Introduction
In 2022, there were approximately 225,000 full-time equivalent (FTE) police employees in England and Wales and 164,000 police officers in the United Kingdom (Allen and Mansfield, Reference Allen and Mansfield2022). Between 2010 and 2019 there was a 19% real-terms reduction in police funding from government and local services (National Audit Office, 2018). This resulted in lower police officer numbers (Allen and Mansfield, Reference Allen and Mansfield2022) and likely contributed to increased occupational stress for an already overburdened workforce (Burchell et al., Reference Burchell, Miller, Brewin, Soffia and Wang2022). Policing is often considered a stressful occupation due to high rates of exposure to traumatic situations, such as responding to homicides and road traffic accidents (Cartwright and Roach, Reference Cartwright and Roach2020; Violanti et al., Reference Violanti, Fekedulegn, Hartley, Charles, Andrew, Ma and Burchfiel2016). However, traumatic events are often not reported as the most frequent causes of work-related stress by police staff (Elliott-Davies, Reference Elliott-Davies2021b). Instead, the most commonly cited sources of stress are a high workload, poor work–life balance, working shifts, being uncertain about a future role or career (Elliott-Davies, Reference Elliott-Davies2021b), a lack of support, long working hours, job demand (sustained physical/mental effort) and job pressure (Purba and Demou, Reference Purba and Demou2019). These stressors have demonstrated a strong relationship with adverse mental health outcomes, including psychological distress, and emotional exhaustion (Purba and Demou, Reference Purba and Demou2019). Furthermore, research has shown that occupational stress is a strong risk factor for depression, suicidal ideation and post-traumatic stress disorder (PTSD) in police employees (Syed et al., Reference Syed, Ashwick, Schlosser, Jones, Rowe and Billings2020).
Exposure to stressors, traumatic or otherwise, can be associated with police officers taking sick leave. In 2021, 1,965 FTE police officers were on long-term sick leave (more than 28 days) across 43 police forces in England and Wales which accounted for 1.5% of the uniformed workforce (Home Office, 2021). In 2020, 48% of police officers in the UK reported 1 or more days of sickness absence and 32% of those attributed at least 1 day to stress, depression or anxiety (Elliott-Davies, Reference Elliott-Davies2021a). Similarly, in 20 UK police forces over the last 10 years, 56% of police officers took sick leave due to stress and 37% due to anxiety and depression (Cartwright and Roach, Reference Cartwright and Roach2020). Further, 39% of police officers who had one period of sickness absence because of mental ill-health or work-related stress took additional absences from work (Cartwright and Roach, Reference Cartwright and Roach2020). Occupational stress for police officers has also been associated with increased consumption of alcohol (Houdmont and Jachens, Reference Houdmont and Jachens2021), which may lead to sickness absences (Marzan et al., Reference Marzan, Callinan, Livingston, Leggat and Jiang2022).
Previous research reported police employees were on long-term sick leave due to musculoskeletal and stress-related issues (Her Majesty’s Inspectorate of Constabulary (HMIC), 1997). However, a recent report on the UK general population highlighted mental health conditions as one of the top four reasons for taking sick leave (Office for National Statistics, 2022). To date, there has been limited research conducted on sickness absence in police employees and its relation to occupational stressors, health risk behaviours and mental health. The existing research has often focused on specific areas such as shift work (Fekedulegn et al., Reference Fekedulegn, Burchfiel, Hartley, Andrew, Charles, Tinney-Zara and Violanti2013), harassment, threats or violence (Svedberg and Alexanderson, Reference Svedberg and Alexanderson2012) or gender differences (Körlin et al., Reference Körlin, Alexanderson and Svedberg2009).
This exploratory analysis aimed to investigate the associations between sickness absence in UK police employees with sociodemographic factors, occupational stressors, health risk behaviours and mental health outcomes.
