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Network Analysis of Comorbid Anxiety and Insomnia Among Clinicians with Depressive Symptoms During the Late Stage of the COVID-19 Pandemic: A Cross-Sectional Study

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Last modified
  • 07/03/2025
Type of Material
Authors
    Hong Cai, University of MacauYan-Jie Zhao, University of MacauXiaomeng Xing, Capital Medical UniversityTengfei Tian, Capital Medical UniversityWang Qian, Capital Medical UniversitySixiang Liang, Capital Medical UniversityZhe Wang, Capital Medical UniversityTeris Cheung, Hong Kong Polytechnic UniversityZhaohui Su, Southeast UnivYilang Tang, Emory UniversityChee H Ng, University of MelbourneSha Sha, Capital Medical UniversityYu-Tao Xiang, University of Macau
Language
  • English
Date
  • 2022-01-01
Publisher
  • DOVE MEDICAL PRESS LTD
Publication Version
Copyright Statement
  • © 2022 Cai et al.
License
Final Published Version (URL)
Title of Journal or Parent Work
Volume
  • 14
Start Page
  • 1351
End Page
  • 1362
Grant/Funding Information
  • This study was supported by the Beijing Municipal Administration of Hospitals Incubating Program (PX2018063).
Abstract
  • Background: A high proportion of clinicians experienced common anxiety, insomnia and depression during the COVID-19 pandemic. This study examined the item-level association of comorbid anxiety and insomnia symptoms among clinicians who suffered from depressive symptoms during the late stage of the COVID-19 pandemic using network analysis (NA). Methods: Clinicians with depressive symptoms (with a Patients Health Questionnaire (PHQ-9) total score of 5 and above) were included in this study. Anxiety and insomnia symptoms were measured using the Generalized Anxiety Disorder Scale-7-item (GAD-7) and Insomnia Severity Index (ISI), respectively. Network analysis was conducted to investigate the network structure, central symptoms, bridge symptoms, and network stability of these disturbances. Expected influence (EI) was used to measure the centrality of index. Results: Altogether, 1729 clinicians were included in this study. The mean age was 37.1 [standard deviation (SD)=8.04 years], while the mean PHQ-9 total score was 8.42 (SD=3.33), mean GAD-7 total score was 6.45 (SD=3.13) and mean ISI total score was 8.23 (SD=5.26). Of these clinicians, the prevalence of comorbid anxiety symptoms (GAD-7≥5) was 76.8% (95% CI 74.82–78.80%), while the prevalence of comorbid insomnia symptoms (ISI≥8) was 43.8% (95% CI: 41.50–46.18%). NA revealed that nodes ISI7 (“Interference with daytime functioning”) (EI=1.18), ISI4 (“Sleep dissatisfaction”) (EI=1.08) and ISI5 (“Noticeability of sleep problem by others”) (EI=1.07) were the most central (influential) symptoms in the network model of comorbid anxiety and insomnia symptoms in clinicians. Bridge symptoms included nodes PHQ3 (“Sleep”) (bridge EI=0.55) and PHQ4 (“Fatigue”) (bridge EI=0.49). Gender did not significantly influence the network structure, but “having the experience of caring for COVID-19 patients” significantly influenced the network structure. Conclusion: Central symptoms and key bridge symptoms identified in this NA should be targeted in the treatment and preventive measures for clinicians suffering from comorbid anxiety, insomnia and depressive symptoms during the late stage of the COVID-19 pandemic.
Author Notes
  • Sha Sha, The National Clinical Research Center for Mental Disorders & Beijing Key Laboratory of Mental Disorders Beijing Anding Hospital & the Advanced Innovation Center for Human Brain Protection, Capital Medical University, School of Mental Health, Beijing, People’s Republic of China, Email: sarahbon@163.com
Keywords
Research Categories
  • Health Sciences, Public Health
  • Health Sciences, Mental Health
  • Health Sciences, Nursing

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