Literature DB >> 32595534

Prevalence and Demographic Correlates of Poor Sleep Quality Among Frontline Health Professionals in Liaoning Province, China During the COVID-19 Outbreak.

Yifang Zhou1,2, Yuan Yang3,4,5, Tieying Shi6, Yanzhuo Song1, Yuning Zhou2, Zhibo Zhang1, Yanan Guo1, Xixi Li2, Yongning Liu6, Guojun Xu6, Teris Cheung7, Yu-Tao Xiang3,4, Yanqing Tang1,2.   

Abstract

BACKGROUND: Little empirical evidence is known about the sleep quality of frontline health professionals working in isolation units or hospitals during the novel coronavirus disease (COVID-19) outbreak in China. This study thus aimed to examine the prevalence of poor sleep quality and its demographic and correlates among frontline health professionals.
METHODS: This is a multicenter, cross-sectional survey conducted in Liaoning province, China. Sleep quality was measured by the Pittsburgh Sleep Quality Index (PSQI).
RESULTS: A total of 1,931 frontline health professionals were recruited. The prevalence of poor sleep quality was 18.4% (95%CI: 16.6%-20.11%). Multivariate logistic regression analysis found that older age (OR=1.043, 95%CI=1.026-1.061, P < 0.001), being nurse (OR=3.132, 95%CI=1.727-5.681, P < 0.001), and working in outer emergency medical team (OR=1.755, 95%CI=1.029-3.064, P=0.039) were positively associated with poor sleep quality. Participants who were familiar with crisis response knowledge were negatively associated with poor sleep quality (OR=0.70, 95%CI=0.516-0.949, P=0.021).
CONCLUSION: The prevalence of poor sleep quality was relatively low among frontline health professionals during the COVID-19 epidemic. Considering the negative impact of poor sleep quality on health professionals' health outcomes and patient outcomes, regularly screening and timely treatments are warranted to reduce the likelihood of poor sleep quality in health professionals.
Copyright © 2020 Zhou, Yang, Shi, Song, Zhou, Zhang, Guo, Li, Liu, Xu, Cheung, Xiang and Tang.

Entities:  

Keywords:  COVID-19; China; Pittsburgh Sleep Quality Index; health professionals; sleep quality

Year:  2020        PMID: 32595534      PMCID: PMC7304227          DOI: 10.3389/fpsyt.2020.00520

Source DB:  PubMed          Journal:  Front Psychiatry        ISSN: 1664-0640            Impact factor:   4.157


