Literature DB >> 34514332

High levels of psychosocial distress among Australian frontline healthcare workers during the COVID-19 pandemic: a cross-sectional survey.

Natasha Smallwood1,2, Leila Karimi3,4, Marie Bismark5,6, Mark Putland7,8, Douglas Johnson9,10, Shyamali Chandrika Dharmage11, Elizabeth Barson12, Nicola Atkin13,14, Claire Long15, Irene Ng16,17, Anne Holland2,18, Jane E Munro19,20, Irani Thevarajan21, Cara Moore22, Anthony McGillion23, Debra Sandford24, Karen Willis25,26.   

Abstract

BACKGROUND: The coronavirus disease 2019 (COVID-19) pandemic has had a profound and prolonged impact on healthcare services and healthcare workers. AIMS: The Australian COVID-19 Frontline Healthcare Workers Study aimed to investigate the severity and prevalence of mental health issues, as well as the social, workplace and financial disruptions experienced by Australian healthcare workers during the COVID-19 pandemic.
METHODS: A nationwide, voluntary, anonymous, single timepoint, online survey was conducted between 27 August and 23 October 2020. Individuals self-identifying as frontline healthcare workers in secondary or primary care were invited to participate. Participants were recruited through health organisations, professional associations or colleges, universities, government contacts and national media. Demographics, home and work situation, health and psychological well-being data were collected.
RESULTS: A total of 9518 survey responses were received; of the 9518 participants, 7846 (82.4%) participants reported complete data. With regard to age, 4110 (52.4%) participants were younger than 40 years; 6344 (80.9%) participants were women. Participants were nurses (n=3088, 39.4%), doctors (n=2436, 31.1%), allied health staff (n=1314, 16.7%) or in other roles (n=523, 6.7%). In addition, 1250 (15.9%) participants worked in primary care. Objectively measured mental health symptoms were common: mild to severe anxiety (n=4694, 59.8%), moderate to severe burnout (n=5458, 70.9%) and mild to severe depression (n=4495, 57.3%). Participants were highly resilient (mean (SD)=3.2 (0.66)). Predictors for worse outcomes on all scales included female gender; younger age; pre-existing psychiatric condition; experiencing relationship problems; nursing, allied health or other roles; frontline area; being worried about being blamed by colleagues and working with patients with COVID-19.
CONCLUSIONS: The COVID-19 pandemic is associated with significant mental health symptoms in frontline healthcare workers. Crisis preparedness together with policies and practices addressing psychological well-being are needed. © Author(s) (or their employer(s)) 2021. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

Entities:  

Keywords:  COVID-19; anxiety; depression; mental health; post-traumatic; stress disorders

Year:  2021        PMID: 34514332      PMCID: PMC8423519          DOI: 10.1136/gpsych-2021-100577

Source DB:  PubMed          Journal:  Gen Psychiatr        ISSN: 2517-729X


Healthcare workers experience unique workplace demands and stressors in their day-to-day roles and therefore are at increased risk of mental illness. Crisis events represent an additional threat to mental health of healthcare workers. Poor mental health of clinicians has wider repercussions for quality of care, patient safety, workforce retention and engagement. The impacts of the COVID-19 pandemic were associated with significant symptoms of mental illness in Australian frontline healthcare workers in primary and secondary care. Some healthcare worker groups were more vulnerable to psychological problems. Health organisations and leaders need to be better prepared for crisis events such as pandemics, given the associated impacts observed in mental health of frontline healthcare workers. Additional psychological well-being services are needed to actively support healthcare workers.

Introduction

Healthcare workers (HCWs) experience unique workplace demands and stressors, with doctors and nurses particularly experiencing poor mental health and increased rates of occupational burnout, anxiety, depression and suicide than other occupations.1–4 Although less is known about other groups of clinicians, the findings of early studies are concerning.5 These issues have ramifications beyond the health of practitioners themselves, given that poor mental health of clinicians translates to adverse effects on overall quality of care,6 patient safety, workforce retention and engagement.7 Crises, such as the current coronavirus disease 2019 (COVID-19) pandemic, represent a profound threat to mental health. HCWs, particularly those on the ‘frontline’ in hospitals and the community, have had to respond quickly to many challenges including heavy workloads, large volumes of new information, new work practices and roles, redeployment or job insecurity, social change and increased risks to their own lives and for family members. Evidence regarding the impacts of the severe acute respiratory syndrome (SARS) pandemic demonstrated that the mental health of many HCWs was adversely affected, with potentially long-lasting mental health effects.8 9 Studies from overseas during the current pandemic suggest high rates of anxiety, depression, stress and burnout in HCWs, with the prevalence rates of up to 57%.10–16 Before the onset of COVID-19, certain demographic and workplace factors have been associated with increased risk of psychosocial harm for HCWs, particularly female gender,2 inexperience,17 excessive work hours,18 19 and certain frontline areas.20 21 Similarly, studies of the general public during COVID-19 reveal a disproportionate impact on women,22 23 young people22 24 and people with previous mental health diagnoses.24 25 It is therefore vital to comprehensively identify and act on the mental health needs of Australian frontline HCWs to minimise the far-reaching effects of crisis events. This article reports the first findings from the Australian COVID-19 Frontline Healthcare Workers Study, which was both initiated and led by frontline clinicians in partnership with academics. This study investigated the severity, prevalence and predictors of symptoms of mental illness, as well as the social, workplace and financial disruptions experienced by Australian HCWs during the COVID-19 pandemic.

Methods

The second wave of the pandemic in Australia occurred predominantly in Melbourne, Victoria, between June and October 2020. Severe lockdown restrictions were instituted locally including (but not limited to) mandatory mask wearing; travel limited to 5 km from home; an evening curfew, 1-hour limit for outdoor exercise per day; limits on seeing extended family; working from home; home schooling; the closure of most shops, hospitality and entertainment venues; and closure of international and interstate borders.

