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The relation of unrest-related distress with probable depression during and after widespread civil unrest

Published online by Cambridge University Press:  20 July 2022

Tiffany Junchen Tao
Affiliation:
Centre for Psychosocial Health, The Education University of Hong Kong, Hong Kong SAR, China
Tsz Wai Li*
Affiliation:
Centre for Psychosocial Health, The Education University of Hong Kong, Hong Kong SAR, China Department of Rehabilitation Sciences, The Hong Kong Polytechnic University, Hong Kong SAR, China
Sammi Sum Wai Yim
Affiliation:
Centre for Psychosocial Health, The Education University of Hong Kong, Hong Kong SAR, China
Wai Kai Hou
Affiliation:
Centre for Psychosocial Health, The Education University of Hong Kong, Hong Kong SAR, China Department of Psychology, The Education University of Hong Kong, Hong Kong SAR, China
*
Author for correspondence: Tsz Wai Li, E-mails: 21121224G@connect.polyu.hk, wkhou@eduhk.hk
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Abstract

Background

This study investigated whether subjective unrest-related distress was associated with probable depression during and after the 2019 anti-ELAB movement in Hong Kong.

Methods

Population-representative data were collected from 7157 Hong Kong Chinese in four cross-sectional surveys (July 2019–July 2020). Logistic regression examined the association between subjective unrest-related distress and probable depression (PHQ-9 ⩾ 10), stratified by the number of conflicts/protests across the four timepoints.

Results

Unrest-related distress was positively associated with probable depression across different numbers of conflicts/protests.

Conclusion

Unrest-related distress is a core indicator of probable depression. Public health interventions should target at resolving the distress during seemingly peaceful period after unrest.

Type
Brief Report
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2022. Published by Cambridge University Press

Introduction

In 2019, a controversial bill was introduced by the Hong Kong SAR Government for extraditing individuals accused of crimes to countries/regions which do not have a legal mechanism for doing so. The resultant anti-extradition law amendment bill (anti-ELAB) movement gradually escalated from peaceful demonstrations into massive violence and vandalism since June 2019. Protests diminished in early 2020 due to the coronavirus disease 2019 (COVID-19) but mounted again in May–June 2020 due to the hasty introduction of the National Security Law. The movement involved approximately 2000000 participants lasting over months, leaving serious mental health consequences (Holbig, Reference Holbig2020; Turnbull et al., Reference Turnbull, Watson and Jin2020). The prevalence of depression rose from 1.9% a decade ago to as high as 25% in the heat of the movement (Ni et al., Reference Ni, Yao, Leung, Yau, Leung, Lun, Flores, Chang, Cowling and Leung2020; Hou et al., Reference Hou, Hall, Liang, Li, Liu and Galea2021). Given that depression forms one of the heaviest public health burdens and elevates the suicidal risks (WHO, 2021), it is pressing to further elucidate its development and maintenance under potentially traumatic events such as social unrests.

Risk factors of psychopathology embed within the event level (e.g. exposure, proximity) or the individual level (e.g. a lack of personal coping resources) (Galovski et al., Reference Galovski, Peterson, Beagley, Strasshofer, Held and Fletcher2016; Wong et al., Reference Wong, Tung, Fu, Bacon-Shone, Molasiotis, Li, Lee, Lum, Lau, Chan, To and Ip2021a). The anti-ELAB movement incubated, developed, and faded over a dynamic process, and this synchronized with the trend of depression over time (Hou et al., Reference Hou, Li, Liang, Liu, Ettman, Hobfoll, Lee and Galea2022). Subjective experiences of support and relationship quality with close social partners were positively associated with better mental health among adolescents during the anti-ELAB movement (Wong et al., Reference Wong, Tung, Fu, Bacon-Shone, Molasiotis, Li, Lee, Lum, Lau, Chan, To and Ip2021b). An experience sampling study illustrated that individuals experienced significant negative changes in their everyday emotions during a social movement, which predicted subsequent higher psychiatric symptoms and lower subjective well-being (Hou and Bonanno, Reference Hou and Bonanno2018).