Introduction

The novel coronavirus disease (COVID-19) caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has aroused enormous attention nationwide (1). This disease was first reported in Wuhan, Hubei province, and then was transmitted to other areas of China (2). As of 1st May, 2020, there have been 82,874 confirmed patients with COVID-19 and 4,633 deaths in China (3). In order to control the rapid disease transmission, China has suspended public transport and adopted mass quarantine measures in multi-regions since late January, 2020 (2). The National Health Commission of China (NHC) has adopted a range of emergency measures, including the establishment of emergency isolation infectious units and hospitals, and temporary quarantine facilities (“Fang cang” hospitals) (4). External emergency medical teams have also been promptly established nationwide and assigned to provide medical assistance in Hubei province, China. As of 26th February, 2020, more than 178 crisis response teams comprising 32,395 volunteer health professionals have been summoned to Hubei province (5). Due to insufficient knowledge, awareness and preventive measures in the early stage of the COVID-19 outbreak, a total of 3,387 health professionals in 476 clinical sites have been infected with the disease, of which, 26 died (6). Frontline health professionals, especially those working in Hubei province, and having close contacts with infected patients often reported excessive workload. Due to insufficient supplies of full protective gear, dangerous working environments, and limited clinical experiences in managing the COVID-19, frontline health professionals are extremely vulnerable to experience fatigue, anxiety, depression, emotional breakdown, and sleep disturbance (7). Sleep problems, such as poor sleep quality, are common in the health care profession due to high level of work-related stress (8, 9). Poor sleep quality could result in serious health consequences, such as hypertension, exhaustion, burnout, and depression (10–13). Health professionals suffering from poor sleep quality were more likely to have poor work performance, which could compromise patient safety and reduce the quality of patient care. In extreme case, health professionals could prescribe inaccurate diagnosis causing potentially fatal medical errors (14–19). Before developing preventive strategies and alleviating the negative outcomes of poor sleep quality, it is pivotal to understand its epidemiology and correlates among health professionals. Sleep quality could be measured by both objective [e.g., polysomnography (PSG)] and subjective instruments [e.g., sleep diary, and Pittsburgh Sleep Quality Index (PSQI)] (20). The PSQI is the most commonly used subjective assessment tool measuring global sleep quality. A recent meta-analysis (21) showed that the pooled prevalence of poor sleep quality as measured by the PSQI was 61.0% in nurses. Liaoning province is located in northern China. As of 1st May, 2020, there had been 146 COVID-19 patients in Liaoning province, of which, two died (3). During the COVID-19 outbreak, frontline health professionals experienced high work-related stress, which could lead to psychological distress, burnout, and sleep problems. To date, little has been known about the prevalence of sleep quality among frontline health professionals in areas of China which were less affected by the COVID-19. This gap gave us the impetus to examine the prevalence of poor sleep quality and its associated factors in this population. We hypothesized that frontline health professionals working in Liaoning province were less likely to experience poor sleep quality compared to their counterparts working in Hubei province—the epicenter of the COVID-19 outbreak.

Methods

Study Design and Participants

This was a cross-sectional study conducted between February 21 and 23, 2020 in Liaoning province, China using convenience snowball sampling. During the COVID-19 outbreak, frontline health professionals were managed by hospital authorities using the WeChat in Liaoning province, China. Data collection was executed using the Wenjuanxing program which is an application embedded with WeChat (https://www.wjx.cn/app/survey.aspx). WeChat is the most popular social media platform in China used by over one billion people (i.e., more than 70% of Chinese population) (22). The Wenjuanxing program has been widely used in epidemiological surveys (23, 24). Inclusion criteria included 1) adults aged 18 years or above; 2) frontline health professionals (i.e., doctors and nurses) working in isolation unit/hospitals, or fever clinics established for the COVID-19 outbreak in either outer emergency medical team from Liaoning in Wuhan or in Liaoning province; 3) ability to read Chinese and provide written informed consent. This study was approved by the clinical research ethics committee of the First Hospital of China Medical University.

Measurements

Participant’s basic sociodemographic characteristics, such as gender, age, educational level, marital status, occupation, living circumstances, current smoking and drinking behaviors, current working status, previous working experience, and perceived family support, were collected using a data collection form designed for this study. Participant’s working status was assessed by four questions using a dichotomous response (“Yes/No”): 1) “Do you have direct contact with SARS-CoV-2 infected patient in daily clinical practice?”; 2) “Are you currently working in the COVID-19 outer emergency medical team in Wuhan, Hubei province?”; 3) “Are you familiar with the crisis response protocols and with relevant knowledge?”; and 4) “Have you ever attended any crisis response/rescue work previously?” Information on current drinking and smoking habits was solicited by the following questions: “Did you drink alcoholic beverage at least once per month (Yes/No)” (25), “Did you smoke at least one cigarette per day (Yes/No)” (26). Those who answered “Yes” to these questions were considered as current alcohol drinker or current smoker. ‘Perceived family support’ was measured by a single dichotomous question (Yes/No): “Do you think you had good familial support during the COVID-19 outbreak?” The Chinese version of the PSQI is a 19-item instrument consisting of seven domains (subjective sleep quality, sleep latency, sleep duration, sleep efficiency, sleep disturbance, daytime dysfunction, and use of sleep medications). PSQI is a widely used self-administered questionnaire to assess sleep quality (27). The psychometric properties of the Chinese version of the PSQI was satisfactory, with the Cronbach’s alpha of 0.734 (28). The PSQI total score ranges from 0 to 21, with higher scores indicating poorer sleep quality. The cut-off value for poor sleep quality is 7 in Chinese populations (28).

