Aspectos antropométricos, físicos, nutricionales y psicológicos en deportistas federados y escolares

Thesis Subjects > Nutrition
Subjects > Physical Education and Sports
Subjects > Psychology
Ibero-american International University > Research > Doctoral Theses Closed Spanish La Actividad Física (AF) es muy importante en la edad escolar por ser precursora de hábitos saludables en la vida adulta. Asociada a numerosos beneficios sobre la salud y a la reducción de enfermedades no transmisibles. A nivel psicológico se la asocia con un menor nivel de ansiedad y mejor autoconfianza. Además, la AF se relaciona con la alimentación, donde la Dieta Mediterránea (DM) es esencial para tener un estilo de vida saludable. La investigación consta de dos estudios descriptivo-transversales, que analizarán variables relacionadas con la AF, la salud y los estados de ánimo. La muestra ha estado compuesta por 485 escolares de Infantil, Primaria y Secundaria: •Estudio 1: Se han descrito los niveles y diferencias encontradas con rela-ción al deporte practicado. A su vez, se midieron las siguientes variables: el Índice Cintura Cadera (ICC), Índice Cintura Muslo (ICM), Índice de Masa Corporal (IMC), y porcentaje de grasa corporal; los deportistas auto informaron respecto al volumen de actividad física practicada (VAFP) mediante un cuestionario Sociodemográfico, y la Adherencia a la Dieta Mediterránea (ADM) con el Índice de calidad de la Dieta Mediterránea (KIDMED). La aptitud cardiorrespiratoria (AC) mediante el test de Course Navette. •Estudio 2: Se han descrito y comparado los estados de ánimo, utilizando un cuestionario de autovaloración psicológica (POMS) en relación al deporte practicado y respecto a si son deportistas federados o escolares. En ambos estudios se analizaron tres deportes: atletismo, fútbol y hockey hierba. En los resultados se ha encontrado una asociación positiva entre la práctica de deporte federado y las variables analizadas. Es decir, que realizar dicha práctica es sinónimo de salud, en lo que se refiere a mejores valores en variables relacionadas con la condición física, la alimentación o perfil de estado de ánimo. metadata Fernández García, Javier mail javier.fernandez@doctorado.unib.org (2022) Aspectos antropométricos, físicos, nutricionales y psicológicos en deportistas federados y escolares. Doctoral thesis, Universidad Internacional Iberoamericana Puerto Rico.

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Abstract

La Actividad Física (AF) es muy importante en la edad escolar por ser precursora de hábitos saludables en la vida adulta. Asociada a numerosos beneficios sobre la salud y a la reducción de enfermedades no transmisibles. A nivel psicológico se la asocia con un menor nivel de ansiedad y mejor autoconfianza. Además, la AF se relaciona con la alimentación, donde la Dieta Mediterránea (DM) es esencial para tener un estilo de vida saludable. La investigación consta de dos estudios descriptivo-transversales, que analizarán variables relacionadas con la AF, la salud y los estados de ánimo. La muestra ha estado compuesta por 485 escolares de Infantil, Primaria y Secundaria: •Estudio 1: Se han descrito los niveles y diferencias encontradas con rela-ción al deporte practicado. A su vez, se midieron las siguientes variables: el Índice Cintura Cadera (ICC), Índice Cintura Muslo (ICM), Índice de Masa Corporal (IMC), y porcentaje de grasa corporal; los deportistas auto informaron respecto al volumen de actividad física practicada (VAFP) mediante un cuestionario Sociodemográfico, y la Adherencia a la Dieta Mediterránea (ADM) con el Índice de calidad de la Dieta Mediterránea (KIDMED). La aptitud cardiorrespiratoria (AC) mediante el test de Course Navette. •Estudio 2: Se han descrito y comparado los estados de ánimo, utilizando un cuestionario de autovaloración psicológica (POMS) en relación al deporte practicado y respecto a si son deportistas federados o escolares. En ambos estudios se analizaron tres deportes: atletismo, fútbol y hockey hierba. En los resultados se ha encontrado una asociación positiva entre la práctica de deporte federado y las variables analizadas. Es decir, que realizar dicha práctica es sinónimo de salud, en lo que se refiere a mejores valores en variables relacionadas con la condición física, la alimentación o perfil de estado de ánimo.

Document Type: Thesis (Doctoral)
Keywords: Adherencia dieta mediterránea, aptitud cardiorrespiratoria, deporte extraescolar, deporte federado, condición física estados de ánimo, índice de masa corporal, índice cintura cadera, índice cadera muslo, educación física, porcentaje de grasa.
Subject classification: Subjects > Nutrition
Subjects > Physical Education and Sports
Subjects > Psychology
Divisions: Ibero-american International University > Research > Doctoral Theses
Deposited: 26 Sep 2023 23:30
Last Modified: 26 Sep 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2710

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