Análisis del nivel de conocimiento, las destrezas y las actitudes de los docentes en enfermería en torno al uso de simuladores de alta fidelidad
Thesis
Subjects > Education
Ibero-american International University > Research > Doctoral Thesis
Ibero-american International University > Research > Doctoral Theses
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En este estudio se analizó el nivel de conocimiento, las destrezas y las actitudes de los docentes de enfermería en el uso de simuladores de alta fidelidad (SAF) en los procesos de enseñanza-aprendizaje. La literatura destacó la importancia del uso de los SAF en los programas de la enfermería y la necesidad de que los facultativos demostraran tener dominio de estas tecnologías para alcanzar los objetivos educativos (Jeffries, 2022; Organización Mundial de la Salud, 2022). Los resultados del estudio pueden servir para implementar una metodología de desarrollo profesional en las Instituciones de Educación Superior de Puerto Rico. El estudio utilizó los paradigmas cuantitativos, descriptivos y exploratorios para el análisis de los datos, integrando también una sección para recibir opiniones de los participantes. Para conocer el nivel de conocimiento, destrezas y actitudes de los docentes en el uso de simuladores de alta fidelidad (SAF) se analizaron datos de una muestra de noventa y un (n=91) participantes. En el estudio se validó un cuestionario que solicitó a los participantes contestar doce (12) reactivos mediante una escala Likert considerando los SAF en las funciones docentes. Los resultados del estudio demostraron diferencias significativas entre los niveles de conocimiento, dominio de destrezas y actitudes del docente de enfermería en el uso de los SAF considerando el grado académico más alto alcanzado y la participación en actividades de desarrollo profesional (<.05). Esto es, mientras más alto el grado académico y frecuencia en la participación en actividades de desarrollo profesional, más alto son los niveles de conocimientos, destrezas y actitudes del docente en el uso de los SAF para mejorar las competencias de los estudiantes. Además, se comprobaron correlaciones significativas (<.01) entre los constructos que sirvieron de marco teórico conceptual para el estudio. Lo que demuestra que puede ser usado por otros investigadores para estudios similares.
metadata
Molina Molina, Ivan José
mail
ivan.molina@doctorado.unib.org
(2023)
Análisis del nivel de conocimiento, las destrezas y las actitudes de los docentes en enfermería en torno al uso de simuladores de alta fidelidad.
Doctoral thesis, UNSPECIFIED.
Abstract
En este estudio se analizó el nivel de conocimiento, las destrezas y las actitudes de los docentes de enfermería en el uso de simuladores de alta fidelidad (SAF) en los procesos de enseñanza-aprendizaje. La literatura destacó la importancia del uso de los SAF en los programas de la enfermería y la necesidad de que los facultativos demostraran tener dominio de estas tecnologías para alcanzar los objetivos educativos (Jeffries, 2022; Organización Mundial de la Salud, 2022). Los resultados del estudio pueden servir para implementar una metodología de desarrollo profesional en las Instituciones de Educación Superior de Puerto Rico. El estudio utilizó los paradigmas cuantitativos, descriptivos y exploratorios para el análisis de los datos, integrando también una sección para recibir opiniones de los participantes. Para conocer el nivel de conocimiento, destrezas y actitudes de los docentes en el uso de simuladores de alta fidelidad (SAF) se analizaron datos de una muestra de noventa y un (n=91) participantes. En el estudio se validó un cuestionario que solicitó a los participantes contestar doce (12) reactivos mediante una escala Likert considerando los SAF en las funciones docentes. Los resultados del estudio demostraron diferencias significativas entre los niveles de conocimiento, dominio de destrezas y actitudes del docente de enfermería en el uso de los SAF considerando el grado académico más alto alcanzado y la participación en actividades de desarrollo profesional (<.05). Esto es, mientras más alto el grado académico y frecuencia en la participación en actividades de desarrollo profesional, más alto son los niveles de conocimientos, destrezas y actitudes del docente en el uso de los SAF para mejorar las competencias de los estudiantes. Además, se comprobaron correlaciones significativas (<.01) entre los constructos que sirvieron de marco teórico conceptual para el estudio. Lo que demuestra que puede ser usado por otros investigadores para estudios similares.
| Document Type: | Thesis (Doctoral) |
|---|---|
| Keywords: | Simuladores de Alta Fidelidad, Competencias Profesionales de Enfermería, Facultad de Enfermería, Desarrollo Profesional, Conocimiento, Destrezas y Actitudes |
| Subject classification: | Subjects > Education |
| Divisions: | Ibero-american International University > Research > Doctoral Thesis Ibero-american International University > Research > Doctoral Theses |
| Deposited: | 26 Sep 2023 23:30 |
| Last Modified: | 26 Sep 2023 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/5086 |
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