Fortalecimiento de las capacidades coordinativas a través del juego del Twister en los estudiantes de preescolar y primero de la Institución Educativa Jardín de las peñas del municipio de Mesetas – Meta (Colombia)

Thesis Subjects > Physical Education and Sports
Subjects > Education
Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish El presente trabajo investigativo, está orientado desde el fortalecimiento de las capacidades coordinativas de los estudiantes de preescolar y primero de la Institución Educativa Jardín de las peñas del municipio de Mesetas – Meta (Colombia), con el fin de mejorar cualquier dificultad o limitación que puedan presentar al expresar movimientos, habilidades o cualquier actividad, siempre y cuando no sean discapacidades. La problemática se aborda desde el ámbito educativo para reducir mejorar y fortalecer 5 capacidades coordinativas a través de una estrategia lúdico – recreativa (juego de twister y actividades recreativas) que se llevara a cabo con los mismos. El proceso de este estudio será de intervencion y se llevará a cabo a través de 3 etapas importantes. La primera será una etapa diagnostica donde se evaluaran los criterios y el nivel en el que se encuentran las 5 capacidades coordinativas de cada niño de manera individual (ritmo, coordinación, orientación, equilibrio, anticipación) a través del test de Arhein y Sinclar, el cual ha sido utilizado en diferente estudios y de manera científica para medir o diagnosticar las capacidades de coordinación en el ser humano, sobre todo en niños.La segunda etapa está determinada por el fortalecimiento de dichas capacidades, el cual se desarrollará a partir de la práctica por sesiones de trabajo a lo largo de un periodo de tiempo de 2 meses donde el licenciado especialista en el área física realizara dicho fortalecimiento practicando de manera repetitiva diferentes actividades recreativas y jugando twister (juego que integra la práctica de las 5 capacidades fortalecidas). En la tercera fase se realiza una evaluación final, aplicando el mismo test de Arhein y Sinclar, con actividades similares al diagnóstico pero con un poco más de complejidad con el fin de evaluar el nivel y criterio en el que los niños demuestran haber fortalecido sus capacidades. metadata Caravantes Largo, Sury Nelly mail nellyka7@hotmail.com (2022) Fortalecimiento de las capacidades coordinativas a través del juego del Twister en los estudiantes de preescolar y primero de la Institución Educativa Jardín de las peñas del municipio de Mesetas – Meta (Colombia). Master's thesis, UNSPECIFIED.

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Abstract

El presente trabajo investigativo, está orientado desde el fortalecimiento de las capacidades coordinativas de los estudiantes de preescolar y primero de la Institución Educativa Jardín de las peñas del municipio de Mesetas – Meta (Colombia), con el fin de mejorar cualquier dificultad o limitación que puedan presentar al expresar movimientos, habilidades o cualquier actividad, siempre y cuando no sean discapacidades. La problemática se aborda desde el ámbito educativo para reducir mejorar y fortalecer 5 capacidades coordinativas a través de una estrategia lúdico – recreativa (juego de twister y actividades recreativas) que se llevara a cabo con los mismos. El proceso de este estudio será de intervencion y se llevará a cabo a través de 3 etapas importantes. La primera será una etapa diagnostica donde se evaluaran los criterios y el nivel en el que se encuentran las 5 capacidades coordinativas de cada niño de manera individual (ritmo, coordinación, orientación, equilibrio, anticipación) a través del test de Arhein y Sinclar, el cual ha sido utilizado en diferente estudios y de manera científica para medir o diagnosticar las capacidades de coordinación en el ser humano, sobre todo en niños.La segunda etapa está determinada por el fortalecimiento de dichas capacidades, el cual se desarrollará a partir de la práctica por sesiones de trabajo a lo largo de un periodo de tiempo de 2 meses donde el licenciado especialista en el área física realizara dicho fortalecimiento practicando de manera repetitiva diferentes actividades recreativas y jugando twister (juego que integra la práctica de las 5 capacidades fortalecidas). En la tercera fase se realiza una evaluación final, aplicando el mismo test de Arhein y Sinclar, con actividades similares al diagnóstico pero con un poco más de complejidad con el fin de evaluar el nivel y criterio en el que los niños demuestran haber fortalecido sus capacidades.

Document Type: Thesis (Master's)
Keywords: Capacidades coordinativas, motricidad, twister, orientación, anticipación, ritmo, coordinación, equilibrio
Subject classification: Subjects > Physical Education and Sports
Subjects > Education
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 10 May 2024 23:30
Last Modified: 10 May 2024 23:30
URI: https://repositorio.unib.org/id/eprint/3209

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