Abstract
In response to the COVID-19 pandemic, the UK Government placed society on ‘lockdown’, altering the gambling landscape. This study sought to capture the immediate lockdown-enforced changes in gambling behaviour. UK adults (n = 1028) were recruited online. Gambling behaviour (frequency and weekly expenditure, perceived increase/decrease) was measured using a survey-specific questionnaire. Analyses compared gambling behaviour as a function of pre-lockdown gambling status, measured by the Brief Problem Gambling Scale. In the whole sample, gambling participation decreased between pre- and during-lockdown. Both gambling frequency and weekly expenditure decreased during the first month of lockdown overall, but, the most engaged gamblers did not show a change in gambling behaviour, despite the decrease in opportunity and availability. Individuals whose financial circumstances were negatively affected by lockdown were more likely to perceive an increase in gambling than those whose financial circumstances were not negatively affected. Findings reflect short-term behaviour change; it will be crucial to examine, at future release of lockdown, if behaviour returns to pre-lockdown patterns, or whether new behavioural patterns persist.
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Gambling is a common activity in the UK, and throughout the world. The Health Survey for England (HSE, 2018) reported that 54% of adults in the UK had gambled in the preceding 12 months. Using the Problem Gambling Severity Index (PGSI, Ferris & Wynne, 2001), the survey estimated that 3.6% of the population experience some degree of gambling-related harm (e.g. PGSI score of ≥1), and that 0.4% of the population experience problem gambling (e.g. a score of ≥8 on the PGSI) (HSE, 2018). A more recent study from 2020 estimated that approximately 61% of the UK adult population (16+) had gambled in the past 12 months and reported that the prevalence of problem gambling in the UK was 3% (GambleAware, 2020). When considering sub-clinical levels of gambling related harm, a further 10% of the population are at risk of gambling-related harm (GambleAware, 2020). Prevalence rates are significantly higher in the GambleAware data than the HSE data; analysis of differences is highlighted within the GambleAware report, which concludes that the difference is perhaps due to different data collection methodologies, and that the true prevalence is likely to lie somewhere between the two estimates.
The UK currently has a permissive gambling environment. Land-based gambling is widely available in a variety of premises including bookmakers, casinos, bingo halls, motorway services, supermarkets and corner shops. The proliferation of online gambling and the global nature of sporting competitions ensure that betting is available 24 h a day, and that anyone with a smartphone and an internet connection has unfettered access to gambling. The wide availability and accessibility make it possible to gamble on almost anything, at any time (Gainsbury et al., 2015).
The UK gambling landscape was significantly altered on the 23rd March 2020, when the UK Prime Minister announced a range of measures designed to stem the spread of the COVID-19 pandemic and included the closure of all non-essential retail outlets, including land-based gambling establishments. Referred to by the UK media as ‘lockdown’, the order was initially put in place for 3 weeks but only gradually relaxed 3 months later at the end of June 2020 (Coronavirus: lockdown to be relaxed in England as 2m rule eased, n.d.). Whilst the ‘lockdown’ measures were put in place to arrest the spread of COVID-19, the resulting social, economic and situational environments generated have been conducive to enforcing changes in addictive behaviours (Marsden et al., 2020).
The impact of lockdown has been shown to be potentially harmful for gamblers (Håkansson et al., 2020; van Schalkwyk etal., 2020). A range of risk factors have been previously identified for disordered gambling (for reviews, see Dowling et al., 2017; Sharman et al., 2019), and some of these factors may be exacerbated in the lockdown environment including boredom (Blaszczynski et al., 1990; McCormack et al., 2014; Mercer & Eastwood, 2010) and social isolation (Bergh & Kühlhorn, 1994; Gill & McQuade, 2012; King et al., 2010; McMillen et al., 2007; Trevorrow & Moore, 1998).
Furthermore, the measures enforced by the UK Government in response to the COVID-19 outbreak have placed a significant financial strain on a large number of households, e.g. through furlough or job loss; (Osborne, 2020). Evidence suggests that financial insecurity can negatively influence psychological well-being (as measured by self-esteem, depression and anxiety), increase the likelihood of risky financial decision (Weinstein & Stone, 2018) and can also have an adverse influence on economic decision making (Haushofer & Fehr, 2014). When viewed in a gambling context, the effect of financial insecurity on approach to risk can lead to more risky gambling (Dussault et al., 2011). Likewise, lower household income has been shown to be associated with problem gambling, even after controlling for socio-demographic variables (Orford, 2004).
