Evaluación del impacto emocional frente al Covid-19 y su asociación a crisis hipertensivas, ansiedad y depresión en el centro de atención medica Farmaklinik de la comunidad de Valle Dorado Tlajomulco de Zúñiga, Jalisco; 2021.

Tesis Materias > Psicología Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster Cerrado Español La pandemia por Covid-19 ha venido a revolucionar a todo el mundo, lo que ha sido abrumador y ha dado como resultado un impacto negativo en las emociones de las personas. A la par de esta situación emocional en la población, se ha observado el incremento de enfermedades como crisis hipertensivas, ansiedad y depresión. Por tanto, el objetivo de este estudio es, evaluar el impacto emocional frente al Covid-19 y su asociación a crisis hipertensivas de ansiedad y depresión en el centro de atención medica Farmaklinik de la comunidad de Valle Dorado Tlajomulco de Zúñiga, Jalisco; 2021. Se diseñó un estudio transversal, descriptivo en el cual se elaboró una encuesta con 10 ítems para evaluar la presencia de las emociones y la presencia de las diferentes patologías. En total se obtuvieron 293 participantes, de los cuales el 63.48% fueron mujeres y 36.52% hombres, con edades que oscilaron entre los 18 y los 81 años. Los resultados describen que durante la pandemia existió predominio en las emociones de carácter negativo, siendo el miedo la emoción que más se reportó por los participantes en un 86.69%, siguiendo la tristeza con 64.85%, la sorpresa con 42.32%, y el enojo con 30.38%. En relación a las enfermedades en estudio encontramos que el 11.26% presentaron crisis hipertensivas, el 61.3% ansiedad y el 36.18 % depresión. Se encontró asociación significativa de las emociones de tristeza y enojo a Crisis hipertensivas y las emociones de tristeza y miedo a Ansiedad y la emoción de tristeza a Depresión. Concluyendo en que, si existe un impacto negativo de las emociones en la población relacionado a la presencia de Crisis hipertensivas, ansiedad y depresión. metadata Montaño Zepeda, Blanca Nayeli mail nayeli_mz@hotmail.com (2022) Evaluación del impacto emocional frente al Covid-19 y su asociación a crisis hipertensivas, ansiedad y depresión en el centro de atención medica Farmaklinik de la comunidad de Valle Dorado Tlajomulco de Zúñiga, Jalisco; 2021. Masters thesis, SIN ESPECIFICAR.

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Resumen

La pandemia por Covid-19 ha venido a revolucionar a todo el mundo, lo que ha sido abrumador y ha dado como resultado un impacto negativo en las emociones de las personas. A la par de esta situación emocional en la población, se ha observado el incremento de enfermedades como crisis hipertensivas, ansiedad y depresión. Por tanto, el objetivo de este estudio es, evaluar el impacto emocional frente al Covid-19 y su asociación a crisis hipertensivas de ansiedad y depresión en el centro de atención medica Farmaklinik de la comunidad de Valle Dorado Tlajomulco de Zúñiga, Jalisco; 2021. Se diseñó un estudio transversal, descriptivo en el cual se elaboró una encuesta con 10 ítems para evaluar la presencia de las emociones y la presencia de las diferentes patologías. En total se obtuvieron 293 participantes, de los cuales el 63.48% fueron mujeres y 36.52% hombres, con edades que oscilaron entre los 18 y los 81 años. Los resultados describen que durante la pandemia existió predominio en las emociones de carácter negativo, siendo el miedo la emoción que más se reportó por los participantes en un 86.69%, siguiendo la tristeza con 64.85%, la sorpresa con 42.32%, y el enojo con 30.38%. En relación a las enfermedades en estudio encontramos que el 11.26% presentaron crisis hipertensivas, el 61.3% ansiedad y el 36.18 % depresión. Se encontró asociación significativa de las emociones de tristeza y enojo a Crisis hipertensivas y las emociones de tristeza y miedo a Ansiedad y la emoción de tristeza a Depresión. Concluyendo en que, si existe un impacto negativo de las emociones en la población relacionado a la presencia de Crisis hipertensivas, ansiedad y depresión.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Emociones, Covid 19, Crisis hipertensivas, Ansiedad, Depresión.
Clasificación temática: Materias > Psicología
Divisiones: Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Depositado: 14 Mar 2024 23:30
Ultima Modificación: 14 Mar 2024 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/2516

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