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Technological variables predictors of academic stress in nursing students in times of COVID-19

OBJECTIVE: to analyze which technological variables, derived from the use of electronic devices, predict academic stress and its dimensions in Nursing students. METHOD: analytical cross-sectional study carried out with a total of 796 students from six universities in Peru. The SISCO scale was used a...

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Autores principales: Zeladita-Huaman, Jhon Alex, Huyhua-Gutierrez, Sonia Celedonia, Castillo-Parra, Henry, Zegarra-Chapoñan, Roberto, Tejada-Muñoz, Sonia, Díaz-Manchay, Rosa Jeuna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Escola de Enfermagem de Ribeirão Preto / Universidade de São Paulo 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10202226/
https://www.ncbi.nlm.nih.gov/pubmed/37194890
http://dx.doi.org/10.1590/1518-8345.6386.3851
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author Zeladita-Huaman, Jhon Alex
Huyhua-Gutierrez, Sonia Celedonia
Castillo-Parra, Henry
Zegarra-Chapoñan, Roberto
Tejada-Muñoz, Sonia
Díaz-Manchay, Rosa Jeuna
author_facet Zeladita-Huaman, Jhon Alex
Huyhua-Gutierrez, Sonia Celedonia
Castillo-Parra, Henry
Zegarra-Chapoñan, Roberto
Tejada-Muñoz, Sonia
Díaz-Manchay, Rosa Jeuna
author_sort Zeladita-Huaman, Jhon Alex
collection PubMed
description OBJECTIVE: to analyze which technological variables, derived from the use of electronic devices, predict academic stress and its dimensions in Nursing students. METHOD: analytical cross-sectional study carried out with a total of 796 students from six universities in Peru. The SISCO scale was used and four logistic regression models were estimated for the analysis, with selection of variables in stages. RESULTS: among the participants, 87.6% had a high level of academic stress; time using the electronic device, screen brightness, age and sex were associated with academic stress and its three dimensions; the position of using the electronic device was associated with the total scale and the stressors and reactions dimensions. Finally, the distance between the face and the electronic device was associated with the total scale and size of reactions. CONCLUSION: technological variables and sociodemographic characteristics predict academic stress in nursing students. It is suggested to optimize the time of use of computers, regulate the brightness of the screen, avoid sitting in inappropriate positions and pay attention to the distance, in order to reduce academic stress during distance learning.
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spelling pubmed-102022262023-05-23 Technological variables predictors of academic stress in nursing students in times of COVID-19 Zeladita-Huaman, Jhon Alex Huyhua-Gutierrez, Sonia Celedonia Castillo-Parra, Henry Zegarra-Chapoñan, Roberto Tejada-Muñoz, Sonia Díaz-Manchay, Rosa Jeuna Rev Lat Am Enfermagem Artículo Original OBJECTIVE: to analyze which technological variables, derived from the use of electronic devices, predict academic stress and its dimensions in Nursing students. METHOD: analytical cross-sectional study carried out with a total of 796 students from six universities in Peru. The SISCO scale was used and four logistic regression models were estimated for the analysis, with selection of variables in stages. RESULTS: among the participants, 87.6% had a high level of academic stress; time using the electronic device, screen brightness, age and sex were associated with academic stress and its three dimensions; the position of using the electronic device was associated with the total scale and the stressors and reactions dimensions. Finally, the distance between the face and the electronic device was associated with the total scale and size of reactions. CONCLUSION: technological variables and sociodemographic characteristics predict academic stress in nursing students. It is suggested to optimize the time of use of computers, regulate the brightness of the screen, avoid sitting in inappropriate positions and pay attention to the distance, in order to reduce academic stress during distance learning. Escola de Enfermagem de Ribeirão Preto / Universidade de São Paulo 2023-05-12 /pmc/articles/PMC10202226/ /pubmed/37194890 http://dx.doi.org/10.1590/1518-8345.6386.3851 Text en Esta licencia permite a otros distribuir, mezclar, ajustar y construir a partir de su obra, incluso con fines comerciales, siempre que le sea reconocida la autoría de la creación original. Esta es la licencia más servicial de las ofrecidas. Recomendada para una máxima difusión y utilización de los materiales sujetos a la licencia. https://creativecommons.org/licenses/by/4.0/Este es un artículo de acceso abierto distribuido bajo los términos de la Licencia Creative Commons CC BY.
spellingShingle Artículo Original
Zeladita-Huaman, Jhon Alex
Huyhua-Gutierrez, Sonia Celedonia
Castillo-Parra, Henry
Zegarra-Chapoñan, Roberto
Tejada-Muñoz, Sonia
Díaz-Manchay, Rosa Jeuna
Technological variables predictors of academic stress in nursing students in times of COVID-19
title Technological variables predictors of academic stress in nursing students in times of COVID-19
title_full Technological variables predictors of academic stress in nursing students in times of COVID-19
title_fullStr Technological variables predictors of academic stress in nursing students in times of COVID-19
title_full_unstemmed Technological variables predictors of academic stress in nursing students in times of COVID-19
title_short Technological variables predictors of academic stress in nursing students in times of COVID-19
title_sort technological variables predictors of academic stress in nursing students in times of covid-19
topic Artículo Original
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10202226/
https://www.ncbi.nlm.nih.gov/pubmed/37194890
http://dx.doi.org/10.1590/1518-8345.6386.3851
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