Data Analysis

Data analyses were conducted using SPSS Analytics software Version 21.0. Kolmogorov-Smirnov test was performed to test the normal distribution of continuous variables. Comparisons between good and poor sleep quality groups in terms of basic demographic and clinical characteristics were conducted using Chi-square test, and two independent samples t-test, as appropriate. Multivariate logistic regression analysis with the “enter” method (i.e., entering all the independent variables in the model simultaneously) was used to further identify significant independent demographic and clinical correlates associated with poor sleep quality. Poor sleep quality was the dependent variable, while all sociodemographic and clinical variables were entered as the independent variables. Significant level was set as P < 0.05 for all tests (two-sided).

Results

A total of 1,931 health professionals participated in this study; of which, 355 (18.4%, 95%CI=16.6%–20.11%) reported poor sleep quality (PSQI total score of ≥7). shows the basic sociodemographic and clinical characteristics of participants by sleep quality. The mean PSQI total scores and component scores of the whole sample separated by good and poor sleep quality groups are shown in .
Table 1

Demographic characteristics of the study sample (N=1,931).

VariablesWhole sample(N=1,931)Good sleep quality(N=1,576)Poor sleep quality(N=355)Statistics
n%n%n%X2dfP
Male884.6734.6154.20.11010.740
High education (university and above)1,86296.41,52496.733895.21.86510.172
Married1,25563.497762.024869.97.73110.005
Nurses1,61483.61,30082.531488.57.50910.006
Living with family1,46776.01,18074.928780.85.66010.017
Current smoker462.4382.482.30.03110.860
Current drinker19910.315710.04211.81.09510.295
Working more than 5 years1,43874.51,14772.829182.012.8781<0.001
COVID-19 knowledge0.30520.859
 Not familiar32516.826716.95816.3
 Familiar92147.774747.417449.0
 Very familiar68535.556235.712334.6
Ever attending other crisis response20210.515810.04412.41.73610.188
Familiar with crisis response knowledge1,25665.01,03565.722162.31.49010.222
Working in outer response team in Wuhan46524.138224.28323.40.11710.733
Contacting confirmed cases in daily work24912.920112.84813.50.15210.697
Having family support85744.471145.114641.11.86610.172
MeanSDMeanSDMeanSDTdfP
Age (years)35.088.0434.567.8937.388.27-6.0341929<0.001

Bolded values: < 0.05; M, mean; PSQI, Pittsburgh Sleep Quality Index; SD, standard deviation.

Good sleep quality was defined as Pittsburgh Sleep Quality Index (PSQI) < 7.

COVID-19, novel coronavirus disease.

Table 2

PSQI total and component scores in all participants.

Total(N=1,931)Good sleep quality(N=1,576)Poor sleep quality(N=355)
MSDMSDMSD
PSQI total score4.613.363.392.1710.002.20
 Subjective sleep quality0.960.850.710.682.050.67
 Sleep latency1.270.961.020.822.400.73
 Sleep duration0.210.640.100.400.691.11
 Sleep efficiency0.220.630.120.420.651.07
 Sleep disturbance0.760.630.610.521.460.58
 Daytime dysfunction1.030.970.780.812.120.84
 Use of sleep medication0.170.550.06.0270.631.02

M, mean; PSQI, Pittsburgh Sleep Quality Index; SD, standard deviation.

