Lesión de ligamento cruzado anterior (LCA) en futbolistas cántabros. Análisis descriptivo de los factores de riesgo

Artículo Materias > Educación física y el deporte Universidad Europea del Atlántico > Investigación > Artículos y libros Abierto Inglés, Español Introducción: La rotura de Ligamento Cruzado Anterior (LCA) es una de las lesiones más problemáticas dentro del mundo del fútbol, no solo por el periodo que mantendrá inactivo al sujeto, sino también por las secuelas que puede producir en el deportista. Objetivos: Conocer algunos de los factores de riesgo y mecanismos de lesión de LCA en futbolistas cántabros de las temporadas 2016 a 2019. Material y métodos: Se recogieron datos sobre diferentes factores de riesgo de todos los jugadores/as del fútbol cántabro lesionados de LCA en las últimas 3 temporadas (2016 al 2019). Estos datos se registraron mediante una entrevista realizada por la Federación Cántabra de Fútbol. La muestra inicial fue de 93 personas, siendo 84 hombres (H) y 9 mujeres (M). Resultados: La competición resultó ser más lesiva que el entrenamiento (H: 88,5%; M: 77,8%), siendo la primera parte del partido donde más lesiones hubo (H: 47,8%; M: 66,7%). Los defensas en los hombres (50,7%) y los mediocentros en mujeres (55,6%) fueron las posiciones más afectadas. Con un 87% en hombres y 100% en mujeres, las lesiones se produjeron sobre hierba artificial con el uso de tacos Artificial Grass (AG) (H: 46,4%; M: 77,8%) y durante el mes de abril (H: 4,5%; M: 33,3%) . Además, las lesiones se produjeron sin contacto (H: 73,9%; M:77,8%) y el 66,7% en ambos grupos no realizaba trabajo preventivo. Conclusiones: La lesión de LCA se produce principalmente sin contacto, con el uso de tacos AG sobre césped artificial, durante la primera parte del partido y en abril. Los defensas en hombres y los mediocentros en mujeres fueron las posiciones más afectadas. metadata Peredo López, Felipe; Marín Bárcena, Raúl y Mecías-Calvo, Marcos mail SIN ESPECIFICAR, SIN ESPECIFICAR, marcos.mecias@uneatlantico.es (2021) Lesión de ligamento cruzado anterior (LCA) en futbolistas cántabros. Análisis descriptivo de los factores de riesgo. MLS Sport Research, 1 (1). pp. 86-95.

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Resumen

Introducción: La rotura de Ligamento Cruzado Anterior (LCA) es una de las lesiones más problemáticas dentro del mundo del fútbol, no solo por el periodo que mantendrá inactivo al sujeto, sino también por las secuelas que puede producir en el deportista. Objetivos: Conocer algunos de los factores de riesgo y mecanismos de lesión de LCA en futbolistas cántabros de las temporadas 2016 a 2019. Material y métodos: Se recogieron datos sobre diferentes factores de riesgo de todos los jugadores/as del fútbol cántabro lesionados de LCA en las últimas 3 temporadas (2016 al 2019). Estos datos se registraron mediante una entrevista realizada por la Federación Cántabra de Fútbol. La muestra inicial fue de 93 personas, siendo 84 hombres (H) y 9 mujeres (M). Resultados: La competición resultó ser más lesiva que el entrenamiento (H: 88,5%; M: 77,8%), siendo la primera parte del partido donde más lesiones hubo (H: 47,8%; M: 66,7%). Los defensas en los hombres (50,7%) y los mediocentros en mujeres (55,6%) fueron las posiciones más afectadas. Con un 87% en hombres y 100% en mujeres, las lesiones se produjeron sobre hierba artificial con el uso de tacos Artificial Grass (AG) (H: 46,4%; M: 77,8%) y durante el mes de abril (H: 4,5%; M: 33,3%) . Además, las lesiones se produjeron sin contacto (H: 73,9%; M:77,8%) y el 66,7% en ambos grupos no realizaba trabajo preventivo. Conclusiones: La lesión de LCA se produce principalmente sin contacto, con el uso de tacos AG sobre césped artificial, durante la primera parte del partido y en abril. Los defensas en hombres y los mediocentros en mujeres fueron las posiciones más afectadas.

Tipo de Documento: Artículo
Palabras Clave: Epidemiología, fútbol, causas, ligamento cruzado anterior, incidencia, factores de riesgo
Clasificación temática: Materias > Educación física y el deporte
Divisiones: Universidad Europea del Atlántico > Investigación > Artículos y libros
Depositado: 07 Jul 2022 23:30
Ultima Modificación: 07 Jul 2023 23:30
URI: https://repositorio.uneatlantico.es/id/eprint/2621

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