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Frontiers in Psychiatry logoLink to Frontiers in Psychiatry
. 2021 Jun 15;12:567381. doi: 10.3389/fpsyt.2021.567381

Prevalence and Risk Factors of Mental Health Problems Among Healthcare Workers During the COVID-19 Pandemic: A Systematic Review and Meta-Analysis

Qinjian Hao 1,†,, Dahai Wang 2,, Min Xie 3, Yiguo Tang 3, Yikai Dou 3, Ling Zhu 3, Yulu Wu 3, Minhan Dai 3, Hongmei Wu 1,*, Qiang Wang 3,*
PMCID: PMC8239157  PMID: 34211406

Abstract

Objective: The purpose of this meta-analysis was to summarize the prevalence and risk factors of mental health problems among healthcare workers during the COVID-19 pandemic.

Methods: We applied an optimized search strategy across the PubMed, EMBASE, Scopus, PsycINFO, and four Chinese databases, with hand searching supplemented to identify relevant surveys. Studies were eligible for inclusion if they were published in peer-reviewed literature and used a validated method to assess the prevalence and risk factors of mental health problems among healthcare workers during the COVID-19 pandemic. Heterogeneity was quantified using Q statistics and the I2 statistics. The potential causes of heterogeneity were investigated using subgroup analysis and meta-regression analysis. Sensitivity analysis was performed to examine the robustness of the results.

Results: We pooled and analyzed data from 20 studies comprising 10,886 healthcare workers. The prevalence of depression, anxiety, insomnia, post-traumatic stress symptoms, phobia, obsessive–compulsive symptoms, and somatization symptoms was 24.1, 28.6, 44.1, 25.6, 35.0, 16.2, and 10.7%, respectively. Female and nurses had a high prevalence of depression and anxiety. Frontline healthcare workers had a higher prevalence of anxiety and a lower prevalence of depression than the those in the second-line. Furthermore, the proportion of moderate–severe depression and anxiety is higher in the frontline. Additionally, four studies reported on risk factors of mental health problems.

Conclusions: In this systematic review, healthcare workers have a relatively high prevalence of depression, anxiety, insomnia, post-traumatic stress symptoms, phobia, obsessive–compulsive symptoms, and somatization symptoms during the COVID-19 pandemic, and focus should be on the healthcare workers at high risk of mental problems. Mental health problems in healthcare workers should be taken seriously, and timely screening and appropriate intervention for the high-risk group are highly recommended.

Systematic Review Registration:https://www.crd.york.ac.uk/prospero/display_record.php?ID=CRD42020179189.

Keywords: coronavirus disease, healthcare workers, mental health, prevalence, risk factors, meta-analysis

Introduction

At the end of 2019, an emerging infectious disease named coronavirus disease 2019 (COVID-19) caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) broke out and caused a global pandemic that put healthcare workers (HCWs) across the world under unprecedented challenges and huge psychological impact (1, 2). In the fight against COVID-19, HCWs played a leading role. The HCWs were in the vanguard of the battle to combat COVID-19, providing medical services to the most affected areas (3). The mental health of HCWs was greatly challenged during the Middle East respiratory syndrome (MERS) and severe acute respiratory syndrome (SARS) (47). As generally known, COVID-19 is more contagious than SARS and MERS (8, 9) and can bring HCWs on the frontline mental health problems (1014). Similarly, during the COVID-19 pandemic, HCWs encountered a huge psychological burden, with a high prevalence of depression, anxiety, insomnia, and distress (15, 16). Moreover, frontline HCWs, in fighting COVID-19, have more severe degrees of mental health symptoms than other HCWs (15, 17). Beyond the effects of mental health problems on individuals, the mental health problems of HCWs may link to poor-quality patient care and increased medical errors (18, 19). A reliable estimate of the prevalence of mental health problems among HCWs during the COVID-19 pandemic is of vital importance to its prevention, identification, and treatment. To the best of our knowledge, there has not been a meta-analysis of the prevalence of mental health problems and risk factors among HCWs during the COVID-19 pandemic published in the literature. We conducted a systematic review and meta-analysis of the prevalence of mental health problems and risk factors among HCWs during the COVID-19 pandemic to identify at-risk HCWs and provide timely assistance and intervention.