Method
Study design and sample
Cross-sectional data were obtained from the Airwave Health Monitoring Study (AHMS), an occupational cohort study, which aimed to determine the possible health risks associated with Terrestrial Trunked Radio (TETRA) usage in the UK police forces (Elliott et al., Reference Elliott, Vergnaud, Singh, Neasham, Spear and Heard2014). TETRA is a digital communication system used by the police forces and other emergency services in the UK since 2001 (Elliott et al., Reference Elliott, Vergnaud, Singh, Neasham, Spear and Heard2014). Participating police force employees completed an enrolment questionnaire during routine administration or when they visited occupational health services, and a health screen. The enrolment questionnaire included questions on sociodemographic characteristics, work environment, lifestyle and health (including mental health and sickness absence). The health screen was conducted by trained nurses and included an interview which collected data on medical history, smoking status and alcohol consumption. Data were collected between April 2006 and March 2015 and this analysis is based on a sample of 40,343 police employees (Elliott et al., Reference Elliott, Vergnaud, Singh, Neasham, Spear and Heard2014).
Measures
Sickness absence
The main outcome of interest was the amount of self-reported sickness absence days taken within the year before screening. Days of sickness absence were grouped into four categories based on the spread of the data and similar to a previous study using the AHMS data (Irizar et al., Reference Irizar, Gage, Field, Fallon and Goodwin2021a): none, low (1–5), moderate (6–19) and long-term sickness absence (LTSA, 20 or more). LTSA of 20 days or more was chosen in accordance with the UK government guidance on long-term sickness of 4 weeks or more (https://www.gov.uk/taking-sick-leave).
Sociodemographic variables
Sociodemographic variables included gender (male/female), rank (police officer/police staff), age, ethnicity (white/all other ethnic groups combined), marital status (married or cohabiting/divorced or separated/single/other) and educational attainment. Age was grouped into 10-year age bands from under 30 years to 50 years and above, similar to previous studies that used the AHMS data (Irizar et al., Reference Irizar, Gage, Field, Fallon and Goodwin2021a, Reference Irizar, Stevelink, Pernet, Gage, Greenberg, Wessely, Goodwin and Fear2021b; Stevelink et al., Reference Stevelink, Opie, Pernet, Gao, Elliott, Wessely, Fear, Hotopf and Greenberg2020). Education was grouped by the AHMS into categories of low (O levels/General Certificate of Secondary Education (GCSEs)or none) and high (A levels, degree or higher).
Occupational variables
Occupational variables included salary, years in the police force, total number of hours worked per week (including overtime), shift work, job strain and job satisfaction. Years in the police force was determined by subtracting the year of joining the police from the year that the AHMS screening took place. Job strain was measured using six items from the Job Content Questionnaire (Karasek, Reference Karasek1985). Job satisfaction was a single-item measure: ‘Taking all things into consideration how satisfied are you with your job as a whole?’ with choices of very satisfied, satisfied, dissatisfied and very dissatisfied.
Health risk behaviours
Health risk behaviours included alcohol consumption (including binge drinking), smoking status (non-smoker/current smoker) and general practitioner (GP) consultations (number of times GP was consulted for health problems in the past year). Alcohol consumption was determined by the AHMS using a drinks diary, which recorded the drinks consumed in the past week for beer, spirits, white wine, red wine and fortified wine (converted into units). Binge drinking was defined as having six or more drinks on one occasion and frequent binge drinking was binge drinking at least two to four times a month, the same as a previous study (Irizar et al., Reference Irizar, Gage, Field, Fallon and Goodwin2021a). GP consultations were categorised based on the spread of the data (0, 1–2, 3–4, ≥5). Participants were asked whether they were smoking at the time of screening, so non-smoker may include those who previously smoked.
