Next Article in Journal
The Efficacy and Effectiveness of the Biological Treatment of Pruritus in the Course of Atopic Dermatitis
Previous Article in Journal
A RAND/UCLA-Modified VAS Study on Telemedicine, Telehealth, and Virtual Care in Daily Clinical Practice of Vascular Medicine
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The Moderating Role of Anxiety and Depressive Symptoms in Protective Effects of Health Behaviors among Clients Using Mental Health Services

1
Department of Human Studies, The University of Alabama at Birmingham, Birmingham, AL 35294, USA
2
Psychology Department, Sultan Qaboos University, Al-Khod 123, Oman
3
Heersink School of Medicine, The University of Alabama at Birmingham, Birmingham, AL 35294, USA
*
Author to whom correspondence should be addressed.
J. Clin. Med. 2024, 13(6), 1753; https://doi.org/10.3390/jcm13061753
Submission received: 8 February 2024 / Revised: 7 March 2024 / Accepted: 14 March 2024 / Published: 18 March 2024
(This article belongs to the Section Mental Health)

Abstract

:
College-student clients using mental health services contend with increased anxiety and depressive symptoms, and their vulnerability to infectious respiratory diseases and severe clinical outcomes rises. To mitigate severe outcomes, health behaviors serve as essential protective tools to reduce the risk of infectious diseases, including COVID-19. Considering the escalating prevalence of anxiety and depression among college-student clients, little is known about how anxiety and depressive symptoms could potentially attenuate the protective effects of COVID-19 health behaviors (i.e., masking, social distancing, and hygiene practice). This study aims to examine the interactive effects of anxiety/depression and health behaviors in predicting COVID-19 infection. Methods: We analyzed data from the 2020–2021 Healthy Mind Study including a random sample of 9884 college-student clients in mental health services across 140 higher education institutions in the United States. We performed multivariable logistic regression to assess whether and to what extent the associations between COVID-19 health behaviors and infection depended on severity of anxiety or depressive symptoms. Results: Anxiety symptom severity negatively moderated the protective effects of social distancing against infection after adjusting for demographic characteristics and pre-existing chronic health conditions. Depressive symptom severity negatively moderated the protective effects of masking, social distancing, or hygiene practices against infection. Conclusion: The associations between certain COVID-19 health behaviors and infection were conditional on anxiety and depressive symptom severity. Findings suggest a potential public health benefit of mental health clinicians’ efforts in assessing and treating clients’ anxiety and depressive symptoms, namely reducing their vulnerability to COVID-19 infection and perhaps other infectious respiratory diseases.

1. Introduction

Respiratory diseases contribute to economic burdens and severe health outcomes, such as hospitalizations and deaths. Lessons learned from the pandemic may help inform public health policy and research on other infectious respiratory illnesses. Coronavirus disease 2019 (COVID-19), caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has been responsible for approximately 1.18 million deaths in the United States as of February 2024 [1]. Between September 5th, 2020, and May 29th, 2021, the total number of hospitalizations and deaths reached 2 million and 0.4 million, respectively [1]. During this period, the average weekly hospitalizations and deaths surpassed 54,458 and 10,571, respectively [1], despite over 146 million people being fully vaccinated by May 29th, 2021 [2]. This period witnessed the first peak of COVID-19 infection in the U.S., specifically during January of 2021 [1]. While the national emergency status for COVID-19 was lifted in April 2023, the situation has not yet stabilized. From April 15th, 2023, to February 3rd, 2024, weekly new COVID-19 hospitalizations have seen a 60.2% increase from 13,280 to 21,271, and the weekly number of new COVID-19 deaths has escalated by 29.4% from 1218 to 1576 [1]. According to the U.S. CDC [3], COVID-19 persists as one of the leading causes of death. This alarming rise, in the backdrop of relaxed restrictions, calls for ongoing research to understand the impact of COVID-19 on health outcomes across various subpopulations, particularly those at a higher risk of infection [4]. The COVID-19 mortality rate for people with mental health conditions is two to three times higher than that of the general population [5,6]. Their increased vulnerability to infectious diseases and severe clinical outcomes is likely due to impaired cognition, risk behaviors, and altered immune function, including a pro-inflammatory state and maladaptive T-cell functioning, further exacerbated by sleep issues, loneliness, and social isolation [4,6,7,8,9,10], which requires essential protective measures, such as health behaviors, to ameliorate their risk of infection [5,6,7]. Research has shown that college students grappled with pressing mental health concerns during the pandemic [11,12]. There has been a growing body of literature documenting the relationships between mental health conditions (e.g., anxiety and depression) and the uptake of COVID-19 health behaviors, providing important public health insights [13,14]. However, the relationships between mental health conditions and the protective effects of these health behaviors remain understudied. Given the escalating prevalence of anxiety [64.9%] and depression [46%] among college-student clients receiving mental health services [15], a more granular understanding about the potential role of mental health symptom severity in the protective effects of health behaviors against COVID-19 infection can inform clinical practices and health policies to reduce the risk of severe health outcomes among this population. To bridge the research gap, we aimed to examine the interactive effects of anxiety/depression and health behaviors in predicting COVID-19 infection while controlling for demographic variables and plausible risk factors for COVID-19 infections to reduce possible confounding effects. This current study addressed the following research questions and the accompanying hypotheses:
Research Question 1.
Does college-student clients’ severity of anxiety symptoms moderate the protective effects of their health behaviors (i.e., masking, social distancing, and hygiene practice) against COVID-19 infection?
Hypothesis 1.
The associations between college-student clients’ COVID-19 health behaviors and infection would depend on their anxiety symptom severity.
Research Question 2.
Does college-student clients’ severity of depressive symptoms moderate the protective effects of their health behaviors (i.e., masking, social distancing, and hygiene practice) against COVID-19 infection?
Hypothesis 2:
The associations between college-student clients’ COVID-19 health behaviors and infection would depend on their depressive symptom severity.