Participants and study design

A nationwide, voluntary, anonymous, online survey was conducted between 27 August and 23 October 2020, concurrently with the second wave of the pandemic. Australian HCWs, comprising medical, nursing, allied health, medical laboratory, administrative and other support staff, who self-identified as frontline HCWs in secondary or primary and community care, were invited to participate. Participants did not need to have cared for people with COVID-19 to participate. Over 8 weeks, 9518 survey responses were received, with complete data from 7846 (82.4%) participants reported in this article (figure 1).
Figure 1

Flowchart of participant recruitment.

Flowchart of participant recruitment. Participants were recruited through multiple strategies. Information regarding the survey was emailed to chief executive officers and departmental directors of frontline areas (emergency medicine, critical care, respiratory medicine, general medicine, infectious diseases, palliative care and hospital aged care) of all public hospitals throughout Victoria, and to multiple hospitals around Australia. Hospital leaders were asked to share the survey information with colleagues. Thirty-six professional societies, colleges, universities, associations and government health department staff also disseminated the information about the survey across Australia. In addition, the study was promoted through 117 newspapers, 8 television and radio news items and 30 social media sites.

Data collection

Each participant completed the survey once, with no longitudinal data collected. Participants completed the online survey either directly or via a purpose-built website (https://covid-19-frontline.com.au/). Before commencing the survey, participants provided online consent to participate. Data were collected and managed using REDCap electronic data capture tools.26 Information collected included demographics, home life details, professional background, work arrangements, the impact of the pandemic on employment and finances, organisational leadership, workplace change, exposure to COVID-19 and health and recreational habits (online supplemental file 1). Most questions were in a single-choice or multiple-choice format, with free text questions enabling more detailed answers. Five validated psychological measurement tools were completed to assess symptoms of mental illnesses: anxiety (Generalized Anxiety Disorder Scale-7 (GAD-7)),27 depression (Patient Health Questionnaire-9 (PHQ-9)),28 post-traumatic stress disorder (PTSD) (abbreviated Impact of Events Scale-6 (IES-6))29 and burnout (abbreviated Maslach Burnout Inventory (MBI),30 with subdomains of emotional exhaustion (EE), depersonalisation (DP) and personal accomplishment (PA)). Resilience was assessed using the abbreviated two-item Connor-Davidson Resilience Scale-2.31 Burnout on the MBI is indicated by higher scores on the EE and DP, and lower scores on the scale of PA. Cut-off scores for validated scales were as follows: depersonalisation: 0 to 3=low, 4 to 6=moderate, 7 to 18=high; emotional exhaustion: 0 to 6=low, 7 to 10=moderate, 11 to 18=high; personal accomplishment: 0 to 12=high, 13 to 14=moderate, 15 to 18=low 32; IES is categorised as 0 to 9=none/minimal and >9=moderate-severe29; GAD-7: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 21=severe anxiety27; PHQ-9: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 19=moderately severe, 20 to 27=severe.28 In addition, participants were asked to report if they subjectively believed they had experienced anxiety, depression, PTSD, burnout or other mental health issues in order to determine their insight into their mental health. Ethics approval was provided by the Royal Melbourne Hospital Human Research Ethics Committee (HREC/67074/MH-2020).

Statistical methods and data analysis

A power calculation for general linear models was computed using RStudio.33 With an expected medium to large effect size and a power of 0.95, and significance level of 0.05, a sample of 6348 participants was required. To account for missing or incomplete data, a minimum sample size of 7000 responses was chosen. Data analysis was performed using SPSS V.26.0 statistical software (IBM). Demographic and socioeconomic characteristics were reported descriptively. Predictors of mental illness symptoms were identified through univariable logistic regression then entered into a multivariable logistic regression model. Covariates examined in univariable analyses included age; gender; state; occupation; number of working years since graduation; living situation (living alone, living with children, living with elderly); frontline area; practice location; working with patients with COVID-19; anticipating working with patients with COVID-19; having received personal protective equipment (PPE) training; worry that their role will lead to COVID-19 transmission to family; worry regarding being blamed by colleagues, close friends or relatives infected with COVID-19; changed relationships with partner or friends or family or colleagues; changed household income; concerns regarding household income and pre-existing mental health diagnoses. For each mental illness scale, outcomes were merged into dichotomous categories (no or minimal symptoms vs moderate to severe symptoms) in the regression model. Associations between mental illness symptoms and predictor variables are presented as ORs with 95% CIs. Multicollinearity of predictor variables was examined using the variance inflation factor criterion. The Spearman coefficient (r) was calculated to evaluate the correlation between self-reported and objective evidence of mental illness symptoms. For all statistical tests, significance was indicated by p≤0.05.

Results

Demographic characteristics and workplace environment

More than half (n=4110, 52.4%) of the participants were younger than 40 years, and 6344 (80.9%) were women (table 1). Most participants were nurses (n=3088, 39.4%), doctors (n=2436, 31.0%) or allied health staff (n=1314, 16.7%) with 523 participants working in other health organisation roles including food services and security. The medical staff group comprised 389 general practitioners, 1221 senior medical staff, 745 junior medical staff and 81 students. More than one-quarter of participants (n=2250, 28.7%) had caring responsibilities at home, and 2133 (27.2%) participants had children who were being homeschooled.
Table 1

