Satisfacción laboral en médicos rurales del primer nivel de atención de salud del Ministerio de Salud Pública, Ecuador, en el periodo febrero – marzo 2022

Thesis Subjects > Biomedicine Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish Objetivo general: Analizar el nivel de satisfacción laboral de los médicos rurales del primer nivel de atención de salud del Ministerios de Salud Pública, Ecuador, en el periodo febrero – marzo 2022. Enfoques teóricos: La satisfacción laboral es tomada como una sensación positiva por parte del individuo hacia su trabajo. Herzberg propuso que la satisfacción laboral posee componentes extrínsecos e intrínsecos. El servicio social obligatorio (medicatura rural) resulta fundamental para el primer nivel de atención representando un componente esencial para brindar atención médica a poblaciones que habitan en zonas rurales con áreas de difícil y muy difícil acceso. Metodología utilizada: Se realizó un estudio cuantitativo, descriptivo, de corte transversal en médicos rurales del Ministerio de Salud Pública de Ecuador utilizando una encuesta en línea autoadministrada, conformado por preguntas que evaluaron datos demográficos y el cuestionario de satisfacción laboral S20/23 validado. Se llevó a cabo análisis descriptivo univarial utilizando frecuencias y porcentajes para variables cualitativas, así como, media y desviación estándar (DE) para variables cuantitativas. El análisis bivarial se realizó utilizando la prueba de asociación Chi-2, valores de p<0.05 se aceptaron como estadísticamente significativos.Resultados: Respecto al sexo se vio un predominio de población femenina con 61% (n=150), mientras un 39% de población masculina (n=97). la satisfacción laboral global en los médicos rurales mostró tener una puntuación media de 4,1. Los factores con mayor satisfacción fueron la satisfacción con la supervisión, con el ambiente, con la participación y satisfacción intrínseca, el factor de beneficios 43,3% (n = 107) refirieron sentirse insatisfechos.Conclusiones: La satisfacción laboral de los médicos rurales de primer nivel de atención de salud en Ecuador en el periodo febrero – marzo 2022 tuvo una puntuación promedio de 4,1 “indiferente”. Los médicos rurales de Ecuador solteros, que trabajan en Centro de Salud tipo B, en la región Amazónica y con jornadas de trabajo de 22 días de trabajo continuos y 8 días de descanso mostraron niveles de satisfacción laboral más altos, ninguna de estas diferencias fue estadísticamente significativa. metadata Izquierdo Condoy, Juan Sebastian mail juan1izquierdo11@gmail.com (2022) Satisfacción laboral en médicos rurales del primer nivel de atención de salud del Ministerio de Salud Pública, Ecuador, en el periodo febrero – marzo 2022. Master's thesis, UNSPECIFIED.

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Abstract

Objetivo general: Analizar el nivel de satisfacción laboral de los médicos rurales del primer nivel de atención de salud del Ministerios de Salud Pública, Ecuador, en el periodo febrero – marzo 2022. Enfoques teóricos: La satisfacción laboral es tomada como una sensación positiva por parte del individuo hacia su trabajo. Herzberg propuso que la satisfacción laboral posee componentes extrínsecos e intrínsecos. El servicio social obligatorio (medicatura rural) resulta fundamental para el primer nivel de atención representando un componente esencial para brindar atención médica a poblaciones que habitan en zonas rurales con áreas de difícil y muy difícil acceso. Metodología utilizada: Se realizó un estudio cuantitativo, descriptivo, de corte transversal en médicos rurales del Ministerio de Salud Pública de Ecuador utilizando una encuesta en línea autoadministrada, conformado por preguntas que evaluaron datos demográficos y el cuestionario de satisfacción laboral S20/23 validado. Se llevó a cabo análisis descriptivo univarial utilizando frecuencias y porcentajes para variables cualitativas, así como, media y desviación estándar (DE) para variables cuantitativas. El análisis bivarial se realizó utilizando la prueba de asociación Chi-2, valores de p<0.05 se aceptaron como estadísticamente significativos.Resultados: Respecto al sexo se vio un predominio de población femenina con 61% (n=150), mientras un 39% de población masculina (n=97). la satisfacción laboral global en los médicos rurales mostró tener una puntuación media de 4,1. Los factores con mayor satisfacción fueron la satisfacción con la supervisión, con el ambiente, con la participación y satisfacción intrínseca, el factor de beneficios 43,3% (n = 107) refirieron sentirse insatisfechos.Conclusiones: La satisfacción laboral de los médicos rurales de primer nivel de atención de salud en Ecuador en el periodo febrero – marzo 2022 tuvo una puntuación promedio de 4,1 “indiferente”. Los médicos rurales de Ecuador solteros, que trabajan en Centro de Salud tipo B, en la región Amazónica y con jornadas de trabajo de 22 días de trabajo continuos y 8 días de descanso mostraron niveles de satisfacción laboral más altos, ninguna de estas diferencias fue estadísticamente significativa.

Document Type: Thesis (Master's)
Keywords: Servicios de salud rural, médicos, satisfacción en el Trabajo
Subject classification: Subjects > Biomedicine
Divisions: Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 15 Apr 2024 23:30
Last Modified: 15 Apr 2024 23:30
URI: https://repositorio.unib.org/id/eprint/2756

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