2. Methods

2.1. Participants

The present study was approved by the institutional review board of the first author’s institution. Secondary, de-identified data was analyzed from the Healthy Minds Study (HMS), conducted from September 2020 to May 2021 across 140 U.S. higher education institutions and including 136,502 college students. The study, approved by IRB at each participating institution, required written informed consent from all participants. Diversity was present in the study sites regarding the institutional type, enrollment size, and geographic location (urban and rural campuses from all nine census regions). At institutions with over 4000 individuals, a random sample of 4000 was invited. Conversely, at smaller institutions, all individuals received an invitation.
The study adjusted differences between respondents and non-respondents through sample weights. These weights were based on institutional data about sex, race, academic level, and grade point average. Although the participants represented the entire population at each institution, certain demographic characteristics, such as sex and race, might differ between respondents and non-respondents. Institutional data was therefore utilized to calculate the response propensity for each participant type. Subsequently, each participant was assigned a response propensity weight, with larger weights given to those with underrepresented characteristics to ensure representation of the full institutional population.
In this present study, the population of interest was college-student clients using mental health services, given the high prevalence of anxiety and depression among this population. The inclusion criteria for this study stipulated that participants must be college students who were over the age of 18 and currently receiving mental health services; the exclusion criteria stipulated that individuals who were under the age of 18, not enrolled in a higher education institution, or not currently using mental health services, would be excluded from the study. Of the 136,502 students responding to the HMS survey, 9884 students responded “Yes” to a survey question (“Are you currently receiving counseling or therapy?”) while also meeting other inclusion criteria. Therefore, these 9884 participants who reported the current use of mental health services (e.g., university counseling centers or community providers) were included in this current study.

2.2. COVID-19 Infection

COVID-19 infection was measured by one question: “Have you had COVID-19 (the novel coronavirus disease)?” Participants answered this question based on their experience during the pandemic. This outcome was coded as a binary variable to indicate participants’ COVID-19 diagnosis/symptoms [16].

2.3. Severity of Anxiety Symptoms

The severity of anxiety symptoms was measured using the Generalized Anxiety Disorder–7 (GAD−7) [17]. The GAD−7 is a seven-item measurement used to screen for generalized anxiety disorder and measure anxiety symptom severity. This measurement uses a 4-point Likert scale ranging from 0, Not at all, to 3, Nearly every day. When evaluating anxiety symptom severity, the GAD−7 score ranges from 0 to 21; a higher score suggests more severe anxiety symptoms. Particularly, the cutoff of 10 (sensitivity, 0.89; specificity, 0.82) and 15 (sensitivity, 0.48; specificity, 0.95) might be considered as representing moderate and severe levels of anxiety [17]. The GAD−7 has consistently exhibited strong validity and reliability in studies conducted both before and during the pandemic [17,18]. It has sufficient construct, factorial, and procedural validity [19]. Furthermore, the GAD−7 showed good test–retest reliability over a 7-day period (r = 0.83) [19]. In the current sample, McDonald’s omega (ω) reliability of the GAD−7 was 0.90.

