Propuesta enfocada en la Gerontopsicomotricidad para el fortalecimiento de lazos afectivos familiares de los adultos mayores de la Asociación “Luz y Vida”.
Tesis
Materias > Psicología
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
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La calidad de vida de los adultos mayores ha sido analizada desde varias perspectivas en la que se ha priorizado el aspecto de la salud, alimentación, actividad física y el apoyo familiar desde el sustento económico y acompañamiento que pudiera brindar, dejado de lado el aspecto afectivo como una de las fortalezas que podrían garantizar un estado de equilibrio emocional en los adultos mayores. A través de este proyecto investigativo se plantea elaborar una propuesta enfocada en la Gerontopsicomotricidad encaminada al fortalecimiento de lazos afectivos de los adultos mayores de la Asociación “Luz y Vida” de la ciudad de Ibarra, con la participación de los miembros del núcleo familiar más cercano. Se partió de una evaluación integral a nivel sociofamiliar, emocional, cognitivo y funcional; en los que se evidenció que aproximadamente el 50% de los adultos mayores presentan un nivel de depresión entre probable y establecida; el 60% presentan deterioro cognitivo entre leve y grave; apenas el 20% comparte mucho tiempo de recreación familiar y el 50% de adultos tienen un nivel de dependencia funcional. A partir de estos datos se plantea una propuesta en la que se aborda las áreas debilitadas de manera conjunta, a través de actividades psicomotoras adaptadas a las necesidades de los adultos mayores desde el propio contexto familiar, involucrando directamente a sus parientes más cercanos en el ánimo de lograr el fortalecimiento de los vínculos afectivos que le brinden mayor estabilidad y mejores días. La propuesta resulta de una combinación de acciones que parte de la socialización y concientización a la familia sobre el estado individual de los adultos y la necesidad de un compromiso de apoyo afectivo a través de un proceso corto de capacitación que se afianzará a través de visitas domiciliarias para orientar a las familias con una guía práctica de actividades psicomotoras de fácil aplicación en casa. Finalmente se proyecta, después de su aplicación, volver a evaluar a los adultos mayores para evidenciar la efectividad de la propuesta, que se aspira será muy positiva.
metadata
Molina Ipiales, Claudia Veronica
mail
angeles_siloe@hotmail.com
(2022)
Propuesta enfocada en la Gerontopsicomotricidad para el fortalecimiento de lazos afectivos familiares de los adultos mayores de la Asociación “Luz y Vida”.
Masters thesis, Universidad Europea del Atlántico.
Resumen
La calidad de vida de los adultos mayores ha sido analizada desde varias perspectivas en la que se ha priorizado el aspecto de la salud, alimentación, actividad física y el apoyo familiar desde el sustento económico y acompañamiento que pudiera brindar, dejado de lado el aspecto afectivo como una de las fortalezas que podrían garantizar un estado de equilibrio emocional en los adultos mayores. A través de este proyecto investigativo se plantea elaborar una propuesta enfocada en la Gerontopsicomotricidad encaminada al fortalecimiento de lazos afectivos de los adultos mayores de la Asociación “Luz y Vida” de la ciudad de Ibarra, con la participación de los miembros del núcleo familiar más cercano. Se partió de una evaluación integral a nivel sociofamiliar, emocional, cognitivo y funcional; en los que se evidenció que aproximadamente el 50% de los adultos mayores presentan un nivel de depresión entre probable y establecida; el 60% presentan deterioro cognitivo entre leve y grave; apenas el 20% comparte mucho tiempo de recreación familiar y el 50% de adultos tienen un nivel de dependencia funcional. A partir de estos datos se plantea una propuesta en la que se aborda las áreas debilitadas de manera conjunta, a través de actividades psicomotoras adaptadas a las necesidades de los adultos mayores desde el propio contexto familiar, involucrando directamente a sus parientes más cercanos en el ánimo de lograr el fortalecimiento de los vínculos afectivos que le brinden mayor estabilidad y mejores días. La propuesta resulta de una combinación de acciones que parte de la socialización y concientización a la familia sobre el estado individual de los adultos y la necesidad de un compromiso de apoyo afectivo a través de un proceso corto de capacitación que se afianzará a través de visitas domiciliarias para orientar a las familias con una guía práctica de actividades psicomotoras de fácil aplicación en casa. Finalmente se proyecta, después de su aplicación, volver a evaluar a los adultos mayores para evidenciar la efectividad de la propuesta, que se aspira será muy positiva.
| Tipo de Documento: | Tesis (Masters) |
|---|---|
| Palabras Clave: | La familia y el adulto mayor, Gerontopsicomotricidad, Vínculos afectivos en el adulto mayor, El movimiento en el adulto mayor, Actividades psicomotoras adaptadas al adulto mayor |
| Clasificación temática: | Materias > Psicología |
| Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster |
| Depositado: | 19 Oct 2023 23:30 |
| Ultima Modificación: | 19 Oct 2023 23:30 |
| URI: | https://repositorio.unini.edu.mx/id/eprint/787 |
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