Participants’ characteristics

CharacteristicFrequency%
Age (years) (n=7846)
 20–30186023.7
 31–40225028.7
 41–50173822.2
 >50199825.5
Gender (n=7846)
 Male145818.6
 Female634480.9
 Non-binary190.2
 Prefer not to say250.3
State (n=7846)
 Victoria668585.2
 New South Wales4726.0
 Queensland2092.7
 South Australia2032.6
 Western Australia1371.7
 Tasmania811.0
 Australian Capital Territory350.4
 Northern Territory240.3
Occupation (n=7846)
 Nursing308839.4
 Medical243631.0
 Allied health131416.7
 Administrative staff4856.2
 Other roles*5236.7
Number of working years since graduated (n=6637)
 0–5159224.0
 6–10137720.7
 11–1594314.2
 ≥15272541.1
Number of people in the household (n=7846)
 Living alone (1 person)108713.9
 2249231.8
 3–4318140.5
 5–6102413.1
 ≥7620.8
Number of children <16 years at home (n=7846)
 0510265.0
 1–2225328.7
 3–44826.1
 ≥590.1
Living with ≥1 elderly person/people at home (n=7846)6978.9

*Other roles=pharmacists: 185; clinical laboratory scientists or technicians: 176; paramedics: 95; support staff (including cleaning, security, facilities management personnel): 43; leadership role: 9; other role: 15.

Participants’ characteristics *Other roles=pharmacists: 185; clinical laboratory scientists or technicians: 176; paramedics: 95; support staff (including cleaning, security, facilities management personnel): 43; leadership role: 9; other role: 15. Participants worked in primary care or community roles (n=1250, 15.9%), medical specialty areas (n=1205, 15.4%), emergency departments (n=1146, 14.6%), anaesthetics or surgical areas (n=824, 10.5%) or intensive care units (n=745, 9.5%) (table 2). More than three-quarters (n=6158, 78.5%) had been tested for COVID-19, 136 (1.7%) had been infected with COVID-19 and 77 (0.9%) had been previously quarantined because of unprotected exposure to COVID-19. Three-quarters (n=4551, 76.4%) were worried or very worried that their role could lead to them transmitting COVID-19 to their families, and almost two-thirds (n=4949, 63.1%) were worried about being blamed by colleagues for not taking adequate precautions if they contracted COVID-19.
Table 2

Work environment and relationship changes during the pandemic

CharacteristicFrequency%
Frontline area (n=7846)
 Primary care or community practitioner125015.9
 Medical specialty areas*120515.4
 Emergency department114614.6
 Anaesthetics, perioperative care or surgical areas82410.5
 Intensive care unit7459.5
 General medicine6448.2
 Hospital aged care5366.8
 Respiratory medicine3364.3
 Palliative care2923.7
 Infectious diseases1712.2
 Paramedicine991.3
 Radiology610.8
 Hospital pharmacy420.5
 Pathology310.4
 Worked in multiple or other areas†4645.9
Location of practice (n=7846)
 Metropolitan637381.2
 Regional140717.9
 Remote660.8
Currently working with people infected with COVID-19 (n=7846)
 Yes306339.0
 No478361.0
 Number of patients infected with COVID-19 cared for, mean (SD)1.4 (0.43)
Anticipating working with people infected with COVID-19 (n=4775)
 Yes289160.5
 No188439.5
Received training on PPE during the pandemic (n=7846)
 Yes513765.5
 No270934.5
Being worried that their roles will lead to them transmitting COVID-19 to family (n=5954)
 Not worried72912.2
 Neutral67411.3
 Worried or very worried455176.4
Being worried about being blamed by colleagues if they contract COVID-19 (n=7846)
 Neutral127516.3
 Not worried162220.7
 Worried494963.1
Experiencing close friends/relatives infected with COVID-19 in Australia or overseas (n=7846)
 Yes239830.6
 No544869.4
Impact of COVID-19 on relationships (n=7846)
Closer or stronger relationship with
 Partner226628.9
 Children/parents/family222628.4
 Friends105413.4
 Work colleagues253332.3
Worse relationship with
 Partner100012.7
 Children/parents/family142118.1
 Friends222128.3
 Work colleagues111614.2
No effect on relationships 185223.6
Change in household income due to COVID-19 (n=7846)
 Increased82010.5
 Decreased241530.8
 No change461158.8
Concerns or worries about household income since COVID-19 (n=7846)
 Yes241630.8
 No543069.2

*Medical specialty areas included all medical specialties other than hospital aged care, general medicine, respiratory medicine, palliative care and infectious diseases. The latter were reported separately due to their potentially increased risk of exposure to COVID-19.

†This group included (but was not limited to) people working in leadership roles, clerical roles, support roles, food preparation, facilities maintenance, screening clinics and clinical scientists.

COVID-19, coronavirus disease 2019; PPE, personal protective equipment.

Work environment and relationship changes during the pandemic *Medical specialty areas included all medical specialties other than hospital aged care, general medicine, respiratory medicine, palliative care and infectious diseases. The latter were reported separately due to their potentially increased risk of exposure to COVID-19. †This group included (but was not limited to) people working in leadership roles, clerical roles, support roles, food preparation, facilities maintenance, screening clinics and clinical scientists. COVID-19, coronavirus disease 2019; PPE, personal protective equipment.

Relationship changes and prevalence of mental illness symptoms

More than three-quarters of participants (n=5994, 76.4%) reported that the pandemic had affected their relationships with family, friends and colleagues, and nearly one-third had a close friend or relative who had been infected with COVID-19 either in Australia or overseas (table 2). Approximately one-third (n=2389, 30.4%) reported having a pre-existing mental illness diagnosed before the pandemic (table 3). Many participants subjectively believed they had experienced mental illness during the pandemic including anxiety (n=4875, 62.1%), burnout (n=4575, 58.3%) and depression (n=2175, 27.7%). Mental illness symptoms measured by objective scales demonstrated a similar or worse trend, with 4694 (59.8%) participants experiencing mild to severe anxiety, 5458 (70.9%) moderate to severe burnout (EE) and 4495 (57.3%) mild to severe depression. Participants had a high score for resilience with a mean (SD) of 3.21 (0.66) out of 4. There was correlation between subjective reporting and objective evidence of moderate to severe mental illness symptoms for anxiety (r=0.346, p<0.001), depression (r=0.346, p<0.001) and EE (r=0.354, p<0.001).
Table 3

