Satisfacción laboral del personal de enfermería sobre el cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina
Tesis
Materias > Biomedicina
Materias > Ciencias Sociales
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Cerrado
Español
Introducción: En la presente investigación se propone realizar un análisis sobre la satisfacción laboral del personal de enfermería en el cuidado de pacientes comprometidos con SARS-CoV-2 y su relación con el ambiente laboral, en el periodo Marzo-diciembre 2020 en La Pampa Argentina, abordando diferentes bases teóricas que dan sustento al análisis del problema que se plantea en este investigación: ¿Existió una satisfacción laboral del personal de enfermería sobre el cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina? Objetivo: En la presente investigación se propone como objetivo analizar la satisfacción laboral del personal de enfermería en el cuidado de pacientes comprometidos con SARS-CoV-2 y su relación con el ambiente laboral, en el periodo Marzo-diciembre 2020 en La Pampa Argentina. Metodología: Estudio de tipo cualitativo, con diseño de investigación descriptivo, de corte de investigación transversal, donde se tomará en cuenta las opiniones de los enfermeros y enfermeras que se desempeñen o se hallan desempeñado en los servicios de hospitales públicos, estando asi al cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina Conclusión: Se pudo determinar que existen diferentes niveles de satisfacción del personal de enfermería con las posibilidades de desarrollo profesional que las instituciones ofrecen, lo cual nuevamente apunta a estar insatisfechos laboralmente.
metadata
Alzuri, Martin Maximiliano
mail
martin.alzuri@gmail.com
(2022)
Satisfacción laboral del personal de enfermería sobre el cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina.
Masters thesis, SIN ESPECIFICAR.
Resumen
Introducción: En la presente investigación se propone realizar un análisis sobre la satisfacción laboral del personal de enfermería en el cuidado de pacientes comprometidos con SARS-CoV-2 y su relación con el ambiente laboral, en el periodo Marzo-diciembre 2020 en La Pampa Argentina, abordando diferentes bases teóricas que dan sustento al análisis del problema que se plantea en este investigación: ¿Existió una satisfacción laboral del personal de enfermería sobre el cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina? Objetivo: En la presente investigación se propone como objetivo analizar la satisfacción laboral del personal de enfermería en el cuidado de pacientes comprometidos con SARS-CoV-2 y su relación con el ambiente laboral, en el periodo Marzo-diciembre 2020 en La Pampa Argentina. Metodología: Estudio de tipo cualitativo, con diseño de investigación descriptivo, de corte de investigación transversal, donde se tomará en cuenta las opiniones de los enfermeros y enfermeras que se desempeñen o se hallan desempeñado en los servicios de hospitales públicos, estando asi al cuidado de pacientes comprometidos con SARS-CoV-2 en el periodo Marzo-Diciembre 2020 en La Pampa Argentina Conclusión: Se pudo determinar que existen diferentes niveles de satisfacción del personal de enfermería con las posibilidades de desarrollo profesional que las instituciones ofrecen, lo cual nuevamente apunta a estar insatisfechos laboralmente.
| Tipo de Documento: | Tesis (Masters) |
|---|---|
| Palabras Clave: | Atención de Enfermería, COVID-19, Satisfacción en el Trabajo, Argentina |
| Clasificación temática: | Materias > Biomedicina Materias > Ciencias Sociales |
| 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.uneatlantico.es/id/eprint/3138 |
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