Demographic characteristics of the study sample (N=1,931). Bolded values: < 0.05; M, mean; PSQI, Pittsburgh Sleep Quality Index; SD, standard deviation. Good sleep quality was defined as Pittsburgh Sleep Quality Index (PSQI) < 7. COVID-19, novel coronavirus disease. PSQI total and component scores in all participants. M, mean; PSQI, Pittsburgh Sleep Quality Index; SD, standard deviation. Univariate analyses revealed five correlates that were significantly associated with poor sleep quality (i.e., being nurses, older age, married, living with family, and > 5 years working experience), while the remaining were not associated with poor sleep quality. Multivariate logistic regression analysis revealed that nurses (OR=3.132, 95%CI=1.727–5.681, P < 0.001), older age (OR=1.043, 95%CI=1.026–1.061, P < 0.001), and health professionals who were working in outer emergency medical team in Hubei province (OR=1.755, 95%CI=1.029–3.064, P=0.039) were more likely to report poor sleep quality. Those who were familiar with crisis response protocols and with relevant knowledge were less likely to report poor sleep quality (OR=0.700, 95%CI=0.516–0.949, P=0.021) ().
Table 3

Independent correlates of poor sleep quality by multivariate logistic regression analysis.

VariablesMultivariate logistic regression analysis
OR95% CIP value
Age1.0431.026–1.061<0.001
Female0.7110.372–1.3600.302
High education (university and above)0.7510.421–1.3400.333
Married0.9730.671–1.4110.885
Nurses3.1321.727–5.681<0.001
Living with family1.0200.639–1.6280.933
Current smoker0.7460.318–1.7530.502
Current drinker1.1620.786–1.7170.451
Working more than 5 years1.3250.822–2.1350.248
Not familiar with COVID-19 knowledgeref
 Familiar0.8790.541–1.4260.601
 Very familiar0.7980.473–1.3480.399
Ever attending other crisis response1.2710.864–1.8690.223
Familiar with crisis response knowledge0.7000.516–0.9490.021
Working in outer response team in Wuhan1.7751.029–3.0640.039
Contacting confirmed cases in daily work0.9010.501–1.6180.726
Having family support0.7580.571–1.0070.056

Bolded values: < 0.05; CI, confidence interval; COVID-19, novel coronavirus disease; OR, odds ratio.

Independent correlates of poor sleep quality by multivariate logistic regression analysis. Bolded values: < 0.05; CI, confidence interval; COVID-19, novel coronavirus disease; OR, odds ratio.