Prevalence of mental health issues

CharacteristicFrequency%
Pre-existing mental health condition diagnosed before the pandemic (n=7846)
 Yes238930.4
 No527267.2
 Prefer not to say1852.4
Self-reported mental health issues experienced since COVID-19 (n=7846)*
 Anxiety487562.1
 Burnout457558.3
 Depression217527.7
 PTSD4275.4
 Other mental health issues3284.2
 No mental health issues143118.2
Mental health issues assessed by validated scales
Burnout DP (n=7688)
 Low481162.6
 Moderate132117.2
 High155620.2
Burnout EE (n=7701)
 Low224329.1
 Moderate207927.0
 High337943.9
Burnout PA (n=7689)
 Low235830.7
 Moderate159220.7
 High373948.6
Anxiety—GAD-7 (n=7843)
 None/minimal314940.2
 Mild247831.6
 Moderate129316.5
 Severe92311.8
Depression—PHQ-9 (n=7841)
 None/minimal332142.5
 Mild230329.5
 Moderate120315.4
 Moderately severe6207.9
 Severe3694.7
Impact of events/trauma—IES-6 (n=7796)
 None/minimal464159.5
 Moderate-severe315540.5
Mean (SD) Range
 Resilience—CD-RISC2 (n=7841)3.21 (0.66)0–4

Burnout DP: 0 to 3=low, 4 to 6=moderate, 7 to 18=high. Burnout EE: 0 to 6=low, 7 to 10=moderate, 11 to 18=high. Burnout PA: 0 to 12= high burnout, 13 to 14=moderate burnout, 15 to 18=low burnout. IES is categorised as 0to 9=none/minimal and >9=moderate-severe. GAD-7: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 21=severe anxiety. PHQ-9: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 19=moderately severe, 20 to 27=severe.

*Multiple options could be chosen.

CD-RISC2, Connor-Davidson Resilience Scale-2; COVID-19, coronavirus disease 2019; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PTSD, post-traumatic stress disorder.

Prevalence of mental health issues Burnout DP: 0 to 3=low, 4 to 6=moderate, 7 to 18=high. Burnout EE: 0 to 6=low, 7 to 10=moderate, 11 to 18=high. Burnout PA: 0 to 12= high burnout, 13 to 14=moderate burnout, 15 to 18=low burnout. IES is categorised as 0to 9=none/minimal and >9=moderate-severe. GAD-7: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 21=severe anxiety. PHQ-9: 0 to 4=none/minimal, 5 to 9=mild, 10 to 14=moderate, 15 to 19=moderately severe, 20 to 27=severe. *Multiple options could be chosen. CD-RISC2, Connor-Davidson Resilience Scale-2; COVID-19, coronavirus disease 2019; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PTSD, post-traumatic stress disorder.

Predictors of poor mental health

In the multivariable regression model, independent, personal predictors for worse mental health on all measured outcomes (anxiety, depression, burnout and PTSD) included female gender, younger age, experiencing worsening of personal relationships and low resilience scores (table 4). In addition, independent, personal predictors for anxiety and PTSD included having previous mental health conditions, having a family member or friend infected with COVID-19 and concerns about household income. Depression was also associated with having previous mental health conditions and concerns about household income, whereas EE was also associated with previous mental health conditions. Independent, workplace predictors for worse mental health outcomes on all measured scales (anxiety, depression, burnout and PTSD) included having a nursing, allied health or other non-medical role, frontline area, working with patients infected with COVID-19 and being worried about being blamed by colleagues on contracting COVID-19 infection (table 5). There were no significant associations between other demographic, work environment, relationship or financial covariates and each mental illness score.
Table 4

Personal predictors of mental health outcomes (multivariable univariate analysis)

PredictorAnxiety (GAD-7)Depression (PHQ-9)PTSD (IES-6)Burnout DPBurnout EEBurnout PA
OR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P value
Female1.18 (1.01 to 1.38)0.0311.31 (1.12 to 1.55)0.0011.40 (1.22 to 1.60)0.0010.63 (0.54 to 0.72)0.0011.23 (1.07 to 1.41)0.0031.02 (0.89 to 1.16)0.770
Age (years)
 20–301.93 (1.64 to 2.27)0.0011.55 (1.31 to 1.84)0.0011.72 (1.48 to 1.99)0.0012.72 (2.12 to 3.48)0.0012.29 (1.94 to 2.70)0.0010.82 (0.70 to 0.95)0.012
 31–401.31 (1.11 to 1.53)0.0011.12 (0.95 to 1.32)0.1631.19 (1.04 to 1.37)0.0101.69 (1.37 to 2.08)0.0011.39 (1.21 to 1.61)0.0010.76 (0.66 to 0.87)0.001
 41–501.21 (1.02 to 1.43)0.0281.23 (1.03 to 1.46)0.0191.03 (0.88 to 1.19)0.6801.36 (1.14 to 1.61)0.0011.32 (1.14 to 1.53)0.0010.90 (0.77 to 1.05)0.183
Previous mental health condition1.96 (1.74 to 2.20)0.0012.23 (1.98 to 2.50)0.0011.75 (1.57 to 1.95)0.0011.10 (0.98 to 1.24)0.0981.73 (1.53 to 1.96)0.0011.26 (1.13 to 1.41)0.001
Experiencing family or friends infected with COVID-191.30 (1.15 to 1.46)0.0011.04 (0.92 to 1.18)0.4501.41 (1.26 to 1.57)0.0011.07 (0.96 to 1.20)0.2001.05 (0.93 to 1.18)0.3701.10 (0.98 to 1.23)0.095
Experiencing worse relationships during the pandemic
 With partner1.97 (1.96 to 2.29)0.0011.96 (1.45 to 1.98)0.0011.50 (1.29 to 1.74)0.0011.37 (1.16 to 1.60)0.0011.57 (1.31 to 1.89)0.001N/A-
 With family1.74 (1.51 to 2.00)0.0011.56 (1.35 to 1.80)0.0011.58 (1.38 to 1.81)0.0011.29 (1.11 to 1.49)0.0011.52 (1.29 to 1.80)0.001N/A-
 With friends1.38 (1.22 to 1.57)0.0011.32 (1.16 to 1.51)0.0011.51 (1.35 to 1.70)0.0011.36 (1.20 to 1.54)0.0011.74 (1.52 to 2.00)0.001N/A-
 With colleagues1.77 (1.52 to 2.06)0.0011.45 (1.24 to 1.70)0.0011.50 (1.30 to 1.73)0.001N/A-N/A-N/A-
Concerns about income1.96 (1.50 to 1.89)0.0011.29 (1.14 to 1.45)0.0011.56 (1.41 to 1.74)0.001N/A-N/A-N/A-
Resilience0.62 (0.57 to 0.67)0.0010.76 (0.70 to 0.83)0.0010.76 (0.70 to 0.82)0.0010.74 (0.68 to 0.80)0.0010.63 (0.55 to 0.65)0.0011.82 (1.68 to 1.97)0.001