It is intuitive that individuals experience higher levels of stress with greater intensity of conflicts/protests, with direct or indirect exposure to street protests and related social media posts positively associated with elevated psychological distress, probable depression, and even suicidal ideation (Galovski et al., Reference Galovski, Peterson, Beagley, Strasshofer, Held and Fletcher2016; Turnbull et al., Reference Turnbull, Watson and Jin2020; Hou et al., Reference Hou, Hall, Liang, Li, Liu and Galea2021; Lam et al., Reference Lam, Chan and Hamamura2021). However, currently limited research has investigated whether the association between subjective unrest-related distress and psychiatric symptoms changes as a function of the intensity of unrest over time. There is also a deficit of knowledge about the comparative centrality of subjective experience of traumatization and objective facets of event exposures in understanding mental health consequences (Maschi et al., Reference Maschi, Morgen, Zgoba, Courtney and Ristow2011; Boals, Reference Boals2018; Su, Reference Su2018; Danese and Widom, Reference Danese and Widom2020). Existing evidence is mainly based on recalls of objective and/or subjective traumatic experiences over a fraction of one's life history (Maschi et al., Reference Maschi, Morgen, Zgoba, Courtney and Ristow2011; Boals, Reference Boals2018; Danese and Widom, Reference Danese and Widom2020), but less so following instant measures of civil unrest as an acute traumatic exposure.

This study aims to examine the association of subjective unrest-related distress with probable depression in Hong Kong between July 2019 and July 2020, a period with varying intensity of widespread conflicts/protests (Holbig, Reference Holbig2020). We also tested whether the positive association between unrest-related distress and depression remained the same across different number of conflicts/protests at different timepoints. This study hypothesized that unrest-related distress would be positively associated with probable depression. The positive association between unrest-related distress and depression would be consistent across different numbers of conflicts/protests over time.

Methods

Sample

This study was approved by the Human Research Ethics Committee of The Education University of Hong Kong. This study analyzed data from four population-representative samples of Hong Kong Chinese in serial cross-sectional surveys in July 2019 (T1), February 2020 (T2), April 2020 (T3), and July 2020 (T4) (n = 7157). The respondents were approached through random digit dialing by a Computer-Assisted Telephone Interview system, with contact numbers drawn from the Hong Kong Communication Authority databases. Inclusion criteria were: (1) Hong Kong Chinese, (2) aged ⩾15 years, (3) Cantonese speaking. Oral informed consent was obtained before each interview. The cooperation rates (i.e. completed over eligible) across the four surveys were 72.0%, 67.3%, 73.5% and 72.8%. More details were documented in prior studies (Lai et al., Reference Lai, Chan, Li, Li, Hobfoll, Lee and Hou2021; Hou et al., Reference Hou, Li, Liang, Liu, Ettman, Hobfoll, Lee and Galea2022). Demographics are summarized in Table 1.

Table 1. Descriptive information of the current sample at the four timepoints (N = 7157)

a US$1 ≈ HK$7.80.

b The number of conflicts/protests (i.e. ‘exposure to unrest’ events) at each timepoints is presented.

c Scores of 10 or above in the 9-item Patient Health Questionnaire (PHQ-9) were used to define probable depression.

Measures

Probable depression

Respondents rated nine items on depressive symptoms over the past two weeks on a 4-point scale (0 = not at all, 1 = on several days, 2 = on more than half of the days, 3 = nearly every day) using the Chinese version 9-item Patient Health Questionnaire (PHQ-9) (Yeung et al., Reference Yeung, Fung, Yu, Vorono, Ly, Wu and Fava2008). Higher scores (range = 0–27) indicated higher levels of depressive symptoms. Scores of 10 or above indicated probable depression (Levis et al., Reference Levis, Benedetti and Thombs2019). Cronbach's alphas were 0.842, 0.854, 0.850 and 0.827 across the four administrations respectively.

