Mental health in the UK during the COVID-19 pandemic: early observations

Background: Previous pandemics have resulted in significant consequences for mental health. Here we report the mental health sequela of the COVID-19 pandemic on the UK population and examine modifiable and non-modifiable explanatory factors associated with mental health outcomes. We focus on the short-term consequences for mental health, as reported during the first four-six weeks of social distancing measures being introduced. Methods: A community cohort study was conducted with adults aged ≥ 18 years recruited through a mainstream and social media campaign between 3/4/20-30/4/20. Consenting participants completed an online survey measuring depression, anxiety and stress and explanatory variables hypothesised to be related to these mental health outcomes. Outcomes: N=3097 eligible individuals participated. The cohort was predominantly female (85%); mean age forty-four years; 10% from minority ethnic groups; 50% described themselves as key-workers and 20% identified as having clinical risk factors putting them at increased risk of COVID-19. Mean scores for depression, stress and anxiety significantly exceeded population norms. Analysis of non-modifiable factors indicated that being younger and female were associated with all outcomes, with the final multivariable models accounting for 7-13% of variance. When adding modifiable factors, significant independent effects emerged for positive mood, perceived loneliness and worry about getting COVID-19 for all outcomes, with the final multivariable models accounting for 54-57% of variance. Interpretation: Increased psychological morbidity was evident in this UK cohort, with younger people and women at particular risk. perceptions of: loneliness, risk of COVID-19, worry about COVID-19, and positive mood effective.


