
 y tratar <span class=3D"_ _0"></span>de buscar <span class=3D"_ _0"></span=
>mecanismos o alter<span class=3D"_ _0"></span>nativos <span class=3D"_ _0"=
></span>para erradicar el </div><div class=3D"t m0 x22 h4 y6f ff4 fs0 fc0 s=
c0 ls0 ws0">problema <span class=3D"_ _9"></span>en <span class=3D"_ _9"></=
span>s=C3=AD. <span class=3D"_ _9"></span>Si <span class=3D"_ _9"></span>bi=
en <span class=3D"_ _9"></span>es <span class=3D"_ _9"></span>cierto <span =
class=3D"_ _9"></span>que <span class=3D"_ _9"></span>la <span class=3D"_ _=
8"></span>m=C3=BAsica <span class=3D"_ _1"></span>es <span class=3D"_ _8"><=
/span>la <span class=3D"_ _9"></span>magia <span class=3D"_ _9"></span>de <=
span class=3D"_ _9"></span>la <span class=3D"_ _9"></span>vida, <span class=
=3D"_ _9"></span>los <span class=3D"_ _9"></span>ni=C3=B1os <span class=3D"=
_ _9"></span>se </div><div class=3D"t m0 x22 h4 y101 ff4 fs0 fc0 sc0 ls0 ws=
0">tornan <span class=3D"_ _b"> </span>entusiasta <span class=3D"_ _7"> </s=
pan>y <span class=3D"_ _b"> </span>se <span class=3D"_ _e"> </span>manifies=
tan <span class=3D"_ _b"> </span>en <span class=3D"_ _e"> </span>toda <span=
 class=3D"_ _b"> </span>su <span class=3D"_ _e"> </span>dimensi=C3=B3n. <sp=
an class=3D"_ _b"> </span>La <span class=3D"_ _e"> </span>m=C3=BAsica <span=
 class=3D"_ _e"> </span>puede <span class=3D"_ _b"> </span>ser </div><div c=
lass=3D"t m0 x22 h4 y96 ff4 fs0 fc0 sc0 ls0 ws0">considera <span class=3D"_=
 _1"></span>como <span class=3D"_ _9"></span>un <span class=3D"_ _9"></span=
>eje <span class=3D"_ _1"></span>transversal <span class=3D"_ _9"></span>qu=
e <span class=3D"_ _1"></span>atraviesa <span class=3D"_ _9"></span>todo <s=
pan class=3D"_ _1"></span>el <span class=3D"_ _9"></span>desarrollo <span c=
lass=3D"_ _1"></span>multifac=C3=A9tico <span class=3D"_ _1"></span>de<span=
 class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 y97 ff4 fs0 fc0 sc0=
 ls0 ws0">la dimensi=C3=B3n humana. </div><div class=3D"t m0 x22 h4 y73 ff4=
 fs0 fc0 sc0 ls0 ws0">Particularmente <span class=3D"_ _9"></span>el <span =
class=3D"_ _8"></span>ser <span class=3D"_ _9"></span>humano <span class=3D=
"_ _9"></span>est=C3=A1 <span class=3D"_ _9"></span>rodeado <span class=3D"=
_ _9"></span>por <span class=3D"_ _8"></span>sonidos, <span class=3D"_ _9">=
</span>entre <span class=3D"_ _9"></span>ellos <span class=3D"_ _9"></span>=
la <span class=3D"_ _8"></span>m=C3=BAsica <span class=3D"_ _9"></span>que<=
span class=3D"_ _0"></span> </div><div class=3D"t m0 x22 h4 y1e ff4 fs0 fc0=
 sc0 ls0 ws0">se encuentra impreg<span class=3D"_ _0"></span>nada en su <sp=
an class=3D"_ _0"></span>interior, y que <span class=3D"_ _0"></span>requie=
re de un<span class=3D"_ _0"></span>a profunda reflexividad </div><div clas=
s=3D"t m0 x22 h4 y74 ff4 fs0 fc0 sc0 ls0 ws0">y conciencia. <span class=3D"=
_ _0"></span>Por <span class=3D"_ _0"></span>lo <span class=3D"_ _0"></span=
>tanto, se <span class=3D"_ _0"></span>considera <span class=3D"_ _0"></spa=
n>como <span class=3D"_ _0"></span>un acto<span class=3D"_ _0"></span> que<=
span class=3D"_ _0"></span> val<span class=3D"_ _0"></span>ora la <span cla=
ss=3D"_ _0"></span>interpretaci=C3=B3n <span class=3D"_ _0"></span>de </div=
><div class=3D"t m0 x22 h4 y75 ff4 fs0 fc0 sc0 ls0 ws0">manera <span class=
=3D"_ _1"></span>individual <span class=3D"_ _1"></span>y <span class=3D"_ =
_1"></span>en <span class=3D"_ _1"></span>equipo <span class=3D"_ _1"></spa=
n>que <span class=3D"_ _1"></span>permite <span class=3D"_ _1"></span>el <s=
pan class=3D"_ _1"></span>desarrollo <span class=3D"_ _1"></span>en <span c=
lass=3D"_ _1"></span>todo <span class=3D"_ _1"></span>=C3=A1mbito <span cla=
ss=3D"_ _1"></span>y <span class=3D"_ _1"></span>dis<span class=3D"_ _3"></=
span>frute </div><div class=3D"t m0 x22 h4 y76 ff4 fs0 fc0 sc0 ls0 ws0">com=
o medio de aprendizaje en especial en los ni=C3=B1os. </div><div class=3D"t=
 m0 x22 h4 yc6 ff4 fs0 fc0 sc0 ls0 ws0">De <span class=3D"_ _1"> </span>igu=
al <span class=3D"_ _1"> </span>forma <span class=3D"_ _7"> </span>es <span=
 class=3D"_ _1"></span>necesario <span class=3D"_ _1"></span>indicar <span =
class=3D"_ _1"> </span>que <span class=3D"_ _7"> </span>la <span class=3D"_=
 _9"></span>m=C3=BAsica <span class=3D"_ _7"> </span>y <span class=3D"_ _1"=
></span>el <span class=3D"_ _1"></span>movimiento <span class=3D"_ _1"> </s=
pan>se <span class=3D"_ _1"> </span>encuentr<span class=3D"_ _0"></span>an =
</div><div class=3D"t m0 x22 h4 yc7 ff4 fs0 fc0 sc0 ls0 ws0">articulados, <=
span class=3D"_ _1"> </span>de <span class=3D"_ _7"> </span>tal <span class=
=3D"_ _9"></span>forma <span class=3D"_ _1"> </span>que <span class=3D"_ _7=
"> </span>permite <span class=3D"_ _9"></span>sugerir <span class=3D"_ _1">=
 </span>en <span class=3D"_ _7"> </span>base <span class=3D"_ _9"></span>a =
<span class=3D"_ _7"> </span>los<span class=3D"_ _3"></span> <span class=3D=
"_ _1"></span>estudios <span class=3D"_ _1"></span>donde <span class=3D"_ _=
1"> </span>se=C3=B1ala </div><div class=3D"t m0 x22 h4 y25 ff4 fs0 fc0 sc0 =
ls0 ws0">que  nutre  el  cerebro,  fortalece  la  aud<span class=3D"_ _3"><=
/span>ici=C3=B3n  y  las  habilidades  motoras,  ayuda  a </div><div class=
