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Article

Prevalence, Demographic, and Clinical Correlates of Likely PTSD in Subscribers of Text4Hope during the COVID-19 Pandemic

1
Department of Psychiatry, Faculty of Medicine and Dentistry, University of Alberta, Edmonton, AB T6G 2B7, Canada
2
Department of Psychiatry, Cumming School of Medicine, University of Calgary, Calgary, AB T2N 1N4, Canada
3
Alberta Health Services, Addiction & Mental Health, Edmonton, AB T5K 2J5, Canada
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2021, 18(12), 6227; https://doi.org/10.3390/ijerph18126227
Submission received: 18 April 2021 / Revised: 6 June 2021 / Accepted: 7 June 2021 / Published: 9 June 2021

Abstract

:
Background: During the COVID-19 pandemic, people may experience increased risk of adverse mental health, particularly post-traumatic stress disorder (PTSD). Methods: A survey measured stress, anxiety, depression, and PTSD symptoms in Text4Hope subscribers using the Perceived Stress Scale, Generalized Anxiety Disorder 7-Item Scale, Patient Health Questionnaire-9, and PTSD Checklist for DSM-5 Part 3, respectively. A Chi-square test and multivariate logistic regression were employed. Results: Most respondents were 41–60 years old (49.5%), Caucasian (83.3%), with post-secondary education (92.1%), employed (70.3%), married/cohabiting/partnered (64.9%), and homeowners (71.7%). Likely PTSD was reported in 46.8% of the respondents. Those who were afraid to contract the coronavirus had a history of depression before the pandemic, and those who received counselling during the pandemic exhibited a high prevalence of likely PTSD (OR (1.7 to 2.2)). Significant lower odds of likely PTSD were observed among subscribers who received absolute support from family/friends. Conclusions: This paper presents findings on the prevalence of likely PTSD and identified vulnerable groups during the COVID-19 pandemic. Our results support the proposal that public health advice should incorporate mental health wellness campaigns aiming to reduce the psychological impact of pandemics.

1. Introduction

Post-traumatic stress disorder (PTSD) is defined as “the development of symptoms related to intrusion, avoidance, negative alterations in cognitions, mood, and arousal and reactivity following exposure to a traumatic event” [1]. Such events may include natural disasters, a serious traffic accident, terrorist act, conflict, or sexual assault, among others [2]. The defining attribute of a traumatic incident is its ability to elicit fear, helplessness, or horror in response to the threat of possible injury or death [3]. Thus, a patient must have experienced such event(s) and presented with symptoms such as reliving the event and avoiding stimulus reminders (triggers) of the event for about four weeks, to be diagnosed with PTSD [1].
Universal population studies indicate that 28% to 90% of people in high-income countries have been exposed to at least one traumatic event in their course of life; the most frequent events are unanticipated bereavement, road traffic accidents, and physical assault [4,5]. Despite this high exposure to stressors, the prevalence of PTSD ranges from 1.3% to 8.8% [6]. PTSD can occur in people of any ethnicity, nationality, or culture, and at any age. PTSD affects approximately 3.5% of U.S. adults every year, and an estimated 1 in 11 people will be diagnosed with PTSD in their lifetime; women are twice as likely as men to have PTSD [1]. According to the Government of Canada, three in four Canadians are at risk of exposure to one or more events throughout their lifetime that may lead to PTSD [7]. The latest estimated prevalence of lifetime PTSD is 9.2%, while the current prevalence (past month) was estimated at 1.7%, with an expectant higher risk reported among Indigenous people, refugees, and the LGBTQ2S+ community [7,8].
The outbreak of the Coronavirus Disease-19 (COVID-19), which was first identified in Wuhan (China) in December 2019, was declared to be a global pandemic that constitutes a public health emergency of international concern by the World Health Organization (WHO) in early 2020 [9]. There were about 77.9 million documented infections and 1.79 million deaths worldwide as of 22 December 2020 [10,11]. The COVID-19 pandemic presents some characteristic features that increase vulnerability to mental health problems including PTSD. It has been shown that PTSD could result from the news of unprecedented numbers of seriously ill patients, the uncertainty of the course of the disease, high mortality rates, and the absence of a definitive treatment [10,12]. The experiences faced by severely ill COVID-19 patients in the form of symptoms of extreme stressors, including fear of eminent death from the threatening illness, the feeling of loss of control, and the pain associated with medical interventions such as endotracheal intubation [13], constitute the first diagnostic criterion for PTSD [14,15].
Pandemic-associated psychological trauma and related PTSD are not limited to survivors of COVID-19. Frontline healthcare staff and relatives who had a family member die as a result of COVID 19 may also have developed some form of PTSD from witnessing other traumatic events, as was reported with previous coronavirus epidemics, such as the Middle East respiratory syndrome (MERS) and the severe acute respiratory syndrome (SARS) [16,17]. With respect to these epidemics, close to 42% of survivors developed PTSD after a year, with similar population figures remaining above the cut-off up to four years post-pandemic [17].
The factors impacting PTSD are quite diverse, including sociodemographic factors and the pre-existing mental health conditions, among others. Being a female or of a relatively younger age were both perceived as a significant risk for developing PTSD, particularly when comorbid with depression [13]. Similarly, among the different ethnicity groups, minorities (non-white) people in the USA were described to be at more at risk to experience PTSD, with less of a likelihood to seek treatment support, either by visiting doctors, counsellors, or going to hospitals, compared to white people [5]. Likewise, pre-morbid depression and anxiety have been linked to a higher conditional risk of PTSD [5].
Given this precedent, the anticipation of PTSD in the more widespread COVID-19 pandemic necessitates monitoring and management of this expected negative impact [10,12,18].
This study aimed to evaluate the prevalence, demographic, and clinical correlates of likely PTSD in subscribers of “Text4Hope,” an intervention developed at the peak of the first wave of the pandemic to reduce the psychological treatment gap and mitigate anxiety and stress related to the COVID-19 crisis among Canadians [19]. Collateral effects of the pandemic include mental health impacts in terms of anxiety, fear, hopelessness, and stigmatization, which additionally may hinder access to medical and mental health interventions [18]. The Text4Hope program broadcasted daily supportive text messages to the mobile phones of Canadians who subscribed to the service, thereby expanding access to mental health support and offering this service even during self-isolation and quarantine.