Background
The COVID-19 (Coronavirus, 2019) pandemic has resulted in unprecedented disruption to the fabric of society, our health service and economy. However, the multitude of challenges presented by the pandemic may also pose a significant threat to our psychological health. 1 Individuals are facing a panoply of stressors including: serious illness, bereavement, social distancing, and unemployment. The consequences of these stressors for mental health will not be uniform, rather they will be influenced by a range of modifiable and non-modifiable factors. Understanding these factors will be critical in determining who is at greatest risk of mental health difficulties and potential approaches to intervention. We report here cross-sectional findings from a community cohort study designed to capture both the mental health sequela of the COVID-19 pandemic, as well as the modifiable and non-modifiable explanatory factors associated with adverse mental health outcomes. Our focus is on the immediate consequences for mental health, as reported during the first 4-6 weeks of social distancing measures being introduced in the UK.
In keeping with its recent emergence, much remains unknown about COVID-19 and its consequences. However, the expectation is that the consequences for mental health will be profound and far reaching. 1 Evidence on the impact of the pandemic on people living in China attests to this possibility. For example, one study reported the prevalence of depression and anxiety in medical staff to be over 50% and 44% respectively. 2 Similarly, a study with a general population sample during Level 1 of the epidemic (classified as a 'significant' emergency) revealed that greater than 70% of participants reported moderate or high psychological symptoms of obsessive compulsion, interpersonal sensitivity, phobic anxiety, and psychoticism. 3 The experience of previous pandemics also suggests that significant mental health consequences are probable. During the Middle East Respiratory Syndrome outbreak, for example, untoward psychological effects occurred rapidly: with symptoms of anxiety and anger evident after brief isolation periods of 2 weeks. 4 Similarly, the Severe Acute Respiratory Syndrome epidemic was associated with a 31% increase in suicide amongst the over 65s in Hong Kong. 5 Preliminary evidence from the UK suggests that these experiences may be replicated here. For example, two online surveys conducted in the first week after social distancing measures were introduced, highlighted some early concerns. 1 One survey was conducted with people with lived experience of mental health problems and stakeholders (n=2198), and the other a nationally representative sample of the general population (n=1099). Both cohorts were asked about their concerns regarding the mental health impact of the COVID-19 pandemic. Although no validated assessments of mental health were undertaken, a common theme for both cohorts was concern about increasing levels of anxiety, and the role of social distancing measures and well-being of family members in contributing to such anxiety. Similarly, a qualitative study examining the mental health impact of social distancing measures suggested that deleterious effects were evident within 5-12 days of such measures being in place. 6 So it would seem likely that we should brace ourselves for a significant increase in mental health difficulties associated with the pandemic. But who might be at greatest risk? Individuals at increased risk of the disease and/or adverse outcomes might be expected to experience greater mental health difficulties. Several such groups have now been identified. For example, the death rate is known to be higher in men and older individuals. 7, 8 The latter also being more likely to have co-existing conditions and be socially-isolated through shielding. The ethnic diversity of countries such as the US and UK has also highlighted that individuals from Black, Asian and Minority Ethnic (BAME) backgrounds appear to be affected disproportionately by the disease. 9 Finally, recent UK data suggest that some key-workers, in particular those in social care, are at greater risk of COVID-19 related mortality. 7 This combined with evidence from China of increased anxiety and depression among health care workers, 3 suggests that key-workers may also be at greater risk of adverse mental health outcomes.
The aforementioned factors are, however, largely non-modifiable. Do modifiable risk factors exist which could be targets for intervention? Stress and coping theory. 10 attests that emotional responses to challenging situations vary according to both our appraisal of stressors and the availability of psychological and social resources.
Cognitions are central to our appraisal process and, in the current context, one might expect that individuals who appraise that they are at greatest risk of disease may have poorer mental health outcomes. Evidence from the Netherlands during the H1N1 pandemic supports this hypothesis, with prospective data indicating that levels of anxiety declined as perceptions of the risk of acquiring severe disease declined. 11 Another relevant feature of our appraisal process concerns the extent to which we attend to and worry about threats to our health. This is . CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review) The copyright holder for this preprint this version posted May 19, 2020. . https://doi.org/10.1101/2020.05.14.20102012 doi: medRxiv preprint particularly pertinent in contexts where individuals receive health threat information from the media, as in the current pandemic. 12 Early evidence of this mechanism has emerged in the COVID-19 pandemic: with frequency of exposure to information about COVID-19 on social media found to be positively associated with mental health outcomes. 13 In terms of resources, social support, and its corollary loneliness, are among the best established determinants of our emotional responses to stressors. Successive systematic reviews demonstrate not only poorer mental health outcomes, but also increased morbidity and mortality in individuals who perceive themselves to be more lonely and lacking in support. 14,15 A determinant also attracting attention is positive mood. It is now recognised that positive mood is not just the opposite of negative mood, but may in fact confer direct effects on well-being as well as protective effects in challenging situations. 10,16 In terms of mental health outcomes, evidence suggests that the existence of positive mood reduces the risk of mood disorders by 28% and anxiety disorders by 53%, and also influences recovery from some mental health conditions. 17,18 Taken together there is an urgent need to report evidence on the prevalence of mental health problems during the COVID-19 pandemic, to understand who may be at greatest risk, and to explore the psychological and social resources that may mitigate this risk. To that end, we report cross sectional findings from a community cohort survey conducted between 3 rd and 30 th April 2020 which coincided with the first 4-6 weeks of social distancing measures being introduced in the UK.

Recruitment and Eligibility
Ethical approval was granted from the University of Nottingham Faculty of Medicine and Health Sciences (ref:  and the NHS Health Research Authority (ref: 20/HRA/1858). The study was launched on 3/4/20 with participants recruited in the community through a social and mainstream media campaign involving, but not limited to, Facebook and Twitter. In addition, HRA regulatory approval enabled us to approach NHS organisations and request they advertise the research through their routine communications. Recruitment continued until 30/4/20. All media directed potential participants to the study website (www.covidstressstudy.co.uk) through which they accessed the information sheet, consent form and online survey.
Eligibility criteria specified that participants should be: aged 18 and over; able to give informed consent; able to read English; residing in the UK at the time of completing the survey and able to provide a sample of hair at least 1 cm long. The latter was collected for the determination of the stress biomarker cortisol which will be the subject of future manuscripts.

