Conocimiento de los efectos del aislamiento social y su repercusión en los adultos mayores a causa del Covid – 19 en cantón Quijos provincia de Napo - Ecuador.
Tesis
Materias > Psicología
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Cerrado
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La problemática que ha generado la aparición del virus del covid-19 en nuestra sociedad elevándolo al punto de ser una pandemia sin precedentes en la historia de la humanidad moderna, ha despertado la aparición de diversos efectos que se pueden evidenciar principalmente en la salud física y mental de las sociedades. Sin embargo, existen grupos que se han vuelto mucho más vulnerables que el resto para sufrir de dichos efectos los cuales se han manifestado de gran manera en las personas adultas mayores, para tratar de frenar las tasas de contagio y mortalidad a nivel mundial se han realizado aislamientos sociales sobre todo para los adultos mayores los cuales han debido modificar su estilo de vida, su interacción social y económica. El propósito del proyecto permitió conocer cuáles son los efectos del aislamiento social y la repercusión que este tuvo en los adultos mayores del cantón Quijos. La población muestra del estudio se realizó con 100 adultos mayores que habitan en las parroquias del cantón Quijos provincia de Napo – Ecuador, se utilizó una metodología mixta, con una investigación descriptiva y de corte transversal. Las técnicas ocupadas para la recolección de datos fueron la entrevista estructurada socio demográfica, aplicación de test screening psicológico en eventos críticos y escala de red social de Lubben. Se utilizó la herramienta informática Atlas/ti y el instrumento GHQ12. Pudiéndose conocer que los adultos mayores del cantón Quijos presentan repercusiones en el estado de ánimo y en su salud mental, encontrándose casos de depresión, ansiedad y signos de maltrato y abuso mientras los adultos mayores se encuentran en el aislamiento social. Además, se halló que las personas mayores presentan pérdida de su interacción social y familiar, de actividades de ocio y hobbies, así como laborales. Por lo que es muy importante se realice el Mapeo de los adultos mayores del cantón que requieren atención psicoterapéutica por parte de las instituciones del estado y privadas para la atención oportuna de la salud mental, realizar programas de atención con los adultos mayores y sus familias para mitigar los efectos del aislamiento social a fin de mejorar el estado de ánimo.
metadata
Medina Novillo, César Fernando
mail
cexitar11@yahoo.com
(2022)
Conocimiento de los efectos del aislamiento social y su repercusión en los adultos mayores a causa del Covid – 19 en cantón Quijos provincia de Napo - Ecuador.
Masters thesis, SIN ESPECIFICAR.
Resumen
La problemática que ha generado la aparición del virus del covid-19 en nuestra sociedad elevándolo al punto de ser una pandemia sin precedentes en la historia de la humanidad moderna, ha despertado la aparición de diversos efectos que se pueden evidenciar principalmente en la salud física y mental de las sociedades. Sin embargo, existen grupos que se han vuelto mucho más vulnerables que el resto para sufrir de dichos efectos los cuales se han manifestado de gran manera en las personas adultas mayores, para tratar de frenar las tasas de contagio y mortalidad a nivel mundial se han realizado aislamientos sociales sobre todo para los adultos mayores los cuales han debido modificar su estilo de vida, su interacción social y económica. El propósito del proyecto permitió conocer cuáles son los efectos del aislamiento social y la repercusión que este tuvo en los adultos mayores del cantón Quijos. La población muestra del estudio se realizó con 100 adultos mayores que habitan en las parroquias del cantón Quijos provincia de Napo – Ecuador, se utilizó una metodología mixta, con una investigación descriptiva y de corte transversal. Las técnicas ocupadas para la recolección de datos fueron la entrevista estructurada socio demográfica, aplicación de test screening psicológico en eventos críticos y escala de red social de Lubben. Se utilizó la herramienta informática Atlas/ti y el instrumento GHQ12. Pudiéndose conocer que los adultos mayores del cantón Quijos presentan repercusiones en el estado de ánimo y en su salud mental, encontrándose casos de depresión, ansiedad y signos de maltrato y abuso mientras los adultos mayores se encuentran en el aislamiento social. Además, se halló que las personas mayores presentan pérdida de su interacción social y familiar, de actividades de ocio y hobbies, así como laborales. Por lo que es muy importante se realice el Mapeo de los adultos mayores del cantón que requieren atención psicoterapéutica por parte de las instituciones del estado y privadas para la atención oportuna de la salud mental, realizar programas de atención con los adultos mayores y sus familias para mitigar los efectos del aislamiento social a fin de mejorar el estado de ánimo.
Tipo de Documento: | Tesis (Masters) |
---|---|
Palabras Clave: | Aislamiento social, covid-19, personas mayores, salud mental. |
Clasificación temática: | Materias > Psicología |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster |
Depositado: | 06 May 2024 23:30 |
Ultima Modificación: | 06 May 2024 23:30 |
URI: | https://repositorio.unini.edu.mx/id/eprint/3149 |
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