2. Materials and Methods

2.1. Study Design and Ethics Approval

This study comprised of a cross-sectional survey. Categorical data on sociodemographic and clinical variables were collected through an online survey. To enable blind review by the study team members, some information was masked for that process. Institutional ethics approval was provided for this study by the University of Alberta Health Research Ethics Board (approval PRO00086163).

2.2. Participant Recruitment and Data Collection

A self-administered questionnaire was administered to Text4Hope subscribers between 18 June and 19 August 2020, after three months of service use. Text4Hope is a mobile-based texting program introduced by Alberta Health Services (AHS) in partnership with other health organizations to provide Albertans with mental health support during the COVID-19 pandemic [20]. Self-subscription to the program occurred by texting “COVID19Hope” to a short code number to receive free daily supportive text messages over a three-month period. Messages were crafted on the basis of cognitive behavioral therapy (CBT) principles by AHS psychiatrists and mental health therapists, including the authors of the study (VA, MH). Survey questions were programmed into Select Survey, an online survey tool. All Text4Hope subscribers who completed the three-month program were invited to complete the survey, which included demographic and clinical questions including gender, age, ethnicity, highest level of education completed, employment, relationship and housing status, history of mental illness, and use of psychotropic medication before the pandemic.

2.3. Outcomes and Measures

The survey measured PTSD symptoms in subscribers using the PTSD Checklist for DSM-5 (PCL-5) Part 3 [21]. PCL-5 is a psychometrically sound instrument and consists of 20 questions, and the respondents’ scores range from 0 to 80. The scale demonstrated good internal consistency (alpha = 0.96), test-retest reliability (r = 0.84), and convergent and discriminant validity [22].
The survey additionally included questions related to exposure to COVID-19 pandemic news, fears of contracting the coronavirus infection, and whether the subscriber had a family member or friend test positive for coronavirus infection. Subscribers were also asked about the levels of support they received from family and friends, their employer, and the Government of Canada during the pandemic.
No incentives were offered and completing the survey was voluntary and was not a prerequisite for access to Text4Hope. With 36,176 active subscribers receiving the exit survey link, a sample size of 1037 survey respondents was needed to estimate the prevalence of PTSD likelihood during the COVID-19 pandemic with a confidence level of 95% and a 3% margin of error.

2.4. Statistical Analysis

Results were analyzed using SPSS Version 20 [23]. Descriptive statistics were provided for demographic, clinical, and other variables based on gender analysis. Cross-tabular analyses using the Chi-square test explored relationships, categorical predictors, and the likelihood that respondents self-reported PTSD symptoms during the COVID-19 pandemic. Based on factors previously examined [5,13], we were interested in examining the different factors that may ultimately lead to the outcome of likely PTSD. Two categories were calculated based on the PCL-5 total score: (0–32) for not likely PTSD and (33–80) for more likely PTSD.
Variables with a statistically significant or near significant relationship (p ≤ 0.1) to the likelihood of respondents to self-report PTSD (PCL-5 score of 33 or more for likely PTSD) were included in a logistic regression model. Correlational analysis was performed before running the regression analysis to exclude any strong intercorrelations (Spearman’s correlation coefficient of 0.7 to 1.0 or −0.7 to −1.0) among predictor variables. Odds ratios (OR) and confidence intervals from the binary logistic regression analysis were examined to determine predictor variables for respondents to self-report PTSD symptoms during the COVID-19 pandemic, controlling for the other variables. There was no imputation for missing data and the data analyzed and reported reflect the number of responses for each question.

