Conducta Ética del Personal Graduado de Enfermería y su Relación con la Satisfacción del Cuidado Recibido de los Pacientes Hospitalizados, en Puerto Rico.
Thesis Subjects > Education Ibero-american International University > Research > Doctoral Theses Closed Spanish Resumen. La finalidad de este estudio fue investigar la conducta ética del personal graduado de enfermería y su relación con la satisfacción del cuidado recibido de los pacientes hospitalizados en Puerto Rico (PR). Estudio cuantitativo descriptivo correlacional. La muestra seleccionada aleatoriamente a través de la internet, consistió en 41 sujetos de 21 años o más, hospitalizados en PR antes de la Pandemia de SARS COVID 19. Luego de leer el consentimiento, aprobaban al contestar el cuestionario. Se utilizó la estadística descriptiva, medidas de variabilidad, el Programa Estadístico para las Ciencias Sociales (SPSS) versión 27 y el análisis de correlación de Pearson. 30 (73.2%) participantes eran femeninas. En la pregunta ¿Cuán satisfecho se siente usted con el cuidado recibido por parte de la/el enfermera/o que estuvo a cargo de su cuidado?, 39 (95.2%) participantes contestaron estar satisfecho en un 95.12%. 36 (87.7%) pacientes describieron la conducta ética, mayor o igual a 70%, en una escala de puntuación de 0-100. Existe una relación estadísticamente significativa entre la conducta ética del personal graduado de enfermería (M = 85.03; SD = 13.32) y el nivel de satisfacción de los pacientes hospitalizados por el cuidado recibido por estos (M = 3.46; SD = 0.67) (r = 0.64; p = <0.001). Por lo tanto, se concluye que entre mayor sea la conducta ética del personal graduado de enfermería, los pacientes reportan mayor nivel de satisfacción durante su hospitalización. La integración del contenido sobre la conducta ética en los currículos de enfermería será una contribución fundamental. metadata Santiago Santiago, Luz mail luz.santiago@upr.edu (2022) Conducta Ética del Personal Graduado de Enfermería y su Relación con la Satisfacción del Cuidado Recibido de los Pacientes Hospitalizados, en Puerto Rico. Doctoral thesis, UNSPECIFIED.
Full text not available.Abstract
Resumen. La finalidad de este estudio fue investigar la conducta ética del personal graduado de enfermería y su relación con la satisfacción del cuidado recibido de los pacientes hospitalizados en Puerto Rico (PR). Estudio cuantitativo descriptivo correlacional. La muestra seleccionada aleatoriamente a través de la internet, consistió en 41 sujetos de 21 años o más, hospitalizados en PR antes de la Pandemia de SARS COVID 19. Luego de leer el consentimiento, aprobaban al contestar el cuestionario. Se utilizó la estadística descriptiva, medidas de variabilidad, el Programa Estadístico para las Ciencias Sociales (SPSS) versión 27 y el análisis de correlación de Pearson. 30 (73.2%) participantes eran femeninas. En la pregunta ¿Cuán satisfecho se siente usted con el cuidado recibido por parte de la/el enfermera/o que estuvo a cargo de su cuidado?, 39 (95.2%) participantes contestaron estar satisfecho en un 95.12%. 36 (87.7%) pacientes describieron la conducta ética, mayor o igual a 70%, en una escala de puntuación de 0-100. Existe una relación estadísticamente significativa entre la conducta ética del personal graduado de enfermería (M = 85.03; SD = 13.32) y el nivel de satisfacción de los pacientes hospitalizados por el cuidado recibido por estos (M = 3.46; SD = 0.67) (r = 0.64; p = <0.001). Por lo tanto, se concluye que entre mayor sea la conducta ética del personal graduado de enfermería, los pacientes reportan mayor nivel de satisfacción durante su hospitalización. La integración del contenido sobre la conducta ética en los currículos de enfermería será una contribución fundamental.
| Document Type: | Thesis (Doctoral) |
|---|---|
| Keywords: | satisfacción, cuidado, pacientes hospitalizados, conducta ética |
| Subject classification: | Subjects > Education |
| Divisions: | Ibero-american International University > Research > Doctoral Theses |
| Deposited: | 22 Sep 2023 23:30 |
| Last Modified: | 22 Sep 2023 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/2026 |
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