=3D"t m0 x22 h4 y79 ff4 fs0 fc0 sc0 ls0 ws0">desarrollar <span class=3D"_ _=
e"> </span>las <span class=3D"_ _b"> </span>habi<span class=3D"_ _3"></span=
>lidades <span class=3D"_ _e"> </span>auditivas, <span class=3D"_ _e"> </sp=
an>otorga <span class=3D"_ _e"> </span>un <span class=3D"_ _b"> </span>bien=
estar <span class=3D"_ _7"> </span>emocional, <span class=3D"_ _e"> </span>=
proporciona </div><div class=3D"t m0 x22 h4 y7a ff4 fs0 fc0 sc0 ls0 ws0">op=
ortunidades, <span class=3D"_ _1"> </span>entre <span class=3D"_ _7"> </spa=
n>otros. <span class=3D"_ _1"></span>De <span class=3D"_ _7"> </span>tal <s=
pan class=3D"_ _1"></span>manera <span class=3D"_ _1"> </span>que <span cla=
ss=3D"_ _7"> </span>los <span class=3D"_ _1"></span>ni=C3=B1os <span class=
=3D"_ _1"> </span>d<span class=3D"_ _0"></span>el <span class=3D"_ _1"> </s=
pan>Centro <span class=3D"_ _7"> </span>de <span class=3D"_ _1"></span>Educ=
aci=C3=B3n </div><div class=3D"t m0 x22 h4 y7b ff4 fs0 fc0 sc0 ls0 ws0">Ini=
cial <span class=3D"_ _1"> </span>Gabriela <span class=3D"_ _7"> </span>Mis=
t<span class=3D"_ _3"></span>ral, <span class=3D"_ _1"></span>adquieran <sp=
an class=3D"_ _1"></span>un <span class=3D"_ _1"> </span>aprendizaje <span =
class=3D"_ _7"> </span>significativo <span class=3D"_ _9"></span>en <span c=
lass=3D"_ _7"> </span>su <span class=3D"_ _9"></span>etapa <span class=3D"_=
 _7"> </span>inicial,<span class=3D"_ _3"></span> </div><div class=3D"t m0 =
x22 h4 y7c ff4 fs0 fc0 sc0 ls0 ws0">adem=C3=A1s es menester indicar que el =
empleo de la m=C3=BAsica incide positivamente. </div><div class=3D"t m0 x22=
 h4 yca ff4 fs0 fc0 sc0 ls0 ws0">CONCLUSIONES </div><div class=3D"t m0 x22 =
h4 y102 ff4 fs0 fc0 sc0 ls0 ws0">Siendo <span class=3D"_ _b"> </span>la <sp=
an class=3D"_ _e"> </span>m=C3=BAsica <span class=3D"_ _b"> </span>importan=
te <span class=3D"_ _b"> </span>en <span class=3D"_ _e"> </span>los <span c=
lass=3D"_ _b"> </span>procesos <span class=3D"_ _e"> </span>educativos, <sp=
an class=3D"_ _b"> </span>ha <span class=3D"_ _b"> </span>sido <span class=
=3D"_ _e"> </span>relegada <span class=3D"_ _b"> </span>a <span class=3D"_ =
_b"> </span>un<span class=3D"_ _3"></span> </div><div class=3D"t m0 x22 h4 =
ydd ff4 fs0 fc0 sc0 ls0 ws0">segundo <span class=3D"_ _0"></span>plano, <sp=
an class=3D"_ _0"></span>en <span class=3D"_ _0"></span>los <span class=3D"=
_ _0"></span>sistemas educativos, <span class=3D"_ _0"></span>se <span clas=
s=3D"_ _0"></span>cree <span class=3D"_ _0"></span>que <span class=3D"_ _0"=
></span>su <span class=3D"_ _0"></span>ense=C3=B1anza <span class=3D"_ _0">=
</span>est=C3=A1 <span class=3D"_ _0"></span>dentro <span class=3D"_ _0"></=
span>de </div><div class=3D"t m0 x22 h4 yde ff4 fs0 fc0 sc0 ls0 ws0">la <sp=
an class=3D"_ _7"> </span>distracci=C3=B3n <span class=3D"_ _1"></span>y <s=
pan class=3D"_ _7"> </span>no <span class=3D"_ _1"> </span>como <span class=
=3D"_ _7"> </span>una <span class=3D"_ _1"> </span>estrategia <span class=
=3D"_ _7"> </span>pedag=C3=B3gica. <span class=3D"_ _1"> </span>Adem=C3=A1<=
span class=3D"_ _0"></span>s, <span class=3D"_ _7"> </span>trasciende <span=
 class=3D"_ _1"></span>la <span class=3D"_ _7"> </span>pro<span class=3D"_ =
_3"></span>pia </div><div class=3D"t m0 x22 h4 y2d ff4 fs0 fc0 sc0 ls0 ws0"=
>educaci=C3=B3n <span class=3D"_ _0"></span>musical <span class=3D"_ _0"></=
span>del <span class=3D"_ _0"></span>ni=C3=B1o <span class=3D"_ _0"></span>=
y <span class=3D"_ _0"></span>del <span class=3D"_ _0"></span>adulto <span =
class=3D"_ _0"></span>para <span class=3D"_ _0"></span>formar <span class=
=3D"_ _0"></span>parte <span class=3D"_ _0"></span>de <span class=3D"_ _0">=
</span>una <span class=3D"_ _0"></span>de <span class=3D"_ _0"></span>las <=
span class=3D"_ _0"></span>actividades </div><div class=3D"c x6 yb w0 h0"><=
div class=3D"t m0 x22 h2 ye6 ff1 fs0 fc0 sc0 ls0 ws0">                     =
                           </div></div><div class=3D"t m0 x28 h2 ye6 ff1 fs=
0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x6 yb w0 h0"><div class=3D"t m0 x=
22 hb y30 ff1 fs4 fc0 sc0 ls0 ws0">20</div></div><div class=3D"t m0 x33 h4 =
y31 ff1 fs1 fc0 sc0 ls0 ws0"> Sarget, M.A. <span class=3D"_ _0"></span>(200=
3). La <span class=3D"_ _0"></span>m=C3=BAs<span class=3D"_ _3"></span>ica =
en Ed<span class=3D"_ _0"></span>ucaci=C3=B3n Infantil: es<span class=3D"_ =
_0"></span>trategias cognitivo<span class=3D"_ _0"></span>-musicale<span cl=
ass=3D"_ _0"></span>s. Revista d<span class=3D"_ _0"></span>e la Facultad d=
e <span class=3D"_ _0"></span>Ciencias </div><div class=3D"t m0 x22 h4 y32 =
ff1 fs1 fc0 sc0 ls0 ws0">de la Educaci=C3=B3n de <span class=3D"_ _0"></spa=
n>Albacete. N=C2=BA 18. Recuperado<span class=3D"_ _0"></span> de: http://d=
ialnet.unirioja.es/servlet/articu<span class=3D"_ _0"></span>lo?codigo=3D10=
32<span class=3D"_ _8"></span>322 </div></div><div class=3D"pi" data-data=
=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.000000,0.000000,0.000000=
]}"></div></div>
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0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAgO4HAAB0PwAAoPsBAADdDwAA6=
H4AAED3AwAAuh8AAND9AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAOh+AABA=
9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAAD=
ofgAAQPcDAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAoPsBAADdDwAA6H4AAE=
D3AwAAuh8AAND9AACA7gcAAHQ/AADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AA=
LofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwCA7gcAAHQ/AACg+wEAAN0PAADofgAA=
QPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAED3AwA=
Auh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AA=
BA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAN0PAADofgAAQPcDA=
AC6HwAA0P0AAIDuBwAAdD8AAKD7AQBA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4A=
AND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAAdD8AAKD7AQAA3Q8AAOh+AABA9wM=
AALofAADQ/QAAgO4HAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAQPcDAAC6Hw=
AA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3A=
wAAuh8AAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAA3Q8AAOh+AABA9wMAALof=
AADQ/QAAgO4HAAB0PwAAoPsBAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0=
AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh=
8AAND9AACA7gcAAHQ/AADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AALofAADQ/=
QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwCA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6=
HwAA0P0AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAA6H4AAED3AwAAuh8AAND=
9AACA7gcAAHQ/AACg+wEAAN0PAAC6HwAA0P0AAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAgO=
4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0=
P0AAIDuBwAAdD8AAOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAAuh8AAND9AACA=
7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAIDuBwAAdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAD=
Q/QAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AACA7gcAAHQ/AADofgAAQPcDAAC6HwAA0P0AAI=
DuBwAAdD8AAKD7AQAA3Q8AALofAADQ/QAAgO4HAAB0PwAAoPsBAADdDwAA6H4AAED3AwCA7gcAA=
HQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAKD7AQAA3Q8AAOh+AABA9wMAALofAADQ/QAA=
gO4HAAB0PwAAoPsBAED3AwAAuh8AAND9AACA7gcAAHQ/AACg+wEAAN0PAADofgAA0P0AAIDuBwA=
AdD8AAKD7AQAA3Q8AAOh+AABA9wMAALofAAB0PwAAoPsBAADdDwAA6H4AAED3AwAAuh8AAND9AA=
CA7gcAAN0PAADofgAAQPcDAAC6HwAA0P0AAIDuBwAAdD8AAPAVKwAAgH+8HveNu7+tTwgAAD+9n=
7d9D+8/HwAAmE/3AwCA7gcAAHQ/AACg+wEAAN0PAADofgAAQPcDAAC6HwAA0P0AAKD7AQAA3Q8A=
AOh+AABA9wMAALofAADQ/QAAgO4HAAB0PwAA6H4AAED3AwAAuh8AAND9wKfdOhYAAAAAGORvPY0=
dRREAgPcDAADeDwAAeD8AAOD9AADg/QAAgPcDAADeDwAAeD8AAOD9AACA9wMAAN4PAAB4PwAAeD=
8AAOD9AACA9wMAAB8Bev0fizEWLooAAAAASUVORK5CYII=3D"><div class=3D"t m0 x2 h5 =
y5c ff2 fs1 fc0 sc0 ls0 ws0">Revista Cog<span class=3D"_ _0"></span>nosis. =
Revista de Filosof=C3=ADa, Let<span class=3D"_ _0"></span>ras y Ciencias de=
 la Educaci=C3=B3n <span class=3D"_ _0"></span><span class=3D"ls1">        =
                      <span class=3D"_ _3"></span>     <span class=3D"ls0">=
            ISSN </span>2588<span class=3D"ls0">-0578 </span></span></div><=
div class=3D"t m0 x2 h4 y5d ff1 fs1 fc0 sc0 ls0 ws0">M=C3=9ASICA COMO MEDIO=
 <span class=3D"_ _0"></span>DE ENSE=C3=91<span class=3D"_ _0"></span>ANZA-=
APRENDI<span class=3D"_ _0"></span>ZAJE DE NI=C3=91OS<span class=3D"_ _0"><=
/span><span class=3D"fs6"> </span></div><div class=3D"t m0 x2 h2 y5e ff1 fs=
0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x0 y3 w2 h3"><div class=3D"t m0 x=
3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0">Vol. V. A=C3=B1o 2020.<span class=3D"_ _0"=
></span> N=C3=BAmero 2, Abril<span class=3D"_ _0"></span>-Junio </div></div=
><div class=3D"c x4 y3 w3 h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 l=
s1 ws0">169<span class=3D"ls0"> </span></div></div><div class=3D"t m0 x2 h2=
 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x2 h4 y5f ff4 fs0 fc=
0 sc0 ls0 ws0">m=C3=A1s <span class=3D"_ _8"></span>beneficiosas <span clas=
s=3D"_ _8"></span>del <span class=3D"_ _8"></span>ser <span class=3D"_ _9">=
</span>humano <span class=3D"_ _0"></span>y <span class=3D"_ _9"></span>as=
=C3=AD <span class=3D"_ _0"></span>estimular <span class=3D"_ _8"></span>lo=
s <span class=3D"_ _8"></span>sentidos, <span class=3D"_ _9"></span>la <spa=
n class=3D"_ _0"></span>memoria, <span class=3D"_ _9"></span>atenci=C3=B3n<=
span class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y60 ff4 fs0 fc0 =
sc0 ls0 ws0">y <span class=3D"_ _b"> </span>sobre <span class=3D"_ _b"> </s=
pan>todo <span class=3D"_ _b"> </span>la <span class=3D"_ _b"> </span>conce=
ntraci=C3=B3n <span class=3D"_ _b"> </span>en <span class=3D"_ _b"> </span>=
el <span class=3D"_ _b"> </span>cual <span class=3D"_ _b"> </span>el <span =
class=3D"_ _b"> </span>ni=C3=B1o <span class=3D"_ _b"> </span>puede <span c=
lass=3D"_ _b"> </span>expresar <span class=3D"_ _b"> </span>lo <span class=
=3D"_ _b"> </span>que <span class=3D"_ _b"> </span>ha<span class=3D"_ _3"><=
/span>ce <span class=3D"_ _b"> </span>e<span class=3D"_ _3"></span> </div><=
div class=3D"t m0 x2 h4 y61 ff4 fs0 fc0 sc0 ls0 ws0">interactuar entre <spa=
n class=3D"_ _0"></span>s=C3=AD <span class=3D"_ _0"></span>y con <span cla=
ss=3D"_ _0"></span>las personas <span class=3D"_ _0"></span>que <span class=
=3D"_ _0"></span>los <span class=3D"_ _0"></span>rodean; la <span class=3D"=
_ _0"></span>m=C3=BAsica <span class=3D"_ _0"></span>trasciende el <span cl=
ass=3D"_ _0"></span>plano </div><div class=3D"t m0 x2 h4 y62 ff4 fs0 fc0 sc=