Unrest-related distress

Respondents rated to what extent they felt distress over (1) the government's handling of unrest, (2) confrontations between police and protestors, and the use of riot control measures such as physical assault, tear gas, and rubber bullets, and (3) widespread and ongoing demonstrations and protests on a 4-point scale (0 = not at all, 1 = some, 2 = quite a bit, 3 = a lot). Scores of each item were recoded into low (0) and high (1), with low indicating ‘not at all’/‘some’ in all three items and high indicating ‘quite a bit’/‘a lot’ in at least one item. Binary coding of distress relating to large-scale disasters demonstrated statistical sensitivity in detecting important mental health problems in previous studies (Bonanno et al., Reference Bonanno, Galea, Bucciarelli and Vlahov2007; Hou et al., Reference Hou, Li, Liang, Liu, Ettman, Hobfoll, Lee and Galea2022).

Exposure to unrest

Exposure to unrest was quantified as the number of conflicts/protests occurred during the past month at each timepoint. Event count has been widely used to reflect the objective levels of traumatic stress across previous studies. For example, evidence showed good predictive utility of the number of traumatic events on PTSD among a post-conflict population (Wilker et al., Reference Wilker, Pfeiffer, Kolassa, Koslowski, Elbert and Kolassa2015) and first responders (Geronazzo-Alman et al., Reference Geronazzo-Alman, Eisenberg, Shen, Duarte, Musa, Wicks, Fan, Doan, Guffanti, Bresnahan and Hoven2017). The number of events related to the anti-ELAB movement from June 2019 to July 2020 was extracted from the Armed Conflict Location and Events Dataset (ACLED) (Raleigh et al., Reference Raleigh, Linke, Hegre and Karlsen2010). ACLED is a database of real-time data on political violence and protest events across the globe. We adopted strict inclusion criteria for data extraction, and counted events as valid only if (1) the item description contained keywords like ‘name of the unrest’ and ‘slogans’ and ‘event name’ related to the anti-ELAB movement and (2) the item involved conflicts/protests as categorized in ACLED. Duplicates were excluded. Event count was the approximate of the potential level of exposure individuals could possibly encounter at that timepoint.

COVID-19 stress (Confounder)

COVID-19 stress (T2–T4) was measured with worry for infection or health-related threat, which were further recoded into low (0) and high (1). For details, see Hou et al. (Reference Hou, Li, Liang, Liu, Ettman, Hobfoll, Lee and Galea2022). All T1 respondents were assigned a score of 0.

Demographics

Respondents' age, gender, education level, employment status, marital status, and monthly household income were recorded.

Analytic plan

The trends of the prevalence of probable depression, unrest-related distress, and number of conflicts/protests across the four timepoints were described. Logistic regression models were used to examine the association of subjective unrest-related distress (‘high’ = 1) with probable depression (PHQ-9 scores:10–27 = 1), controlling for COVID-19 stress and socio-demographics. The association between unrest-related distress and probable depression was then stratified by the number of conflicts/protests across timepoints. Adjusted odds ratio (aOR) with 95% CI indicated the independent association of each correlate with the outcome. All analyses were performed using SPSS (Version 26).

Results

Descriptive statistics

The prevalence of probable depression was 23.8% in July 2019, 25.9% in February 2020, 14.2% in April 2020, and 14.5% in July 2020. The prevalence of unrest-related distress was 66.8% in July 2019, 79.6% in February 2020, 78.4% in April 2020, and 77% in July 2020. We extracted a total of 1227 conflicts/protests relating to the anti-ELAB movement between 6th June 2019 and 31st July 2020. There were 98 conflicts/protests in July 2019, 48 in February 2020, 42 in April 2020, and 97 in July 2020.

Logistic regressions

Controlling for COVID-19 stress and socio-demographics and taking into consideration the potential association between number of conflicts/protests and probable depression, unrest-related distress was associated with 211% increased odds of probable depression (aOR 3.11, 95% CI 2.19–4.43). The positive association between unrest-related distress and probable depression remained consistent and significant across the four timepoints with varying numbers of conflicts/protests (p = 0.108–0.686) (Table 2).

Table 2. Logistic regression examining the association of unrest-related distress with probable depression, stratified by the number of conflicts and protests across the four timepoints (N = 7157)

Abbreviations. aOR, adjusted odds ratio; CI, confidence interval.