Mental health
Mental health measures included those for probable depression, anxiety and PTSD. Probable depression was measured using the nine-item Patient Health Questionnaire (PHQ-9) (Kroenke et al., Reference Kroenke, Spitzer and Williams2001) with response options from not at all (0) to nearly every day (3) and a score of 10 or above indicated probable depression (Spitzer et al., Reference Spitzer, Kroenke, Williams and Löwe2006). Probable anxiety was measured using the anxiety subscale of the Hospital Anxiety and Depression Scale (HADS-A) and a score of 11 or above indicated probable anxiety (Zigmond and Snaith, Reference Zigmond and Snaith1983). Probable PTSD was measured using the Trauma Screening Questionnaire (TSQ) with response options from not at all to extremely (Brewin et al., Reference Brewin, Rose, Andrews, Green, Tata, Mcevedy, Turner and Foa2002). Any response other than not at all was scored as one and a score of six or above indicated probable PTSD (Brewin et al., Reference Brewin, Rose, Andrews, Green, Tata, Mcevedy, Turner and Foa2002). The TSQ was only asked to participants who answered yes to the following question: ‘Have you been exposed to trauma in the past 6 months?’ (n = 5,460). Any participant who answered no to this question was assigned to the non-caseness group for PTSD.
All three mental health measures have been widely used and shown to have good reliability and validity (Bjelland et al., Reference Bjelland, Dahl, Haug and Neckelmann2002; Brewin, Reference Brewin2005; Brewin et al., Reference Brewin, Rose, Andrews, Green, Tata, Mcevedy, Turner and Foa2002; Kroenke et al., Reference Kroenke, Spitzer and Williams2001; Zigmond and Snaith, Reference Zigmond and Snaith1983). The internal reliability of the measures in the current sample was good, PHQ-9 α = 0.84, HADS-A α = 0.83, TSQ α = 0.92.
Data analysis
Data were analysed using Stata 17 (StataCorp., College Station, TX, USA). Descriptive statistics were reported for the sample characteristics using frequencies and percentages to describe the distribution of sociodemographic factors, health risk behaviours, occupational stressors and mental health outcomes across the whole sample and by sickness absence status. To compare variables, chi-squared tests for categorical variables and ANOVA for the comparison of continuous variables means were used. Multinomial logistic regression was used to explore any potential associations with sickness absence and sociodemographic factors, health risk behaviours, occupational stressors and mental health outcomes. These were adjusted for known confounders from the literature including age, gender and rank (Cartwright and Roach, Reference Cartwright and Roach2020; Fekedulegn et al., Reference Fekedulegn, Burchfiel, Hartley, Andrew, Charles, Tinney-Zara and Violanti2013). To account for multiple testing, the data were corrected using the false discovery rate (Benjamini and Hochberg, Reference Benjamini and Hochberg1995) on all variables and the results were the same with and without this correction (data not shown). Unadjusted odds ratio (Table S1, supplementary materials) and adjusted odds ratio (AOR) are reported with 95% confidence intervals (CIs). Statistical significance is reported using p values with a threshold of p < 0.05.
Missing data
There was a high amount of missing data for the shift work variables shift working (73%, n = 29,319) and control over shift patterns/≤9 hours of rest between shifts (84%, n = 33,837) (Table 1). This was due to the shift work questions only being included in later versions of the AHMS assessment. Therefore, the shift work variables were only used to describe the sample. The other variables with the highest amount of missing data were rank (10%, n = 3,855), GP consultations (7%, n = 2,799) and probable PTSD (6%, n = 2,508). Given that the data were assumed to be not missing at random and the amount of missingness on the variables of interest was low (<10%), it was not deemed appropriate to use multiple imputation (Sterne et al., Reference Sterne, White, Carlin, Spratt, Royston, Kenward, Wood and Carpenter2009). Therefore, data were excluded from specific analyses where it was missing by listwise deletion (Hughes et al., Reference Hughes, Heron, Sterne and Tilling2019; Pepinsky, Reference Pepinsky2018). Data on the variables of interest were available for 41,082 respondents. A total of 739 respondents were excluded from our analyses if their rank was reported as other as it could not be determined if they were employed in the police force as either police staff or police officers. The final sample available for analytical purposes included 40,343 police employees.
Ethics and data access
The AHMS received ethical approval from the National Health Service multi-site research ethics committee (MREC/13/NW/0588). Written informed consent was obtained from all subjects.
The AHMS data were securely accessed through the Dementias Platform UK (application number 0378) and data access agreements were completed for each member of the research team.
