Importancia del entrenamiento de la biomecánica respiratoria para el rendimiento deportivo y su necesidad en los deportistas de triatlón.

Thesis Subjects > Physical Education and Sports Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish Los deportistas en triatlón están sometidos a niveles de intensidad moderados a intensos con tiempo de competición largo, por lo que un adecuado entrenamiento del sistema respiratorio podría asociarse a mejoras en el rendimiento físico en esta disciplina deportiva y condición de salud a su vez.Estudios han mostrado un factor limitante respiratorio al rendimiento físico en actividades moderadas a intensas asociado a una fatiga temprana por redistribución del flujo sanguíneo de los miembros inferiores y superiores a la musculatura del sistema respiratorio secundario a una vasodilatación producto de la fatiga respiratoria. Ninguna revisión ha tratado la disciplina del triatlón en este contexto ni pareciera que los deportistas tengan conocimiento de las implicaciones en el rendimiento y la salud deportiva. La inconveniente respiración y su adecuada biomecánica es uno de los problemas primordiales a los que se resisten tanto el deportista y el entrenador en lo deportivo, tanto es así, que en la programación que se establece para la gestación no se incluye programas que ayuden a mejorar este semblante fisiológico y fundamental. Por estas razones a la hora de planificar, confeccionar y controlar la adecuada respiración en un deportista, es preciso tener en cuenta los otros fundamentos y principios que rigen las ciencias biológicas y anatómicas del entretenimiento deportivo en cuanto la biomecánica respiratoria.se determina que el entrenamiento de la biomecánica respiratoria podría tener un impacto positivo en el rendimiento del triatlón y que los deportistas conozcan estos posibles beneficios. Se encuestaron 23 adultos del comité cantonal de Alajuela relacionados al deporte del triatlón, incluyendo deportistas como al personal técnico para cuantificar su nivel de conocimiento relacionado al impacto de la mecánica respiratoria en el rendimiento del deporte y poder establecer la necesidad de incluir el entrenamiento de músculos respiratorios dentro de la formación de los deportistas del triatlón en Alajuela. se complemento con una revisión bibliográfica basada en la descripción del deporte del triatlón y sus 3 disciplinas (natación, ciclismo y carrera), entendiendo que cada disciplina conlleva demandas ventilatorias diferentes y considerando que recientes publicaciones han destacado la posible limitación al ejercicio físico asociado al no entrenamiento de la musculatura respiratoria, se identifico los entrenamientos más importantes de la musculatura respiratoria, y cómo este tipo de entrenamiento puede influir de forma positiva en el rendimiento de las 3 disciplinas.Nada consigue ayudar más a un deportista en el logro de sus resultados que el dominio de la biomecánica respiratoria a proporcionada, un entretenimiento inmutable y constante, por lo tanto, se hace necesaria una elaboración sistemática, metódica que abarca ciertas etapas de tiempo que proporcionarán al final ganancias poderosas en la salud deportiva y rendimiento. metadata Fonseca Castro, Juan Armando mail trjuanfo@gmail.com (2022) Importancia del entrenamiento de la biomecánica respiratoria para el rendimiento deportivo y su necesidad en los deportistas de triatlón. Master's thesis, UNSPECIFIED.

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Abstract

Los deportistas en triatlón están sometidos a niveles de intensidad moderados a intensos con tiempo de competición largo, por lo que un adecuado entrenamiento del sistema respiratorio podría asociarse a mejoras en el rendimiento físico en esta disciplina deportiva y condición de salud a su vez.Estudios han mostrado un factor limitante respiratorio al rendimiento físico en actividades moderadas a intensas asociado a una fatiga temprana por redistribución del flujo sanguíneo de los miembros inferiores y superiores a la musculatura del sistema respiratorio secundario a una vasodilatación producto de la fatiga respiratoria. Ninguna revisión ha tratado la disciplina del triatlón en este contexto ni pareciera que los deportistas tengan conocimiento de las implicaciones en el rendimiento y la salud deportiva. La inconveniente respiración y su adecuada biomecánica es uno de los problemas primordiales a los que se resisten tanto el deportista y el entrenador en lo deportivo, tanto es así, que en la programación que se establece para la gestación no se incluye programas que ayuden a mejorar este semblante fisiológico y fundamental. Por estas razones a la hora de planificar, confeccionar y controlar la adecuada respiración en un deportista, es preciso tener en cuenta los otros fundamentos y principios que rigen las ciencias biológicas y anatómicas del entretenimiento deportivo en cuanto la biomecánica respiratoria.se determina que el entrenamiento de la biomecánica respiratoria podría tener un impacto positivo en el rendimiento del triatlón y que los deportistas conozcan estos posibles beneficios. Se encuestaron 23 adultos del comité cantonal de Alajuela relacionados al deporte del triatlón, incluyendo deportistas como al personal técnico para cuantificar su nivel de conocimiento relacionado al impacto de la mecánica respiratoria en el rendimiento del deporte y poder establecer la necesidad de incluir el entrenamiento de músculos respiratorios dentro de la formación de los deportistas del triatlón en Alajuela. se complemento con una revisión bibliográfica basada en la descripción del deporte del triatlón y sus 3 disciplinas (natación, ciclismo y carrera), entendiendo que cada disciplina conlleva demandas ventilatorias diferentes y considerando que recientes publicaciones han destacado la posible limitación al ejercicio físico asociado al no entrenamiento de la musculatura respiratoria, se identifico los entrenamientos más importantes de la musculatura respiratoria, y cómo este tipo de entrenamiento puede influir de forma positiva en el rendimiento de las 3 disciplinas.Nada consigue ayudar más a un deportista en el logro de sus resultados que el dominio de la biomecánica respiratoria a proporcionada, un entretenimiento inmutable y constante, por lo tanto, se hace necesaria una elaboración sistemática, metódica que abarca ciertas etapas de tiempo que proporcionarán al final ganancias poderosas en la salud deportiva y rendimiento.

Document Type: Thesis (Master's)
Keywords: Respiración, Aprendizaje, Técnicas biomecánicas, Entrenador.
Subject classification: Subjects > Physical Education and Sports
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 03 Nov 2023 23:30
Last Modified: 03 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/1437

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