Equilibrio Ocupacional y percepción de salud en la “nueva normalidad”: Relatos postcuarentena de personas mayores en situación de discapacidad de un Centro Comunitario de Rehabilitación.
Tesis
Materias > Biomedicina
Materias > Ciencias Sociales
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
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Las medidas sanitarias preventivas, han tenido importantes implicancias en la rutina de las personas mayores, más aún para quienes se encuentran en situación de discapacidad; por esto, el estudio que se presenta, se centra en un grupo de personas mayores que asisten a un Centro Comunitario de Rehabilitación (CCR), para conocer el impacto que genera en el equilibrio ocupacional y en la percepción de salud, el cambio entre la situación de encierro y la posterior disminución del grado de confinamiento. Los principales hallazgos detectados en los grupos focales realizados fueron que la mayoría de los participantes logra mantener un equilibrio ocupacional durante el periodo de cuarentena (Etapa 1) y de Apertura Inicial (Etapa 4). Un tercio de los participantes no percibe cambios en su rutina en el transcurso de ninguno de los dos periodos; los otros dos tercios, incorpora estrategias adaptativas para mantener su equilibrio ocupacional. Los factores protectores para mantener una rutina satisfactoria en confinamiento son: el habitar en casas con áreas verdes dentro de la propiedad, el mantener la actividad laborar durante la cuarentena y posterior a ésta, las habilidades personales de adaptación y flexibilidad para añadir nuevas tareas en el día, y el uso de tecnología para mantener contacto con sus familiares. Los factores riesgo son: el impedimento en la participación de actividades comunitarias, y la pérdida del contacto con familias y pares. Al aumentar libertades facilitan el equilibrio ocupacional: retomar contacto familiar, asistir a talleres comunitarios, tener proyectos de viajes y el ejercicio físico; y lo dificultan el temor a la delincuencia, el miedo al contagio, y la desconfianza en la rigurosidad de la incorporación de las medidas sanitarias por parte de los otros. Respecto a salud, la presencia de emociones negativas asociadas al confinamiento es transversal a los participantes. Además, se presentan otras patologías asociadas al COVID-19.
metadata
Sepúlveda Benavides, Nadia Natalí
mail
nadia.sepulveda8@gmail.com
(2022)
Equilibrio Ocupacional y percepción de salud en la “nueva normalidad”: Relatos postcuarentena de personas mayores en situación de discapacidad de un Centro Comunitario de Rehabilitación.
Masters thesis, SIN ESPECIFICAR.
Resumen
Las medidas sanitarias preventivas, han tenido importantes implicancias en la rutina de las personas mayores, más aún para quienes se encuentran en situación de discapacidad; por esto, el estudio que se presenta, se centra en un grupo de personas mayores que asisten a un Centro Comunitario de Rehabilitación (CCR), para conocer el impacto que genera en el equilibrio ocupacional y en la percepción de salud, el cambio entre la situación de encierro y la posterior disminución del grado de confinamiento. Los principales hallazgos detectados en los grupos focales realizados fueron que la mayoría de los participantes logra mantener un equilibrio ocupacional durante el periodo de cuarentena (Etapa 1) y de Apertura Inicial (Etapa 4). Un tercio de los participantes no percibe cambios en su rutina en el transcurso de ninguno de los dos periodos; los otros dos tercios, incorpora estrategias adaptativas para mantener su equilibrio ocupacional. Los factores protectores para mantener una rutina satisfactoria en confinamiento son: el habitar en casas con áreas verdes dentro de la propiedad, el mantener la actividad laborar durante la cuarentena y posterior a ésta, las habilidades personales de adaptación y flexibilidad para añadir nuevas tareas en el día, y el uso de tecnología para mantener contacto con sus familiares. Los factores riesgo son: el impedimento en la participación de actividades comunitarias, y la pérdida del contacto con familias y pares. Al aumentar libertades facilitan el equilibrio ocupacional: retomar contacto familiar, asistir a talleres comunitarios, tener proyectos de viajes y el ejercicio físico; y lo dificultan el temor a la delincuencia, el miedo al contagio, y la desconfianza en la rigurosidad de la incorporación de las medidas sanitarias por parte de los otros. Respecto a salud, la presencia de emociones negativas asociadas al confinamiento es transversal a los participantes. Además, se presentan otras patologías asociadas al COVID-19.
| Tipo de Documento: | Tesis (Masters) |
|---|---|
| Palabras Clave: | Terapia Ocupacional gerontológica, COVID-19, Equilibrio Ocupacional, Persona mayor en situación de discapacidad, Percepción de salud. |
| Clasificación temática: | Materias > Biomedicina Materias > Ciencias Sociales |
| Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster |
| Depositado: | 02 Nov 2023 23:30 |
| Ultima Modificación: | 02 Nov 2023 23:30 |
| URI: | https://repositorio.unini.edu.mx/id/eprint/1421 |
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