0 ls0 ws0">f=C3=ADsico <span class=3D"_ _1"></span>y <span class=3D"_ _1"><=
/span>se <span class=3D"_ _1"></span>adentran <span class=3D"_ _1"></span>e=
n <span class=3D"_ _1"></span>lo <span class=3D"_ _1"></span>cognitivo <spa=
n class=3D"_ _1"></span>de <span class=3D"_ _1"></span>los <span class=3D"_=
 _1"></span>estudiantes, <span class=3D"_ _1"></span>induciendo <span class=
=3D"_ _1"></span>al <span class=3D"_ _1"></span>desarrollo <span class=3D"_=
 _1"></span>d<span class=3D"_ _3"></span>e </div><div class=3D"t m0 x2 h4 y=
39 ff4 fs0 fc0 sc0 ls0 ws0">sus <span class=3D"_ _5"> </span>capacidades <s=
pan class=3D"_ _5"> </span>intelectual <span class=3D"_ _5"> </span>y <span=
 class=3D"_ _5"> </span>corporal. <span class=3D"_ _5"> </span>Esta <span c=
lass=3D"_ _5"> </span>investigaci=C3=B3n <span class=3D"_ _5"> </span>permi=
te <span class=3D"_ _5"> </span>analizar, </div><div class=3D"t m0 x2 h4 y6=
3 ff4 fs0 fc0 sc0 ls0 ws0">canalizar <span class=3D"_ _b"> </span>y <span c=
lass=3D"_ _7"> </span>asimilar <span class=3D"_ _b"> </span>que <span class=
=3D"_ _e"> </span>es <span class=3D"_ _b"> </span>necesario <span class=3D"=
_ _e"> </span>ayudar <span class=3D"_ _b"> </span>a <span class=3D"_ _e"> <=
/span>los <span class=3D"_ _e"> </span>ni=C3=B1os<span class=3D"_ _0"></spa=
n> <span class=3D"_ _e"> </span>a <span class=3D"_ _b"> </span>alcanzar <sp=
an class=3D"_ _e"> </span>su <span class=3D"_ _b"> </span>m=C3=A1ximo<span =
class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h4 y103 ff4 fs0 fc0 sc0 =
ls0 ws0">potencial, <span class=3D"_ _b"> </span>demuestra <span class=3D"_=
 _b"> </span>que <span class=3D"_ _b"> </span>los <span class=3D"_ _e"> </s=
pan>ni=C3=B1os <span class=3D"_ _b"> </span>desarrollan <span class=3D"_ _b=
"> </span>conductas <span class=3D"_ _b"> </span>adecuadas <span class=3D"_=
 _e"> </span>durante <span class=3D"_ _b"> </span>la </div><div class=3D"t =
m0 x2 h4 y104 ff4 fs0 fc0 sc0 ls0 ws0">pr=C3=A1ctica <span class=3D"_ _11">=
 </span>musical, <span class=3D"_ _a"> </span>acatando <span class=3D"_ _11=
"> </span>las <span class=3D"_ _11"> </span>norma<span class=3D"_ _3"></spa=
n>s <span class=3D"_ _11"> </span>y <span class=3D"_ _a"> </span>reglas <sp=
an class=3D"_ _11"> </span>establecidas. <span class=3D"_ _11"> </span>Con =
<span class=3D"_ _a"> </span>la <span class=3D"_ _11"> </span>pr=C3=A1ctica=
 </div><div class=3D"t m0 x2 h4 y105 ff4 fs0 fc0 sc0 ls0 ws0">mejoran <span=
 class=3D"_ _1"></span>la <span class=3D"_ _9"></span>atenci=C3=B3n, <span =
class=3D"_ _1"></span>disciplina, <span class=3D"_ _9"></span>concent<span =
class=3D"_ _0"></span>raci=C3=B3n, <span class=3D"_ _9"></span>tolerancia, =
<span class=3D"_ _1"></span>y <span class=3D"_ _1"></span>estimula <span cl=
ass=3D"_ _9"></span>sus <span class=3D"_ _1"></span>sentidos, </div><div cl=
ass=3D"t m0 x2 h4 y3e ff4 fs0 fc0 sc0 ls0 ws0">ayuda <span class=3D"_ _0"><=
/span>a <span class=3D"_ _8"></span>reflexionar <span class=3D"_ _8"></span=
>sobre <span class=3D"_ _8"></span>la <span class=3D"_ _8"></span>toma <spa=
n class=3D"_ _0"></span>de <span class=3D"_ _8"></span>de<span class=3D"_ _=
0"></span>cisiones <span class=3D"_ _0"></span>simples, <span class=3D"_ _8=
"></span>desarrollar <span class=3D"_ _8"></span>la <span class=3D"_ _0"></=
span>creatividad <span class=3D"_ _8"></span>y </div><div class=3D"t m0 x2 =
h4 y106 ff4 fs0 fc0 sc0 ls0 ws0">definir indicios de la personalidad autent=
ica con criterio personal. </div><div class=3D"t m0 x2 h7 y107 ff4 fs2 fc0 =
sc0 ls0 ws0">REFERENCIAS <span class=3D"_ _3"></span>BIBLIOGR=C3=81FICAS <s=
pan class=3D"_ _3"></span> </div><div class=3D"t m0 x2 h7 y108 ff4 fs2 fc0 =
sc0 ls0 ws0">Buzzian, <span class=3D"_ _9"></span>B., <span class=3D"_ _9">=
</span>&amp; <span class=3D"_ _1"></span>H<span class=3D"_ _3"></span>errer=
a, <span class=3D"_ _9"></span>T. <span class=3D"_ _9"></span>L. <span clas=
s=3D"_ _9"></span>(<span class=3D"_ _0"></span>2014). <span class=3D"_ _9">=
</span>M=C3=BAsica <span class=3D"_ _9"></span>y <span class=3D"_ _9"></spa=
n>e<span class=3D"_ _0"></span>moc<span class=3D"_ _3"></span>iones <span c=
lass=3D"_ _9"></span>en <span class=3D"_ _1"></span>n<span class=3D"_ _3"><=
/span>i=C3=B1os <span class=3D"_ _1"></span>de <span class=3D"_ _1"></span>=
4<span class=3D"_ _3"></span> <span class=3D"_ _9"></span>a <span class=3D"=
_ _1"></span>8 <span class=3D"_ _9"></span>a=C3=B1os. <span class=3D"_ _9">=
</span><span class=3D"ff9">Dedica,<span class=3D"_ _3"></span> </span></div=
><div class=3D"t m0 x2 h7 y109 ff9 fs2 fc0 sc0 ls0 ws0">revista<span class=
=3D"_ _3"></span> de educa=C3=A7=C3=A3o e hum<span class=3D"_ _3"></span>an=
idades.<span class=3D"ff4">  </span></div><div class=3D"t m0 x2 h7 y10a ff4=
 fs2 fc0 sc0 ls1 ws0">D=C3=AD<span class=3D"ls0">az, <span class=3D"_ _0"><=
/span>D. <span class=3D"_ _0"></span>J. <span class=3D"_ _0"></span>(2013).=
 <span class=3D"_ _0"></span><span class=3D"ff9">Tiene <span class=3D"_ _0"=
></span>las <span class=3D"_ _0"></span>herrami<span class=3D"_ _3"></span>=
entas. <span class=3D"_ _0"></span>Aprende <span class=3D"_ _0"></span>a <s=
pan class=3D"_ _8"></span>uti<span class=3D"_ _3"></span>lizarlas. <span cl=