Procedures
Consenting participants completed an online survey implemented through JISC Online Survey (https://www.onlinesurveys.ac.uk/). This included validated measures capturing the mental health outcomes: anxiety ( α =0·88), depression (α=0·92) and stress (α=0·76). [19][20][21][22] We also measured modifiable and nonmodifiable variables we hypothesised would be related to these mental health outcomes due to being (i) associated with an increased risk of contracting COVID-19 and/or adverse disease outcomes; or (ii) known to be directly associated with adverse mental health outcomes. These were: age, gender, ethnicity, key-worker status, living alone, positive mood, worry about contracting COVID-19 and perceived loneliness and risk of COVID-19 (see supplementary appendix).

Statistical analysis
We first summarised the outcome variables (depression, anxiety and stress) and participant characteristics with appropriate summary statistics and examined histograms and scatterplots. To explore the associations between . CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review) The copyright holder for this preprint this version posted May 19, 2020. . https://doi.org/10.1101/2020.05.14.20102012 doi: medRxiv preprint non-modifiable and modifiable explanatory factors on outcome variables we conducted univariable linear regression analyses (see supplementary appendix). Multivariable linear regression analyses were then used to explore the independent relationships of non-modifiable factors (age, gender, ethnicity, keyworker status, living alone) on outcome variables. Then, in subsequent models, modifiable explanatory factors (perceived loneliness, perceived risk of COVID-19, positive mood, worry about contracting COVID-19) were added to examine the additional and independent contribution of these factors to explaining variation in the outcome variables. The variable assessing COVID-19 worry was treated as a categorical variable in all models, with "occasional worry" treated as the reference value as this was the most common response. Assumptions of linear regression (normality and homoscedasticity of residuals, linearity with continuous variables) and presence of outliers were assessed graphically. Square root transformations were used for depression and anxiety scores to satisfy assumptions. Robustness of the models were examined by removing data points with large residuals (<-3 or >3) and comparing results to the original models. In the vast majority of models, this had no substantive effect on interpretation. Thus these results are only mentioned where interpretation may be affected. Additionally, as perceived risk of getting COVID-19 was not assessed in those who thought they had had it (n=519) these participants are not represented in final multivariable models. As a sensitivity analysis, models were additionally re-specified excluding this explanatory variable (see supplementary appendix).
For depression and anxiety we carried out additional analyses dichotomising according to established cut-offs (scores of 10 or greater indicating moderate or severe levels). We used multiple logistic regression to estimate odds ratios with 95% confidence intervals for their associations with non-modifiable and modifiable variables.
Statistical analyses were performed using STATA (version 16).

Role of funding source
The study sponsor did not play a role in the study design, collection; analysis, and interpretation of data; in the writing of the report; and in the decision to submit the paper for publication.

Cohort characteristics
The final number of participants recruited was n=3102. Of these, five were ineligible due to being less than 18 years old. Thus, yielding n=3097 eligible participants. The largest proportion of visitors to the website came direct to the URL (62%/n=15,218), followed by 25% (n=6068) via Facebook (the remainder through other websites). The vast majority of respondents accessed the website via a mobile phone (70%/n=17045). The survey was completed in full by 100% of those who started it, consequently there were no missing data, with the exception of age, for which 2 participants entered non-numeric values. Table 1 summarises the main characteristics of the participants and reveals that our sample was predominantly female; with a mean age of 44 years (standard deviation=15); with participation across the UK (albeit primarily from England) and 10%/n=296 from minority ethnic backgrounds. Fifty percent (n=1559) described themselves as key-workers (39%/n=1198 identifying as working in health and social care). Twenty percent (n=649) identified themselves as having clinical risk factors which would put them at increased or greatest risk of COVID-19. CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity.