Methods

Protocol

The protocol of our study has been registered on the International Prospective Register of Systematic Reviews (PROSPERO, CRD42020179189). The review methods are described in accordance with the Preferred Reporting Items for Systematic Reviews and Meta-analyses guidelines (20) and the Meta-analysis of Observational Studies in Epidemiology criteria (21).

Search Strategy and Study Eligibility

The search was performed in all fields in the PubMed, EMBASE, Scopus, PsycINFO, and four Chinese databases, including Chinese Biomedical Literature Database, China National Knowledge Infrastructure, China Science and Technology Journal Database, and Wanfang database, with no language restrictions, from January 1, 2020 (subsequent to the emergence of COVID-19 in China) to April 14, 2020. The detailed search terms and full strategies are available in Supplementary Material 1. Additionally, a manual search was performed by reviewing the reference lists of the related articles by two investigators. Where necessary, we contacted the authors for any additional data.

Population-based or hospital-based studies fulfilling the following criteria were included in the present analysis: (1) the HCWs including doctors, nurses, and other medical personnel who were directly or indirectly involved in the diagnosis, treatment, or care of patients with confirmed or suspected cases of COVID-19, (2) studies reported the prevalence or risk factors of mental health problems (depression, anxiety, insomnia, etc.) among HCWs which were assessed by structured interviews or validated questionnaires, (3) cross-sectional or cohort studies, and (4) published in a peer-reviewed journal.

Studies without original data and studies in which the data could not be reliably extracted after corresponding with the authors were excluded. If the same sample was reported in more than one study, the larger sample size with the longest follow-up duration will be included.

Data Extraction and Quality Assessment

Two authors independently extracted the data, reported by the selected articles, and documented the following details in a standardized table: general information of publication (first author, year and location of the study, study period, and language), study design (cohort or cross-sectional), survey method, sampling method, study sample origin (population-based or hospital-based), sample size, number of HCWs, number of female HCWs, number of mental health problems among HCWs, instrument used to assess mental health problems, risk factors of each mental health problem, and the effects of each risk factor. The methodological quality of the included cross-sectional studies was assessed using an 11-item checklist which was recommended by the Agency for Healthcare Research and Quality (AHRQ). The answer to each item is “no,” “unclear,” and “yes,” respectively. Study quality was defined as follows: low quality (0–3 yes), moderate quality (4–7 yes), and high quality (8–11 yes). Any discrepancies will be resolved by consensus, and if necessary, a third reviewer will be consulted to arbitrate.

Data Synthesis and Analysis

The pooled prevalence of each mental health problem and its 95% confidence intervals (CI) were calculated using random-effects meta-analysis that accounted for the heterogeneity of studies (22). The heterogeneity of studies was assessed by Q-test and I2. I2 > 50% and p < 0.05 in the Q-test were interpreted as the presence of significant heterogeneity (23, 24). When significant heterogeneity was identified, the source of heterogeneity was explored by subgroup analysis and meta-regression. Subgroup analyses were conducted with stratification by sample size, staff type, position, and gender. Sensitivity analysis using the leave-one-out method was performed to examine the robustness of the results. The potential publication bias was evaluated by funnel plot and the Egger linear regression test (25, 26). The statistical tests were two-sided and used a significance threshold of P < 0.05. We performed the statistical analysis in R (version 4.0.0; https://www.r-project.org/). A systematic narrative synthesis will be conducted if it is impossible to handle any meta-analysis.