3. Results

Of 36,176 subscribers, 1079 respondents completed the exit survey giving a response rate of 3.0%. In all, 96 (8.9%) of subscribers identified as male, 953 (88.3%) identified as female, and 11 (1.0%) identified as other gender. Table 1 and Table 2 provide descriptive measures of demographic and clinical characteristics of the respondents by gender. From Table 1, most respondents were in the age group of 41–60 years (49.5%), identified as Caucasian (83.3%), had post-secondary education (92.1%), were employed (70.3%), were married, cohabiting, or partnered (64.9%), and were homeowners (71.7%). Regarding COVID-19-related variables, the majority reported that they listened daily to COVID-19 pandemic news updates (64.9%), watched daily the images of COVID-19-related deaths/sickness (34.1%), did not lose employment due to COVID-19 (67.0%), received absolute support from family/friends (49.9%), received absolute support from employers (39.3%), received absolute support from the Government of Canada (28.2%), and sought and received mental health counselling during the pandemic (73.7% and 69.7%, respectively).
Table 2 indicates that just over half of the respondents reported having no history of any mental health disorder (51.3%), while almost a third reported having a history of either anxiety or depressive disorder (31.2% and 30.8%, respectively), with the highest prevalence observed among other gender for the two conditions. Respondents who reported receiving antidepressant medications before the pandemic represented the highest proportion (28.2%), compared to respondents who reported use of other psychotropic medications (<10%). Again, other gender had the highest rates of receiving all psychotropic medications except for mood stabilizers, where males reported the highest intake rate (15.6%).
Self-isolation or self-quarantine was reported by around 1 in 4 respondents (26.4%), and around 1 in 12 (7.9%) reported having a family member or friend test positive for coronavirus. More than 8 in 10 respondents were afraid of being infected (83.2%). Finally, almost a half of the respondents scored positive for the likelihood of PTSD based on the PCL-5 scale (46.8%), with other gender reporting the highest prevalence (66.7%).

3.1. Univariate Analysis

Table 3 summarizes relationships between demographic and clinical antecedents and likely PTSD: 23 out of 28 predictor variables were significantly or near significantly related to likely PTSD (p ≤ 0.1). Furthermore, 2 out of the 23 variables did not proceed to the regression model as they showed a high correlation with other variables (‘no history of mental health diagnosis before the pandemic’ and ‘on no psychotropic medication before the pandemic’).

3.2. Logistic Regression

The multivariate model including all 21 variables was statistically significant; Χ2 (42, N = 760) = 282.53, p < 0.001, and it correctly classified 74.6% of cases, indicating that the model could distinguish between respondents who did or did not exhibit likely PTSD during the COVID-19 pandemic. The model accounted for 31.0% (Cox and Snell R 2) to 41.4% (Nagelkerke R 2) of the variance in the likelihood of the respondents to present with PTSD. The goodness-of-fit statistic of the logistic regression model was assessed using Hosmer-Lemeshow goodness-of-fit test, which revealed there was not enough evidence to say that the model was a poor fit (3.13, p = 0.93).
Table 4 shows the results of the multivariate logistic regression analysis. In summary, the following groups indicated significant higher odds of experiencing PTSD: those who were afraid to contract the coronavirus, respondents who had a history of depression before the pandemic, and those who received counselling during the pandemic, with around a two times greater likelihood of reporting PTSD during the COVID-19 pandemic for each variable compared to respondents in the other categories of their respective variables (OR ranges from 1.70 to 2.20). Subscribers who received absolute support from family/friends had lower odds of reporting PTSD during the pandemic compared to those who did not. Respondents who reported receiving only limited support from their employer were twice as likely to achieve criteria for PTSD, compared to respondents who received absolute support from their employer (OR = 2.02, 95% CI: 1.06–3.83). In addition, Indigenous people were about four times as likely to achieve criteria for PTSD compared to those who identified as Caucasian (OR = 3.90; 95% CI: 1.10–13.78). Similarly, subscribers who reported renting had 67% higher odds of achieving the criteria for PTSD compared to those who owned homes (OR = 1.67; 95% CI: 1.01–2.78).