(which was not certified by peer review)
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(which was not certified by peer review)
The copyright holder for this preprint this version posted May 19, 2020. Public safety or national security worker 11 (0·4%) Worker involved in medicines or protective equipment production or distribution 10 (0·3%) Other key worker role not listed 168 (5·4%) Not a key worker 1538 (49·7%)

COVID-19 risk status
Most at risk (e.g. suffering from advanced cancer, severe asthma/COPD, etc.) 121 (3·9%) At increased risk (e.g., being pregnant, aged over 70, etc.) 528 (17·1%) Not at-risk 2448 (79·0%) Table 2 summarises findings in relation to levels of stress, anxiety and depression in the cohort. The mean values for all measures indicate levels that are higher in women than men and decrease with age. Overall mean values are significantly higher than previously reported population norms [23][24][25] . For both anxiety and depression the means for the cohort were higher for both genders compared with their respective population norms, and also for all age ranges between 25-64 years. In contrast, both men and women aged over 65 years had anxiety and depression scores consistent with previous population norms. The data suggested no significant differences in stress scores by gender, despite the combined mean score exceeding the population norm. Table 3 shows the categorisation of participants in line with established cut-offs for anxiety and depression. This shows 64% of participants reported symptoms of depression and 57% reported symptoms of anxiety. When considering the thresholds at which someone would qualify for high intensity psychological support (score of 10 or greater) in the NHS, 26 we observe that 31.6% reported moderate to severe depression and 26% moderate to severe anxiety.

Mental health outcomes
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Individuals at greatest risk of mental health problems: associations with age, gender, ethnicity, living alone and key-worker status
When non-modifiable explanatory variables were included in a multivariable model (Table 4), we observed that for depression (square-root transformed scores), being younger (B=-0·28, 95% CI:-0·31, -0·25 per decade), female (B=0·36, 95% CI: 0·25, 0·47) and living alone (B=0·34, 95% CI: 0·25, 0·47) were all independently significantly associated with greater levels of depression. This model accounted for approximately 13% of the variance in depression scores. These results were replicated when considering depression as a binary outcome (i.e., cases requiring high intensity intervention versus not) with females having a 49% increased odds of depression and living alone associated with a 55% increase. **** p<0·0001, *** p<0·001, ** p<0·01, * p<0·05 a A square-root transformation was applied to the dependent variable. b a "case" is defined as a PHQ-9 score greater than or equal to 10, at which level someone would qualify for high intensity psychological support in the NHS.
. CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity.

Individuals at greatest risk of mental health problems: associations with perceived risk of COVID-19, perceived loneliness, COVID-19 worry and positive mood
. CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity.

(which was not certified by peer review)
The copyright holder for this preprint this version posted May 19, 2020. .

CC-BY 4.0 International license
It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity.
. **** p<0·0001, *** p<0·001, ** p<0·01, * p<0·05 a A square-root transformation was applied to the dependent variable. b Comparison reference group "I occasionally worry about getting COVID-19". c a "case" is defined as a PHQ-9 score greater than or equal to 10, at which level someone would qualify for high intensity psychological support in the NHS.