Results

Study Characteristics

According to the search strategy, a total of 1,898 records were retrieved, and 20 records were finally included (Figure 1). All studies were of a cross-sectional design, involving a total of 10,886 HCWs in 12,788 individuals for the quantitative synthesis; 70% of all participants were women, and 80% of the research were completed by February 2020. Nineteen studies took place in China, plus one in Singapore. Five studies were published in English, and the remaining 15 studies were published in Chinese. The median of participants per study was 639 (range, 37–2,299). Various instruments were utilized. For depression, the most commonly used tools were the Zung Self-Rating Depression Scale, the nine-item Patient Health Questionnaire, the Symptom Checklist-90 (SCL-90), and the 21-item Depression, Anxiety, and Stress Scale (DASS-21). For anxiety, the Zung Self-Rating Anxiety Scale, the SCL-90, and the seven-item Generalized Anxiety Disorder were used. For insomnia, the seven-item Insomnia Severity Index and the Pittsburgh Sleep Quality Index were used. For post-traumatic stress symptoms (PTSS), the Post-traumatic Stress Disorder Self-Rating Scale (PTSD-SS), the Impact of Event Scale—Revised version (IES–R), and the PTSD Checklist—Civilian version (PCL-C) were used. Obsessive–compulsive symptoms, somatization symptoms, and phobia were assessed by the SCL-90 and the 90-item Symptom Checklist—Revised. Eleven studies included frontline HCWs only, six included both frontline and second-line HCWs, and three included second-line HCWs only. When evaluated by the AHRQ assessment criteria, one study received eight points, one received seven points, four received six points, four received five points, nine received four points, and one received three points. Most studies are of moderate quality, with methodological quality scores ranging from 4 to 7. The detailed characteristics of the included studies are shown in Table 1.

Figure 1.

Figure 1

Preferred reporting items for systematic reviews and meta-analyses flow diagram of included studies (20).

Table 1.

Characteristics of the included studies in this systematic review and meta-analysis.

ID References Country Age, years (mean ± SD)/% Total number No. of female No. of HCWs Survey method Population Instrument Start date End date Position Sampling method AHRQ checklist
1 Cai and Qin (27) China 32.48 ± 2.03 48 37 48 Unknown Hospital-Based SCL-90 Unknown 7-Feb First line Unknown 4 yes
2 Cao et al. (28) China 32.8 ± 9.6 37 29 37 Unknown Hospital-Based PHQ-9 Unknown 26-Feb First line Cluster 4 yes
3 Duan et al. (29) China 32.82 ± 6.41 642 506 530 Online survey Hospital-Based PHQ-9, GAD-7 14-Feb 16-Feb Mixed Unknown 4 yes
4 He et al. (30) China 38.7 ± 6.3 360 141 256 Online survey Population-Based PSQI 24-Jan 2-Mar First line Unknown 4 yes
5 Huang et al. (31) China 32.6 ± 6.2 230 187 230 Online survey Hospital-Based SAS, PTSD-SS 7-Feb 14-Feb First line Cluster 4 yes
6 Iiu et al. (32) China 29.00 ± 5.88 1,097 1,078 1,097 Online survey Hospital-Based PHQ-9, GAD-7, ISI-7, SQR-20 1-Feb 18-Feb Second line Unknown 5 yes
7 Lai et al. (15) China <40 (80.5%) 1,257 964 1,257 Unknown Hospital-Based PHQ-9, GAD-7, ISI-7, IES-R 29-Jan 3-Feb Mixed Cluster 7 yes
8 Li et al. (33) China >30 (46.6%) 205 175 205 Online survey Hospital-Based PCL-C 8-Feb 11-Feb First line Convenience 6 yes
9 Lu et al. (17) China <40 (78%) 2,299 1,785 2,042 Unknown Hospital-Based HAMD, HAMA 25-Feb 26-Feb Mixed Unknown 6 yes
10 Qi et al. (34) China ≤ 40 (79%) 400 295 400 Unknown Hospital-Based SDS, SAS Unknown 5-Feb First line Convenience 4 yes
11 Sun et al. (35) China <40 (97.3%) 110 102 110 Unknown Hospital-Based SCL-90 Unknown 25-Feb First line Unknown 3 yes
12 Tan et al. (36) Singapore 31 (32, 3441) 470 321 296 Unknown Hospital-Based DASS-21, IES-R 19-Feb 13-Mar First line Unknown 6 yes
13 Tang et al. (16) China 33.6 ± 6.39 44 34 44 Unknown Hospital-Based SDS, SAS, PSS-10 Unknown Unknown First line Convenience 4 yes
14 Wu et al. (42) China 30.84 ± 4.52 106 85 106 Online survey Hospital-Based SAS, PSQI Unknown 2-Feb First line Convenience 5 yes
15 Xiao et al. (41) China <40 (84.3%) 423 293 423 Online survey Hospital-Based SDS, SAS 6-Feb 8-Feb Second line Random 5 yes
16 Xu and Zhang (40) China 31.28 ± 2.53 41 37 41 Online survey Hospital-Based SCL-90 Unknown 29-Jan First line Cluster 4 yes
17 Xu et al. (39) China 34.79 ± 7.14 360 291 360 Online survey Hospital-Based SDS, SAS 7-Feb 15-Feb Second line Unknown 5 yes
18 Ye et al. (43) China ≤ 35 (67.8%) 2,104 1,644 2,104 Online survey Hospital-Based GAD-7 29-Jan 5-Feb Mixed Convenience 6 yes
19 Zhang et al. (38) China 18–60 (96.3%) 2,182 678 927 Online survey Population-Based PHQ-2, GAD-2, ISI-7, SCL-90-R 19-Feb 6-Mar Mixed Unknown 8 yes
20 Zheng et al. (37) China <46 (87.5%) 373 278 373 Online survey Hospital-Based PHQ-9 18-Feb 21-Feb Mixed RS 4 yes

