Efectos del ejercicio físico sobre marcadores antropométricos, fuerza muscular y presión arterial en pacientes con hemodiálisis: una revisión narrativa
Artículo
Materias > Biomedicina
Materias > Educación física y el deporte
Universidad Internacional Iberoamericana México > Investigación > Artículos y libros
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Introducción: La implementación de programas de ejercicio puede mejorar la calidad de vida de pacientes en hemodiálisis (HD). Diversos estudios hablan sobre los beneficios del ejercicio físico en estos pacientes, sin embargo, los efectos sobre marcadores antropométricos, fuerza muscular y tensión arterial (TA) según el tipo de ejercicio no han sido completamente evaluados. El objetivo de esta revisión es analizar estudios cuya intervención consistiera en la implementación de programas de ejercicio en pacientes con HD y proporcionar evidencias de sus efectos sobre los marcadores antropométricos, fuerza muscular y TA. Métodos: Se realizó una búsqueda en la literatura en Medline, LILACS, Scielo y Redalyc, con una temporalidad de 2015 a 2020. Se incluyeron 18 artículos en la presente revisión. Resultados: La combinación de ejercicio anaeróbico y de resistencia aumenta la fuerza muscular, y de igual manera, el ejercicio aeróbico y anaeróbico incrementa la fuerza muscular de las extremidades superiores e inferiores de pacientes en HD. Por otro lado, el ejercicio anaeróbico por sí solo, tiene efectos sobre los marcadores antropométricos, específicamente en el aumento de masa libre de grasa. El ejercicio aeróbico aislado es eficaz para la disminución de la TA. Conclusión: La implementación de programas de ejercicio en pacientes con HD ha demostrado tener efectos positivos sobre la fuerza muscular, los marcadores antropométricos y la TA.
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Pérez-Jiménez, Ana Karen; Chávez-Becerril, Graciela Berenice; Orozco González, Nelly y Camacho-López, Saby
mail
SIN ESPECIFICAR, SIN ESPECIFICAR, nelly.orozco@unini.edu.mx, SIN ESPECIFICAR
(2021)
Efectos del ejercicio físico sobre marcadores antropométricos, fuerza muscular y presión arterial en pacientes con hemodiálisis: una revisión narrativa.
Revista de Nutrición Clínica y Metabolismo, 4 (4).
pp. 98-115.
ISSN 2619564X
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297-Texto del artículo-3900-3-10-20220319.pdf Available under License Creative Commons Attribution Non-commercial Share Alike. Descargar (595kB) |
Resumen
Introducción: La implementación de programas de ejercicio puede mejorar la calidad de vida de pacientes en hemodiálisis (HD). Diversos estudios hablan sobre los beneficios del ejercicio físico en estos pacientes, sin embargo, los efectos sobre marcadores antropométricos, fuerza muscular y tensión arterial (TA) según el tipo de ejercicio no han sido completamente evaluados. El objetivo de esta revisión es analizar estudios cuya intervención consistiera en la implementación de programas de ejercicio en pacientes con HD y proporcionar evidencias de sus efectos sobre los marcadores antropométricos, fuerza muscular y TA. Métodos: Se realizó una búsqueda en la literatura en Medline, LILACS, Scielo y Redalyc, con una temporalidad de 2015 a 2020. Se incluyeron 18 artículos en la presente revisión. Resultados: La combinación de ejercicio anaeróbico y de resistencia aumenta la fuerza muscular, y de igual manera, el ejercicio aeróbico y anaeróbico incrementa la fuerza muscular de las extremidades superiores e inferiores de pacientes en HD. Por otro lado, el ejercicio anaeróbico por sí solo, tiene efectos sobre los marcadores antropométricos, específicamente en el aumento de masa libre de grasa. El ejercicio aeróbico aislado es eficaz para la disminución de la TA. Conclusión: La implementación de programas de ejercicio en pacientes con HD ha demostrado tener efectos positivos sobre la fuerza muscular, los marcadores antropométricos y la TA.
| Tipo de Documento: | Artículo |
|---|---|
| Palabras Clave: | Enfermedad renal crónica, hemodiálisis, ejercicio físico, marcadores antropométricos, fuerza muscular, tensión arterial. |
| Clasificación temática: | Materias > Biomedicina Materias > Educación física y el deporte |
| Divisiones: | Universidad Internacional Iberoamericana México > Investigación > Artículos y libros |
| Depositado: | 01 Jun 2022 23:30 |
| Ultima Modificación: | 01 Jun 2022 23:30 |
| URI: | https://repositorio.unini.edu.mx/id/eprint/2209 |
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