The impact of COVID-19 and the subsequent lockdown dramatically altered both the availability and accessibility of gambling. Many major sporting events across Europe and the world were either cancelled or postponed, including major UK sports and events such as the Premier League, and the Wimbledon tennis championships. Additionally, in the UK, land-based gambling opportunities were severely restricted as casinos and bookmakers were closed. Conversely, supermarkets remained open, allowing the sale of lottery tickets and scratchcards to continue.
Research on the influence of lockdown on gambling behaviour is scarce but some reports offer some preliminary findings. Using online operator data across four European countries, one study showed that the migration of sports bettors to online casino games was absent, and that there was a decrease in money wagered by sports bettors. Findings indicated that when there was no sport to bet on, sports gamblers spent less money on gambling, rather than simply changing to gambling on other available methods such as casino games (Auer et al., 2020). In Sweden, an online study found that only a minority of participants reported increases in gambling, but this group also reported higher gambling problems (Håkansson, 2020). In the UK, the data collated by the Gambling Commission found that overall, the number of ‘active player accounts’ decreased between March and April 2020, indicating a general trend of less people gambling (online), but with more ‘engaged’ gamblers (those who have gambled on three or more activities in the past 4 weeks) spending more time and money gambling (Gambling Commission, 2020). The Gambling Commission does not explicitly identify more engaged gamblers as problem gamblers, yet, both higher frequency of gambling (O'Mahony & Ohtsuka, 2015), and higher gambling spend (Brosowski et al., 2015; Currie et al., 2009) are associated with disordered gambling. Disordered gamblers are known to contribute a disproportionately large amount of money and time spent gambling, a phenomenon observed both in the UK (Orford et al., 2013), and worldwide (Fiedler, 2011; Fiedler et al., 2019; Miller & Singer, 2015; Tom et al., 2014).
The nature of the social climate in the UK created by the implementation of lockdown means the short- and longer-term influences on gambling behaviour are as yet, not well understood. This study aims to provide an initial analysis of gambling behaviour change during the first phase of lockdown, in the UK. Specially, the study aims to:
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Examine frequency of gambling, and money spent gambling pre- and during-lockdown
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Investigate frequency of gambling and money spent gambling pre- and during-lockdown as a function of pre-lockdown gambling risk level
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Investigate the relationship between gambling behaviour and the negative financial effects of lockdown.
Methods
Recruitment and Participants
Participants were recruited through Prolific Academic, an online recruitment tool (www.prolific.co). Participants recruited from Prolific Academic have been found to be more naïve and less dishonest than those recruited from MTurk, and to produce higher quality data than the alternative platform CrowdFlower (Peer et al., 2017). In the current climate, it is increasingly important to be able to collect data remotely; crowdsourcing is a common data collection tool in the wider psychology field (Buhrmester et al., 2011; Huff & Tingley, 2015), and has more recently been utilised in gambling studies (Mishra & Carleton, 2017; Schluter et al., 2018), although results should be interpreted with caution (Pickering & Blaszczynski, 2021).
To maximise responses, the only eligibility criteria specified were that participants were required to be a current UK resident, and were engaged in some form of social exclusion. Thirteen participants were excluded as they were not engaged in any form of social exclusion, resulting in a final sample of 1028 participants (72.1% female; age M = 33.19, SD = 11.66, range 18–73). Age did not differ significantly between males (M = 32.68, SD 12.26) and females (M = 33.46, SD 11.45) (t (990) = 0.94, p = 0.35).
All participants were engaged in some level of measures to prevent the spread of COVID-19, either social distancing, social isolation or social shielding. For convenience, the term social distancing is used henceforth to encapsulate all levels, except where a more specific term is deemed appropriate. In the whole sample (n = 1028), 49.1% (n = 505) had gambled in the 12 months preceding lockdown; 523 were Non-Gamblers (NG; n = 50.9%), 362 were Non-Problem Gamblers (NPG; 35.2%) and 143 were Potential Problem Gamblers (PPG; 13.9%). Participants were most commonly social distancing in a household with 2–3 other people (40.5%), and least commonly distancing alone (15%). Most were distancing with family (76.46%); 76.17% had been distancing for between 2 and 4 weeks, at the time of survey completion. Prior to COVID-19, participants had most commonly been employed (62.84%), and 21.4% indicated that their employment status had changed since the outbreak of COVID, with the most common change amongst those who status had changed reported as being furloughed (47.7%).