4. Discussion

The results of this study indicate that almost 50% of subscribers reported having likely PTSD. After adjusting for confounders, identifying as Indigenous and living in rented accommodations were significantly associated with likely PTSD during the COVID-19 pandemic. Further, the significant correlates of increased odds of experiencing likely PTSD included fear of COVID-19, a history of depression, and a history of receiving counselling. Conversely, our findings suggested that support from family may offer protection against PTSD. A relatively high prevalence of PTSD is not unexpected during stressful periods, where it can rise up to 40% among survivors in the first year after a disaster [7]. A general population-based study conducted to determine the level of COVID-19-related traumatic distress in the Republic of Ireland reported that 17.67% of the population met diagnostic requirements for PTSD [24]. Similarly, a parallel survey conducted in the United Kingdom estimated a 16.79% prevalence of PTSD [25]. Our current study prevalence estimate of 46.8% is high compared with these surveys done in Ireland and the UK. This large divergence may reflect differences in the respective study populations. Text4Hope subscribers, though drawn from the general population, may not represent general population demographics, given that subscribers to Text4Hope may have already been seeking mental health care compared to the respondents in the UK and Ireland studies. Further, the different instruments used in measuring the outcome may also contribute to the observed variance; our study used the PTSD Checklist for DSM-5 (PCL-5) Part 3, while the European studies applied the International Trauma Questionnaire, a self-report measure of ICD-11 PTSD.
The high odds of experiencing PTSD symptoms were found among respondents in this study who were afraid to contact the coronavirus, had a history of depression, or who received counselling, resonate with other studies in the literature. A case-control study in China reported that more than one-third of patients with a psychiatric diagnosis met diagnostic criteria for PTSD during the COVID-19 pandemic [26]. Similar results were reported up to four years after the SARS-CoV-1 pandemic [27]. Likewise, a cross-sectional study of PTSD symptoms among healthcare workers and public service providers in Norway concluded that participants who had a pre-existing psychiatric diagnosis, higher levels of anxiety, and depression symptoms were associated with more PTSD symptoms [28].
In our study, a significant effect of family support during COVID-19 was strongly associated with a smaller likelihood of PTSD symptoms. This is in accord with a similar result from previous research that examined probable PTSD predictors among survivors of Fort McMurray wildfire six months after the disaster [29], and a Norwegian study that reported emotional support to be weakly protective against PTSD [28]. These findings are consistent with what we understand of the role of support from family and friends of trauma survivors, positively influencing the form of post-traumatic cognition, which is a driver of PTSD symptoms, therefore reducing the likelihood of PTSD [30].
Our findings indicate an increased likelihood of PTSD symptoms among respondents who reported self-isolation and/or quarantine during the COVID-19 pandemic, compared to those who did not (52% vs. 45%); however, this difference was not significantly related to expressed PTSD symptoms. This observation is not clearly consistent with the evidence for an association between quarantine experience during epidemics and diverse mental health disorders, including PTSD symptoms [31,32,33].
Based on our analysis, Indigenous ethnicity and living in rented accommodations were sociodemographic correlates of having likely PTSD during the pandemic. Housing challenges have been identified as stressors associated with PTSD in previous studies in Canada [34]. These challenges may have been compounded during the pandemic. A review of studies suggests that pandemic-related worries and stressors (e.g., worry of being infected, housing problems, social isolation, and lack of support) may contribute to an increased risk of PTSD [35]. That review also indicates a disproportionately high risk for socio-economically disadvantaged and racialized populations.
In contrast with our results, other studies highlighted the effect of the female sex along with being married or cohabiting as potential predictors for the development of mental health symptoms during the current pandemic [32,33]. This contrast could be due to the differences in the other variables included in the regression models between studies.
Overall, according to a recent systematic review and meta-analysis, COVID-19 has threatened the mental health of nearly one-third of the general population, in relation to challenges that include depression, anxiety, and stress [33], which may increase likelihood for the subsequent development of PTSD symptoms. Our study results, coupled with data from similar studies around the world, highlight the need for focused mental health support for vulnerable, minority, socio-economically disadvantaged, and racialized groups during the COVID-19 pandemic.
Our study is not without limitations, which include the use of self-reported questionnaires, including the PTSD checklist to score those likely to have PTSD, rather than a formal clinician-rated assessment. The use of well-validated and standardized scales, however, mitigates the risk of information bias with self-report questionnaires. Another limitation is selection bias, where our respondents were Text4Hope subscribers who might have opted to the service seeking mental health support, and, therefore, affected the strength of the generalizability of our findings. In addition, this survey is unable to capture the direct effects of COVID-19 among persons with a confirmed diagnosis of PTSD, and this is an interesting area for future investigation. Another limitation is that, unlike stress, anxiety, and depression symptoms, we did not collect the baseline level of PTSD symptoms in our subscribers. As this study focused on uncontrolled real-world events (COVID-19), it was not possible to include a conventional set of controls such as those embodied in a control group design. We were also unable to report the changes in PTSD prevalence from baseline at this time point and we hoped that the six-month follow-up survey, which included the measurement of PTSD symptoms, would shed some light on range and severity of symptoms experienced between the three- and six-month time points. The variables in this study explained only 31%–41.4% of the variance for PTSD likelihood among subscribers. This may necessitate further research exploring additional potential predictors (e.g., childhood adverse experience, previous trauma as adults, and prior diagnosis of PTSD) that may enrich the explanatory value of the regression model.
It is notable that subscribers to the Text4Hope service reported significant improvement in stress and anxiety levels after six weeks [36], and improvements to stress, anxiety, and depression levels after three months of receiving the daily supportive text messages. This indicates that the likely PTSD prevalence rates in subscribers were probably much higher at baseline than the level reported in this three-month survey. Ordinarily, a population-based random sample would have been ideal for this study, but the uncertainties of the pandemic precluded that approach, and Text4Hope subscription was ostensibly randomly subscribed to. We do acknowledge selection bias in the advertisement and recruitment process leading to a likely non-representative sample of the Albertan population. Finally, the study sample is not representative of age or gender for Alberta. As such, the results may not be generalizable and should be interpreted with caution. Given that males made up a fraction of the sample population, the differences we observed must be interpreted with caution.
Notwithstanding these limitations, our study identified potential factors that increase the likelihood for individuals to develop PTSD symptoms during the COVID-19 pandemic. To our knowledge, this is the first study to evaluate likely PTSD and its correlates in Canada during this pandemic.