HCWs, healthcare workers; PHQ-9, nine-item Patient Health Questionnaire; DASS-21, 21-item Depression, Anxiety, and Stress Scale; SDS, Zung Self-Rating Depression Scale; HAMD, Hamilton Depression Scale; GAD-7, seven-item Generalized Anxiety Disorder; SAS, Zung Self-Rating Anxiety Scale; HAMA, Hamilton Anxiety Scale; ISI-7, seven-item Insomnia Severity Index; PSQI, Pittsburgh Sleep Quality Index; SQR-20, Self-Reporting Questionnaires; IES-R, Impact of Event Scale—Revised; PCL-C, PTSD Checklist—Civilian Version; PTSD-SS, Post-traumatic Stress Disorder Self-Rating Scale; SCL-90, Symptom Checklist 90; SCL-90-R, Symptom Checklist 90—Revised; AHRQ Checklist, The Agency for Healthcare Research and Quality Methodology Checklist.

Prevalence of Mental Health Problems in HCWs

Prevalence of Depressive Symptom

Fourteen studies (1517, 2729, 32, 3441) reported that the pooled prevalence of depressive symptom among HCWs was 24.1% (95% CI: 16.2–32.1%, I2 = 99%, P < 0.01), with a range from 4.2 to 50.4% (Figure 2A). A subgroup analysis revealed that the second-line HCWs (36.2%, 95% CI: 28.9–43.5%, I2 = 94%, P < 0.01) and female HCWs (38.6%, 95% CI: 9.9–67.2%, I2 = 99%, P < 0.01) had a higher prevalence of depression symptom than frontline and male HCWs separately (Figure 3). About 9.6% of HCWs were identified by instruments as individuals with moderate to severe depression (Figure 4A). Among them, the prevalence of moderate to severe depression in frontline HCWs (14.6%, 95% CI: 6.3–23.0%, I2 = 91%, P < 0.01) is higher than those in the second-line (8.7%, 95% CI: 3.9–13.4%, I2 = 94%, P < 0.01; Figure 4B).

Figure 2.

Figure 2

Forest plot for the meta-analysis of the prevalence of depression and anxiety among healthcare workers. (A) Forest plot of the prevalence of depression. (B) Forest plot of the prevalence of anxiety.

Figure 3.

Figure 3

Subgroup analysis of the prevalence of depression among healthcare workers. (A) Subgroup analysis stratification by sample size. (B) Subgroup analysis stratification by staff type. (C) Subgroup analysis stratification by position. (D) Subgroup analysis stratification by gender.

Figure 4.