Note. p values are two-sided, * p < 0.05, ** p < 0.01, *** p < 0.001.

a Scores of 10 or above in the 9-item Patient Health Questionnaire (PHQ-9) were used to define probable depression.

b US$1 ≈ HK$7.80.

c The number of conflicts/protests (i.e. ‘exposure to unrest’ events) at each timepoint is presented in bracket.

Discussion

This study aims to investigate the association of subjective unrest-related distress with probable depression amid and after widespread civil unrest in Hong Kong between July 2019 and July 2020. We also examined whether the positive association between unrest-related distress and depression changed as a function of the number of conflicts/protests over time. Unrest-related distress was consistently associated with higher odds of probable depression, and the association remained significant at different timepoints. Importantly, this association between unrest-related distress and probable depression held in spite of the slight difference in the patterns of distress (sustained prevalence) and probable depression (decreased prevalence), as this difference could have suggested an increase in the ‘dosage’ of unrest-related distress needed to sufficiently trigger probable depression overtime.

The role of unrest-related distress in predicting probable depression during and after widespread civil unrest could be explained by the cognitive model of stress-related disorders (e.g. depression, PTSD), for the easily accessible traumatic memories and/or the negative appraisals of such memories could underlie the perpetuating psychiatric symptoms beyond the end of objective incidents (Ehlers and Clark, Reference Ehlers and Clark2000; Creamer et al., Reference Creamer, McFarlane and Burgess2005; Rubin et al., Reference Rubin, Berntsen and Bohni2008; Duyser et al., Reference Duyser, van Eijndhoven, Bergman, Collard, Schene, Tendolkar and Vrijsen2020). Rumination has been identified as a prospective predictor of more severe depressive symptoms in a month's time amidst combined social unrest and COVID-19 (February–March 2020) in Hong Kong (Wong et al., Reference Wong, Hui, Wong, Suen, Chan, Lee, Chang and Chen2021b).

Our current results are consistent with not only the conclusion that subjective perceptions of traumatic incidents explain depressive symptoms independent of objective lifetime exposure to these incidents (Boals, Reference Boals2018) but also the notion that mental health consequences following exposure to potentially traumatic events might be fairly minimal in the absence of negative subjective appraisals (Maschi et al., Reference Maschi, Morgen, Zgoba, Courtney and Ristow2011; Danese and Widom, Reference Danese and Widom2020). There is evidence showing that only a fraction of objective traumatic events was subjectively experienced by individuals, suggesting a discrepancy between objective events and subjective experiences amid trauma (Creamer et al., Reference Creamer, McFarlane and Burgess2005; Maschi et al., Reference Maschi, Morgen, Zgoba, Courtney and Ristow2011; Boals, Reference Boals2018). A previous study involving burn survivors found that individuals could experience intrusive memories two years after the accident exposure, and whether they cognitively appraised these memories in a negative way was related to the severity of both depressive and PTSD symptoms, over and beyond the adverse consequences brought by burn-related disabilities (Su, Reference Su2018). Our current results are generally in line with this. While the trends of depression and number of conflicts/protests were relatively independent, the positive association between unrest-related distress and probable depression remained significant irrespective of the exact numbers of conflicts/protests across time, providing further supportive evidence that mental health during and after political unrest is dependent upon subjective experiences, regardless of objective criteria defining traumatic incidents (e.g. intensity of protests).

Our study has some limitations. First, repeated cross-sectional data could reflect population-level but not intra-personal changes in unrest-related distress and probable depression as the civil unrest unfolded. Second, the current objective measure of conflicts/protests did not take into account heterogeneity in the nature and intensity across these incidents, or individual differences in the actual exposure to conflicts/protests. Finally, probable depression was based on self-report. Future studies would demonstrate a clearer picture of depression using clinical diagnoses/interviews. Notwithstanding the limitations, this study has built upon our own work and further investigated the subjective versus objective pillars of mental health impact following acute traumatic exposures. Accurate screening and effective interventions are needed to complement the existing already-overloaded mental health care system (Galovski et al., Reference Galovski, Peterson, Beagley, Strasshofer, Held and Fletcher2016; Hou and Hall, Reference Hou and Hall2019; Hou et al., Reference Hou, Li, Liang, Liu, Ettman, Hobfoll, Lee and Galea2022). The main implication of the current study is that high unrest-related distress could be one core component of continuous mental health assessment and interventions irrespective of the presence/absence of actual incidents. Its utility could last from the acute phase of the unrest to the seemingly peaceful time after the unrest.

