Influencia de la densidad de jugadores sobre la frecuencia cardíaca y respuestas técnicas en jóvenes jugadores de fútbol. [Influence of the density of players on their heart rate and its technical implications on young football players].
Artículo Materias > Educación física y el deporte Universidad Europea del Atlántico > Investigación > Artículos y libros Abierto Español El propósito de este trabajo fue conocer la repercusión sobre los aspectos fisiológicos y técnicos de tres situaciones diferentes de juegos en espacios reducidos (JR) en jóvenes jugadores de fútbol. Las diferentes situaciones estudiadas fueron 3 vs 3, 4 vs 4 y 5 vs 5 en un espacio de 30x30, donde participaron 10 jugadores jóvenes de fútbol varones (edad 9.3 ± 0.7 años; altura 138.5 ± 10.5 cm y peso de 41.9 ± 6 kg y una experiencia de 2.2 ± 1.4 años). Las acciones técnicas se cuantificaron a partir de las grabaciones en vídeo y la respuesta fisiológica fue medida a través de la frecuencia cardíaca (%Fcmed y %Fcmáx) y de la percepción subjetiva del esfuerzo (PSE). Los resultados del análisis de varianza (ANOVA) reflejan diferencias significativas en las siguientes variables: pases buenos, pases malos, %Fcmed, %Fcmáx, tiempo entre 70-79 % y > 90 %Fcmáx y PSE. Los resultados encontrados ponen de relieve que la manipulación de la densidad en las tareas tiene efectos a diferentes niveles y por tanto debe ser tenido en cuenta por parte de los técnicos deportivos que trabajan con jugadores jóvenes a la hora de diseñar tareas de entrenamiento. La conclusión principal es que la utilización del formato 3 vs 3 parece ser más demandante tanto a nivel técnico como cardíaco. metadata Febré, Ricardo; Chirosa Ríos, Luis Javier; Casamichana Gomez, David; Chirosa, Ignacio Jesús; Martín-Tamayo, Ignacio y Pablos Abella, Carlos mail SIN ESPECIFICAR, SIN ESPECIFICAR, david.casamichana@uneatlantico.es, SIN ESPECIFICAR, SIN ESPECIFICAR, SIN ESPECIFICAR (2015) Influencia de la densidad de jugadores sobre la frecuencia cardíaca y respuestas técnicas en jóvenes jugadores de fútbol. [Influence of the density of players on their heart rate and its technical implications on young football players]. RICYDE. Revista internacional de ciencias del deporte, 40 (11). pp. 116-128. ISSN 18853137
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Resumen
El propósito de este trabajo fue conocer la repercusión sobre los aspectos fisiológicos y técnicos de tres situaciones diferentes de juegos en espacios reducidos (JR) en jóvenes jugadores de fútbol. Las diferentes situaciones estudiadas fueron 3 vs 3, 4 vs 4 y 5 vs 5 en un espacio de 30x30, donde participaron 10 jugadores jóvenes de fútbol varones (edad 9.3 ± 0.7 años; altura 138.5 ± 10.5 cm y peso de 41.9 ± 6 kg y una experiencia de 2.2 ± 1.4 años). Las acciones técnicas se cuantificaron a partir de las grabaciones en vídeo y la respuesta fisiológica fue medida a través de la frecuencia cardíaca (%Fcmed y %Fcmáx) y de la percepción subjetiva del esfuerzo (PSE). Los resultados del análisis de varianza (ANOVA) reflejan diferencias significativas en las siguientes variables: pases buenos, pases malos, %Fcmed, %Fcmáx, tiempo entre 70-79 % y > 90 %Fcmáx y PSE. Los resultados encontrados ponen de relieve que la manipulación de la densidad en las tareas tiene efectos a diferentes niveles y por tanto debe ser tenido en cuenta por parte de los técnicos deportivos que trabajan con jugadores jóvenes a la hora de diseñar tareas de entrenamiento. La conclusión principal es que la utilización del formato 3 vs 3 parece ser más demandante tanto a nivel técnico como cardíaco.
Tipo de Documento: | Artículo |
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Palabras Clave: | Fútbol; Juegos en espacios reducidos; Técnica; Entrenamiento aeróbico; Jóvenes jugadores; Esfuerzo percibido; Frecuencia cardiaca. |
Clasificación temática: | Materias > Educación física y el deporte |
Divisiones: | Universidad Europea del Atlántico > Investigación > Artículos y libros |
Depositante: | Usuarios 0 no encontrado. |
Depositado: | 31 May 2021 14:17 |
Ultima Modificación: | 09 Mar 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/76 |
Versiones Disponibles de este documento
- Influencia de la densidad de jugadores sobre la frecuencia cardíaca y respuestas técnicas en jóvenes jugadores de fútbol. [Influence of the density of players on their heart rate and its technical implications on young football players]. (deposited 31 May 2021 14:17) [Mostrada Ahora]
Hilos de Commentario/Respuesta
- Febré, Ricardo; Chirosa Ríos, Luis Javier; Casamichana Gomez, David; Chirosa, Ignacio Jesús; Martín-Tamayo, Ignacio y Pablos Abella, Carlos Influencia de la densidad de jugadores sobre la frecuencia cardíaca y respuestas técnicas en jóvenes jugadores de fútbol. [Influence of the density of players on their heart rate and its technical implications on young football players]. (deposited 31 May 2021 14:17) [Mostrada Ahora]
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