Measures
Problem gambling status was measured using the Brief Problem Gambling Screen (BPGS-5, Volberg & Williams, 2011). The BPGS consists of five yes/no binary questions, and was used due to its brevity, and robust psychometric properties. Model development indicated that a five-item model demonstrated high specificity (99.9%) and sensitivity (90.8%), and greater clarification accuracy than other two-, three- or four-item models (ibid). A score of 1 or more indicates potential problem gambling, and a need for further assessment (Stinchfield et al., 2012). The BPGS has been used in previous gambling research (McCarthy et al., 2021), and compares favourably to other brief gambling screening tools, reported as being ‘the only instrument displaying satisfactory classification accuracy in detecting any level of gambling problem’ (Dowling et al., 2018). The BPGS was used to group participants into non-gambler (no gambling in the preceding 12 months), non-problem gambler (gambled in preceding 12 months but scored 0 on BPGS) and potential problem gambler (gambled in previous 12 months and scored ≥1 on BPGS) groups for subsequent analysis.
The study utilised a retrospective self-report longitudinal design. The study was programmed in Qualtrics, an online data collection tool and administered through prolific academic. Data were collected in a single session and questioned behaviours covering two time periods; the first time period refers to a specified period prior to the Government-recommended social distancing measures and is henceforth referred to as pre-lockdown. Questions also asked participants to self-report behaviour since being asked to socially isolate, referred to henceforth as during-lockdown (i.e. since the Government announcement on 23rd March).
Participants were asked questions relating to social distancing: what type of distancing, how many people they were distancing with and how long they had been distancing for. Participants were also asked their pre-lockdown employment status, and whether that status had changed in lockdown. Gambling behaviour was measured with survey-specific questions asking participants to detail their gambling behaviour. Questions referenced gambling pre-lockdown, and during-lockdown, and asked about frequency of gambling, and gambling expenditure both as a raw amount, and a proportion of income, and the reasons for gambling. Participants were also asked whether they perceived their gambling had increased, decreased or stayed the same in lockdown.
Procedure
Data were collected in April 2020. Participants were invited to partake in the study through having a registered Prolific Academic account. Participants gave online consent, and were paid £6.28 p/h, pro-rata for estimated study completion time, resulting in a payment of £1.78 per participant, considered ‘fair’ by Prolific Academic. The study protocol was approved by the School of Psychology Research Committee at the University of Lincoln ref.: 2020–2392, and the University of East London Research Ethics Committee, ref.: ETH1920–0207.
Data Analysis
Gambling behaviour data regarding frequency and expenditure was compared pre- and during-lockdown across the whole sample, within current gamblers and as a function of BPGS score. The McNemar test for 2 × 2 binomial contingency tables was used when comparing between time periods (i.e. comparing pre- and during-lockdown). Uncorrected p values for the McNemar tests calculated via a custom macro (http://www.how2stats.net/search?q=mcnemar) are reported as the Yates correction is considered too conservative (Greenwood, 1996). Between-group data from gambling frequency and spend variables was analysed using chi-squared models or Fisher’s exact test when compared within a specific timeframe (i.e. between groups pre- or during-lockdown). Adjusted z score residuals were used to identify post hoc differences in chi-squared models using the appropriately adjusted p value (Beasley & Schumacker, 1995). Cramer’s V was reported as a measure of effect size (0.1, small effect size, 0.3 medium, 0.5 large). Bonferroni corrections were applied to alpha rates as appropriate. All analysis was run in SPSS 26.
Results
Frequency: Whole Sample
When comparing the whole sample, participants were less likely to report gambling 1–2 times per month (McNemar χ2 (1) = 39.27, p < 0.001), and less frequently than 1–2 times per month (McNemar χ2 (1) = 147.92, p < 0.001) during-lockdown, than pre-lockdown. The differences in number of participants who gambled daily (McNemar χ2 (1) = 1, p = 0.32), 2–6 times per week (McNemar χ2 (1) = 0.91, p = 0.34), and once per week (McNemar χ2 (1) = 1.16, p = 0.28) did not differ between pre- and during-lockdown.
Frequency: Current Gamblers
Within current gamblers (who had gambled in the 12 months preceding lockdown), there was a decrease in the number of gamblers who gambled 1–2 times per month (McNemar χ2 (1) = 43.61, p < 0.001) between pre- and during-lockdown. The number of current gamblers who gambled daily (McNemar χ2 (1) = 0.67, p = 0.41), 2–6 times per week (McNemar χ2 (1) = 3.57, p = 0.06), and once per week (McNemar χ2 (1) = 2.78, p = 0.09) did not differ between pre- and during-lockdown. Additionally, a further 276 participants who had gambled in the 12 months preceding lockdown had not gambled at all in lockdown.