Financial support

This work was supported by the Policy Innovation and Co-ordination Office, Hong Kong SAR Government [grant number SR2020.A5.019]; and the Research Grants Council, University Grants Committee, Hong Kong SAR, China [grant numbers C7069-19 GF, 18600320]. The funding source had no role in any process of our study.

Conflict of interest

None.

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 2008.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/gmh.2022.27.

Footnotes

*

Equal contribution.

References

Boals, A (2018) Trauma in the eye of the beholder: objective and subjective definitions of trauma. Journal of Psychotherapy Integration 28, 7789.CrossRefGoogle Scholar
Bonanno, GA, Galea, S, Bucciarelli, A and Vlahov, D (2007) What predicts psychological resilience after disaster? The role of demographics, resources, and life stress. Journal of Consulting and Clinical Psychology 75, 671682.CrossRefGoogle ScholarPubMed
Creamer, M, McFarlane, AC and Burgess, P (2005) Psychopathology following trauma: the role of subjective experience. Journal of Affective Disorders 86, 175182.CrossRefGoogle ScholarPubMed
Danese, A and Widom, CS (2020) Objective and subjective experiences of child maltreatment and their relationships with psychopathology. Nature Human Behaviour 4, 811818.CrossRefGoogle ScholarPubMed
Duyser, FA, van Eijndhoven, PFP, Bergman, MA, Collard, RM, Schene, AH, Tendolkar, I and Vrijsen, JN (2020) Negative memory bias as a transdiagnostic cognitive marker for depression symptom severity. Journal of Affective Disorders 274, 11651172.CrossRefGoogle ScholarPubMed
Ehlers, A and Clark, DM (2000) A cognitive model of posttraumatic stress disorder. Behaviour Research and Therapy 38, 319345.CrossRefGoogle ScholarPubMed
Galovski, TE, Peterson, ZD, Beagley, MC, Strasshofer, DR, Held, P and Fletcher, TD (2016) Exposure to violence during ferguson protests: mental health effects for law enforcement and community members. Journal of Traumatic Stress 29, 283292.CrossRefGoogle ScholarPubMed
Geronazzo-Alman, L, Eisenberg, R, Shen, S, Duarte, CS, Musa, GJ, Wicks, J, Fan, B, Doan, T, Guffanti, G, Bresnahan, M and Hoven, CW (2017) Cumulative exposure to work-related traumatic events and current post-traumatic stress disorder in New York city's first responders. Comprehensive Psychiatry 74, 134143.CrossRefGoogle ScholarPubMed
Holbig, H (2020) Be water, my friend: Hong Kong's 2019 anti-extradition protests. International Journal of Sociology 50, 325337.CrossRefGoogle Scholar
Hou, WK and Bonanno, GA (2018) Emotions in everyday life during social movements: prospective predictions of mental health. Journal of Counseling Psychology 65, 120131.CrossRefGoogle ScholarPubMed
Hou, WK and Hall, BJ (2019) The mental health impact of the pro-democracy movement in Hong Kong. The Lancet Psychiatry 6, 982.CrossRefGoogle ScholarPubMed
Hou, WK, Hall, BJ, Liang, L, Li, TW, Liu, H and Galea, S (2021) Probable depression and suicidal ideation in Hong Kong amid massive civil unrest. Annals of Epidemiology 54, 4551.CrossRefGoogle Scholar
Hou, WK, Li, TW, Liang, L, Liu, H, Ettman, CK, Hobfoll, SE, Lee, TMC and Galea, S (2022) Trends of depression and anxiety during massive civil unrest and COVID-19 in Hong Kong, 2019–2020. Journal of Psychiatric Research 145, 7784.CrossRefGoogle Scholar
Lai, FTT, Chan, VKY, Li, TW, Li, X, Hobfoll, SE, Lee, TMC and Hou, WK (2021) Disrupted daily routines mediate the socioeconomic gradient of depression amid public health crises: a repeated cross-sectional study. Australian and New Zealand Journal of Psychiatry. 00048674211051271.Google ScholarPubMed