ass=3D"_ _0"></span>Estrategias <span class=3D"_ _0"></span>y <span class=
=3D"_ _0"></span>consejos <span class=3D"_ _0"></span>pa<span class=3D"_ _3=
"></span>ra </span></span></div><div class=3D"t m0 x2 h7 yd2 ff9 fs2 fc0 sc=
0 ls0 ws0">maest<span class=3D"_ _3"></span>ros, padres y estudi<span class=
=3D"_ _3"></span>antes.<span class=3D"ff4"> Estados Unidos: Pal<span class=
=3D"_ _3"></span>ilibro. </span></div><div class=3D"t m0 x2 h7 y45 ff4 fs2 =
fc0 sc0 ls0 ws0">D=C3=ADaz, L. (2008). <span class=3D"_ _3"></span>La M=C3=
=BAsica c<span class=3D"_ _3"></span>omo parte d<span class=3D"_ _3"></span=
>el apredizaje educativo .<span class=3D"_ _3"></span> <span class=3D"ff9">=
Revista de m<span class=3D"_ _3"></span>usica culta<span class=3D"ff4">. </=
span></span></div><div class=3D"t m0 x2 h7 y16 ff4 fs2 fc0 sc0 ls0 ws0">Ecu=
Red. (29 d<span class=3D"_ _3"></span>e Noviembre de 2018<span class=3D"_ _=
3"></span>). M=C3=A9todo d<span class=3D"_ _3"></span>e ense=C3=B1anza. <sp=
an class=3D"ff9">EcuRed</span>. </div><div class=3D"t m0 x2 h7 ye8 ff4 fs2 =
fc0 sc0 ls0 ws0">Fuensanta, <span class=3D"_ _a"> </span>H. <span class=3D"=
_ _a"> </span>J. <span class=3D"_ _a"> </span>(enero<span class=3D"_ _0"></=
span>-abr<span class=3D"_ _3"></span>il <span class=3D"_ _a"> </span>de <sp=
an class=3D"_ _11"> </span>2012).<span class=3D"_ _3"></span> <span class=
=3D"_ _a"> </span>Estudio <span class=3D"_ _11"> </span>d<span class=3D"_ _=
3"></span>e <span class=3D"_ _a"> </span>los <span class=3D"_ _a"> </span>e=
<span class=3D"_ _0"></span>nfocques <span class=3D"_ _a"> </span>de <span =
class=3D"_ _a"> </span>ense=C3=B1anza<span class=3D"_ _3"></span> <span cla=
ss=3D"_ _a"> </span>en </div><div class=3D"t m0 x2 h7 y10b ff4 fs2 fc0 sc0 =
ls0 ws0">profesorado d<span class=3D"_ _3"></span>e educaci=C3=B3n pr<span =
class=3D"_ _3"></span>imaria. <span class=3D"ff9">Profesora<span class=3D"_=
 _3"></span>do, 16<span class=3D"ff4">(1), 62-73. </span></span></div><div =
class=3D"t m0 x2 h7 y1a ff4 fs2 fc0 sc0 ls1 ws0">Guz<span class=3D"ls0">m=
=C3=A1n, <span class=3D"_ _0"></span>M. <span class=3D"_ _0"></span>(<span =
class=3D"_ _0"></span>2017<span class=3D"_ _3"></span>). <span class=3D"_ _=
8"></span>Actividades <span class=3D"_ _0"></span>l=C3=BAdicas <span class=
=3D"_ _8"></span>para <span class=3D"_ _0"></span>e<span class=3D"_ _0"></s=
pan>stimu<span class=3D"_ _3"></span>lar <span class=3D"_ _0"></span>e<span=
 class=3D"_ _0"></span>l <span class=3D"_ _0"></span>=C3=A1rea <span class=
=3D"_ _8"></span>de <span class=3D"_ _8"></span>lenguaje <span class=3D"_ _=
0"></span>en <span class=3D"_ _8"></span>ni=C3=B1os <span class=3D"_ _8"></=
span>(as) <span class=3D"_ _0"></span>de </span></div><div class=3D"t m0 x2=
 h7 y1b ff4 fs2 fc0 sc0 ls0 ws0">2 a=C3=B1os. <span class=3D"ff9">Revi<span=
 class=3D"_ _3"></span>sta Conrado, 13<span class=3D"ff4">(58), 20-<span cl=
ass=3D"_ _3"></span>24. Recup<span class=3D"_ _3"></span>erado el 18 d<span=
 class=3D"_ _3"></span>e Junio de 2018 </span></span></div><div class=3D"t =
m0 x2 h7 y10c ff4 fs2 fc0 sc0 ls0 ws0">Llopis, <span class=3D"_ _0"></span>=
J. <span class=3D"_ _0"></span>H. <span class=3D"_ _0"></span>(<span class=
=3D"_ _0"></span>2014).<span class=3D"_ _3"></span> <span class=3D"_ _8"></=
span><span class=3D"ff9">Benefici<span class=3D"_ _3"></span>os <span class=
=3D"_ _8"></span>de <span class=3D"_ _0"></span>la <span class=3D"_ _0"></s=
pan>pr=C3=A1ctica <span class=3D"_ _0"></span>de <span class=3D"_ _0"></spa=
n>la <span class=3D"_ _8"></span>m=C3=BAsi<span class=3D"_ _3"></span>ca <s=
pan class=3D"_ _8"></span>a <span class=3D"_ _0"></span>lo <span class=3D"_=
 _8"></span>largo <span class=3D"_ _0"></span>de <span class=3D"_ _0"></spa=
n>la <span class=3D"_ _0"></span>vida. <span class=3D"_ _0"></span>El <span=
 class=3D"_ _0"></span>de<span class=3D"_ _0"></span>sarr<span class=3D"_ _=
3"></span>o<span class=3D"_ _0"></span>llo </span></div><div class=3D"t m0 =
x2 h7 yae ff9 fs2 fc0 sc0 ls0 ws0">territ<span class=3D"_ _3"></span>orial =
Valencia<span class=3D"_ _3"></span>no.<span class=3D"_ _0"></span><span cl=
ass=3D"ff4"> Reflex<span class=3D"_ _3"></span>iones en torn<span class=3D"=
_ _3"></span>o a sus clav<span class=3D"_ _3"></span>es. P=C3=A1g. 105. </s=
pan></div><div class=3D"t m0 x2 h7 y4b ff4 fs2 fc0 sc0 ls0 ws0">Loaiza, C. =
<span class=3D"_ _3"></span>(2014). <span class=3D"ff9">=C2=BFPor qu=C3=A9 =
ens<span class=3D"_ _3"></span>e=C3=B1ar Art<span class=3D"_ _3"></span>e e=
n la Escuela<span class=3D"_ _3"></span>?<span class=3D"_ _0"></span><span =
class=3D"ff4"> Colima:<span class=3D"_ _3"></span> Sentidos cr<span class=
=3D"_ _3"></span>eativos. </span></span></div><div class=3D"t m0 x2 h7 y10d=
 ff4 fs2 fc0 sc0 ls0 ws0">L=C3=B3pez, <span class=3D"_ _0"></span>C. <span =
class=3D"_ _0"></span>I. <span class=3D"_ _8"></span>(2010). <span class=3D=
"_ _0"></span>El <span class=3D"_ _0"></span>juego <span class=3D"_ _0"></s=
pan>en <span class=3D"_ _0"></span>l<span class=3D"_ _0"></span>a<span clas=
s=3D"_ _3"></span> <span class=3D"_ _0"></span>educaci=C3=B3n <span class=
=3D"_ _0"></span>infantil <span class=3D"_ _0"></span>y <span class=3D"_ _0=