2.4. Severity of Depressive Symptoms

The severity of depressive symptoms was measured using the Patient Health Questionnaire–9 (PHQ−9) [20]. The PHQ−9 is a nine-item measurement used to screen depression and monitor depressive symptom severity. This measurement uses a 4-point Likert scale ranging from 0, Not at all, to 3, Nearly every day. When evaluating depressive symptom severity, the PHQ−9 score ranges from 0 to 27; a higher score suggests more severe depressive symptoms. Particularly, the cutoff of 10 (sensitivity, 0.88; specificity, 0.88) and 15 (sensitivity, 0.68; specificity, 0.95) might be considered as representing moderate and severe levels of depression [20]. The PHQ−9 has been consistently shown to have strong validity and reliability in studies conducted both before and during the pandemic [20,21]. Its construct and factorial validity have been well established [20,21]. In addition to the excellent test–retest reliability observed at 14 days (r = 0.94) [22], the PHQ−9 also exhibited high interrater reliability (ICC = 0.94) [23]. In the current sample, McDonald’s ω reliability of the PHQ−9 was 0.89.

2.5. COVID-19 Health Behaviors

COVID-19 health behaviors were measured using the three following questions: hygiene practices (“How closely have you been following recommendations for hygiene practices [frequent hand washing; avoiding touching your eyes, nose, and mouth; and disinfecting surfaces]?”), social distancing (“How closely have you been following recommendations for social/physical distancing [keeping a six-foot distance between yourself and others in public, avoiding gatherings of 10 or more people, and avoiding non-essential trips outside your home]?”), and masking (“How often do you wear a facemask in public when it is required?”). For questions about hygiene practices and social distancing, participants could respond from 1, Not at all, to 4, Very closely. For the question about masking, participants could respond from 1, Never, to 5, All the time. Higher scores refer to better adherence to health behaviors.

2.6. Covariates

Participants’ demographic variables, as covariates in our statistics models, included age (18–21, 22–25, 26–30, ≥31) [24], biological sex, race/ethnicity, disability status, socioeconomic status (i.e., financial situation), and geographic region. Because of known associations between pre-existing chronic health conditions and COVID-19 infection [25], our models controlled for these chronic health conditions to reduce potential confounding effects.

2.7. Data Analysis

We first performed logistic regression to compute adjusted odds ratios (aORs) and 95% confidence intervals (CIs) to examine the associations of the two predictors (i.e., anxiety/depressive symptom severity and health behavior) with COVID-19 infection, controlling for covariates, which allowed us to estimate the main effect of each health behavior on COVID-19 infection. As we aimed to test our two hypotheses by examining the interactive effects of anxiety/depression and health behaviors in predicting COVID-19 infection, we then added interaction terms into our models to determine whether the severity of anxiety or depressive symptoms would moderate the protective effects of health behaviors against COVID-19 infection. In stratified logistic regression models by the two predictors, the variables that represented the severity of anxiety or depressive symptoms were continuous variables, with a higher score indicating more severe symptoms. Likewise, the variables that represented health behaviors were continuous variables, with a higher score indicating better adherence.
As an abbreviated illustration of the modeling approach using a logistic regression framework including the variables previously described, the logistic model with an interaction can be written as follows:
l o g i t Y i = β 0 + β 1 S y m p t o m S e v e r i t y i +   β 2 H e a l t h B e h a v i o r i +   β 3 S y m p t o m S e v e r i t y i     H e a l t h B e h a v i o r i +   β 4 C o v a r i a t e s i +   ϵ i
In this equation, i indexes participants. Yi refers to the study outcome of interest (i.e., COVID-19 infection status). Covariates indicate the demographic characteristics and chronic health conditions of participants. ϵ refers to the error term. βs are the estimated effects of one unit change in corresponding variables on the log odds of Y. The coefficient (i.e., β3) of the interaction term, as the primary variable of interest, is the estimator of the protective effect of one health behavior on the log odds of Y moderated by the severity of anxiety or depressive symptoms. A significant interaction term indicates that the severity of anxiety or depressive symptoms moderates the protective effect of a health behavior against COVID-19 infection. In each model, when the interaction term is statistically significant and positive, the negative association between the use of one health behavior and the odds of COVID-19 infection (as indicated by β2, which was negative in all our models) becomes less negative as the severity of anxiety or depressive symptoms increases. Namely, a positive coefficient (i.e., β3) suggests that the protective effect of a health behavior against COVID-19 infection decreases as the severity of anxiety or depressive symptoms increases.
We assessed multicollinearity in our stratified models, and the results of the variance inflation factor (VIF), ranging from 1 to 1.27, suggested that there was no concern over collinearity. Unlike multiple linear regression, logistic regression does not assume normality or homoscedasticity. Overall, assumptions of logistic regression were met. Complete case analysis (i.e., listwise deletion) was used to address data with missing values. A two-sided p < 0.05 was considered statistically significant. Statistical analysis was conducted with SPSS version 26.