Lam, C, Chan, CS and Hamamura, T (2021) Time-dependent association between mass protests and psychological distress on social media: a text mining study during the 2019 anti-government social unrest in Hong Kong. Journal of Affective Disorders 291, 177187.CrossRefGoogle ScholarPubMed
Levis, B, Benedetti, A and Thombs, BD (2019) Accuracy of Patient Health Questionnaire-9 (PHQ-9) for screening to detect major depression: individual participant data meta-analysis. BMJ 365, 11476.Google ScholarPubMed
Maschi, T, Morgen, K, Zgoba, K, Courtney, D and Ristow, J (2011) Age, cumulative trauma and stressful life events, and post-traumatic stress symptoms among older adults in prison: do subjective impressions matter? The Gerontologist 51, 675686.CrossRefGoogle ScholarPubMed
Ni, MY, Yao, XI, Leung, KS, Yau, C, Leung, CM, Lun, P, Flores, FP, Chang, WC, Cowling, BJ and Leung, GM (2020) Depression and post-traumatic stress during major social unrest in Hong Kong: a 10-year prospective cohort study. The Lancet 395, 273284.CrossRefGoogle Scholar
Raleigh, C, Linke, A, Hegre, H and Karlsen, J (2010) Introducing ACLED: an armed conflict location and event dataset: special data feature. Journal of Peace Research 47, 651660.CrossRefGoogle Scholar
Rubin, DC, Berntsen, D and Bohni, MK (2008) A memory-based model of posttraumatic stress disorder: evaluating basic assumptions underlying the PTSD diagnosis. Psychological Review 115, 9851011.CrossRefGoogle ScholarPubMed
Su, YJ (2018) Prevalence and predictors of posttraumatic stress disorder and depressive symptoms among burn survivors two years after the 2015 Formosa Fun Coast Water Park explosion in Taiwan. European Journal of Psychotraumatology 9, 1512263.CrossRefGoogle ScholarPubMed
Turnbull, M, Watson, B and Jin, Y (2020) Vicarious trauma, social media and recovery in Hong Kong. Asian Journal of Psychiatry 51, 102032.CrossRefGoogle ScholarPubMed
WHO (2021) Depression. World Health Organization. Available at https://www.who.int/news-room/fact-sheets/detail/depressionGoogle Scholar
Wilker, S, Pfeiffer, A, Kolassa, S, Koslowski, D, Elbert, T and Kolassa, I-T (2015) How to quantify exposure to traumatic stress? Reliability and predictive validity of measures for cumulative trauma exposure in a post-conflict population. European Journal of Psychotraumatology 6, 28306.CrossRefGoogle Scholar
Wong, RS, Tung, KT, Fu, KW, Bacon-Shone, J, Molasiotis, A, Li, WO, Lee, LYK, Lum, TYS, Lau, JTF, Chan, C, To, SM and Ip, P (2021a) Examining social context and the pathways to mental wellness in young adults during social movement: a parallel mediation analysis. Journal of Affective Disorders 294, 876882.CrossRefGoogle Scholar
Wong, SM, Hui, CL, Wong, CS, Suen, YN, Chan, SK, Lee, EH, Chang, WC and Chen, EY (2021b) Prospective prediction of PTSD and depressive symptoms during social unrest and COVID-19 using a brief online tool. Psychiatry Research 298, 113773.CrossRefGoogle Scholar
Yeung, A, Fung, F, Yu, SC, Vorono, S, Ly, M, Wu, S and Fava, M (2008) Validation of the Patient Health Questionnaire-9 for depression screening among Chinese Americans. Comprehensive Psychiatry 49, 211217.CrossRefGoogle ScholarPubMed
Figure 0

Table 1. Descriptive information of the current sample at the four timepoints (N = 7157)

Figure 1

Table 2. Logistic regression examining the association of unrest-related distress with probable depression, stratified by the number of conflicts and protests across the four timepoints (N = 7157)

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