5. Conclusions

The current findings reveal significant factors that have policy implications for the management of the ongoing pandemic. The data support the proposal that public health advice during pandemics should incorporate mental health wellness campaigns aiming to reduce the psychological impact of pandemics. There is increasing attention being paid to this need in the media, and our data may serve to provide evidence-based support for such policy development and implementation. Cost-effective population-level interventions, such as supportive text messaging services, which are geographic-location independent, are free to the end user, do not require expensive data plans, and can reach thousands of people simultaneously [36,37,38,39,40,41,42,43,44,45,46], are useful for addressing PTSD and other psychological symptoms, such as anxiety and depression, during the COVID-19 pandemic.

Author Contributions

Conceptualization, V.I.O.A.; Data curation, W.V., R.S., A.J.G., S.S., and V.I.O.A.; Formal analysis, V.I.O.A. and R.S.; Writing—original draft, M.K.A., R.S., E.E., and T.A.; Funding acquisition, V.I.O.A.; Investigation, V.I.O.A.; Methodology, V.I.O.A.; Project administration, V.I.O.A.; Supervision, V.I.O.A.; Writing—review and editing, All authors. All authors have read and agreed to the published version of the manuscript.

Funding

This study was supported by grants from the Mental Health Foundation, the Edmonton and Calgary Community Foundations, The Edmonton Civic Employee’s Foundation, the Calgary Health Trust, the University Hospital Foundation, the Alberta Children’s Hospital Foundation, the Royal Alexandra Hospital Foundation, and the Alberta Cancer Foundation. The funders had no role in the design and conduct of the study; collection, management, analysis, and interpretation of the data; preparation, review, or approval of the manuscript; and decision to submit the manuscript for publication.

Institutional Review Board Statement

The study was conducted according to the guidelines of the Declaration of Helsinki and approved by the University of Alberta Health Research Ethics Board (protocol code Pro00086163 approved on 18 March 2020).

Informed Consent Statement

Informed consent was implied if subscribers completed the online survey and submitted responses, as approved by the University of Alberta Health Research Ethics Board.

Data Availability Statement

Data for this study are available and can be released following reasonable request by writing to the corresponding author.

Acknowledgments

Support for the project was received from Alberta Health Services and the University of Alberta.

Conflicts of Interest

The authors declare no conflict of interest.