"></span>primaria. <span class=3D"_ _8"></span><span class=3D"ff9">Autodida=
cta<span class=3D"_ _3"></span> <span class=3D"_ _8"></span>Revista <span c=
lass=3D"_ _0"></span>Online<span class=3D"ff4">, </span></span></div><div c=
lass=3D"t m0 x2 h7 y10e ff4 fs2 fc0 sc0 ls0 ws0">19-37. doi:1989-9<span cla=
ss=3D"_ _3"></span>041 </div><div class=3D"t m0 x2 h7 yc6 ff4 fs2 fc0 sc0 l=
s0 ws0">M., <span class=3D"_ _c"> </span>P. <span class=3D"_ _f"> </span>(2=
007).  <span class=3D"ff9">Lenguaje <span class=3D"_ _c"> </span>y <span cl=
ass=3D"_ _f"> </span>cerebro, <span class=3D"_ _c"> </span>conexiones <span=
 class=3D"_ _c"> </span>entre <span class=3D"_ _c"> </span>neurolingusitica=
s <span class=3D"_ _c"> </span>y <span class=3D"_ _f"> </span>psi<span clas=
s=3D"_ _3"></span>colinguisti<span class=3D"_ _3"></span>ca.<span class=3D"=
_ _0"></span><span class=3D"ff4"> </span></span></div><div class=3D"t m0 x2=
 h7 y10f ff4 fs2 fc0 sc0 ls0 ws0">Madrid: Espa=C3=B1a.<span class=3D"_ _3">=
</span> </div><div class=3D"t m0 x2 h7 y110 ff4 fs2 fc0 sc0 ls0 ws0">Mac=C3=
=ADas, <span class=3D"_ _1"> </span>M. <span class=3D"_ _1"> </span>A. <spa=
n class=3D"_ _1"> </span>(2002). <span class=3D"_ _1"> </span>Las <span cla=
ss=3D"_ _1"> </span>Inteligencias <span class=3D"_ _1"></span>M=C3=BAltiple=
s.<span class=3D"_ _3"></span> <span class=3D"_ _7"> </span><span class=3D"=
ff9">R<span class=3D"_ _3"></span>edalyc<span class=3D"ff4">(10), <span cla=
ss=3D"_ _1"></span>27-38. <span class=3D"_ _1"></span>Recup<span class=3D"_=
 _3"></span>erado <span class=3D"_ _1"> </span>el <span class=3D"_ _1"> </s=
pan>8 <span class=3D"_ _1"> </span>de </span></span></div><div class=3D"t m=
0 x2 h7 y111 ff4 fs2 fc0 sc0 ls0 ws0">Junio de 2018<span class=3D"_ _3"></s=
pan> </div><div class=3D"t m0 x2 h7 y112 ff4 fs2 fc0 sc0 ls0 ws0">Malbr=C3=
=A1n, <span class=3D"_ _9"></span>S. <span class=3D"_ _1"></span>(2011<span=
 class=3D"_ _3"></span>). <span class=3D"_ _9"></span>Educaci=C3=B3n<span c=
lass=3D"_ _0"></span> <span class=3D"_ _9"></span>musical <span class=3D"_ =
_9"></span>en <span class=3D"_ _1"></span>la <span class=3D"_ _9"></span>es=
cuela <span class=3D"_ _1"></span>inf<span class=3D"_ _3"></span>antil. <sp=
an class=3D"_ _9"></span>En <span class=3D"_ _1"></span>M.<span class=3D"_ =
_3"></span> <span class=3D"_ _1"></span>D=C3=ADaz,<span class=3D"_ _3"></sp=
an> <span class=3D"_ _1"></span>&amp; <span class=3D"_ _9"></span>G. <span =
class=3D"_ _9"></span>M<span class=3D"_ _0"></span>. <span class=3D"_ _9"><=
/span>Ria=C3=B1o, </div><div class=3D"t m0 x2 h7 yc8 ff9 fs2 fc0 sc0 ls0 ws=
0">Fundament<span class=3D"_ _3"></span>os <span class=3D"_ _14"> </span>mu=
si<span class=3D"_ _3"></span>cales <span class=3D"_ _14"> </span>y <span c=
lass=3D"_ _d"> </span>did=C3=A1cticos <span class=3D"_ _d"> </span>en <span=
 class=3D"_ _d"> </span>Educi=C3=B3n <span class=3D"_ _d"> </span>Inicial.<=
span class=3D"ff4"> <span class=3D"_ _14"> </span>Cantabria: <span class=3D=
"_ _d"> </span>Universidasd <span class=3D"_ _d"> </span>de </span></div><d=
iv class=3D"t m0 x2 h7 y113 ff4 fs2 fc0 sc0 ls0 ws0">Cantabria. </div><div =
class=3D"t m0 x2 h7 y114 ff4 fs2 fc0 sc0 ls0 ws0">O Connor, <span class=3D"=
_ _3"></span>J. (2007). <span class=3D"ff9">Int<span class=3D"_ _3"></span>=
roducci=C3=B3n a la<span class=3D"_ _3"></span> PNL.<span class=3D"ff4"> Ba=
rcelona: Espa=C3=B1a. </span></span></div><div class=3D"t m0 x2 h7 y7f ff4 =
fs2 fc0 sc0 ls0 ws0">Oates, <span class=3D"_ _9"></span>J., <span class=3D"=
_ _8"></span>Johnson, <span class=3D"_ _9"></span>M. <span class=3D"_ _8"><=
/span>H., <span class=3D"_ _9"></span>&amp; <span class=3D"_ _9"></span>Kar=
miloff-Smith, <span class=3D"_ _8"></span>A<span class=3D"_ _0"></span>. <s=
pan class=3D"_ _8"></span>(2012). <span class=3D"_ _9"></span><span class=
=3D"ff9">El <span class=3D"_ _9"></span>cerebro <span class=3D"_ _8"></span=
>en <span class=3D"_ _9"></span>desarroll<span class=3D"_ _3"></span>o.<spa=
n class=3D"_ _0"></span><span class=3D"ff4"> <span class=3D"_ _9"></span>La=
 <span class=3D"_ _8"></span>H<span class=3D"_ _0"></span>a<span class=3D"_=
 _3"></span>ya: </span></span></div><div class=3D"t m0 x2 h7 y115 ff4 fs2 f=
c0 sc0 ls0 ws0">The Open Uni<span class=3D"_ _3"></span>versity. Recup<span=
 class=3D"_ _3"></span>erado el 13 d<span class=3D"_ _3"></span>e Junio de =
2018 </div><div class=3D"t m0 x2 h7 y2c ff4 fs2 fc0 sc0 ls0 ws0">P=C3=A9rez=
, <span class=3D"_ _0"></span>S. <span class=3D"_ _0"></span>(2014). <span =
class=3D"_ _0"></span>La <span class=3D"_ _0"></span>m=C3=BAsica <span clas=
s=3D"_ _0"></span>como <span class=3D"_ _0"></span>herramienta <span class=
=3D"_ _0"></span>para <span class=3D"_ _0"></span>desarrollar <span class=
=3D"_ _0"></span>la co<span class=3D"_ _0"></span>mp<span class=3D"_ _3"></=
span>etencia <span class=3D"_ _0"></span>intercultural<span class=3D"_ _3">=
</span> </div><div class=3D"t m0 x2 h7 y59 ff4 fs2 fc0 sc0 ls0 ws0">en el a=
ula. <span class=3D"ff9">Sci<span class=3D"_ _3"></span>elo, 36<span class=
=3D"ff4">(145), 175-187.<span class=3D"_ _3"></span> </span></span></div><d=
iv class=3D"t m0 x2 h7 y116 ff4 fs2 fc0 sc0 ls0 ws0">Prieto, <span class=3D=
"_ _f"> </span>M. <span class=3D"_ _f"> </span>V<span class=3D"_ _3"></span=