Discussion
We report findings from a community cohort study established in the UK to examine the mental health consequences of the COVID-19 pandemic. Our results pertain to the experiences of people within the first four to six weeks of social distancing measures being introduced, and focus on self-reported depression, anxiety and stress scores. The findings indicated that mean levels of depression, anxiety and stress significantly exceeded recent population norms. [23][24][25] Models examining the relationship between these mental health outcomes and nonmodifiable explanatory factors accounted for only a modest proportion of the variance (7-13%). Increased depression was associated with being younger, female and living alone; increased anxiety was associated with being younger and female; and increased stress was associated with being younger, female, living alone, being from a BAME background and not being a keyworker. In contrast, when we added the hypothesised modifiable variables into our multivariable models we observed that they accounted for a much larger proportion of the variance (54-57%) with significant independent effects emerging for positive mood, perceived loneliness and worry about getting COVID-19 for all three outcomes, as well as perceived risk of COVID-19 emerging as significant for anxiety and stress.
These findings highlight a number of issues worthy of discussion. First, both mean scores and measures of caseness indicate that the COVID-19 pandemic is having widespread and deleterious effects on the emotional wellbeing of people in the UK. This is true for depression, generalised anxiety disorder and stress and is in keeping with observations from other countries. 2,3 Indeed, the proportion of participants who would require intensive support for depression and anxiety in the NHS does not compare favourably with recent historical estimates of the prevalence of mental health problems in the UK. For example, the 2014 ONS report on adult psychiatric morbidity reported a prevalence of 17% for six different common mental disorders. 27 The prevalence of depression alone in the context of this pandemic is almost double this.
Second, the non-modifiable explanatory variables significantly associated with all three of our mental health outcomes were being younger and being female. These findings are consistent with unpublished data from another UK community cohort recruited during the COVID-19 pandemic with a similar gender profile to our own, 28 suggesting that these groups may be the most in need of intervention. Although this runs counter to our hypothesis that the greatest psychological morbidity would be observed in individuals at greatest risk of COVID-19, it is consistent with previous work which has shown that individual's perceptions of disease risk are often poorly related to actual risk. 29 Alternatively, the results may reflect the fact that the pandemic has resulted in a panoply of challenges to mental health that go beyond the disease itself. It could be hypothesised, for example, that some of the more immediate consequences such as unemployment, financial concerns and increased domestic violence would disproportionately affect younger people and women and this may explain our findings.
A third, and related issue, is that although being younger and female were consistently associated with poorer mental health, the relationship was modest, accounting for, at best, 13% of the variance. In contrast, the . CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review) The copyright holder for this preprint this version posted May 19, 2020. . https://doi.org/10.1101/2020.05.14.20102012 doi: medRxiv preprint modifiable explanatory measures when added to the multivariable models accounted for 52-57% of the variance. These findings are encouraging as they suggest that there is considerable potential for us to develop interventions to mitigate the mental health effects of the pandemic. The measures of perceived loneliness, positive mood and worry about getting COVID-19 were strongly associated with all three outcomes and thus would be appropriate cognitions to be targeted in future interventions. 30 A further issue concerns the effects of the pandemic beyond mental health. It is well known that when negative mood states persist over time they result in the dysregulation of physiological systems involved in the regulation of the immune system. 31 Thus, there exists significant potential for the psychological harm inflicted by the pandemic to translate into physical harm. This could include an increased susceptibility to the virus, worse outcomes if infected, or indeed poorer responses to vaccinations in the future. 32 Studies providing longitudinal data on the prevalence of psychological morbidity and appropriate biomarkers (e.g., cortisol) will be required to determine whether the risks to physical health go beyond the hypothetical.
Finally, we would like to acknowledge several limitations. These include the cross-sectional design of the work which impedes an analysis of cause and effect; the limited generalisability of our cohort inflicted by the selfselected community cohort design and the absence of information on pre-existing mental health conditions which are likely to impact on the severity and prevalence of psychological morbidity. 1 Nonetheless, we are among the first to provide evidence from a large cohort on the mental health impact of the COVID-19 pandemic on people in the UK; to identify groups who may be at particular risk, as well as potential targets for therapeutic intervention.
. CC-BY 4.0 International license It is made available under a is the author/funder, who has granted medRxiv a license to display the preprint in perpetuity. (which was not certified by peer review) The copyright holder for this preprint this version posted May 19, 2020. . https://doi.org/10.1101/2020.05.14.20102012 doi: medRxiv preprint

Author contributions
Ru Jia: study design, coordination and management of recruitment, preparation, analysis and interpretation of data and preparation of manuscript.
Kieran Ayling: study design, coordination and management of recruitment, preparation, analysis and interpretation of data and preparation of manuscript.
Trudie Chalder: study design, analysis and interpretation of data and preparation of manuscript Adam Massey: study design, coordination and management of recruitment, preparation, analysis and interpretation of data and preparation of manuscript.
Elizabeth Broadbent: study design, interpretation of data and preparation of manuscript Carol Coupland: study design, analysis and interpretation of data and preparation of manuscript Kavita Vedhara: research lead, study design, coordination and management of recruitment, preparation, analysis and interpretation of data and preparation of manuscript. As corresponding author, KV had access to all the data in the study and had final responsibility for the decision to submit for publication