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Table 1. Demographic characteristics of the study population and support for respondents.
Table 1. Demographic characteristics of the study population and support for respondents.
VariablesMaleFemaleOtherOverall
N
(%)
N
(%)
N
(%)
N
(%)
Age (Years)
≤2510 (10.5)65 (6.9)1 (9.1)76 (7.2)
26–4025 (26.3)269 (28.5)7 (63.6)301 (28.7)
41–6040 (42.1)478 (50.6)2 (18.2)520 (49.5)
>6020 (21.1)132 (14.0)1 (9.1)153 (14.6)
Ethnicity
Caucasian75 (78.1)797 (84.0)8 (72.7)880 (83.3)
Indigenous5 (5.2)24 (2.5)0 (0.0)29 (2.7)
Asian6 (6.2)56 (5.9)2 (18.2)64 (6.1)
Other10 (10.4)72 (7.6)1 (9.1)83 (7.9)
Education
Less than High School Diploma5 (6.1)12 (1.5)0 (0.0)17 (1.9)
High School Diploma5 (6.1)40 (5.0)1 (11.1)46 (5.1)
Post-Secondary Education71 (86.6)744 (92.7)8 (88.9)823 (92.1)
Other Education1 (1.2)7 (0.9)0 (0.0)8 (0.9)
Employment status
Employed53 (64.6)572 (71.1)5 (55.6)630 (70.3)
Unemployed12 (14.6)96 (11.9)2 (22.2)110 (12.3)
Retired13 (15.9)86 (10.7)1 (11.1)100 (11.2)
Students4 (4.9)31 (3.9)1 (11.1)36 (4.0)
Other0 (0.0)20 (2.5)0 (0.0)20 (2.2)
Relationship status
Married/Cohabiting/Partnered46 (56.1)530 (66.1)4 (44.4)580 (64.9)
Separated/Divorced10 (12.2)84 (10.5)0 (0.0)94 (10.5)
Widowed0 (0.0)21 (2.6)1 (11.1)22 (2.5)
Single24 (29.3)161 (20.1)4 (44.4)189 (21.2)
Other2 (2.4)6 (0.7)0 (0.0)8 (0.9)
Housing status
Own home49 (59.8)583 (73.2)4 (44.4)636 (71.7)
Living with family12 (14.6)65 (8.2)1 (11.1)78 (8.8)
Renting21 (25.6)148 (18.6)4 (44.4)173 (19.5)
Listened to COVID-19 pandemic news updates
Not at all2 (2.3)22 (2.4)0 (0.0)24 (2.4)
Less than once a week2 (2.3)39 (4.3)0 (0.0)41 (4.0)
About once weekly6 (6.8)69 (7.5)1 (9.1)76 (7.5)
Every other day20 (22.7)192 (21.0)3 (27.3)215 (21.2)
Daily58 (65.9)592 (64.8)7 (63.6)657 (64.9)
Watched images of COVID-19-related
deaths/sickness
Not at all16 (18.2)160 (17.5)1 (9.1)177 (17.5)
Less than once a week11 (12.5)162 (17.7)3 (27.3)176 (17.4)
About once weekly9 (10.2)136 (14.9)3 (27.3)148 (14.6)
Every other day15 (17.0)151 (16.5)1 (9.1)167 (16.5)
Daily37 (42.0)305 (33.4)3 (27.3)345 (34.1)
Lost job due to the COVID-19 pandemic
No59 (67.0)616 (67.4)4 (36.4)679 (67.0)
Yes9 (10.2)119 (13.0)4 (36.4)132 (13.0)
Did not have a job before the pandemic20 (22.7)179 (19.6)3 (27.3)202 (19.9)
Received sufficient support from family and friends
Yes, absolute support49 (55.7)450 (49.2)6 (54.5)505 (49.9)
Yes, some support22 (25.0)284 (31.1)3 (27.3)309 (30.5)
Yes, but only limited support8 (9.1)134 (14.7)1 (9.1)143 (14.1)
Not at all9 (10.2)46 (5.0)1 (9.1)56 (5.5)
Received sufficient support from employer
Yes, absolute support37 (42.0)357 (39.2)3 (27.3)397 (39.3)
Yes, some support11 (12.5)168 (18.4)3 (27.3)182 (18.0)
Yes, but only limited support7 (8.0)92 (10.1)0 (0.0)99 (9.8)
Not at all5 (5.7)69 (7.6)1 (9.1)75 (7.4)
Not Applicable/Not currently employed28 (31.8)225 (24.7)4 (36.4)257 (25.4)
Received sufficient support from the Government of Canada
Yes, absolute support23 (26.1)254 (28.3)4 (36.4)281 (28.2)
Yes, some support18 (20.5)222 (24.7)2 (18.2)242 (24.3)
Yes, but only limited support12 (13.6)149 (16.6)2 (18.2)163 (16.3)
Not at all35 (39.8)273 (30.4)3 (27.3)311 (31.2)
Sought MH counselling during the pandemic
No63 (71.6)677 (74.2)5 (45.5)745 (73.7)
Yes25 (28.4)235 (25.8)6 (54.5)266 (26.3)
Received MH counselling during the pandemic
No52 (59.1)649 (70.9)6 (69.7)707 (69.7)
Yes36 (40.9)266 (29.1)5 (45.5)307 (30.3)
COVID-19: Coronavirus disease 2019; MH: Mental health.
Table 2. Psychiatric history and clinical self-report-based characteristics of respondents.
Table 2. Psychiatric history and clinical self-report-based characteristics of respondents.
VariablesMaleFemaleOtherOverall
N
%
N
%
N
%
N
%
History of mental health diagnosis before the pandemic
Depressive Disorder27 (28.1)293 (30.7)6 (54.5)326 (30.8)
Bipolar Disorder5 (5.2)24 (2.5)2 (18.2)31 (2.9)
Anxiety Disorder31 (32.3)294 (30.8)6 (54.5)331 (31.2)
Alcohol Abuse1 (1.0)7 (0.7)1 (9.1)9 (0.8)
Drug Abuse1 (1.0)5 (0.5)1 (9.1)7 (0.7)
Schizophrenia1 (1.0)2 (0.2)0 (0.0)3 (0.3)
Personality Disorder4 (4.2)19 (2.0)3 (27.3)26 (2.5)
No mental health diagnosis49 (51.0)491 (51.5)4 (36.4)544 (51.3)
On psychotropic medication before the pandemic
Antidepressants22 (22.9)270 (28.3)7 (63.6)299 (28.2)
Antipsychotics4 (4.2)17 (1.8)0 (0.0)21 (2.0)
