Suppr超能文献

新冠后综合征长期存在的护士失眠风险因素的识别。

Identification of the risk factors for insomnia in nurses with long COVID-19.

作者信息

Ye Lingxiao, Zhang Feng, Wang Lili, Chen Yufei, Shi Jiaran, Cai Tingting

机构信息

Department of Nursing, Ningbo Medical Centre LiHuili Hospital, Ningbo University, Ningbo, China.

School of Nursing, Fudan University, 305 Fenglin Road, Shanghai, 200032, China.

出版信息

BMC Nurs. 2024 Aug 3;23(1):532. doi: 10.1186/s12912-024-02212-4.

Abstract

PURPOSE

To investigate the prevalence of insomnia among nurses with long COVID-19, analyze the potential risk factors and establish a nomogram model.

METHODS

Nurses in Ningbo, China, were recruited for this study. General demographic information and insomnia, burnout, and stress assessment scores were collected through a face-to face questionnaire survey administered at a single center from March to May 2023. We used LASSO regression to identify potential factors contributing to insomnia. Then, a nomogram was plotted based on the model chosen to visualize the results and evaluated by receiver operating characteristic curves and calibration curves.

RESULTS

A total of 437 nurses were recruited. 54% of the nurses had insomnia according to the Insomnia Severity Index (ISI) score. Eleven variables, including family structure, years of work experience, relaxation time, respiratory system sequelae, nervous system sequelae, others sequelae, attitudes toward COVID-19, sleep duration before infection, previous sleep problems, stress, and job burnout, were independently associated with insomnia. The R-squared value was 0.464, and the area under the curve was 0.866. The derived nomogram showed that neurological sequelae, stress, job burnout, sleep duration before infection, and previous sleep problems contributed the most to insomnia. The calibration curves showed significant agreement between the nomogram models and actual observations.

CONCLUSION

This study focused on insomnia among nurses with long COVID-19 and identified eleven risk factors related to nurses' insomnia. A nomogram model was established to illustrate and visualize these factors, which will be instrumental in future research for identifying nurses with insomnia amid pandemic normalization and may increase awareness of the health status of healthcare workers with long COVID-19.

摘要

目的

调查长期感染新冠病毒的护士中失眠的患病率,分析潜在风险因素并建立列线图模型。

方法

本研究招募了中国宁波的护士。2023年3月至5月在单一中心通过面对面问卷调查收集了一般人口统计学信息以及失眠、倦怠和压力评估得分。我们使用LASSO回归来确定导致失眠的潜在因素。然后,根据所选模型绘制列线图以直观呈现结果,并通过受试者工作特征曲线和校准曲线进行评估。

结果

共招募了437名护士。根据失眠严重程度指数(ISI)得分,54%的护士存在失眠问题。包括家庭结构、工作年限、放松时间、呼吸系统后遗症、神经系统后遗症、其他后遗症、对新冠病毒的态度、感染前睡眠时间、既往睡眠问题、压力和职业倦怠在内的11个变量与失眠独立相关。R平方值为0.464,曲线下面积为0.866。所推导的列线图显示,神经系统后遗症、压力、职业倦怠、感染前睡眠时间和既往睡眠问题对失眠的影响最大。校准曲线显示列线图模型与实际观察结果之间具有显著一致性。

结论

本研究聚焦于长期感染新冠病毒的护士中的失眠问题,并确定了与护士失眠相关的11个风险因素。建立了列线图模型以阐释和直观呈现这些因素,这将有助于未来在疫情常态化背景下识别失眠护士的研究,并可能提高对长期感染新冠病毒的医护人员健康状况的认识。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/904d/11298081/7e6be5c8c452/12912_2024_2212_Fig4_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验