N/A=variable not included for that mental scale in the model because no relationship was observed in the univariate model.

Reference categories for each variable were as follows: gender=male; age=older than 50 years; pre-existing mental health conditions=negative response; experiencing family or friends infected with COVID-19=negative response; experiencing altered relationships with partner/family/friends/colleagues=no change; concerns about income=negative response.

Lower OR for personal accomplishment indicates poorer outcomes.

COVID-19, coronavirus disease; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PTSD, post-traumatic stress disorder.

Table 5

Workplace predictors of mental health outcomes (multivariable univariate analysis)

PredictorAnxiety (GAD-7)Depression (PHQ-9)PTSD (IES-6)Burnout DPBurnout EEBurnout PA
OR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P valueOR (95% CI)P value
Occupation
 Nursing1.79 (1.55 to 2.07)0.0011.92 (1.65 to 2.23)0.0011.28 (1.12 to 1.45)0.0010.84 (0.74 to 0.96)0.0131.22 (1.07 to 1.39)0.0030.73 (0.64 to 0.83)0.001
 Allied health1.25 (1.04 to 1.50)0.0131.48 (1.22 to 1.79)0.0011.20 (1.02 to 1.41)0.0220.57 (0.48 to 0.68)0.0011.16 (0.98 to 1.38)0.0811.13 (0.95 to 1.34)0.150
 Other roles1.83 (1.51 to 2.22)0.0011.95 (1.59 to 2.38)0.0011.29 (1.08 to 1.53)0.0041.13 (0.85 to 1.49)0.3800.89 (0.74 to 1.07)0.2330.43 (0.36 to 0.51)0.001
Frontline area
 ICU0.87 (0.70 to 1.10)0.2600.73 (0.58 to 0.93)0.010N/A-0.70 (0.57 to 0.87)0.0010.83 (0.67 to 1.03)0.1001.08 (0.88 to 1.33)0.450
 Anaesthetics and surgery1.18 (0.94 to 1.48)0.1400.85 (0.67 to 1.08)0.190N/A-0.73 (0.59 to 0.91)0.0051.14 (0.91 to 1.43)0.2200.85 (0.69 to 1.05)0.140
 Medical specialty areas1.13 (0.95 to 1.35)0.1500.89 (0.74 to 1.06)0.200N/A-0.67 (0.57 to 0.80)0.0011.19 (1.00 to 1.41)0.0471.18 (1.00 to 1.39)0.040
 Primary care, community and residential aged care0.96 (0.77 to 1.20)0.7600.82 (0.66 to 1.03)0.580N/A-0.62 (0.49 to 0.78)0.0011.53 (1.24 to 1.89)0.0011.35 (1.10 to 1.66)0.003
 Other*1.11 (0.87 to 1.42)0.3800.85 (0.66 to 1.03)0.098N/A-0.64 (0.49 to 0.84)0.0011.31 (1.03 to 1.66)0.0270.89 (0.71 to 1.11)0.300
 Currently working with patients with COVID-191.21 (1.05 to 1.39)0.0061.19 (1.03 to 1.37)0.0151.27 (1.12 to 1.44)0.0011.25 (1.09 to 1.42)0.0011.20 (1.05 to 1.37)0.0070.80 (0.71 to 0.92)0.001
 Received PPE training0.91 (0.80 to 1.05)0.2100.96 (0.83 to 1.10)0.5801.04 (0.92 to 1.17)0.4900.98 (0.85 to 1.12)0.7901.10 (0.97 to 1.25)0.1221.27 (1.12 to 1.43)0.001
 Being worried that colleagues will blame them1.68 (1.42 to 1.97)0.0011.44 (1.22 to 1.71)0.0011.82 (1.58 to 2.11)0.0011.39 (1.19 to 1.62)0.0011.57 (1.36 to 1.81)0.0011.02 (0.89 to 1.18)0.700

N/A=variable not included for that mental scale in the model because no relationship was observed in the univariate model.

Reference categories for each variable were as follows: occupation=medical staff; frontline area=emergency department; currently working with patients with COVID-19=negative response; received PPE training=negative response; being worried about being blamed=disagreed. Resilience was a continuous variable (scores 0–4).

Lower OR for personal accomplishment indicates poorer outcomes.

*Other for frontline area included people working in paramedicine, radiology, pharmacy, pathology and clinical laboratories, or other areas.