3. Results

3.1. Anxiety, Depression, and Health Behaviors among College-Student Clients

The demographic characteristics of 9884 participants are presented in Table 1. Results from the descriptive analysis showed that the mean (SD) GAD−7 score was 10.6 (5.8) in the study sample. The prevalence of moderate levels of anxiety was 53.5% based on the GAD−7 cutoff of 10, and the prevalence of severe levels of anxiety was 27.9% based on the cutoff of 15. Results from the descriptive analysis showed that the mean (SD) PHQ−9 score was 12.0 (6.7) in the study sample. The prevalence of moderate levels of depression was 58.2% based on the PHQ−9 cutoff of 10, and the prevalence of severe levels of depression was 34.6% based on the cutoff of 15.
Among participants who contracted COVID-19 during the pandemic period evaluated in this study (2020–2021), 56.8% experienced moderate levels of anxiety, and 30.2% experienced severe levels of anxiety. Further, 62.0% experienced moderate levels of depression, and 38.0% experienced severe levels of depression.
Table 1 shows a summary of college-student clients’ health behaviors. Approximately 90.8% of participants reported “All the time” when it was required to wear a facemask in public, 52.5% reported “Very closely” in terms of following recommendations for social/physical distancing, and 58.9% reported “Very closely” in terms of following recommendations for hygiene practices.

3.2. Main Effects

Table 2 shows a summary of stratified logistic regression models. The results revealed that adherence to masking, social distancing, and hygiene practices were significantly predictive of COVID-19 infection. In models controlling for anxiety symptom severity and covariates, better adherence to masking (aOR: 0.64, 95% CI: 0.58–0.70, p < 0.001), social distancing (aOR: 0.68, 95% CI: 0.63–0.72, p < 0.001), and hygiene practice (aOR: 0.82, 95% CI: 0.75–0.88, p < 0.001) predicted lower odds of COVID-19 infection. A one-unit increase in adherence to masking, social distancing, and hygiene practice was associated with 0.36, 0.32, and 0.18 lower odds of COVID-19 infection, respectively.
In models controlling for depressive symptom severity and covariates, better adherence to masking (aOR: 0.63, 95% CI: 0.57–0.69, p < 0.001), social distancing (aOR: 0.67, 95% CI: 0.63–0.72, p < 0.001), and hygiene practice (aOR: 0.84, 95% CI: 0.78–0.91, p < 0.001) predicted lower odds of COVID-19 infection. A one-unit increase in adherence to masking, social distancing, and hygiene practice was associated with 0.37, 0.33, and 0.16 lower odds of COVID-19 infection, respectively.

3.3. Interaction Effects of Anxiety/Depressive Symptom Severity

Table 3 shows a summary of stratified models with interaction terms. Regarding our first hypothesis, results revealed a significant interaction effect of anxiety symptom severity with social distancing (b = 0.016, SE = 0.006, p = 0.005) but not with masking or hygiene practice. As the severity of anxiety symptoms increased, the association of social distancing with COVID-19 infection became less negative.
Regarding our second hypothesis, results showed that the interaction effects of depressive symptom severity with masking (b = 0.020, SE = 0.007, p = 0.002), social distancing (b = 0.018, SE = 0.005, p < 0.001), and hygiene practice (b = 0.014, SE = 0.006, p = 0.02) were all statistically significant. As the severity of depressive symptoms increased, the association of masking, social distancing, or hygiene practices with COVID-19 infection became less negative.