Figure 4

Forest plot for the meta-analysis of the prevalence of moderate to severe depression and subgroup analysis among healthcare workers. (A) Forest plot of the prevalence of moderate to severe depression. (B) Forest plot of moderate to severe depression stratification by position.

Prevalence of Anxiety Symptom

Sixteen studies (1517, 27, 29, 31, 32, 3436, 3843) reported that the pooled prevalence of anxiety among HCWs was 28.6% (95% CI: 22.4–36.4%, I2 = 99%, P < 0.01), with a range from 10.8 to 87.5% (Figure 2B). In the subgroup analysis stratified by position, the frontline HCWs (33.5%, 95% CI: 23.5–47.7%, I2 = 98%, P < 0.01) had a higher prevalence of anxiety than the second-line HCWs (Figure 5C). Of the 16 studies, seven studies reported that the prevalence of anxiety is higher in nurses (36.8%, 95% CI: 26.8–50.5, P < 0.001) than that in the mixed staff type including nurses and doctors (Figure 5B). In the subgroup stratified by gender, female HCWs (26.6%, 95% CI: 13.1–53.9%, I2 = 98%, P < 0.01) had a higher prevalence of anxiety than male HCWs (Figure 5D). About 7.2% of HCWs were identified by instruments as individuals with moderate to severe anxiety (Figure 6A). Similar to the symptoms of depression, the anxiety symptoms of frontline HCWs are more severe than that of the second-line HCWs (Figure 6B).

Figure 5.

Figure 5

Subgroup analysis of the prevalence of anxiety among healthcare workers. (A) Subgroup analysis stratification by sample size. (B) Subgroup analysis stratification by staff type. (C) Subgroup analysis stratification by position. (D) Subgroup analysis stratification by gender.

Figure 6.

Figure 6

Forest plot for the meta-analysis of the prevalence of moderate to severe anxiety and subgroup analysis among healthcare workers. (A) Forest plot of the prevalence of moderate to severe anxiety. (B) Forest plot of moderate to severe anxiety stratification by position.

Prevalence of Insomnia

Five studies (15, 30, 32, 38, 42) reported that the pooled prevalence of insomnia among HCWs was 44.1% (95% CI: 31.3–57.0%, I2 = 98%, P < 0.01), with a range from 21.3 to 65.2% (Figure 7A). About 11.8% of the HCWs were identified by instruments to be with moderate to severe anxiety (Figure 7B).

Figure 7.

Figure 7

Forest plot for the meta-analysis of the prevalence of other mental health problems among healthcare workers. (A) Forest plot of the prevalence of insomnia. (B) Forest plot of the moderate to severe insomnia. (C) Forest plot of the prevalence of distress. (D) Forest plot of the prevalence of obsessive–compulsive symptoms. (E) Forest plot of the prevalence of somatization symptoms. (F) Forest plot of the prevalence of phobia.

Prevalence of PTSS

Five studies (15, 3133, 36) reported that the pooled prevalence of PTSS among the HCWs was 25.6% (95% CI: 11.8–39.4%, I2 = 99%, P < 0.01), with a range from 5.7 to 50.7% (Figure 7C).

Other Mental Health Problems

Four studies (27, 35, 38, 40) evaluated obsessive–compulsive symptoms (Figure 7D), somatization symptoms (Figure 7E), and phobia (Figure 7F), and their prevalence were 16.2% (95% CI: 3.0–29.5%, I2 = 93%, P < 0.01), 10.7% (95% CI: 1.9–19.6%, I2 = 88%, P < 0.01), and 35.0% (95% CI: 8.6–61.4%, I2 = 98%, P < 0.01) separately.