COVID-19, coronavirus disease 2019; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; ICU, intensive care unit; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PPE, personal protective equipment; PTSD, post-traumatic stress disorder.

Personal predictors of mental health outcomes (multivariable univariate analysis) N/A=variable not included for that mental scale in the model because no relationship was observed in the univariate model. Reference categories for each variable were as follows: gender=male; age=older than 50 years; pre-existing mental health conditions=negative response; experiencing family or friends infected with COVID-19=negative response; experiencing altered relationships with partner/family/friends/colleagues=no change; concerns about income=negative response. Lower OR for personal accomplishment indicates poorer outcomes. COVID-19, coronavirus disease; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PTSD, post-traumatic stress disorder. Workplace predictors of mental health outcomes (multivariable univariate analysis) N/A=variable not included for that mental scale in the model because no relationship was observed in the univariate model. Reference categories for each variable were as follows: occupation=medical staff; frontline area=emergency department; currently working with patients with COVID-19=negative response; received PPE training=negative response; being worried about being blamed=disagreed. Resilience was a continuous variable (scores 0–4). Lower OR for personal accomplishment indicates poorer outcomes. *Other for frontline area included people working in paramedicine, radiology, pharmacy, pathology and clinical laboratories, or other areas. COVID-19, coronavirus disease 2019; DP, depersonalisation; EE, emotional exhaustion; GAD-7, Generalized Anxiety Disorder Scale-7; ICU, intensive care unit; IES-6, Impact of Events Scale-6; PA, personal accomplishment; PHQ-9, Patient Health Questionnaire-9; PPE, personal protective equipment; PTSD, post-traumatic stress disorder.

Discussion

Main findings

To our knowledge, this is the largest, national, cross-sectional study examining psychosocial distress during the COVID-19 pandemic in Australia that has included all frontline healthcare occupations and areas. Despite participants receiving high scores on the validated resilience instrument, the majority experienced anxiety or depressive symptoms, or EE (burnout). This indicates that the protective effects of resilience are not sufficient to prevent psychological harm during the pandemic. A significant proportion also experienced PTSD symptoms. Although less than half of the participants worked with patients with COVID-19 and very few had been infected with COVID-19 or quarantined, many experienced disruptions to family life, altered social relationships and financial worries. Our findings are consistent with those reported in international studies: high mental health burden on frontline workers during COVID-1910 11 15 and SARS pandemics.34 Fears of transmitting COVID-19 infection to family and of being blamed by colleagues for not taking adequate precautions if they did contract COVID-19 were extremely common. Personal, social and workplace predictors for mental illness symptoms have been identified. Around the world, a growing number of largely country-specific, single timepoint, cross-sectional surveys have identified that mental health problems are common in HCWs during the COVID-19 pandemic. Prevalence estimates are as follows: 33% to 59% for anxiety, 30% to 62% for depression, 41% to 51% for burnout and approximately 57% for acute distress or PTSD.10 11 13–15 35 The upper limits of these prevalence estimates are strikingly similar to our own findings. However, moderate to severe burnout (EE) was much more prevalent in our study (70.9%), which may be explained by the later timing of our study, by which time Australian HCWs had endured many months of social and workplace disruptions, and lockdown restrictions. By contrast, two separate, small (n=320 and n=668), single-site, single timepoint surveys of HCWs undertaken in Melbourne from April to May 2020 and from May to June 2020 both identified a lower prevalence of adverse mental health outcomes.36 37 Their findings may again be partly explained by the earlier timing of the studies in the first wave and the lack of power in those studies due to smaller size of the samples. Comparing our data to international data, the high prevalence of symptoms of poor mental health in our study is interesting given the comparatively low case load of COVID-19 in Australia. One explanation is that anticipation and fear of a catastrophic crisis leading to high death rates of patients and HCWs (as Australian HCWs saw occurring overseas) contributed to adverse psychological outcomes.14 This concept of psychological distress being related to anticipated, perceived risk is important and highlights the critical importance of crisis preparedness, good government and organisational leadership and consistent clear communication. In addition, the pervasive media coverage regarding COVID-19 along with the many restrictions enacted in local lockdowns may have contributed to poor mental health in Australian frontline workers. Similar to our findings, studies from overseas have found that predictors of poor mental health in HCWs during the pandemic include female gender, less years of work experience (which in our study correlated with younger age), pre-existing psychological illnesses, working in a nursing role and working in certain frontline areas.10–13 15 16 35 38 39 Many of these groups are at heightened risk of psychosocial harm during non-pandemic times, and it is possible that crises such as COVID-19 exacerbate harm in pre-existing vulnerable groups.40 Importantly, unlike previous small local and international studies, the large sample size in our study enabled us to demonstrate that female gender and working in nursing or allied health roles are independent predictors of poor mental health. The relationship between nursing and poorer mental health may be explained by the heightened risk of COVID-19 exposure from prolonged and frequent contact with patients. Moreover, nursing and allied health professionals generally have less choice regarding their daily work environments.11–13 16 Reduced finances were not associated with a nursing role and therefore did not explain the association. The relationship between gender and adverse mental illness outcomes is intriguing, given that this relationship was identified even during the SARS pandemic.34 One possible explanation is that men and women have different coping styles,41 with men having greater odds of reporting DP in this study. In addition, a British study identified that women have had to bear greater responsibilities (on average, an extra 11.2 hours of unpaid work per week) than men as primary carers for dependents during the pandemic.42 General population data from the Australian Bureau of Statistics report similar findings, with women three times more likely than men to perform the majority of caregiving tasks and twice as likely to undertake the majority of unpaid domestic work.43 In our study, having young or old dependents was not a predictor of poor mental health. However, we did not specifically enquire about the number of additional unpaid hours undertaken in the home for domestic or caregiving tasks during the pandemic. As there was no difference in resilience scores between men and women, this gender difference requires further exploration. The lack of a relationship between PPE training and poor mental health in our study may relate to the majority of frontline staff receiving training and the relatively low rates of COVID-19 infection in Australia compared with other countries.