4. Discussion

To our knowledge, this is one of the first studies to examine the potential moderating role of anxiety and depressive symptom severity in the protective effects of health behaviors against COVID-19 among college-student clients using mental health services. The results revealed a greater prevalence of moderate/severe anxiety [56.8%/30.2%] and depression [62.0%/38.0%] among clients who contracted COVID-19 than among all participants [53.5%/27.9% and 58.2%/34.6%], suggesting an increased vulnerability to COVID-19 infections among clients with these mental health conditions. The results of our models showing main effects (i.e., models without interactive terms) indicate that COVID-19 health behaviors provide clients with significant protection against COVID-19 when clients opt for better adherence, irrespective of the presence and severity of their anxiety or depressive symptoms. While the current literature has focused predominantly on the general population and healthcare workers [26,27], this research provides original insight into the extent of protective effects of these health behaviors against COVID-19 among college-student clients, who often experience varying levels of anxiety and depressive symptoms, supporting the protective effects of non-pharmaceutical prevention in mitigating the transmission of COVID-19.
Further, the results showed that the severity of anxiety symptoms among college-student clients negatively moderated the protective effect of social distancing against COVID-19 infection, which supported our first hypothesis. This finding suggested that the protective effect of social distancing seemed less pronounced as clients experienced more severe anxiety symptoms, extending our current understanding of how anxiety symptom severity might undermine the protective effect of social distancing. One possible explanation is that severe anxiety symptoms can impair self-regulation and impulse control, leading to increased vulnerability to risky behaviors and heightened COVID-19 transmission risk [19,28]. College-student clients with more severe anxiety may disregard social distancing guidelines due to compromised decision-making, particularly in overcrowded settings where poor ventilation can further elevate infection risks [19,28,29,30]. The severity of anxiety might also affect the perception of social distancing adherence, with factors like rejection or isolation exacerbating risks by impairing judgment on attending social events, which could potentially increase COVID-19 exposure [31,32].
Additionally, the results revealed that college-student clients’ severity of depressive symptoms negatively moderated the protective effects of masking, social distancing, and hygiene practices against COVID-19, which supported our second hypothesis. This finding suggested that the greater severity of depressive symptoms experienced by the clients, the lesser the protective effects of clients’ health behaviors against COVID-19 infection. Previous research highlights how depressive symptoms detrimentally affect cognitive functions, including attention, memory, and perception, which are crucial for maintaining effective health behaviors [33,34]. These cognitive impairments, particularly in attentional control and executive function, are associated with difficulties in adhering to repetitive health tasks and making optimal decisions, such as engaging in preventive measures against COVID-19 [33]. This diminished cognitive capacity may result in riskier behaviors and hinder timely responses to health guidelines, like mask-wearing or maintaining a physical distance in over-crowded areas, further exacerbated by depressive symptoms’ impact on psychomotor speed, slowing physical and emotional reactions necessary for executing protective health behaviors promptly [35,36,37,38].
Lastly, socioeconomic challenges faced by clients with severe anxiety and depression might have impeded their ability to follow COVID-19 preventive measures due to factors like overcrowded living conditions, lower health literacy, and difficulty accessing reliable information and healthcare services [4,6,39]. These issues have called for targeted interventions, such as health education and accessible testing and vaccination programs, to support these college-student clients [4,6,40].

4.1. Limitations and Directions for Future Research

This study presents several limitations. First, the reliance on instruments collecting self-report data via a questionnaire and utilization of these retrospective, self-reported data introduces the potential for recall bias, thereby affecting the validity of the findings. The original survey included some instruments developed and standardized before the COVID-19 pandemic. While their application remains plausible during the pandemic era, the interpretation of the findings should be undertaken with caution. Further, results of this study may lack generalizability beyond the current college-student client population and study period. Among the 136,502 college students participating in the HMS survey, 126,618 were excluded from this study because they did not meet the inclusion criteria of this study; namely, they were not currently in mental health services as college-student clients. This said, future research may include both client and non-client populations to compare the potential moderating role of anxiety/depression in the protective effects of health behaviors. Considering some students of the non-client population also experiencing high levels of anxiety and depression, researchers can examine the potential differential protective effects of health behaviors associated with anxiety and depressive symptoms among this broader population. Moreover, it is noteworthy that the response rate for the Healthy Minds Study has seen a decline in recent years, registering at 15% for the current survey wave. While this decline poses the risk of non-response bias, it is important to recognize that sample weights were applied to mitigate this issue. Additionally, the institutions participating in the Healthy Minds Study varied annually. Although this variation in institutional characteristics between survey waves occurred randomly, prior research suggests that such variability is unlikely to significantly compromise the study’s results [24]. While we attempt to shed light on the potential mechanisms of these moderating effects of anxiety and depressive symptom severity on COVID-19 health behaviors through cognitive, behavioral, and socioeconomic lenses, limited literature has investigated this specific phenomenon. As a result, we were unable to compare our findings with other empirical evidence to elucidate the potential underlying mechanisms. This identifies a gap in the literature and underscores the need for further research to understand these mechanisms more comprehensively.