Risk Factors of Mental Health Problems

A total of four studies reported on the risk factors of mental health problems (15, 17, 29, 38). Due to a lack of consistency in methods, outcome metrics, and control groups, a narrative synthesis of risk factors was conducted, with the main findings tabulated (Table 2). Poor health status/organic diseases, female, working in a secondary hospital, intermediate technical title, and frontline/high-risk contact with COVID-19 were the risk factors for depression. Compared with non-medical staff working in hospitals, the occupational attributes of medical staff were a protective factor. For anxiety, the risk factors were as follows: fear of COVID-19 infection, poor health status/organic diseases, female, working in a secondary hospital, intermediate technical title, frontline/high-risk contact with COVID-19, and living in rural areas. Similar to the protective factor of depression, the professional attribute of medical staff was the protective factor relative to non-medical staff working in hospitals. Working in frontline, living in rural areas, contact with COVID-19 patients, and organic diseases were the risk factors of insomnia. Female, intermediate technical title, and frontline were the risk factors of PTSS, while working outside Hubei province was the protective factor. Living in rural areas, organic diseases, and contact with patients with COVID-19 were the risk factors of obsessive–compulsive symptoms. The risk factors for somatization symptoms were living in rural areas and organic diseases.

Table 2.

Risk factors of mental health problems among healthcare workers during the COVID-19 pandemic.

References No. of HCWs Method Effects Risk factors for depression Risk factors for anxiety Risk factors for insomnia Risk factors for distress Risk factors for obsessive–compulsive symptoms Risk factors for somatization symptoms
Duan et al. (29) 530 Multivariable logistic regression analysis Unadjusted OR Poor health status, 3.16 (2.03–4.91), p < 0.001
Frontline medical staff, 0.37 (0.25–0.7), p = 0.001 (comparison: non-medical staff in the hospital)
General medical staff, 0.42 (0.31–0.79), p = 0.003 (comparison: non-medical staff in the hospital)
Worrying about covid-19 infection, 1.86 (1.59–2.17), p < 0.001
Poor health status, 2.84 (1.85–4.36), p < 0.001
Frontline medical staff, 0.37 (0.21–0.64), p = 0.005 (comparison: non-medical staff in the hospital)
General medical staff, 0.59 (0.36–0.95), p = 0.031 (comparison: non-medical staff in the hospital)
None None None None
Lai et al. (15) 1257 Multivariable logistic regression analysis Adjusted OR Female, 1.94 (1.26–2.98), p = 0.003
Secondary hospital, 1.65 (1.17–2.34), p = 0.004
Intermediate technical title, 1.77 (1.25–2.49), p = 0.001(comparison: junior technical title)
Frontline, 1.52 (1.11–2.09), p 0.01
Female, 1.69 (1.23–2.33), p = 0.001
Secondary hospital, 1.43 (1.08–1.90), p = 0.01
Intermediate technical title, 1.82 (1.38–2.39), p < 0.001 (comparison: junior technical title)
Frontline, 1.57 (1.22–2.02), p < 0.001
Frontline, 2.97 (1.92–4.60), p < 0.001 Female, 1.45 (1.08–1.96),
p = 0.01
Intermediate technical title, 1.94 (1.48–2.55), p < 0.001 (comparison: junior technical title)
Frontline, 1.60 (1.25–2.04), p < 0.001
Outside Hubei province, 0.62 (0.43–0.88), p = 0.008
None None
Lu et al. (17) 2042 Ordinal logistic regression model Unadjusted OR High-risk contact, 2.016 (1.102–3.685), p = 0.023 High-risk contact, 2.062 (1.349–3.153), p = 0.001 None None None None
Zhang et al. (38) 927 Multivariable logistic regression analysis Unadjusted OR Female, 1.85 (1.11–3.08), 0.02
Organic diseases, 2.51 (1.51–4.18), p < 0.01
Female, 1.80 (1.10–2.95), p = 0.02
Living in rural areas, 1.88 (1.09–3.21), p = 0.02
Contact with COVID-19 patients, 2.06 (1.28–3.32), p < 0.01
Organic diseases, 2.85 (1.73–4.68), p < 0.01
Living in rural areas, 2.18 (1.42–3.35), p < 0.01
Contact with COVID-19 patients, 2.53 (1.74–3.68), p < 0.01
Organic diseases, 3.39 (2.20–5.22), p < 0.01
None Living in rural areas, 2.49 (1.21, 5.11), p = 0.01
Contact with COVID-19 patients, 3.27 (1.75–6.11),
p < 0.01
Organic diseases, 2.24 (1.07–4.71), p = 0.03
Living in rural areas, 4.78 (1.55–14.76), p < 0.01
Organic diseases, 7.89 (2.75–22.62), p < 0.01