Frequency: By Gambling Risk Status
Participants in the PPG group gambled at different frequencies pre-lockdown than the NPG group (χ2 (4) = 15.81, p = 0.003, Cramer’s V = 0.28). Post hoc analyses indicate that the PPG group were more likely to report gambling 2–6 times per week (p = 0.027) and were less likely to report gambling less than 1–2 times per month (p = <0.001). Analysis of between group during-lockdown gambling shows that the NPG and the PPG group did not differ overall on gambling frequency (χ2 (4) = 7.76, p = 0.10, Cramer’s V = 0.28).
Gambling frequency changes were also measured within gambler groups between pre- and during-lockdown. The NPG group were less likely to report gambling 1–2 times per month (McNemar χ2 (1) = 24, p < 0.001) and less frequently than 1–2 times per month (McNemar χ2 (1) = 137.2, p < 0.001) during-lockdown, than pre-lockdown. The NPG group did not differ between pre- and during-lockdown on frequencies of gambling daily (McNemar χ2 (1) = 0.91, p = 0.76), 2–6 times per week (McNemar χ2 (1) = 3.27, p = 0.071) or once per week (McNemar χ2 (1) = 0, p = 1). Furthermore, within the NPG, 208 participants (57.5%) had moved from sometimes gambler (i.e. reported some frequency of gambling) to non-gambler.
The PPG group were less likely to report gambling once per week (McNemar χ2 (1) = 9.78, p = 0.002), 1–2 time per month (McNemar χ2 (1) = 22.09, p < 0.001), and less frequently than 1–2 times per month (McNemar χ2 (1) = 17.46, p < 0.001) during lockdown, than pre-lockdown. The PPG group did not differ between pre-and during-lockdown on frequencies of gambling daily (McNemar χ2 (1) = 0.69, p = 0.41), or 2–6 times per week (McNemar χ2 (1) = 0.62, p = 0.43) (Fig. 1).
Expenditure: Whole Sample
When comparing the whole sample, participants were less likely to report a weekly gambling spend of £1–£25 (McNemar χ2 (1) = 174.22, p < 0.001), and of £26–£50 (McNemar χ2 (1) = 6.12, p = 0.012). The difference in the number of participants who reported a weekly spend of £51–£100 (McNemar χ2 (1) = 1.58, p = 0.21), £101–£200 (McNemar χ2 (1) = 0.82, p = 0.37) and over £200 (McNemar χ2 (1) = 1.6, p = 0.21), did not differ between pre- and during-lockdown.
Expenditure: Current Gamblers
Within current gamblers (who had gambled in the 12 months preceding lockdown), participants were less likely to report spending between £1 and £25 (McNemar χ2 (1) = 204.25, p < 0.001), and between £26 and £50 (McNemar χ2 (1) = 9.62, p = 0.002) per week during lockdown, than pre-lockdown. The difference in the number of current gambling participants who reported a weekly spend of £51–£100 (McNemar χ2 (1) = 2.79, p = 0.09), £101–£200 (McNemar χ2 (1) = 0.82, p < 0.37) and over £200 (McNemar χ2 (1) = 1.6, p = 0.21) did not differ between pre- and during-lockdown.
Expenditure: By Gambling Risk Status
Participants in the PPG group reported a different pattern of expenditure pre-lockdown than the NPG group (Fisher’s Exact Test = 49.3, p = <0.001, Cramer’s V = 0.46). Post hoc analyses indicate that the PPG group were less likely to spend £1–£25 per week (p < 0.001), were more likely to spend £26–£50 per month (p = 0.01) and £101–£200 per month (p < 0.001). Patterns of expenditure also varied between the NPG and PPG groups during-lockdown (Fishers Exact Test = 13.58, p = 0.004, Cramer’s V = 0.38). Post hoc analyses indicate that the NPG group were more likely to report spending between £1 and £25 per week (p = 0.009).
Weekly gambling expenditure was also measured within gambler groups between pre- and during-lockdown. The NPG group were less likely to report spending between £1 and £25 per week on gambling during-lockdown than pre-lockdown (McNemar χ2 (1) = 180.94, p < 0.001). The NPG group did not differ between pre- and during-lockdown on the number of participants spending £26–£50 (McNemar χ2 (1) = 1.47, p = 0.23), £51–£100 (McNemar χ2 (1) = 1, p = 0.32) or over £200 (McNemar χ2 (1) = .20, p = 0.65).