Sleeping tablets10 (10.4)79 (8.3)1 (9.1)90 (8.5)
Mood stabilizers15 (15.6)47 (4.9)1 (9.1)63 (5.9)
Benzodiazepines3 (3.1)22 (2.3)0 (0.0)25 (2.4)
On no psychotropic medication56 (58.3)565 (59.3)4 (36.4)625 (59.0)
Self-isolated/self-quarantined
No71 (74.0)701 (73.6)7 (63.6)779 (73.6)
Yes25 (26.0)251 (26.4)4 (36.4)280 (26.4)
Had a family member or friend contract coronavirus
No78 (88.6%)844 (92.4%)10 (90.9)932 (92.1%)
Yes10 (11.4%)69 (7.6%)1 (9.1%)80 (7.9%)
Was afraid to contract the coronavirus
No24 (27.3)144 (15.8)2 (18.2)170 (16.8)
Yes64 (72.7)769 (84.2)9 (81.8)842 (83.2)
Respondents had likely PTSD based on PCL-5 scale31 (41.9%)339 (47.0%)6 (66.7%)376 (46.8%)
PTSD: post-traumatic stress disorder; PCL-5: PTSD Checklist for DSM-5 (Diagnostic and Statistical Manual of Mental Disorders).
Table 3. Chi-Square test of association between the demographic and clinical antecedents and likely PTSD *.
Table 3. Chi-Square test of association between the demographic and clinical antecedents and likely PTSD *.
VariablesPTSD Likelyχ2 Square Valuep-Value
N% **
Gender *0.37
Male3141.9
Female33947.0
Other666.7
Age (Years) 28.02<0.001
≤253370.2
26–4012156.5
41–6017341.7
>604536.6
Ethnicity 7.310.06
Caucasian31446.2
Indigenous1773.9
Asian2047.6
Other2642.6
Education 8.50.04
Less than High School Diploma654.5
High School Diploma2868.3
Post-Secondary Education33845.9
Other Education233.3
Employment status 24.07<0.001
Employed25945.8
Unemployed6262.6
Retired2831.1
Students1967.9
Other646.2
Relationship status 15.410.004
Married/Cohabiting/Partnered22242.6
Separated/Divorced4151.9
Widowed738.9
Single9959.3
Other450.0
Housing status 40.41<0.001
Own home23340.2
Living with family4070.2
Renting977.2
Lost job due to the COVID-19 pandemic 11.060.004
No23342.8
Yes5553.4
Did not have a job before the pandemic9356.0
Self-isolated/self-quarantined 3.710.05
No26544.7
Yes11652.3
Had a family member or friend contract coronavirus 1.650.20
No35647.4
Yes2539.1
Was afraid to contract the coronavirus 23.57<0.001
No3627.5
Yes34650.0
Have listened to COVID-19 pandemic news updates 1.480.83
Not at all947.4
Less than once a week1753.1
About once weekly3352.4
Every other day7546.0
Daily24846.0
Watched images of COVID-19-related deaths/sicknesses 2.860.58
Not at all6647.8
Less than once a week6948.3
About once weekly5142.1
Every other day5742.9
Daily13949.5
History of depressive disorder before the pandemic 103.41<0.001
No18934.4
Yes19372.3
History of anxiety disorder before the pandemic 96.72<0.001
No18734.6
Yes19570.9
History of bipolar disorder before the pandemic 7.440.01
No36345.9
Yes1973.1
History of schizophrenia before the pandemic *0.60
No38046.7
Yes266.7
No history of mental health diagnosis before the pandemic 117.39<0.001
No (positive history)25367.3
Yes (negative history)12929.3
On antidepressants before the pandemic 60.96<0.001
No22038.1
Yes16268.1
On sleeping tablets before the pandemic 9.00.003
No33445.1
Yes4863.2
On mood stabilizers before the pandemic 23.94<0.001
No34044.6
Yes4279.2
On benzodiazepines before the pandemic 15.32<0.001
No36245.6
Yes2087.0
On antipsychotics before the pandemic 9.070.003
No36646.0
Yes1680.0
On no psychotropic medication before the pandemic 66.46<0.001
No (on psychotropic medication)19965.2
Yes (not on psychotropic medication)18335.8
Received sufficient support from family and friends 108.58<0.001
Yes, absolute support12329.9
Yes, some support14456.9
Yes, but only limited support8774.4
Not at all2880.0
Received sufficient support from employer 39.01<0.001
Yes, absolute support10634.1
Yes, some support8054.1
Yes, but only limited support5062.5
Not at all3664.3
Not currently employed10850.0
Received sufficient support from the Government of Canada 28.28<0.001
Yes, absolute support7633.2
Yes, some support9850
Yes, but only limited support5948
Not at all14456.9
Received counselling during the pandemic 65.55<0.001
No21637.6
Yes16668.6
* Fisher’s exact test; ** percentage of each category in each variable who had likely PTSD.
Table 4. Logistic regression predicting likelihood of respondents presenting with PTSD.
Table 4. Logistic regression predicting likelihood of respondents presenting with PTSD.
PredictorBSEWalddfp-ValueOdds Ratio95% CI for Odds Ratio
LowerUpper
Age (Years)
≤25 1.93930.585
26–400.0480.5000.00910.9231.0490.3942.794
