Estrés percibido en adultos mayores mediante el uso de robots sociales durante Covid 19
Artículo Materias > Psicología Universidad Europea del Atlántico > Investigación > Artículos y libros Abierto Inglés, Español En 2019 se inició una pandemia debido al Coronavirus o Covid-19. Las consecuencias de las limitaciones sociales impuestas en los ancianos con la ausencia total o parcial del contacto físico han provocado una disminución de la salud mental debido al aumento del estrés percibido llegando a desembocar en un aumento de la sintomatología depresiva o ansiosa. Esta investigación consta de 22 personas entre 70 y 90 años con deterioro cognitivo leve o moderado distribuidos al azar en G.E. y G. C. Se llevan a cabo 15 sesiones de relajación con la herramienta de un robot social en G.E. y solamente relajación en el G.C. La evaluación se realiza con una medición a través del Cuestionario de Estrés Percibido antes y después del proceso, además de una medición de la frecuencia cardiaca antes y después de la última sesión. Los resultados muestran una disminución significativa en el estrés percibido en el G.E. mientras que no es significativa en el G.C. En ambos grupos disminuye significativamente la frecuencia cardiaca. Por lo tanto, el robot social como herramienta terapéutica puede tener un papel relevante en el tratamiento de la salud mental de las personas mayores. metadata Corral Barrio, Verónica mail SIN ESPECIFICAR (2021) Estrés percibido en adultos mayores mediante el uso de robots sociales durante Covid 19. MLS Psychology Research, 4 (1). pp. 7-22. ISSN 26055295
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En 2019 se inició una pandemia debido al Coronavirus o Covid-19. Las consecuencias de las limitaciones sociales impuestas en los ancianos con la ausencia total o parcial del contacto físico han provocado una disminución de la salud mental debido al aumento del estrés percibido llegando a desembocar en un aumento de la sintomatología depresiva o ansiosa. Esta investigación consta de 22 personas entre 70 y 90 años con deterioro cognitivo leve o moderado distribuidos al azar en G.E. y G. C. Se llevan a cabo 15 sesiones de relajación con la herramienta de un robot social en G.E. y solamente relajación en el G.C. La evaluación se realiza con una medición a través del Cuestionario de Estrés Percibido antes y después del proceso, además de una medición de la frecuencia cardiaca antes y después de la última sesión. Los resultados muestran una disminución significativa en el estrés percibido en el G.E. mientras que no es significativa en el G.C. En ambos grupos disminuye significativamente la frecuencia cardiaca. Por lo tanto, el robot social como herramienta terapéutica puede tener un papel relevante en el tratamiento de la salud mental de las personas mayores.
Tipo de Documento: | Artículo |
---|---|
Notas: | Alumna (no PDI) |
Palabras Clave: | Covid-19, geriatría, estrés percibido, robot social, deterioro cognitivo |
Clasificación temática: | Materias > Psicología |
Divisiones: | Universidad Europea del Atlántico > Investigación > Artículos y libros |
Depositado: | 08 Jul 2022 23:30 |
Ultima Modificación: | 05 Jul 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/2640 |
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