The PPG group were less likely to report spending between £1 and £25 (McNemar χ2 (1) = 27.6, p < 0.001), and between £26 and £50 (McNemar χ2 (1) = 8.53, p = 0.004) during-lockdown, compared to pre-lockdown. The PPG group did not differ between pre- and during-lockdown on the number of participants spending £51–£100 (McNemar χ2 (1) = 1.8, p = 0.18), £101–£200 (McNemar χ2 (1) = .66, p = 0.41) or over £200 (McNemar χ2 (1) = 1.8, p = 0.18) (Fig. 2).
Employment Status and Gambling
Overall, 18% (n = 185) of participants reported a change in employment status that could result in a decrease in income (Lost job (n = 34, 3.3%), reduced hours (n = 17, 1.7%), furloughed (n = 105, 10.2%) or loss of work (freelance/self-employed) (n = 29, 2.8%). Change in gambling behaviour in those that had gambled during-lockdown was analysed as a function of whether the participant’s employment status had changed during lockdown. The chi-squared model was significant (χ2 (2) = 10.14, p = 0.006), indicating a significant change in category distribution. Post hoc analysis of adjusted z score residuals indicate that those whose employment status had changed, resulting in a likely decrease in income, were more likely to feel their gambling had increased (p = 0.006).
Discussion
The current study provides initial data on the influence of the Government-enforced social isolation in response to the COVID-19 pandemic on gambling behaviour in the UK. Results are discussed below.
These results indicate that for the majority of the sample, frequency of gambling decreased in the first month of lockdown. It is interesting to note that the only group that did not report a reduction in gambling frequency were those in the PPG group who reported gambling daily, or between 2 and 6 times per week, pre-lockdown. Accessibility of gambling is an important factor in gambling engagement (Meyer et al., 2019); the ubiquitous nature of online gambling ensured that gambling remained available in lockdown. Despite the accessibility of online gambling and the consistent availability of lottery products in shops, other methods of gambling access such as bookmakers’ shops and casinos were closed for the study period, and almost all sporting events were postponed or cancelled, thus reducing gambling opportunity. Such factors may have contributed to the overall drop in gambling, and the reduction in gambling frequency of less engaged gamblers. It is only those who were most engaged with gambling pre-lockdown that maintained their gambling engagement into lockdown despite limited availability of gambling.
Gambling spend also appeared to have either decreased or stayed the same in the first month of lockdown. It is feasible that individuals spending at the lower end of the scale are more casual gamblers, and that restrictions on gambling availability reduced gambling spend, whilst those with a higher engagement with gambling, as evidenced by higher pre-lockdown spend, maintained expenditure levels despite changes in gambling opportunities and availability.
Additionally, those whose financial status had been negatively affected by COVID-19 were more likely to feel their gambling had increased. Previous research has highlighted the negative relationship between financial insecurity and gambling (Auer, Malischnig, & Griffiths; Orford, 2004; Weinstein & Stone, 2018). Therefore, it is of concern that gambling may increase when an individual is faced with a downturn in economic circumstance. Alternative explanations are possible; those who found themselves working less may have more free time, and may have turned to gambling out of boredom. This is an area that warrants further exploration in subsequent studies.
Limitations
Whilst providing some insight of the immediate influence of COVID-19 and lockdown on gambling behaviour in the UK, several limitations should be noted. The study only captured the first 4 weeks of lockdown; therefore, the longer-term impacts are as yet unknown. Inclusion/exclusion criteria were designed to be as inclusive as possible, but, this means the sample was not nationally representative. Furthermore, recruitment via crowdsourcing led to a proportion of participants who were non-gamblers, despite previous concerns that gamblers are overrepresented when recruiting via crowdsourcing (Mishra & Carleton, 2017; Schluter et al., 2018). Crowdsourcing was preferred over online advertising, due to the gambling-centric cohort available to the research team’s online study advertisement opportunities (i.e. social media) which may have biased results. Future studies could pre-screen for current gambling involvement to allow most efficient use of the sample. Additionally, this study relied on participants to accurately recollect events both pre- and during-lockdown and is therefore potentially subject to memory biases (Del Boca & Noll, 2000). Furthermore, unexpectedly, almost 75% of the sample were female; it is therefore unknown if the data in the current study are more representative of female gambling behaviours, or whether the findings apply to the gambling habits of the population more generally. Despite these limitations, the study nevertheless enabled the capture of a population of problematic, or potentially problematic, gamblers—who are now accessible for future study of further changes over time.