Discussion

This was the first study to examine sleep quality among frontline health professionals using the PSQI during the outbreak of the COVID-19 in areas less affected by COVID-19 in China. Using the cut-off value of 7, the prevalence of poor sleep quality was 18.4% (95%CI=16.6%–20.11%) among frontline health professionals in Liaoning province. This prevalence rate was lower than most of the previous findings in similar studies. For example, a recent cross-sectional study in China reported that 36.1% of frontline health professionals suffered from sleep disturbance using the Insomnia Severity Index (ISI) in early stage of the COVID-19 epidemic in China (i.e., late January, 2020) (7). A recent systematic review and meta-analysis found that the pooled prevalence of sleep disturbances among Chinese healthcare professionals was 39.2% (95%CI=36.0%–42.7%), using the PSQI (29). Machi et al. reported that the prevalence of poor sleep quality was 31.0% in US doctors working in emergency departments using the PSQI with the cut-off value of 6 (30), while Surani et al., reported that the prevalence of poor sleep quality was 36.8% in Pakistani physicians using the PSQI cut-off value of 5 (31). In contrast, the prevalence of poor sleep quality was 35.21% (95%CI=33.08%–37.35%) using the cut-off of 5, while the corresponding figure was 26.41% (95%CI=24.44%–28.38%) using the cut-off of 6 in this study. The discrepancy in the prevalence of sleep quality in health professionals across studies could be partly explained by different population characteristics and the use of assessment tools. Since 25th January, 2020, 30 provinces, municipalities, and autonomous regions covering over 1.3 billion Chinese population have initiated first-level responses to major public health emergencies. A range of measures, including establishment of emergency isolation infectious units and hospitals, have been urgently adopted (32, 33). However, compared to Hubei province, the epicenter of the COVID-19 in China, the disease epidemic was not as serious as in other areas of China. Liaoning province is a good example. Based on previous experience learned in the 2003 SARS epidemic that frontline health professionals were more likely to suffer from psychological problems (2), the authorities in Liaoning province have thus undertaken certain preventive interventions to relieve stress among frontline health professionals, such as timely provision of financial and material supports, mass education on pressure control, online psychological counseling service (e.g., 24-h hotlines), and on-site psychological guidance. These measures could reduce the risk of poor sleep quality (34). As expected, older age was positively associated with poor sleep quality. Compared to their younger counterparts, older adults usually have more household responsibilities, and economic burdens (35, 36). Older adults are also prone to experience negative life events, such as divorce and bereavement, and suffer from physical discomforts and chronic physical diseases (37, 38), which could contribute to poor sleep quality (39). In this study, nurses were more likely to report poor sleep quality when compared with other health professionals (e.g., doctors and medical technicians). A vast majority of the nursing sample were females (95.4%). Some studies found that women were approximately 1.5 times more likely to report sleep problems than their male counterparts (30, 31, 40). Similar gender difference was also found in other neuropsychiatric diseases, such as headache, depression, and anxiety (40). In this light, generic factor could be one possible reason to explain the gender difference in sleep quality (41). It is also evident that anxiety and depression are more common in women, which could increase the risk of poor sleep quality (42–44). Besides, women tend to have greater bodily vigilance and awareness of physical symptoms than men. The societal norms and cultural context are more receptive for women to express their psychological distress and somatic symptoms (45), which may, perhaps, increase their likelihood of reporting poor sleep quality in survey studies. Apart from female nurses, health professionals working in external emergency medical team in Hubei province, China were also more likely to experience poor sleep quality. In early February, 2020, emergency medical teams in Liaoning, China were urgently summoned to assist in Hubei province. Compared to those working in local isolation hospitals in Liaoning province, the external emergency medical teams need to adapt to unfamiliar living environment and work settings, and could experience heavy clinical workload, burnout, loneliness, homesickness, and fear of infection. All these bio-psycho-social factors could affect their sleep quality (46). Health professionals who were familiar with crisis response protocols/knowledge, however, were less likely to report poor sleep quality in this study. We speculate that receiving good training and learning relevant knowledge of crisis response for infectious diseases could be a protective factor and effectively reduce the extent of fear, anxiety, and uncertainty. The strengths of this study include large sample size, and the use of standardized measurements. There are several methodological limitations that need to be acknowledged. First, this was a cross-sectional study, therefore, the causal relationships between demographic and clinical variables, and poor sleep quality could not be established. Second, most participants were female nurses, which could lead to potential selection bias. Third, sleep quality was assessed by only one self-administered instrument and thus, recall bias may exist. Finally, due to logistical reasons and risk of cross-infection, random sampling cannot be used in most studies on frontline health professionals during the COVID-19 outbreak. Thus, convenience sampling has been widely used (47, 48), which limits the generalizability of the findings. In addition, some variables associated with sleep quality, such as economic status, interpersonal relationship and psychiatric diagnoses (e.g., major depression and anxiety disorder), were not examined in this study. In conclusion, it is encouraging to note that the prevalence of poor sleep quality was relatively low among frontline health professionals in Liaoning province during the COVID-19 epidemic. Nonetheless, considering the negative impact of poor sleep quality on health, wellbeing and daily clinical practice, regularly screening and timely treatments are warranted in frontline health professionals during the COVID-19 outbreak.

Data Availability Statement

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

Ethics Statement

The studies involving human participants were reviewed and approved by clinical research ethics committee of the First Hospital of China Medical University. The patients/participants provided their written informed consent to participate in this study.