4.2. Implications for Health Policies and Clinical Practice

Implications emerging from this study’s findings may help inform health policies and clinical practices for better public health outcomes. First, the findings contribute to the growing body of evidence on the protective effects of non-pharmaceutical interventions in mitigating the transmission of COVID-19. Despite the distribution of COVID-19 vaccines—a pharmaceutical intervention—research has shown that their ability to prevent COVID-19 infection is limited due to the rapid emergence of more contagious variants [41,42,43]. Clients with mental health conditions are vulnerable to COVID-19 infection and severe clinical outcomes [4]. After infection, clients may not be able to receive timely antiviral treatment due to a lack of access to healthcare, shortages of antiviral medication, or exclusion criteria for prescription [44]. In these circumstances, clients can be at an increased risk for more severe COVID-19 outcomes. Thus, in addition to vaccines and medication, health behaviors should be considered critical public health tools in preventing worse COVID-19 outcomes across clients with varying levels of anxiety and depressive symptoms [41,45].
Second, findings from the present study suggest a potential public health benefit of clinicians’ efforts in assessing and addressing college students’ anxiety and depressive symptoms, namely, reducing clients’ vulnerability to COVID-19 infection, particularly during any surge of COVID-19 cases. As anxiety levels increase, clients may be more inclined to socialize even when such behaviors pose risks to their health. Physical distancing also requires individuals to stay aware of their surroundings to ensure an appropriate distance from others [46]. People with more severe depressive symptoms might inadvertently neglect to wear masks when transitioning from outdoor to indoor settings or neglect hand hygiene after contact with potentially contaminated surfaces. An inability to maintain attention to these health behaviors could lead to lapses or inconsistencies, inevitably exacerbating their risk of COVID-19 infection [29]. Clinicians (e.g., clinical psychologists, counselors, social workers, and psychiatrists) can apply motivational interviewing techniques to help clients process their thoughts and feelings and facilitate their behavior changes, such as clients’ health and mindfulness-related behaviors [47,48]. Mindful attention may assist clients in maintaining health behaviors while reducing their anxiety and depressive symptoms [48,49].
Taken together, clinicians are uniquely positioned to use appropriate psychological interventions and skills, helping clients address their mental health needs and the potential impact of mental health conditions on health behaviors, particularly those that pertain to public health and infectious disease prevention [47,48,50].

5. Conclusions

In this study, the severity of clients’ anxiety symptoms negatively moderated the protective effects of social distancing against COVID-19 infection. The severity of clients’ depressive symptoms negatively moderated the protective effects of masking, social distancing, and hygiene practices. The findings suggest the crucial role that mental health clinicians play in public health efforts aimed at mitigating the transmission of COVID-19 and perhaps other infectious diseases, especially among people with mental health conditions. The assessment and treatment of these mental health issues may contribute to collective public health initiatives between mental health clinicians and other health professionals in mental health promotion and infectious disease prevention.

Author Contributions

Conceptualization, Y.Z.; methodology, Y.Z.; formal analysis, Y.Z.; investigation, Y.Z.; data curation, Y.Z.; writing—original draft preparation, Y.Z., M.A. and X.D.; writing—review and editing, Y.Z., M.A. and X.D.; project administration, Y.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

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. All procedures involving human participants were approved by the institutional review board (IRB−300008474, 7 December 2021) of the University of Alabama at Birmingham.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data that support the findings of this study are openly available upon request in The Healthy Minds Network at https://healthymindsnetwork.org.