Heterogeneity Analysis

To identify potential sources of heterogeneity, a subgroup analysis was conducted. However, high heterogeneity was not significantly explained by sample size, staff type, position, and gender (Figures 3, 5). In the univariate meta-regression analyses of the prevalence of depression, a significant estimate was found for the covariate of instruments with R2 (amount of heterogeneity accounted for) = 67.75%, P < 0.0001. No significant estimates were found for the covariates of sample size (less or more than 300), hospital (survey in one or more hospital), country (China or another country), position (frontline or second-line), or staff type (nurses or mixed with nurses and doctors). The meta-regression showed that country was significantly associated with the prevalence of anxiety (R2 = 4.63%, P < 0.0001); however, it was not significantly correlated with instrument (R2 = 18.11%, P = 0.0533), sample size (R2 = 19.56%, P = 0.1469), hospital (R2 = 0.00%, P = 0.7880), position (R2 = 11.11%, P = 0.1744), and staff type (R2 = 0.00%, P = 0.1030). A sensitivity analysis was conducted by excluding, one by one, the included studies that demonstrated no substantial alteration (Supplementary Tables 1, 2: Supplementary Figures 1, 2).

Publication Bias

The funnel plot for the primary outcomes seems somewhat asymmetrical (Supplementary Figures 3, 4). However, the Egger's linear regression test of funnel plot asymmetry was performed, and it indicated no significant asymmetry (Pdepression = 0.3001, Panxiety = 0.1045).

Discussion

The present study investigates the prevalence and risk factors of mental health problems among HCWs during the COVID-19 pandemic based on 10,886 HCWs summarized in 20 cross-sectional studies. According to our research, the prevalence of depression, anxiety, insomnia, PTSS, phobia, obsessive–compulsive symptoms, and somatization symptoms was 24.1, 28.6, 44.1, 25.6, 35.0, 16.2, and 10.7%, respectively. These findings highlight an important issue in HCWs during the COVID-19 pandemic.

It is no surprise that HCWs have a much higher prevalence of mental health problems during the COVID-19 pandemic. There are many factors that can explain this. The ever-increasing number of confirmed and suspected cases, overwhelming workload, depletion of personal protection equipment, widespread media coverage, lack of specific drugs, and feelings of being inadequately supported may all contribute to the mental burden of these HCWs (44). Previous studies showed that HCWs feared contagion and infection of their family and experienced high levels of PTSS, anxiety, and depression symptoms during the outbreak of SARS in 2003 (45, 46). The mental health problems faced by medical staff may be related to many difficulties in work safety, such as the insufficient understanding of the disease at the initial stage, the lack of knowledge concerning prevention and control, the long-term heavy workload, the high risk of exposure to confirmed or suspected cases, the shortage of medical protective equipment, the lack of rest, and the exposure to critical life events during the COVID-19 pandemic (38, 47).

It is worth noting that 25.6% of HCWs suffer from PTSS. Post-traumatic stress disorder (PTSD) is a common consequence of major disasters. During the COVID-19 pandemic, HCWs have endured huge threats and unprecedented challenges, which may cause them to develop acute stress disorder that will potentially degenerate into chronic PTSD over time. A survey conducted 2 months after the outbreak of SARS in Singapore revealed that ~20% of HCWs were suffering from PTSD (48). What is more, a cohort study that lasted 30 months post-SARS among SARS survivors found that HCWs have a much higher percentage of chronic PTSD than non-HCWs (40.7 vs. 19%; P = 0.031) (49). Additionally, female, working in frontline, and intermediate technical title were the risk factors of PTSS during the COVID-19 pandemic; however, working outside Hubei province was the protective factor (15).