Author Contributions

Study design: YT and Y-TX. Data collection, analysis, and interpretation: YiZ, YY, TS, YS, YuZ, ZZ, YG, XL, YL, and GX. Drafting of the manuscript: YY, Y-TX, and YT. Critical revision of the manuscript: TC. Approval of the final version for publication: all co-authors.

Funding

The study was supported by the University of Macau (MYRG2019-00066-FHS), and the National Key R&D Program of China (Grant #2018YFC1311600 and 2016YFC1306900).

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.
  39 in total

1.  The relationship between shift work, sleep, and cognition in career emergency physicians.

Authors:  Mari S Machi; Matthew Staum; Clifton W Callaway; Charity Moore; Kwonho Jeong; Joe Suyama; P Daniel Patterson; David Hostler
Journal:  Acad Emerg Med       Date:  2012-01-05       Impact factor: 3.451

2.  Prevalence and correlates of sleep problems among elderly Singaporeans.

Authors:  Vathsala Sagayadevan; Edimansyah Abdin; Saleha Binte Shafie; Anitha Jeyagurunathan; Rajeswari Sambasivam; Yunjue Zhang; Louisa Picco; Janhavi Vaingankar; Siow A Chong; Mythily Subramaniam
Journal:  Psychogeriatrics       Date:  2016-01-27       Impact factor: 2.440

3.  Association between sleep quality and nurse productivity among Korean clinical nurses.

Authors:  Eunok Park; Hyo Young Lee; Claire Su-Yeon Park
Journal:  J Nurs Manag       Date:  2018-06-01       Impact factor: 3.325

Review 4.  Sex Differences in Insomnia: from Epidemiology and Etiology to Intervention.

Authors:  Sooyeon Suh; Nayoung Cho; Jihui Zhang
Journal:  Curr Psychiatry Rep       Date:  2018-08-09       Impact factor: 5.285

5.  Sex differences in insomnia: a meta-analysis.

Authors:  Bin Zhang; Yun-Kwok Wing
Journal:  Sleep       Date:  2006-01       Impact factor: 5.849

6.  The prevalence of insomnia, its sociodemographic and clinical correlates, and treatment in rural and urban regions of Beijing, China: a general population-based survey.

Authors:  Yu-Tao Xiang; Xin Ma; Zhuo-Ji Cai; Shu-Ran Li; Ying-Qiang Xiang; Hong-Li Guo; Ye-Zhi Hou; Zhen-Bo Li; Zhan-Jiang Li; Yu-Fen Tao; Wei-Min Dang; Xiao-Mei Wu; Jing Deng; Kelly Y C Lai; Gabor S Ungvari
Journal:  Sleep       Date:  2008-12       Impact factor: 5.849

7.  Effects of health care provider work hours and sleep deprivation on safety and performance.

Authors:  Steven W Lockley; Laura K Barger; Najib T Ayas; Jeffrey M Rothschild; Charles A Czeisler; Christopher P Landrigan
Journal:  Jt Comm J Qual Patient Saf       Date:  2007-11

8.  A nonpharmacological approach to improve sleep quality in older adults.

Authors:  Iris Rawtaer; Rathi Mahendran; Hui Yu Chan; Feng Lei; Ee Heok Kua
Journal:  Asia Pac Psychiatry       Date:  2017-10-10       Impact factor: 2.538

Review 9.  Progression of Mental Health Services during the COVID-19 Outbreak in China.

Authors:  Wen Li; Yuan Yang; Zi-Han Liu; Yan-Jie Zhao; Qinge Zhang; Ling Zhang; Teris Cheung; Yu-Tao Xiang
Journal:  Int J Biol Sci       Date:  2020-03-15       Impact factor: 6.580

Review 10.  Tribute to health workers in China: A group of respectable population during the outbreak of the COVID-19.