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. The, U.S.; Centers for Disease Control and Prevention. COVID Data Tracker. Available online: https://covid.cdc.gov/covid-data-tracker/#datatracker-home (accessed on 26 February 2024).
  2. Our World in Data. Coronavirus (COVID-19) Vaccinations. Available online: https://ourworldindata.org/covid-vaccinations (accessed on 26 February 2024).
  3. Ahmad, F.B.; Cisewski, J.A.; Xu, J.; Anderson, R.N. Provisional mortality data—United States, 2022. Morb. Mortal. Wkly. Rep. 2023, 72, 488. [Google Scholar] [CrossRef] [PubMed]
  4. The National Institutes of Health. NIH’s COVID-19 Response. Available online: https://covid19.nih.gov/nih-strategic-response-COVID-19 (accessed on 10 August 2023).
  5. De Hert, M.; Mazereel, V.; Stroobants, M.; De Picker, L.; Van Assche, K.; Detraux, J. COVID-19-related mortality risk in people with severe mental illness: A systematic and critical review. Front. Psychiatry 2022, 12, 798554. [Google Scholar] [CrossRef] [PubMed]
  6. Vai, B.; Mazza, M.G.; Colli, C.D.; Foiselle, M.; Allen, B.; Benedetti, F.; Borsini, A.; Dias, M.C.; Tamouza, R.; Leboyer, M. Mental disorders and risk of COVID-19-related mortality, hospitalisation, and intensive care unit admission: A systematic review and meta-analysis. Lancet Psychiatry 2021, 8, 797–812. [Google Scholar] [CrossRef] [PubMed]
  7. Mazereel, V.; Van Assche, K.; Detraux, J.; De Hert, M. COVID-19 vaccination for people with severe mental illness: Why, what, and how? Lancet Psychiatry 2021, 8, 444–450. [Google Scholar] [CrossRef] [PubMed]
  8. Eysenck, M.W.; Derakshan, N.; Santos, R.; Calvo, M.G. Anxiety and cognitive performance: Attentional control theory. Emotion 2007, 7, 336. [Google Scholar] [CrossRef] [PubMed]
  9. McDermott, L.M.; Ebmeier, K.P. A meta-analysis of depression severity and cognitive function. J. Affect. Disord. 2009, 119, 1–8. [Google Scholar] [CrossRef] [PubMed]
  10. Zhai, Y.; Du, X. Trends and prevalence of suicide 2017–2021 and its association with COVID-19: Interrupted time series analysis of a national sample of college students in the United States. Psychiatry Res. 2022, 316, 114796. [Google Scholar] [CrossRef]
  11. Oh, H.; Marinovich, C.; Rajkumar, R.; Besecker, M.; Zhou, S.; Jacob, L.; Koyanagi, A.; Smith, L. COVID-19 dimensions are related to depression and anxiety among US college students: Findings from the Healthy Minds Survey 2020. J. Affect. Disord. 2021, 292, 270–275. [Google Scholar] [CrossRef]
  12. Zhai, Y.; Du, X. Addressing collegiate mental health amid COVID-19 pandemic. Psychiatry Res. 2020, 288, 113003. [Google Scholar] [CrossRef]
  13. Akdeniz, G.; Kavakci, M.; Gozugok, M.; Yalcinkaya, S.; Kucukay, A.; Sahutogullari, B. A survey of attitudes, anxiety status, and protective behaviors of the university students during the COVID-19 outbreak in Turkey. Front. Psychiatry 2020, 11, 695. [Google Scholar] [CrossRef]
  14. Chang, K.-C.; Strong, C.; Pakpour, A.H.; Griffiths, M.D.; Lin, C.-Y. Factors related to preventive COVID-19 infection behaviors among people with mental illness. J. Formos. Med. Assoc. 2020, 119, 1772–1780. [Google Scholar] [CrossRef] [PubMed]
  15. Center for Collegiate Mental Health. 2022 Annual Report; Center for Collegiate Mental Health: University Park, PA, USA, 2023. [Google Scholar]
  16. DeVylder, J.; Zhou, S.; Oh, H. Suicide attempts among college students hospitalized for COVID-19. J. Affect. Disord. 2021, 294, 241–244. [Google Scholar] [CrossRef] [PubMed]
  17. Spitzer, R.L.; Kroenke, K.; Williams, J.B.; Löwe, B. A brief measure for assessing generalized anxiety disorder: The GAD-7. Arch. Intern. Med. 2006, 166, 1092–1097. [Google Scholar] [CrossRef] [PubMed]