Conclusions
The global COVID-19 pandemic and the subsequent Government response created a different environment for the UK public. This study explored the initial change in gambling behaviours in the UK, in the first weeks of lockdown. Results demonstrate that lockdown is not affecting the gambling behaviour of everyone in a uniform way, with those already most engaged with gambling maintaining that engagement despite the changing availability and accessibility of gambling. Whilst not claiming to provide definitive answers to how lockdown has affected gambling behaviour in the UK over the longer-term, this paper gives initial insight that provides a foundation for assessing and measuring the impact of COVID-19 on longer-term change in gambling behaviour.
References
Auer, M., Malischnig, D., & Griffiths, M. D. (2020). Gambling before and during the COVID-19 pandemic among European regular sports bettors: an empirical study using behavioral tracking data. International Journal of Mental Health and Addiction, 1. https://doi.org/10.1007/s11469-020-00327-8.
Beasley, T. M., & Schumacker, R. E. (1995). Multiple regression approach to analyzing contingency tables: post hoc and planned comparison procedures. The Journal of Experimental Education, 64(1), 79–93.
Bergh, C., & Kühlhorn, E. (1994). Social, psychological and physical consequences of pathological gambling in Sweden. Journal of Gambling Studies, 10(3), 275–285.
Blaszczynski, A., McConaghy, N., & Frankova, A. (1990). Boredom proneness in pathological gambling. Psychological Reports, 67(1), 35–42.
Brosowski, T., Hayer, T., Meyer, G., Rumpf, H. J., John, U., Bischof, A., & Meyer, C. (2015). Thresholds of probable problematic gambling involvement for the German population: results of the Pathological Gambling and Epidemiology (PAGE) study. Psychology of Addictive Behaviors, 29(3), 794–804.
Buhrmester, M., Kwang, T., & Gosling, S. D. (2011). Amazon’s mechanical Turk: a new source of inexpensive, yet high quality, data? Perspectives on Psychological Science: A Journal of the Association for Psychological Science, 6(1), 3–5. https://doi.org/10.1177/1745691610393980.
Coronavirus: lockdown to be relaxed in England as 2m rule eased. (n.d.). BBC. Retrieved from https://www.bbc.co.uk/news/uk-53152416. 02/07/2020.
Currie, S. R., Miller, N., Hodgins, D. C., & Wang, J. (2009). Defining a threshold of harm from gambling for population health surveillance research. International Gambling Studies, 9(1), 19–38.
Del Boca, F. K., & Noll, J. A. (2000). Truth or consequences: the validity of self-report data in health services research on addictions. Addiction, 95(11s3), 347–360.
Dowling, N. A., Merkouris, S. S., Greenwood, C. J., Oldenhof, E., Toumbourou, J. W., & Youssef, G. J. (2017). Early risk and protective factors for problem gambling: a systematic review and meta-analysis of longitudinal studies. Clinical Psychology Review, 51, 109–124.
Dowling, N. A., Merkouris, S. S., Manning, V., Volberg, R., Lee, S. J., Rodda, S. N., & Lubman, D. I. (2018). Screening for problem gambling within mental health services: a comparison of the classification accuracy of brief instruments. Addiction, 113(6), 1088–1104.
Dussault, F., Brendgen, M., Vitaro, F., Wanner, B., & Tremblay, R. E. (2011). Longitudinal links between impulsivity, gambling problems and depressive symptoms: a transactional model from adolescence to early adulthood. Journal of Child Psychology and Psychiatry, 52(2), 130–138.
Fiedler, I. (2011). The gambling habits of online poker players. The Journal of Gambling Business and Economics.
Fiedler, I., Kairouz, S., Costes, J. M., & Weißmüller, K. S. (2019). Gambling spending and its concentration on problem gamblers. Journal of Business Research, 98, 82–91.
Gainsbury, S. M., Russell, A., Hing, N., Wood, R., Lubman, D., & Blaszczynski, A. (2015). How the Internet is changing gambling: findings from an Australian prevalence survey. Journal of Gambling Studies, 31(1), 1–15.
