荟萃分析
劳动力
医学
置信区间
观察研究
斯科普斯
白天过度嗜睡
子群分析
梅德林
批判性评价
人口学
家庭医学
睡眠障碍
精神科
失眠症
内科学
替代医学
政治学
法学
病理
社会学
经济
经济增长
作者
Ken Gu,Huanwen Chen,Hong Shi,Cassandra Hua
摘要
Abstract Background Nurses face significant risks of excessive daytime sleepiness (EDS), which adversely affects workplace safety and productivity. Yet, the extent of EDS in this workforce remains inadequately characterized. Aim The aims of this systematic review were to assess the pooled prevalence of EDS among nurses. Methodology We systematically searched PubMed, Embase, Scopus, and ISI Web of Science for observational studies reporting the prevalence of EDS, as measured by the Epworth Sleepiness Scale (ESS), from database inception to May 1, 2024, with no language restrictions. Study quality was evaluated using JBI's critical appraisal tool. Pooled estimates were calculated through random‐effects meta‐analysis, with subgroup and meta‐regression analyses assessing associations between EDS prevalence and study‐level factors. Linear regression modeling was used to assess time trends. This study was registered with PROSPERO (CRD42024535109). Results We included 36 unique studies encompassing 2677 nurses from 20 countries. EDS occurred in 14.0%–55.6% of nurses. The results of the meta‐analysis showed a pooled prevalence of EDS of 32.2% (95% confidence interval [CI]: 28.5–36.1; I 2 = 92.6). Prevalence estimate did not vary substantially in terms of study‐level data (i.e., region, country income, pre/post covid era, hospital type, proportion of female nurse, average nursing experience, or proportion of married nurses). The prevalence of EDS in nurses has remained unchanged over time. Conclusions This meta‐analysis identifies a high global prevalence of EDS among nurses, affecting nearly one‐third of this workforce. The findings underscore the urgent need for targeted interventions to mitigate EDS across diverse geographic and economic contexts. Implication for nursing and nursing policy This study highlights the pervasive issue of EDS among nurses worldwide, necessitating comprehensive strategies to address this challenge across all regions, income levels, hospital settings, and demographic groups.
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