Diseño de un plan de prevención de riesgos laborales psicosociales y asociados en el CEIP Al-Kazar, en Los Alcázares (Murcia
Tesis Materias > Educación Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster Cerrado Español En la actualidad, la prevención de riesgos dentro del contexto educativo ha ido cobrando mayor importancia debido a la aparición de nuevos riesgos o accidentes que tienen lugar en dicho contexto. Una de las problemáticas que han aparecido en materia de riesgos laborales dentro del contexto escolar es el Síndrome del Quemado. Este se caracteriza por un cansancio extremo durante el desarrollo de la actividad laboral y después de esta, así como por el aumento de síntomas relacionados con la ansiedad y estrés, los cuales tienen una amplia repercusión sobre la salud psicológica. Asimismo, para ciertos autores, este síndrome aparece ante el desgaste físico, psicológico y emocional que presentan los docentes tras verse envueltos en situaciones de estrés. A su vez, cabe indicar que no solo afecta a los docentes, sino que también produce daños colaterales en el resto de personas que intervienen en el proceso educativo como son las familias y los propios estudiantes. Al mismo tiempo, se establece ha experimentado un auge peligroso tras la crisis provocada a raíz de la pandemia por Covid-19. En consecuencia, a través del presente trabajo se plantea el diseño de un plan de prevención de riesgos laborales psicosociales asociados al burnout en el CEIP Al-Kazar, definiendo los principales riesgos y medidas de prevención que pueden ocurrir y necesitar el personal del centro. Para terminar, tras el proceso de investigación, se ha encontrado que los docentes de dicho centro presentan una prevalencia alta en lo referente al Síndrome de Burnout. Además, tras la implementación de la propuesta se espera que esta mejore los síntomas asociados a dicho síndrome en los docentes, así como mejore la situación de todos los agentes educativos que se ven afectados colateralmente por dicha problemática y la capacidad de los docentes para hacer frente a situaciones de estrés. metadata Cárceles Pelegrín, Eva mail evacarpel81@hotmail.com (2022) Diseño de un plan de prevención de riesgos laborales psicosociales y asociados en el CEIP Al-Kazar, en Los Alcázares (Murcia. Masters thesis, SIN ESPECIFICAR.
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En la actualidad, la prevención de riesgos dentro del contexto educativo ha ido cobrando mayor importancia debido a la aparición de nuevos riesgos o accidentes que tienen lugar en dicho contexto. Una de las problemáticas que han aparecido en materia de riesgos laborales dentro del contexto escolar es el Síndrome del Quemado. Este se caracteriza por un cansancio extremo durante el desarrollo de la actividad laboral y después de esta, así como por el aumento de síntomas relacionados con la ansiedad y estrés, los cuales tienen una amplia repercusión sobre la salud psicológica. Asimismo, para ciertos autores, este síndrome aparece ante el desgaste físico, psicológico y emocional que presentan los docentes tras verse envueltos en situaciones de estrés. A su vez, cabe indicar que no solo afecta a los docentes, sino que también produce daños colaterales en el resto de personas que intervienen en el proceso educativo como son las familias y los propios estudiantes. Al mismo tiempo, se establece ha experimentado un auge peligroso tras la crisis provocada a raíz de la pandemia por Covid-19. En consecuencia, a través del presente trabajo se plantea el diseño de un plan de prevención de riesgos laborales psicosociales asociados al burnout en el CEIP Al-Kazar, definiendo los principales riesgos y medidas de prevención que pueden ocurrir y necesitar el personal del centro. Para terminar, tras el proceso de investigación, se ha encontrado que los docentes de dicho centro presentan una prevalencia alta en lo referente al Síndrome de Burnout. Además, tras la implementación de la propuesta se espera que esta mejore los síntomas asociados a dicho síndrome en los docentes, así como mejore la situación de todos los agentes educativos que se ven afectados colateralmente por dicha problemática y la capacidad de los docentes para hacer frente a situaciones de estrés.
| Tipo de Documento: | Tesis (Masters) |
|---|---|
| Palabras Clave: | Síndrome de Burnout, docentes, investigación-acción, intervención, plan de prevención de riesgos laborales. |
| Clasificación temática: | Materias > Educación |
| Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
| Depositado: | 20 Nov 2023 23:30 |
| Ultima Modificación: | 20 Nov 2023 23:30 |
| URI: | https://repositorio.uneatlantico.es/id/eprint/2220 |
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