GambleAware, (2020). Treatment needs and gap analysis in Great Britain. Synthesis of findings from a programme of studies. Downloaded from https://www.begambleaware.org/media/2186/treatment-needs-and-gap-analysis-in-great-britain-a-synthesis-of-findings.pdf 04/05/2021
Gambling Commission (2020). Covid 19 and its impact on gambling—what we know so far [updated June 2020] https://www.gamblingcommission.gov.uk/news-action-and-statistics/Statistics-and-research/Covid-19-research/Covid-19-update-June-2020/Covid-19-and-its-impact-on-gambling-%E2%80%93-what-we-know-so-far-updated-June-2020.aspx Accessed 26/06/2020
Gill, P., & McQuade, A. (2012). The role of loneliness and self-control in predicting problem gambling behaviour. Gambling Research: Journal of the National Association for Gambling Studies (Australia)., 24(1), 18–30.
Greenwood, P. (1996). A guide to chi-squared testing (Wiley series in probability and statistics) 1st edition. Wiley Interscience.
Håkansson, A. (2020). Changes in gambling behavior during the COVID-19 pandemic—a web survey study in Sweden. International Journal of Environmental Research and Public Health, 17(11), 4013.
Håkansson, A., Fernández-Aranda, F., Menchón, J. M., Potenza, M. N., & Jiménez-Murcia, S. (2020). Gambling during the COVID-19 crisis—a cause for concern? Journal of Addiction Medicine.
Haushofer, J., & Fehr, E. (2014). On the psychology of poverty. Science, 344(6186), 862–867.
Health Survey for England. (2018). Adult’s health-related behaviours Retrieved from: files.digital.nhs.uk/B5/771AC5/HSE18-Adult-Health-Related-Behaviours-rep-v3.pdf on 21/04/2021.
Huff, C., & Tingley, D. (2015). “Who are these people?” evaluating the demographic characteristics and political preferences of MTurk survey respondents. Research & Politics, 2(3), 1–12.
King, D., Delfabbro, P., & Griffiths, M. (2010). The convergence of gambling and digital media: implications for gambling in young people. Journal of Gambling Studies, 26(2), 175–187.
Marsden, J., Darke, S., Hall, W., Hickman, M., Holmes, J., Humphreys, K., Neale, J., Tucker, J., & West, R. (2020). Mitigating and learning from the impact of COVID-19 infection on addictive disorders. Addiction., 115, 1007–1010.
McCarthy, S., Pitt, H., Bellringer, M. E., & Thomas, S. L. (2021). Electronic gambling machine harm in older women: a public health determinants perspective. Addiction Research & Theory, 1–10.
McCormack, A., Shorter, G. W., & Griffiths, M. D. (2014). An empirical study of gender differences in online gambling. Journal of Gambling Studies, 30(1), 71–88.
McMillen, J., Marshall, D., Murphy, L., Lorenzen, S., & Waugh, B. (2007). Help-seeking by problem gamblers, friends and families: a focus on gender and cultural groups. Centre for Gambling Research (CGR), ANU
Mercer, K. B., & Eastwood, J. D. (2010). Is boredom associated with problem gambling behaviour? It depends on what you mean by ‘boredom’. International Gambling Studies, 10(1), 91–104.
Meyer, G., Kalke, J., & Hayer, T. (2019). The impact of supply reduction on the prevalence of gambling participation and disordered gambling behavior: a systematic review. Sucht.
Miller, E., & Singer, D. (2015). For daily fantasy-sports operators, the curse of too much skill. McKinsey & Company.
Mishra, S., & Carleton, R. N. (2017). Use of online crowdsourcing platforms for gambling research. International Gambling Studies, 17(1), 125–143.
O'Mahony, B., & Ohtsuka, K. (2015). Responsible gambling: sympathy, empathy or telepathy? Journal of Business Research, 68(10), 2132–2139.
Orford, J. (2004). Low income and vulnerability for gambling problems. Addiction, 99(10), 1356–1356.
Orford, J., Wardle, H., & Griffiths, M. (2013). What proportion of gambling is problem gambling? Estimates from the 2010 British Gambling Prevalence Survey. International Gambling Studies, 13(1), 4–18.
Osborne, H. (2020) Millions face ‘financial cliff edge’ due to Covid-19 crisis, says Citizens Advice. The Guardian. https://www.theguardian.com/money/2020/may/01/financial-covid-19-citizens-advice-bill-payments. Retrieved 07/05/2020.
Peer, E., Brandimarte, L., Samat, S., & Acquisti, A. (2017). Beyond the Turk: alternative platforms for crowdsourcing behavioral research. Journal of Experimental Social Psychology, 70, 153–163.