Results
Sample characteristics
The sample size was 40,343, including 71% police officers and 29% police staff (Table 1). The majority were male (63%), aged between 40 and 49 years (40%), identified as white (95%) and were married or cohabiting (78%). Most of the sample reported being at low risk for alcohol consumption (55%) and were binge drinkers for less than two to four times a month (70%). Only 9% of the sample were smokers. For mental health outcomes, the prevalence of probable PTSD was 4%, probable depression 10% and probable anxiety 8%. Job strain levels varied from low (27%), high (24%), active (28%) and passive (21%). Most participants worked 40 hours or less (42%) and were shift workers (59%).
TSQ, Trauma Screening Questionnaire; PHQ-9, Patient Health Questionnaire; HADS-A, Hospital Anxiety and Depression Scale (anxiety subscale).
Sickness absence and sociodemographic factors
The majority of police employees in our sample reported no sickness absence in the past year (46%), followed by a low amount (33%) (Table 2). Moderate amounts of sickness absence (13%) and LTSA (8%) were less frequently reported. Women had more LTSA (10%) compared with men (7%). Police staff had more sickness absences of any amount (61%) compared with police officers (50%). Older staff had more LTSA (30–39 years old 7%, 40–49 years old 9% and 50 or over 9%), compared with those under 30 years old (5%). Police employees separated or divorced had more LTSA (11%) compared with those married or cohabiting (8%). Unadjusted models are reported in Table S1 (supplementary materials).
Adjusted for rank, gender and age.
* p < 0.05, **p < 0.01, ***p < 0.001.
Sickness absence and occupational stressors
Staff who had served between 6 and 10 years had an elevated risk for LTSA (AOR: 1.38, 95% CI: 1.21, 1.58) compared with those in the police force for 5 years or less (Table 2). Police employees who were dissatisfied or very dissatisfied with their jobs were more likely to report any sickness absence compared with those who were satisfied with their jobs; effect sizes increased for greater amounts of sickness absences (Table 2). Those who were very dissatisfied with their job had three times greater odds (AOR: 3.11, 95% CI: 2.58, 3.75) of LTSA compared with those who were satisfied with their job. Police employees with passive or high job strain had an elevated risk for any sickness absence compared to those with low job strain (Table 2).
Having a higher salary (≥£38,000) and working 49 or more hours was associated with having less sick leave compared with lower salaries (<£38,000) and fewer working hours (Table 2). Those in the police force over 20 years were less likely to have low (AOR: 0.62, 95% CI: 0.57, 0.68) and moderate (AOR: 0.70, 95% CI: 0.62, 0.79) amounts of sickness absence compared with those in the police force 5 years or less. Police employees with high educational attainment and high job satisfaction were less likely to have any amount of sickness absence compared with those who reported low educational attainment and low job satisfaction (Table 2).
Sickness absence and health risk behaviours
Smokers and those with three or more GP consultations in the past year had an elevated risk for any amount of sickness absence compared with non-smokers and those with 1–2 days of GP consultations (Table 2). Non-drinkers (AOR: 1.54, 95% CI: 1.35, 1.75) and those with harmful alcohol consumption (AOR: 1.74, 95% CI: 1.42, 2.14) had a higher risk for LTSA compared with those who had low-risk alcohol consumption. Further, frequent binge drinking was associated with a mildly elevated risk of having more LTSA compared with those who were binge drinkers less than two to four times a month (AOR: 1.11, 95% CI: 1.02, 1.21).
Sickness absence and mental health outcomes
Police employees with probable PTSD, probable depression and probable anxiety were more likely to have moderate sickness absence and LTSA compared with those without a mental health problem (Table 2); effect sizes increased for greater amounts of sickness absence. Those with probable PTSD (AOR: 2.55, 95% CI: 2.15, 3.02) and probable anxiety (AOR: 2.48, 95% CI: 2.20, 2.80) were twice as likely to report LTSA and those with probable depression were three times as likely (AOR: 3.28, 95% CI: 2.94, 3.66).