>. <span class=3D"_ _f"> </span>(Junio <span class=3D"_ _f"> </span>de <spa=
n class=3D"_ _f"> </span>2014<span class=3D"_ _3"></span>). <span class=3D"=
_ _f"> </span>Inteligenc<span class=3D"_ _3"></span>ias <span class=3D"_ _f=
"> </span>M=C3=BAltiples.<span class=3D"_ _3"></span> <span class=3D"_ _f">=
 </span><span class=3D"ff9">REDI <span class=3D"_ _f"> </span>- <span class=
=3D"_ _f"> </span>Bibli<span class=3D"_ _3"></span>oteca <span class=3D"_ _=
f"> </span>UFA<span class=3D"_ _3"></span>STA<span class=3D"ff4">, <span cl=
ass=3D"_ _f"> </span>16. </span></span></div><div class=3D"t m0 x2 h7 y117 =
ff4 fs2 fc0 sc0 ls0 ws0">Recuperado <span class=3D"_ _3"></span>el 7 de Jun=
io d<span class=3D"_ _3"></span>e 2018, de http://<span class=3D"_ _3"></sp=
an>www.ufasta.<span class=3D"_ _3"></span>edu.ar/ </div></div><div class=3D=
"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.000000,0.0=
00000,0.000000]}"></div></div>
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AQPQDAACiHwAAEP0AAIDoBwAARD8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDw=
AAoh8AABD9AACA6AcAAEQ/AAAg+gEAANEPAACIfgAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+A=
ABA9AMAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AAAg+gEAANEPAACIfgAAQPQD=
AACiHwAAEP0AAIDoBwAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAED0AwAAoh8=
AABD9AACA6AcAAEQ/AAAg+gEAANEPAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAIh+AAAQ/Q=
AAgOgHAABEPwAAIPoBAADRDwAAiH4AAED0AwAAoh8AAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiH=
wAAEP0AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAgOgHAADRDwAAiH4AAED0AwAAoh8AABD9=
AACA6AcAAEQ/AAAg+gEAQPQDAACiHwAAEP0AAIDoBwAARD8AACD6AQAA0Q8AAKIfAAAQ/QAAgOg=
HAABEPwAAIPoBAADRDwAAiH4AAED0AwCA6AcAAEQ/AAAg+gEAANEPAACIfgAAQPQDAACiHwAARD=
8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH4AAED0AwAAoh8AABD9AACA6=
AcAAEQ/AACIfgAAQPQDAACiHwAAEP0AAIDoBwAA/pFteXZ69PX98f4AAOA8+r/rvdOjP14/7w8A=
AE653gMAAKIfAAAQ/QAAgOgHAABEPwAAIPoBAADRDwAAiH4AABD9AACA6AcAAEQ/AAAg+gEAANE=
PAACIfgAAQPQDAIDoBwAARD8AACD6AQAA0Q8AAIh+AABA9AMAAKIfAAAQ/QAAIPoBAADRDwAAiH=
4AAED0A+zt1oEAAAAAgCB/60EuigAA6QcAAKQfAACQfgAAkH4AAED6AQAA6QcAAKQfAACQfgAAQ=
PoBAADpBwCAtQBRcR/KCccCPwAAAABJRU5ErkJggg=3D=3D"><div class=3D"t m0 x1 h2 y=
33 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x20 h4 y34 ff1 fs1 fc=
0 sc0 ls0 ws0">G=C3=A9nesis Lisbeth <span class=3D"_ _0"></span>Ay<span cla=
ss=3D"_ _3"></span>ala Mo<span class=3D"_ _0"></span>rillo, Letty Araceli D=
elgado Cede<span class=3D"_ _0"></span>=C3=B1o, Jos=C3=A9 Grismaldo P<span =
class=3D"_ _0"></span>ico Mieles<span class=3D"_ _0"></span> </div><div cla=
ss=3D"t m0 x1 h2 y35 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"c x1f y3=
 wb h3"><div class=3D"t m0 x5 h5 y4 ff2 fs1 fc1 sc0 ls1 ws0">170<span class=
=3D"ls0"> </span></div></div><div class=3D"c x21 y3 w2 h3"><div class=3D"t =
m0 x3 h4 y4 ff1 fs1 fc0 sc0 ls0 ws0"> Facultad de Filosof=C3=ADa, <span cla=
ss=3D"_ _0"></span>Letras y Ciencias de la Educaci=C3=B3n<span class=3D"_ _=
0"></span>. Universidad<span class=3D"_ _0"></span> T=C3=A9cnica de Manab=
=C3=AD. <span class=3D"_ _0"></span>ECUADOR. </div></div><div class=3D"t m0=
 x22 h2 y5 ff1 fs0 fc0 sc0 ls0 ws0"> </div><div class=3D"t m0 x22 h7 y118 f=
f4 fs2 fc0 sc0 ls0 ws0">Sanchez, <span class=3D"_ _9"></span>I. <span class=
=3D"_ _9"></span>(Junio <span class=3D"_ _9"></span>de <span class=3D"_ _9"=
></span>2012). <span class=3D"_ _1"></span><span class=3D"ff9">Recur<span c=
lass=3D"_ _3"></span>sos <span class=3D"_ _9"></span>did=C3=A1cticos <span =
class=3D"_ _9"></span>para <span class=3D"_ _9"></span>f<span class=3D"_ _0=
"></span>ort<span class=3D"_ _3"></span>alecer <span class=3D"_ _9"></span>=
laense=C3=B1anza<span class=3D"_ _3"></span> <span class=3D"_ _1"></span>y =
<span class=3D"_ _9"></span>aprendi<span class=3D"_ _3"></span>zaje </span>=
</div><div class=3D"t m0 x22 h7 y60 ff9 fs2 fc0 sc0 ls0 ws0">de <span class=
=3D"_ _9"></span>la <span class=3D"_ _8"></span>economia.<span class=3D"ff4=
"> <span class=3D"_ _8"></span>Obtenido <span class=3D"_ _9"></span>de <spa=
n class=3D"_ _9"></span>Rec<span class=3D"_ _3"></span>ursos <span class=3D=
"_ _9"></span>did=C3=A1cticos <span class=3D"_ _8"></span>para <span class=
=3D"_ _8"></span>fortalecer <span class=3D"_ _9"></span>laense=C3=B1anza <s=
pan class=3D"_ _8"></span>y <span class=3D"_ _9"></span>apr<span class=3D"_=
 _3"></span>endizaj<span class=3D"_ _3"></span>e </span></div><div class=3D=
"t m0 x22 h7 y119 ff4 fs2 fc0 sc0 ls0 ws0">de la econom<span class=3D"_ _3"=
></span>ia: https://uvad<span class=3D"_ _3"></span>oc.uva.es/bitst<span cl=
ass=3D"_ _3"></span>ream/10324/1391/1/<span class=3D"_ _3"></span>TFM-E%201=
.pdf </div><div class=3D"t m0 x22 h7 y11a ff4 fs2 fc0 sc0 ls0 ws0">Sarget, =
<span class=3D"_ _b"> </span>M<span class=3D"_ _3"></span>. <span class=3D"=
_ _b"> </span>A<span class=3D"_ _3"></span>. <span class=3D"_ _b"> </span>(=
<span class=3D"_ _3"></span>2003). <span class=3D"_ _e"> </span>La <span cl=
ass=3D"_ _b"> </span>m<span class=3D"_ _3"></span>=C3=BAsica <span class=3D=
"_ _b"> </span>en <span class=3D"_ _e"> </span>Educaci=C3=B3n <span class=
=3D"_ _e"> </span>Infantil: <span class=3D"_ _b"> </span>Estr<span class=3D=