Limitations

The large sample size in our study enabled detailed examination of independent predictors of poor mental health. Most participants in our study were women, which is consistent with data from both the Australian Institute of Health and Welfare and the Australian Health Practitioner Regulation Agency demonstrating that 75% of the Australian health workforce is female.44–46 Because of the very broad survey dissemination strategy, calculation of a response rate was not possible. Selection bias and response bias may have led to overestimation or underestimation of psychological distress and rates of pre-existing mental health illness. Similarly, in line with other international surveys exploring the psychosocial effects of the COVID-19 pandemic on healthcare workers, we were not able to confirm clinical diagnoses of mental illness with the symptoms measured by the validated psychological scales. Nevertheless, these scales are validated and the only feasible option for measuring mental health symptoms in a large-scale survey such as this. Because of the spontaneous and unexpected nature of the COVID-19 pandemic, no baseline data regarding mental health symptoms in non-pandemic times had previously been collected from a large cohort of Australian HCWs. Therefore, it is not possible to demonstrate a change in the prevalence estimates of mental health symptoms in this study. Nevertheless, the prevalence estimates in this study are much higher than those reported in earlier studies in non-pandemic times.2 47–49 Notably, the case load of COVID-19 in Australia at the time of survey closure was low relative to international settings, with 27 484 cases recorded.50 The prevalence of mental health impacts arising in the Australian context is indicative of harm related to the prolonged stress of a pandemic, even with relatively few cases. Participant responses were measured at a single timepoint, not longitudinally, to avoid excessively burdening the frontline healthcare workers during the pandemic. However, given the ongoing nature of the pandemic, we believe that longitudinal research is urgently required to better understand any persisting psychosocial effects of the pandemic on HCWs and any ramifications for patient safety and workforce retention. Similar prospective studies sampling Italian HCWs during the first and second waves of COVID-19 have reported growing prevalence of mental health issues as the pandemic continues, and it is likely that similar trends exist in Australia.51 Furthermore, research is required to examine the acceptability, uptake and effectiveness of any new interventions introduced to support the well-being of HCWs.

Implications

Although many factors, including lockdown restrictions, social disconnection and media coverage, likely have contributed to the high prevalence of mental health symptoms in frontline healthcare workers in this study, occupational factors cannot be ignored. Indeed, occupational factors (related to workloads, training, PPE, organisational leadership, communication and policies) must be actively considered because they represent important opportunities to intervene and prevent mental health issues. Both better crisis preparedness and new psychological support services for HCWs are needed. Importantly, such services should not just be short-term ‘fixes’ to address the current pandemic-related issues, but instead should provide long-term support given the high prevalence of pre-existing mental health diagnoses. These supports must be accessible and acceptable to HCWs. Although resilience was identified as a protective factor in this study, the overall resilience level of HCWs was already high, and as such, approaches that aim to build resilience are likely to have limited efficacy in this cohort. Furthermore, it is vital that health leaders in the government, secondary care and the community recognise that certain groups of HCWs are more vulnerable to mental health problems and therefore require additional targeted support interventions. Crucially important are organisational policies and practices that address burnout (and contributing factors such as information overload), given its extremely high prevalence and the risk it poses to workforce retention.7 The health workforce is an indispensable asset. Yet crises such as the COVID-19 pandemic are associated with significant mental health symptoms in frontline HCWs, with potentially wide repercussions for individuals, patients and the workforce. Crisis preparedness, along with long-term, evidence-based policies and practices that focus on preventing and actively addressing psychological well-being, is needed to protect, maintain and ‘future-proof’ the health workforce.
  43 in total

1.  Research electronic data capture (REDCap)--a metadata-driven methodology and workflow process for providing translational research informatics support.

Authors:  Paul A Harris; Robert Taylor; Robert Thielke; Jonathon Payne; Nathaniel Gonzalez; Jose G Conde
Journal:  J Biomed Inform       Date:  2008-09-30       Impact factor: 6.317

2.  Post-traumatic stress disorder amongst surgical trainees: An unrecognised risk?

Authors:  Christopher V Thompson; David N Naumann; Jodie L Fellows; Douglas M Bowley; Nigel Suggett
Journal:  Surgeon       Date:  2015-10-23       Impact factor: 2.392

3.  Associations between Age, Years in Post, Years in the Profession and Personal Experience of Mental Health Problems in UK Mental Health Nurses.

Authors:  Jennifer Oates; Nicholas Drey; Julia Jones
Journal:  Issues Ment Health Nurs       Date:  2017-06-02       Impact factor: 1.835

4.  Suicide by health professionals: a retrospective mortality study in Australia, 2001-2012.

Authors:  Allison J Milner; Humaira Maheen; Marie M Bismark; Matthew J Spittal
Journal:  Med J Aust       Date:  2016-09-19       Impact factor: 7.738

5.  Brief measure of posttraumatic stress reactions: impact of Event Scale-6.

Authors:  Siri Thoresen; Kristian Tambs; Ajmal Hussain; Trond Heir; Venke A Johansen; Jonathan I Bisson
Journal:  Soc Psychiatry Psychiatr Epidemiol       Date:  2009-05-29       Impact factor: 4.328

6.  Responses to birth trauma and prevalence of posttraumatic stress among Australian midwives.

Authors:  Julia Leinweber; Debra K Creedy; Heather Rowe; Jenny Gamble
Journal:  Women Birth       Date:  2016-07-15       Impact factor: 3.172

7.  What's up doc? A national cross-sectional study of psychological wellbeing of hospital doctors in Ireland.

Authors:  Blánaid Hayes; Lucia Prihodova; Gillian Walsh; Frank Doyle; Sally Doherty
Journal:  BMJ Open       Date:  2017-10-16       Impact factor: 2.692

8.  The psychological impact of COVID-19 pandemic on health care workers in a MERS-CoV endemic country.

Authors:  Mohamad-Hani Temsah; Fahad Al-Sohime; Nurah Alamro; Ayman Al-Eyadhy; Khalid Al-Hasan; Amr Jamal; Ibrahim Al-Maglouth; Fadi Aljamaan; Maha Al Amri; Mazin Barry; Sarah Al-Subaie; Ali Mohammed Somily
Journal:  J Infect Public Health       Date:  2020-05-29       Impact factor: 3.718

9.  COVID-19 in Wuhan: Sociodemographic characteristics and hospital support measures associated with the immediate psychological impact on healthcare workers.