Discussion
Key findings
Most police employees reported no sickness absence in the past year, followed by a low amount (1–5 days). Moderate amounts (6–19 days) of sickness absence and LTSA (20 or more days) were less frequently reported. When compared with police employees who did not have any days of sickness absence, those taking sick leave were more likely to be women, non-uniformed police staff, divorced or separated, smokers, those with three or more GP consultations in the past year and poor mental health. The factors associated with lower odds of reporting sickness absence included having a high salary, high educational attainment, working 49 or more hours, being in the police force over 20 years, having high job satisfaction and low job strain.
Sickness absence and mental health outcomes
Adverse mental health outcomes including probable PTSD, probable depression and probable anxiety for police employees were associated with greater amounts of sickness absence compared to those without a mental health problem. This is consistent with previous research which reported police employees taking sick leave due to mental ill-health (Cartwright and Roach, Reference Cartwright and Roach2020; Elliott-Davies, Reference Elliott-Davies2021a). However, due to the cross-sectional nature of our study, the direction of the relationship is not known. Rather than mental ill-health leading to sickness absence, it is possible that those taking sick leave later developed mental health problems and employment status may be a confounder (Pearce et al., Reference Pearce, Checkoway and Kriebel2007). It is important to consider this bias when interpreting the results of our study. Furthermore, as the data for sickness absence and mental health were collected at different time points, any potential associations should be interpreted with caution. However, previous research has shown mental health measures to be relatively stable over time (Kessler et al., Reference Kessler, Berglund, Demler, Jin, Merikangas and Walters2005).
In our sample, police staff were more likely to take sick leave compared with police officers. Previous research reported that police staff and constables were more likely to take sick leave for psychological or mental ill-health compared with sergeants and higher ranks (Cartwright and Roach, Reference Cartwright and Roach2020; Elliott-Davies, Reference Elliott-Davies2021b). This may be because police staff are exposed to more traumatic experiences over which they have no control, such as call handlers listening to distressed callers which may cause vicarious trauma (Golding et al., Reference Golding, Horsfield, Davies, Egan, Jones, Raleigh, Schofield, Squires, Start, Quinn and Cropley2017). Furthermore, police staff may have not expected to be exposed to trauma and may have not developed the coping strategies that officers have (Cartwright and Roach, Reference Cartwright and Roach2020). However, research supporting this has collected sickness absence data using freedom of information requests and self-reporting so the data may be incomplete and prone to bias (Cartwright and Roach, Reference Cartwright and Roach2020; Elliott-Davies, Reference Elliott-Davies2021a).
Sickness absence and sociodemographic factors
Fifty-four per cent of police employees had at least 1 day of sickness absence, which is similar to the 2020 Demand, Capacity and Welfare Survey of UK police officers (Elliott-Davies, Reference Elliott-Davies2021a). The survey reported that 48% of police officers (n = 12,471) had 1 or more days of sickness absence and 32% attributed at least 1 day to stress, depression or anxiety. However, the survey only included police officers and not police staff (Elliott-Davies, Reference Elliott-Davies2021a).
In our study, women were more likely to report any amount of sickness absence (63%) compared with men (49%), similar to national data sources which found that women in the general population reported more sickness absences compared with men (Office for National Statistics, 2022). This gender gap in the rates of sickness absence is consistent across several Western countries but the reasons for this are unclear (Østby et al., Reference Østby, Mykletun and Nilsen2018). UK national statistics reported female police officers were more likely to be on long-term sick leave (1.7%) compared with men (1.3%) (Home Office, 2021). However, there is limited previous research in this area and the studies have used several different measures for sickness absence (Körlin et al., Reference Körlin, Alexanderson and Svedberg2009), therefore more investigation is required to understand the gender differences.
