工作投入
心理干预
大流行
逻辑回归
护理部
医学
工作(物理)
潜在类模型
2019年冠状病毒病(COVID-19)
员工敬业度
横断面研究
心理学
内科学
统计
疾病
传染病(医学专业)
病理
工程类
机械工程
公共关系
数学
政治学
作者
Yizhen Yin,Mengmeng Lyu,Man Zuo,Shuyu Yao,Hui Li,Juan Li,Jie Zhang,Jingping Zhang
摘要
Abstract Aim The aim was to examine the subgroups of work engagement in frontline nurses during the COVID‐19 pandemic. Background The pandemic may affect the work engagement of nurses who have direct contact with infected patients and lead to a poor quality of care. Identifying classification features of work engagement and tailoring interventions to support frontline nurses is imperative. Design This study utilized a cross‐sectional study design. Methods Three hundred fifty‐five nurses were enrolled in this cross‐sectional study from 14 February to 15 April 2020. A latent profile analysis was performed to identify classification features of work engagement. Multiple logistic regression analyses were used to examine predictors of profile membership. Results A four‐profile model provided the best fit. The four profiles were titled ‘low work engagement’ ( n = 99), ‘high vigour‐low dedication and absorption’ ( n = 58), ‘moderate work engagement’ ( n = 63) and ‘high work engagement’ ( n = 135). A regression analysis suggested that young nurses and nurses who were the only children of their family were more likely to be in the ‘low work engagement’ and ‘high vigour‐low dedication and absorption’ groups. Conclusion This study highlights the importance of tailoring interventions for frontline supporting nurses by considering their distinct work engagement patterns, especially during the COVID‐19 pandemic, to improve the promotion of work satisfaction and quality of care. Impact This was the first study to explore the latent profiles of work engagement in frontline nurses during the COVID‐19 pandemic. Over 40% of nurses were in the ‘low work engagement’ and ‘high vigour‐low dedication and absorption’ groups and reported low levels of work engagement. Understanding different patterns of work engagement in frontline nurses can help nursing managers provide emotional, material and organizational support based on the features of each latent profile, which may improve the quality of care and patient safety.
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