Authors:  Yu-Tao Xiang; Yu Jin; Yu Wang; Qinge Zhang; Ling Zhang; Teris Cheung
Journal:  Int J Biol Sci       Date:  2020-03-15       Impact factor: 6.580

View more
  24 in total

1.  Burnout and sleep quality among community health workers during the pandemic in selected city of Andhra Pradesh.

Authors:  Tanuja Yella; Mackwin K Dmello
Journal:  Clin Epidemiol Glob Health       Date:  2022-07-11

2.  Prevalence and Unmet Need for Mental Healthcare of Major Depressive Disorder in Community-Dwelling Chinese People Living With Vision Disability.

Authors:  Bao-Liang Zhong; Yan-Min Xu; Yi Li
Journal:  Front Public Health       Date:  2022-06-22

3.  Psychological impact of the coronavirus 2019 (COVID-19) pandemic on nurses.

Authors:  Mohammed Al Maqbali; Jamal Al Khadhuri
Journal:  Jpn J Nurs Sci       Date:  2021-03-21       Impact factor: 1.418

4.  Sleep problems during COVID-19 pandemic and its' association to psychological distress: A systematic review and meta-analysis.

Authors:  Zainab Alimoradi; Anders Broström; Hector W H Tsang; Mark D Griffiths; Shahab Haghayegh; Maurice M Ohayon; Chung-Ying Lin; Amir H Pakpour
Journal:  EClinicalMedicine       Date:  2021-06-10

5.  Insomnia episodes, new-onset pharmacological treatments, and other sleep disturbances during the COVID-19 pandemic: a nationwide cross-sectional study in Brazilian health care professionals.

Authors:  Luciano F Drager; Daniela V Pachito; Claudia R C Moreno; Almir R Tavares; Silvia G Conway; Márcia Assis; Danilo A Sguillar; Gustavo A Moreira; Andrea Bacelar; Pedro R Genta
Journal:  J Clin Sleep Med       Date:  2022-02-01       Impact factor: 4.062

6.  Prevalence of Fatigue and Its Association With Quality of Life Among Frontline Clinicians in Ophthalmology and Otolaryngology Departments During the COVID-19 Pandemic.

Authors:  Yu Jin; Yue Li; Xiu-Ya Li; Yan-Jie Zhao; Teris Cheung; Gabor S Ungvari; Michael Li; Feng-Rong An; Yu-Tao Xiang
Journal:  Front Psychiatry       Date:  2021-07-09       Impact factor: 4.157

7.  Effect of Emerging Major Infectious Diseases on Sleep Quality of Medical Workers: Findings from Medical Workers Providing Support During the COVID-19 Pandemic.

Authors:  Wen Zhu; Yue Fang; Zhong-Liang Bai; Nian-Nian Li; Jia-Yun Zhao; Zhi Hu
Journal:  Med Sci Monit       Date:  2021-06-12

8.  Stress, Burnout, and Coping Strategies of Frontline Nurses During the COVID-19 Epidemic in Wuhan and Shanghai, China.

Authors:  Yuxia Zhang; Chunling Wang; Wenyan Pan; Jili Zheng; Jian Gao; Xiao Huang; Shining Cai; Yue Zhai; Jos M Latour; Chouwen Zhu
Journal:  Front Psychiatry       Date:  2020-10-26       Impact factor: 4.157

9.  Sleep problems during the COVID-19 pandemic by population: a systematic review and meta-analysis.

Authors:  Haitham Jahrami; Ahmed S BaHammam; Nicola Luigi Bragazzi; Zahra Saif; MoezAlIslam Faris; Michael V Vitiello
Journal:  J Clin Sleep Med       Date:  2021-02-01       Impact factor: 4.062

10.  The Impact of Quarantine on Sleep Quality and Psychological Distress During the COVID-19 Pandemic.

Authors:  Maha M AlRasheed; Afnan M Alkadir; Khulood I Bin Shuqiran; Sinaa Al-Aqeel; Haitham A Jahrami; Ahmed S BaHammam
Journal:  Nat Sci Sleep       Date:  2021-07-05
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.