Sickness absence and health risk behaviours
Smoking, abstinence from alcohol and harmful drinking were all associated with more sickness absence. Previous research reported that police employees meeting the criteria for probable depression, anxiety and/or PTSD were more likely to engage in health risk behaviours (Irizar et al., Reference Irizar, Gage, Fallon and Goodwin2022). The association of abstinence from alcohol with sickness absence may be related to the ‘sick quitter’ hypothesis which suggests that abstinence may be due to attempts to prevent further decline of a physical or mental health issue related to heavy drinking (Marzan et al., Reference Marzan, Callinan, Livingston, Leggat and Jiang2022; Shaper et al., Reference Shaper, Wannamethee and Walker1988). Previous research on police employees has reported heavy alcohol consumption (Stevelink et al., Reference Stevelink, Opie, Pernet, Gao, Elliott, Wessely, Fear, Hotopf and Greenberg2020; Syed et al., Reference Syed, Ashwick, Schlosser, Jones, Rowe and Billings2020) and smoking (Stevelink et al., Reference Stevelink, Opie, Pernet, Gao, Elliott, Wessely, Fear, Hotopf and Greenberg2020) to be associated with poorer mental health. Other research conducted on the general population has reported smoking to be associated with sickness absence (Laaksonen et al., Reference Laaksonen, Piha, Martikainen, Rahkonen and Lahelma2009; Troelstra et al., Reference Troelstra, Coenen, Boot, Harting, Kunst and van der Beek2020) as well as harmful drinking (Marzan et al., Reference Marzan, Callinan, Livingston, Leggat and Jiang2022) and abstinence from alcohol (Marzan et al., Reference Marzan, Callinan, Livingston, Leggat and Jiang2022). Health risk behaviours may be associated with sickness absence as they contribute to physical health problems, which leads to more sick days being taken. However, due to the cross-sectional nature of our data, this cannot be determined, and future research should investigate the relationship between health risk behaviours, mental health and physical health in police employees.
Sickness absence and occupational stressors
Police employees with longer working hours had less sickness absence which may be related to occupational demands, as those with active job strain (high demand, high control) were also less likely to take sick leave. Previous research has reported that longer working hours increase the risk of psychological distress, emotional exhaustion and depersonalisation in police officers (Houdmont and Randall, Reference Houdmont and Randall2016). However, as our data are cross-sectional it is difficult to determine the exact cause of the findings. Those affected by longer working hours may have already taken long-term sick leave and therefore, reported fewer working hours in the previous year. Police employees may have been working whilst having an illness, an issue of presenteeism, which has been reported for police officers in Sweden (Leineweber et al., Reference Leineweber, Westerlund, Hagberg, Svedberg, Luokkala and Alexanderson2011) and Germany (Bachert et al., Reference Bachert, Walter and Mess2017). In a UK study, 66% of police officers reported one or more episodes of presenteeism due to psychological health and the same percentage due to physical health within the previous year (Elliott-Davies, Reference Elliott-Davies2021a). It was not possible to explore presenteeism in our study.
Those with high and passive job strain had greater odds of taking sick leave. High job demand has been reported as a strong predictor of psychological distress in the general population (Nieuwenhuijsen et al., Reference Nieuwenhuijsen, Bruinvels and Frings-Dresen2010) and for police officers (Purba and Demou, Reference Purba and Demou2019). Our results reflect those from research conducted on 290 Italian policemen that reported low control and high demand were associated with increased short-term sickness absence (Magnavita and Garbarino, Reference Magnavita and Garbarino2013). However, this was a select group from a special police unit that had a very high amount of average sickness absence per policeman in 1 year (26 days) (Magnavita and Garbarino, Reference Magnavita and Garbarino2013). Our findings highlight the need to address demand/control imbalances for police employees to prevent sickness absences related to job strain.
Strengths and limitations
The main strength of our study is the use of a large and representative cohort of UK police employees to determine factors associated with sickness absence, an area that, to our knowledge, has previously been under-explored in this population. As the AHMS originally aimed to explore physical health effects from radio usage rather than occupational factors or sickness absence (Elliott et al., Reference Elliott, Vergnaud, Singh, Neasham, Spear and Heard2014), participant responses may be less influenced by framing effects (Goodwin et al., Reference Goodwin, Ben-Zion, Fear, Hotopf, Stansfeld and Wessely2013).
The limitations of our study include not being able to determine the reasons why sickness absence was taken and using a self-reported measure for sickness absence which may have introduced bias. General population studies have reported differences between self-reported and employer-recorded sickness absence data, with self-reported sickness absence being under-reported (Ferrie et al., Reference Ferrie, Kivimäki, Head, Shipley, Vahtera and Marmot2005; Voss et al., Reference Voss, Stark, Alfredsson, Vingård and Josephson2008).