Authors:  Zhou Zhu; Shabei Xu; Hui Wang; Zheng Liu; Jianhong Wu; Guo Li; Jinfeng Miao; Chenyan Zhang; Yuan Yang; Wenzhe Sun; Suiqiang Zhu; Yebin Fan; Yuxi Chen; Junbo Hu; Jihong Liu; Wei Wang
Journal:  EClinicalMedicine       Date:  2020-06-24

10.  Who is lonely in lockdown? Cross-cohort analyses of predictors of loneliness before and during the COVID-19 pandemic.

Authors:  F Bu; A Steptoe; D Fancourt
Journal:  Public Health       Date:  2020-08-05       Impact factor: 2.427

View more
  16 in total

1.  Marital Status and Gender Differences as Key Determinants of COVID-19 Impact on Wellbeing, Job Satisfaction and Resilience in Health Care Workers and Staff Working in Academia in the UK During the First Wave of the Pandemic.

Authors:  Junjie Peng; Wing Han Wu; Georgia Doolan; Naila Choudhury; Puja Mehta; Ayesha Khatun; Laura Hennelly; Julian Henty; Elizabeth C Jury; Lih-Mei Liao; Coziana Ciurtin
Journal:  Front Public Health       Date:  2022-06-27

2.  Mixed-Methods Survey of Healthcare Workers' Experiences of Personal Protective Equipment during the COVID-19 Pandemic in Aotearoa/New Zealand.

Authors:  Cervantée E K Wild; Hailey Wells; Nicolene Coetzee; Cameron C Grant; Trudy A Sullivan; José G B Derraik; Yvonne C Anderson
Journal:  Int J Environ Res Public Health       Date:  2022-02-21       Impact factor: 3.390

3.  Trends in burnout and psychological distress in hospital staff over 12 months of the COVID-19 pandemic: a prospective longitudinal survey.

Authors:  Robert G Maunder; Natalie D Heeney; Jonathan J Hunter; Gillian Strudwick; Lianne P Jeffs; Leanne Ginty; Jennie Johnstone; Alex Kiss; Carla A Loftus; Lesley A Wiesenfeld
Journal:  J Occup Med Toxicol       Date:  2022-05-25       Impact factor: 2.862

4.  Mental Health Outcomes in Australian Healthcare and Aged-Care Workers during the Second Year of the COVID-19 Pandemic.

Authors:  Sarah L McGuinness; Josphin Johnson; Owen Eades; Peter A Cameron; Andrew Forbes; Jane Fisher; Kelsey Grantham; Carol Hodgson; Peter Hunter; Jessica Kasza; Helen L Kelsall; Maggie Kirkman; Grant Russell; Philip L Russo; Malcolm R Sim; Kasha P Singh; Helen Skouteris; Karen L Smith; Rhonda L Stuart; Helena J Teede; James M Trauer; Andrew Udy; Sophia Zoungas; Karin Leder
Journal:  Int J Environ Res Public Health       Date:  2022-04-19       Impact factor: 3.390

5.  A time for self-care? Frontline health workers' strategies for managing mental health during the COVID-19 pandemic.

Authors:  Sophie Lewis; Karen Willis; Marie Bismark; Natasha Smallwood
Journal:  SSM Ment Health       Date:  2021-12-07

Review 6.  Sustaining the Australian respiratory workforce through the COVID-19 pandemic: a scoping literature review.

Authors:  Emily Stone; Louis B Irving; Katrina O Tonga; Bruce Thompson
Journal:  Intern Med J       Date:  2022-04-05       Impact factor: 2.611

7.  The workplace and psychosocial experiences of Australian junior doctors during the COVID-19 pandemic.

Authors:  Roseanna Hunter; Karen Willis; Natasha Smallwood
Journal:  Intern Med J       Date:  2022-04-06       Impact factor: 2.611

8.  Differences in Coping Strategies and Help-Seeking Behaviours among Australian Junior and Senior Doctors during the COVID-19 Pandemic.

Authors:  Amy Pascoe; Eldho Paul; Douglas Johnson; Mark Putland; Karen Willis; Natasha Smallwood
Journal:  Int J Environ Res Public Health       Date:  2021-12-16       Impact factor: 3.390

9.  The association of resilience with depression, anxiety, stress and physical activity during the COVID-19 pandemic.

Authors:  Quyen G To; Corneel Vandelanotte; Kathryn Cope; Saman Khalesi; Susan L Williams; Stephanie J Alley; Tanya L Thwaite; Andrew S Fenning; Robert Stanton
Journal:  BMC Public Health       Date:  2022-03-12       Impact factor: 3.295

10.  The Workplace and Psychosocial Experiences of Australian Senior Doctors during the COVID-19 Pandemic: A Qualitative Study.

Authors:  Jonathan Tran; Karen Willis; Margaret Kay; Kathryn Hutt; Natasha Smallwood
Journal:  Int J Environ Res Public Health       Date:  2022-03-05       Impact factor: 3.390

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.