"_ _3"></span>ategias <span class=3D"_ _e"> </span>cognitivo<span class=3D"=
_ _0"></span>-musical<span class=3D"_ _3"></span>es. </div><div class=3D"t =
m0 x22 h7 y85 ff9 fs2 fc0 sc0 ls0 ws0">Facult<span class=3D"_ _3"></span>ad=
 <span class=3D"_ _18"> </span>de <span class=3D"_ _18"> </span>Ciencia <sp=
an class=3D"_ _18"> </span>de <span class=3D"_ _18"> </span>la<span class=
=3D"_ _3"></span> <span class=3D"_ _18"> </span>Educaci<span class=3D"_ _3"=
></span>=C3=B3n <span class=3D"_ _18"> </span>de <span class=3D"_ _18"> </s=
pan>albacete<span class=3D"ff4">, <span class=3D"_ _18"> </span>18. <span c=
lass=3D"_ _18"> </span>Obtenido <span class=3D"_ _18"> </span>d<span class=
=3D"_ _3"></span>e </span></div><div class=3D"t m0 x22 h7 y11b ff4 fs2 fc0 =
sc0 ls0 ws0">http://dialn<span class=3D"_ _3"></span>et.unirioja.es/s<span =
class=3D"_ _3"></span>ervlet/articulo?c<span class=3D"_ _3"></span>odigo=3D=
1032322 </div><div class=3D"t m0 x22 h7 y8 ff4 fs2 fc0 sc0 ls0 ws0">Serrada=
, <span class=3D"_ _8"></span>F. <span class=3D"_ _9"></span>M. <span class=
=3D"_ _9"></span>(2007). <span class=3D"_ _9"></span>Integraci=C3=B3<span c=
lass=3D"_ _3"></span>n <span class=3D"_ _9"></span>de <span class=3D"_ _9">=
</span>activida<span class=3D"_ _3"></span>des <span class=3D"_ _9"></span>=
l=C3=BAdicas <span class=3D"_ _8"></span>en <span class=3D"_ _9"></span>l<s=
pan class=3D"_ _0"></span>a <span class=3D"_ _8"></span>atenci=C3=B3n <span=
 class=3D"_ _9"></span>educativa <span class=3D"_ _8"></span>del <span clas=
s=3D"_ _9"></span>ni=C3=B1o </div><div class=3D"t m0 x22 h7 y11c ff4 fs2 fc=
0 sc0 ls0 ws0">hospitalizad<span class=3D"_ _3"></span>o. <span class=3D"ff=
9">Educere, 11</span>(39). </div><div class=3D"t m0 x22 h7 y11d ff4 fs2 fc0=
 sc0 ls0 ws0">Serrat, A. <span class=3D"_ _3"></span>(2007). <span class=3D=
"ff9">PNL pa<span class=3D"_ _3"></span>ra docentes.<span class=3D"ff4"> Ba=
rcelona: <span class=3D"_ _3"></span>GRAO. </span></span></div><div class=
=3D"t m0 x22 h7 yff ff4 fs2 fc0 sc0 ls0 ws0">Stecconi, <span class=3D"_ _9"=
></span>C. <span class=3D"_ _8"></span>(<span class=3D"_ _0"></span>2015). =
<span class=3D"_ _8"></span>Potencialidades <span class=3D"_ _8"></span>y <=
span class=3D"_ _9"></span>aplicaciones <span class=3D"_ _8"></span>de <spa=
n class=3D"_ _9"></span>las <span class=3D"_ _9"></span>Inteligencias <span=
 class=3D"_ _8"></span>M=C3=BAltiples. <span class=3D"_ _9"></span><span cl=
ass=3D"ff9">E<span class=3D"_ _0"></span>uropea<span class=3D"_ _3"></span>=
n </span></div><div class=3D"t m0 x22 h7 yd ff9 fs2 fc0 sc0 ls0 ws0">Scient=
<span class=3D"_ _3"></span>if<span class=3D"_ _0"></span>i<span class=3D"_=
 _3"></span>c, 2<span class=3D"ff4">, 103-119. Recuperad<span class=3D"_ _3=
"></span>o el 13 d<span class=3D"_ _3"></span>e Junio de 2018 </span></div>=
<div class=3D"t m0 x22 h7 yf ff4 fs2 fc0 sc0 ls0 ws0">Stein, G. (201<span c=
lass=3D"_ _3"></span>8). <span class=3D"ff9">The m<span class=3D"_ _3"></sp=
an>ore we get<span class=3D"_ _3"></span> together.<span class=3D"_ _0"></s=
pan><span class=3D"ff4"> <span class=3D"_ _3"></span>Estados unid<span clas=
s=3D"_ _3"></span>os: The Old Sc<span class=3D"_ _3"></span>hoolhouse. </sp=
an></span></div><div class=3D"t m0 x22 h7 y11 ff4 fs2 fc0 sc0 ls0 ws0">Vela=
sco, M. <span class=3D"_ _3"></span>(2005). <span class=3D"ff9">program<spa=
n class=3D"_ _3"></span>aci=C3=B3n neurolingui<span class=3D"_ _3"></span>s=
tica.<span class=3D"ff4"> Venezuela. </span></span></div><div class=3D"t m0=
 x22 h7 y10a ff4 fs2 fc0 sc0 ls0 ws0">Watson, <span class=3D"_ _a"> </span>=
G. <span class=3D"_ _a"> </span>(10 <span class=3D"_ _a"> </span>d<span cla=
ss=3D"_ _3"></span>e <span class=3D"_ _a"> </span>Marzo <span class=3D"_ _a=
"> </span>de <span class=3D"_ _a"> </span>2016). <span class=3D"_ _a"> </sp=
an><span class=3D"ff9">Educa<span class=3D"_ _3"></span>ci=C3=B3n <span cla=
ss=3D"_ _a"> </span>2020<span class=3D"ff4">. <span class=3D"_ _a"> </span>=
Obtenido <span class=3D"_ _a"> </span>de <span class=3D"_ _a"> </span>Ed<sp=
an class=3D"_ _3"></span>ucaci=C3=B3n <span class=3D"_ _a"> </span>2020:<sp=
an class=3D"_ _3"></span> </span></span></div><div class=3D"t m0 x22 h7 yd2=
 ff4 fs2 fc0 sc0 ls0 ws0">http://educac<span class=3D"_ _3"></span>ion2020.=
cl/noticias/m<span class=3D"_ _3"></span>usica-una-aliada-<span class=3D"_ =
_3"></span><span class=3D"ls3">en<span class=3D"ls0">-<span class=3D"ls1">l=
a<span class=3D"_ _3"></span><span class=3D"ls0">-formaci<span class=3D"_ _=
3"></span>on-de<span class=3D"_ _0"></span>-nuestro<span class=3D"_ _3"></s=
pan>s-ninos-</span></span></span></span></div><div class=3D"t m0 x22 h7 y11=
e ff4 fs2 fc0 sc0 ls0 ws0">ninas-y-jovenes/<span class=3D"_ _3"></span> </d=
iv><div class=3D"t m0 x22 h2 y46 ff4 fs2 fc0 sc0 ls0 ws0">Willems, E. <span=
 class=3D"_ _3"></span>(1993). <span class=3D"ff9">Ritm<span class=3D"_ _3"=
></span>o musical.<span class=3D"ff4"> Buenos Ai<span class=3D"_ _3"></span=
>res: Eudeba.<span class=3D"ff1 fs0"> </span></span></span></div></div><div=
 class=3D"pi" data-data=3D"{&quot;ctm&quot;:[1.000000,0.000000,0.000000,1.0=
00000,0.000000,0.000000]}"></div></div>
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