41–60−0.2550.5140.24610.6200.7750.2832.121
>60−0.2880.6050.22710.6340.7490.2292.454
Ethnicity
Caucasian 5.84730.119
Indigenous1.3610.6444.46210.0353.8991.10313.783
Asian−0.3560.4100.75510.3850.7000.3141.564
Other−0.2280.3620.39710.5280.7960.3911.618
Education
Less than High School Diploma 3.95830.266
High School Diploma1.4691.0761.86310.1724.3460.52735.825
Post-Secondary Education0.8011.0060.63410.4262.2270.31015.990
Other Education−0.1921.5340.01610.9010.8260.04116.680
Employment status
Employed 1.63040.803
Unemployed−0.0670.3750.03210.8590.9350.4481.952
Retired−0.2620.4390.35710.5500.7700.3261.818
Students0.6430.6211.07210.3001.9020.5636.421
Other0.0020.7630.00010.9981.0020.2254.467
Relationship status
Married/Cohabiting/Partnered 0.54940.969
Separated/Divorced−0.1190.3260.13310.7150.8880.4681.683
Widowed0.2480.6680.13810.7101.2820.3464.747
Single0.1030.2440.17910.6721.1090.6871.789
Other0.0111.0020.00010.9911.0110.1427.214
Housing status
Own home 4.54520.103
Living with family0.6020.4401.87110.1711.8250.7714.323
Renting0.5140.2593.92310.0481.6721.0052.780
Lost job due to the COVID-19 pandemic
No 3.50920.173
Yes0.4430.3401.70110.1921.5570.8003.031
Did not have a job before the pandemic0.7040.4282.70910.1002.0210.8744.673
Self-isolated/self-quarantined
No
Yes
0.0700.2090.11210.7381.0720.7121.614
Were afraid to contract the coronavirus
No
Yes
0.8080.2738.76710.0032.2431.3143.830
Respondents had a history of depression before the pandemic
No
Yes
0.7970.2798.15510.0042.2181.2843.831
History of anxiety disorder before the pandemic
No
Yes
0.4710.2463.65310.0561.6020.9882.596
History of bipolar disorder before the pandemic
No
Yes
−0.0430.6670.00410.9490.9580.2593.541
On antidepressants before the pandemic
No
Yes
0.3130.2771.27410.2591.3670.7942.355
On sleeping tablets before the pandemic
No
Yes
−0.0340.3540.00910.9240.9670.4831.934
On benzodiazepine tablets before the pandemic
No
Yes
0.5550.8570.42110.5171.7430.3259.339
On mood stabilizers before the pandemic
No
Yes
0.8120.4792.87310.0902.2510.8815.754
On an antipsychotic before the pandemic
No
Yes
0.2490.7610.10710.7441.2820.2895.696
Received sufficient support from family and friends
Yes, absolute support 36.39530.000
Yes, some support0.8730.20917.46310.0002.3941.5903.604
Yes, but only limited support1.5540.30226.39110.0004.7302.6158.558
Not at all1.7040.5659.09010.0035.4971.81616.645
Received sufficient support from employer
Yes, absolute support 8.09440.088
Yes, some support0.4120.2602.51510.1131.5100.9072.514
Yes, but only limited support0.7020.3274.60410.0322.0171.0633.829
Not at all0.4030.4340.85910.3541.4960.6383.504
Not currently employed−0.3230.4430.53210.4660.7240.3041.725
Received sufficient support from the Government of Canada
Yes, absolute support 4.08930.252
Yes, some support0.0980.2650.13710.7111.1030.6561.857
Yes, but only limited support0.0440.2980.02210.8831.0450.5831.873
Not at all0.4530.2573.12510.0771.5740.9522.602
Received counselling during the pandemic
No
Yes
0.5500.2126.76010.0091.7341.1452.625
Constant−0.8051.2570.41010.5220.447
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Shalaby, R.; Adu, M.K.; Andreychuk, T.; Eboreime, E.; Gusnowski, A.; Vuong, W.; Surood, S.; Greenshaw, A.J.; Agyapong, V.I.O. Prevalence, Demographic, and Clinical Correlates of Likely PTSD in Subscribers of Text4Hope during the COVID-19 Pandemic. Int. J. Environ. Res. Public Health 2021, 18, 6227. https://doi.org/10.3390/ijerph18126227

AMA Style

Shalaby R, Adu MK, Andreychuk T, Eboreime E, Gusnowski A, Vuong W, Surood S, Greenshaw AJ, Agyapong VIO. Prevalence, Demographic, and Clinical Correlates of Likely PTSD in Subscribers of Text4Hope during the COVID-19 Pandemic. International Journal of Environmental Research and Public Health. 2021; 18(12):6227. https://doi.org/10.3390/ijerph18126227

Chicago/Turabian Style

Shalaby, Reham, Medard K. Adu, Taelina Andreychuk, Ejemai Eboreime, April Gusnowski, Wesley Vuong, Shireen Surood, Andrew J. Greenshaw, and Vincent I. O. Agyapong. 2021. "Prevalence, Demographic, and Clinical Correlates of Likely PTSD in Subscribers of Text4Hope during the COVID-19 Pandemic" International Journal of Environmental Research and Public Health 18, no. 12: 6227. https://doi.org/10.3390/ijerph18126227

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