Data were collected over a long period from 2006 to 2015 which may have introduced heterogeneity, for example in the outcome of interest. However, sickness absence rates have remained relatively stable over this time (Office for National Statistics, 2022). Due to the use of cross-sectional data and demographic differences in the sample (e.g., large participant numbers such as those from the Metropolitan Police Service only being included after 2011), it was not possible to determine the temporal associations between the specified variables with sickness absence (Elliott et al., Reference Elliott, Vergnaud, Singh, Neasham, Spear and Heard2014). There may have been other reasons that led police employees to take sick leave which were not related to occupational factors (e.g., bereavement or physical health conditions).
A further limitation of our study is that sickness absence was retrospectively reported and the other explanatory variables were assessed at the time of data collection. Whilst the findings suggest associations between the explanatory variables and sickness absence, due to the variation of timings for data collection the findings do not allow for interpretations of the causality of the relationship. Further longitudinal research is required to determine the temporal relationship between them.
We did not include police employees’ job roles or their police force as these data were not provided. This information may have helped to determine whether certain police roles are more likely to take sick leave (e.g., traffic officers and crime scene investigators). There were many custom responses in the all other ethnic groups combined category which made it difficult to further define ethnicity. Lastly, it would be beneficial to consider how physical health conditions may impact sickness absence, which was beyond the scope of this study and warrants further exploration.
Implications
Identifying the factors that contribute to sickness absence is vital for the development of interventions to support police employees to foster a healthier workforce and increase retention. The issue of presenteeism is one that particularly requires more focus as it is estimated that absences and presenteeism cost UK employers up to £45 billion annually due to employees’ working whilst suffering from poor mental health and as a result, have reduced productivity (Deloitte, 2020). Our findings indicated that police employees with poor mental health may be at a greater risk of taking sick leave. This population can be considered for targeted interventions, including all police employees and not just police officers, as police staff had more sickness absences in our study.
Conclusions
Our study used cross-sectional data from the AHMS to explore factors associated with sickness absence among UK police employees. We found that over half of all police employees took at least 1 day of sickness absence in the previous year and a third between 1 and 5 days. Women, police staff and those with poor mental health (e.g., probable symptoms of depression, anxiety and PTSD) were more likely to take sick leave. Poorer job satisfaction and greater job strain were associated with more days of sickness absence. The findings highlight the importance of considering the factors that may contribute to sickness absence in police employees and is an area where more research is needed.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S2045796024000283.
Availability of data and materials
The data that support the findings of this study are available through a formal application process (https://police-health.org.uk/applying-access-resource), but restrictions apply to the availability of these data, which were used under license for the current study, and so are not publicly available.
Acknowledgements
This research has been conducted using the Airwave Study Tissue Bank Resource. We thank all participants in the Airwave Study for their contribution. Additionally, we would like to thank Gao He, Andy Heard and Joel Heller from the Airwave Study team for the provision of the data and data management support over the course of the project.
Financial support
This paper represents independent research part-funded by the National Institute for Health and Care Research (NIHR) Biomedical Research Centre at South London and Maudsley NHS Foundation Trust and King’s College London. The views expressed are those of the author(s) and not necessarily those of the NHS, NIHR, SOM, FOM or the Department of Health and Social Care.
Competing interests
SAMS is supported by the National Institute for Health and Care Research (NIHR) Maudsley Biomedical Research Centre at South London and Maudsley NHS Foundation Trust and the National Institute for Health and Care Research, NIHR Advanced Fellowship, NIHR300592. NG is a trustee with the Society and Faculty of Occupational Medicine (SOM & FOM). NTF is a member of the Emergency Services Senior Leaders Board and is part-funded by a grant from the UK Ministry of Defence. MH declares research funding to his university from MRC, NIHR and the Wellcome Trust, plus the Innovative Medicines Initiative for RADAR-CNS, a public private precompetitive consortium on mobile health, with funding and in-kind contributions from Janssen, UCB, MSD, Biogen and Lundbeck.
Ethical standards
The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2013.