We found that 70% of all participants were female (most of whom were nurses). Moreover, a subgroup analysis revealed that females and nurses had a high prevalence of depression and anxiety. During the SARS outbreak, a study conducted among HCWs in emergency departments also showed that nurses were more likely to develop distress than physicians (50). During the COVID-19 pandemic, frontline nurses may be at risk of infection due to the close and frequent contact with patients and the longer-than-usual working hours during the COVID-19 pandemic. This also reminds us that the society should be more concerned on the mental health of women and nurses during the major epidemic.

Another important finding in the subgroup analysis revealed that the frontline HCWs had a higher prevalence of anxiety and a lower prevalence of depression than the second-line HCWs. A high level of anxiety in the early stage of the emerging infectious disease may be an adaptive defense mechanism response to potentially threatening events (51). However, when it is chronic or disproportionate, it becomes harmful and can be a key component in the development of various psychiatric disorders (51, 52). What deserves our attention is that, compared with the second-line HCWs, the proportions of moderate-to-severe anxiety and depression are higher among the frontline staff. Working in the center of a pandemic area such as Wuhan or high-risk contact with COVID-19 patients in frontline positions, such as the emergency department, respiratory department, fever clinic, etc., is a risk factor for mental health problems (15, 17, 38). For this reason, we should pay more attention to the frontline medical staff. Timely screening and appropriate intervention are important to reduce the severity and chronicity of mental health problems.

In addition, the physical condition of medical staff was an important risk factor for mental health problems. The prevalence of depression, anxiety, insomnia, obsessive–compulsive symptoms, and somatization symptoms of medical staff with poor health conditions or comorbidities of organic diseases is higher than that of the healthy ones (29, 38). Surprisingly, living in rural areas is a risk factor for anxiety, insomnia, obsessive–compulsive symptoms, and somatization symptoms (38). Differences in the working environment, medical technology, and the knowledge of COVID-19 may partially explain this phenomenon.

Limitations should be considered when interpreting the findings of this study. First, it was limited in scope. Of the 20 studies, 19 are from China, 15 of which are published in Chinese and thus limiting the generalization of other countries. Second, it is important to note that the vast majority of participants were assessed by a self-rating scale rather than by gold-standard diagnostic clinical interviews for mental health disorders, and the duration of symptoms of most participants did not meet the diagnostic criteria. The sensitivity and the specificity of these instruments for diagnosing mental health problems vary substantially. Third, all studies are cross-sectional studies, and there is no longitudinal study. Moreover, most of them were completed in February 2020 or earlier. With the increasingly arduous situation, the mental health symptoms of HCWs could become more severe. Fourth, many other factors that could predispose medical staff to anxiety, for example, family history and emotional trauma, could not be assessed due to the wide variability of factors examined in the studies. Finally, only a few studies have explored the risk factors of mental health problems, which are not sufficient to fully understand the problem. Moreover, all studies on risk factors were of a cross-sectional design, without baseline control and follow-up data, so it is impossible to determine the causal relationship between them. Some risk factor studies have not controlled for confounding factors and cannot exclude the influence of factors such as working position, COVID-19 exposure intensity, and some sociodemographic factors.

Conclusions

In this systematic review, HCWs have a relatively high prevalence of depression, anxiety, insomnia, PTSS, phobia, obsessive–compulsive symptoms, and somatization symptoms during the COVID-19 pandemic, and focus should be on the HCWs at high risk of mental health problems. Further research is needed to identify effective strategies for preventing and treating mental health problems among HCWs during the COVID-19 pandemic.

Data Availability Statement

The raw data supporting the conclusions of this article will be made available by the authors, without undue reservation.

Author Contributions

QH, DW, HW, and QW contributed to research conception and study design and contributed to data analysis/interpretation. QH, DW, MX, YT, YD, LZ, MD, and YW contributed to search and data acquisition. QH and DW contributed to statistical analysis and manuscript writing. QW and HW took responsibility that this study has been reported honestly, accurately, transparently, and contributed very important intellectual content during manuscript drafting or revision and accepts accountability for the work. All authors read and approved the final manuscript.

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Supplementary Material

The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fpsyt.2021.567381/full#supplementary-material

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Supplementary Materials

Data Availability Statement

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