Pickering, D., & Blaszczynski, A. (2021). Paid online convenience samples in gambling studies: questionable data quality. International Gambling Studies, 1–21.
Schluter, M. G., Kim, H. S., & Hodgins, D. C. (2018). Obtaining quality data using behavioral measures of impulsivity in gambling research with Amazon’s mechanical Turk. Journal of Behavioral Addictions, 7(4), 1122–1131.
Sharman, S., Butler, K., & Roberts, A. (2019). Psychosocial risk factors in disordered gambling: a descriptive systematic overview of vulnerable populations. Addictive Behaviors, 99, 106071.
Stinchfield, R., McCready, J., & Turner, N. (2012). A comprehensive review of problem gambling screens and scales for online self-assessment. Ontario Problem Gambling Research Centre.
Tom, M. A., LaPlante, D. A., & Shaffer, H. J. (2014). Does Pareto rule Internet gambling? Problems among the “vital few” & “trivial many”. Journal of Gambling Business & Economics, 8(1), 73–100.
Trevorrow, K., & Moore, S. (1998). The association between loneliness, social isolation and women’s electronic gaming machine gambling. Journal of Gambling Studies, 14(3), 263–284.
van Schalkwyk, M., Cheetham, D., Reeves, A., & Petticrew, M. (2020). Covid-19: we must take urgent action to avoid an increase in problem gambling and gambling related harms. The BMJ Opinion Retrieved from https://blogs.bmj.com/bmj/2020/04/06/covid-19-we-must-take-urgent-action-to-avoid-an-increase-in-problem-gambling-and-gambling-related-harms/ 28/04/2020.
Volberg, R. A., & Williams, R. J. (2011). Developing a brief problem gambling screen using clinically validated samples of at-risk, problem and pathological gamblers. Health Sciences.
Weinstein, N., & Stone, D. N. (2018). Need depriving effects of financial insecurity: implications for well-being and financial behaviors. Journal of Experimental Psychology: General, 147(10), 1503–1520.
Funding
This study was funded by the National Addiction Centre (NAC), part of the NIHR Biomedical Research Centre for Mental Health, which is based at the Institute of Psychiatry, Psychology & Neuroscience. Within the last 3 years:
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All authors contributed to the study conception and design. Material preparation, data collection and analysis were performed by Steve Sharman, Amanda Roberts, Henrietta Bowden-Jones and John Strang. The first draft of the manuscript was written by Steve Sharman, and all authors commented on previous versions of the manuscript. All authors read and approved the final manuscript.
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All procedures followed were in accordance with the ethical standards of the responsible committee on human experimentation (institutional and national) and with the Helsinki Declaration of 1975, as revised in 2000 (5). Informed consent was obtained from all patients for being included in the study.
Conflict of Interest
SS has received funding from the Society for the Study of Addiction (SSA), and the NIHR. He is currently employed at the NAC, part of the NIHR Biomedical Research Centre and declares no conflicts.
AR has received funding from Santander, Public Health for Lincoln, The Royal Society, The Maurice and Jacqueline Bennett Charitable Trust, East Midlands RDS and internal University of Lincoln awards. She has no conflicts of interest.
HB–J is the Director of The National Problem Gambling Clinic which receives funds from the National Health Service and GambleAware. She is Honorary Professor at University College London. Board member, International Society of Addiction Medicine, Board member of the International Society for the Study of Behavioural Addictions. President Elect of the Royal Society of Medicine Psychiatry Section.
JS is a researcher and clinician who has worked with a range of governmental and non-governmental organizations, and with pharmaceutical and technology companies to seek to identify new or improved treatments from whom his employer (King’s College London) has received honoraria, travel costs and/or consultancy payments, but these do not have a relationship to the study and findings reported here. For a fuller account, see JS’s web-page at: http://www.kcl.ac.uk/ioppn/depts/addictions/people/hod.aspx. JS is a National Institute for Health Research (NIHR) Senior Investigator and is supported by the NIHR Biomedical Research Centre for Mental Health at South London and Maudsley NHS Foundation Trust and King’s College London.
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Sharman, S., Roberts, A., Bowden-Jones, H. et al. Gambling and COVID-19: Initial Findings from a UK Sample. Int J Ment Health Addiction 20, 2743–2754 (2022). https://doi.org/10.1007/s11469-021-00545-8
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DOI: https://doi.org/10.1007/s11469-021-00545-8