  18. Shevlin, M.; Butter, S.; McBride, O.; Murphy, J.; Gibson-Miller, J.; Hartman, T.K.; Levita, L.; Mason, L.; Martinez, A.P.; McKay, R.; et al. Measurement invariance of the Patient Health Questionnaire (PHQ-9) and Generalized Anxiety Disorder scale (GAD-7) across four European countries during the COVID-19 pandemic. BMC Psychiatry 2022, 22, 154. [Google Scholar] [CrossRef]
  19. Cheung, R.Y.; Ng, M.C. Mindfulness and symptoms of depression and anxiety: The underlying roles of awareness, acceptance, impulse control, and emotion regulation. Mindfulness 2019, 10, 1124–1135. [Google Scholar] [CrossRef]
  20. Kroenke, K.; Spitzer, R.L.; Williams, J.B. The PHQ-9: Validity of a brief depression severity measure. J. Gen. Intern. Med. 2001, 16, 606–613. [Google Scholar] [CrossRef]
  21. Schuler, M.; Strohmayer, M.; Muhlig, S.; Schwaighofer, B.; Wittmann, M.; Faller, H.; Schultz, K. Assessment of depression before and after inpatient rehabilitation in COPD patients: Psychometric properties of the German version of the Patient Health Questionnaire (PHQ-9/PHQ-2). J. Affect. Disord. 2018, 232, 268–275. [Google Scholar] [CrossRef]
  22. Zuithoff, N.; Vergouwe, Y.; King, M.; Nazareth, I.; van Wezep, M.J.; Moons, K.G.; Geerlings, M.I. The Patient Health Questionnaire-9 for detection of major depressive disorder in primary care: Consequences of current thresholds in a crosssectional study. BMC Fam. Pract. 2010, 11, 98. [Google Scholar] [CrossRef]
  23. Indu, P.S.; Anilkumar, T.V.; Vijayakumar, K.; Kumar, K.A.; Sarma, P.S.; Remadevi, S.; Andrade, C. Reliability and validity of PHQ-9 when administered by health workers for depression screening among women in primary care. Asian J. Psychiatr. 2018, 37, 10–14. [Google Scholar] [CrossRef]
  24. Lipson, S.K.; Zhou, S.; Abelson, S.; Heinze, J.; Jirsa, M.; Morigney, J.; Patterson, A.; Singh, M.; Eisenberg, D. Trends in college student mental health and help-seeking by race/ethnicity: Findings from the national healthy minds study, 2013–2021. J. Affect. Disord. 2022, 306, 138–147. [Google Scholar] [CrossRef]
  25. The, U.S.; Centers for Disease Control and Prevention. Understanding Risk. Available online: https://www.cdc.gov/coronavirus/2019-ncov/your-health/understanding-risk.html (accessed on 2 June 2023).
  26. Abboah-Offei, M.; Salifu, Y.; Adewale, B.; Bayuo, J.; Ofosu-Poku, R.; Opare-Lokko, E.B.A. A rapid review of the use of face mask in preventing the spread of COVID-19. Int. J. Nurs. Stud. Adv. 2021, 3, 100013. [Google Scholar] [CrossRef] [PubMed]
  27. Tekalegn, Y.; Sahiledengle, B.; Bekele, K.; Tesemma, A.; Aseffa, T.; Teferu Engida, Z.; Girma, A.; Tasew, A.; Zenbaba, D.; Aman, R. Correct use of facemask among health professionals in the context of Coronavirus Disease (COVID-19). Risk Manag. Healthc. Policy 2020, 13, 3013–3019. [Google Scholar] [CrossRef] [PubMed]
  28. Soleimani, M.A.; Pahlevan Sharif, S.; Bahrami, N.; Yaghoobzadeh, A.; Allen, K.A.; Mohammadi, S. The relationship between anxiety, depression and risk behaviors in adolescents. Int. J. Adolesc. Med. Health 2017, 31, 20160148. [Google Scholar] [CrossRef] [PubMed]
  29. The, U.S.; Centers for Disease Control and Prevention. People with Certain Medical Conditions. Available online: https://www.cdc.gov/coronavirus/2019-ncov/need-extra-precautions/people-with-medical-conditions.html (accessed on 12 August 2022).
  30. Wang, C.C.; Prather, K.A.; Sznitman, J.; Jimenez, J.L.; Lakdawala, S.S.; Tufekci, Z.; Marr, L.C. Airborne transmission of respiratory viruses. Science 2021, 373, eabd9149. [Google Scholar] [CrossRef]
  31. Delgado-Alonso, C.; Valles-Salgado, M.; Delgado-Álvarez, A.; Yus, M.; Gómez-Ruiz, N.; Jorquera, M.; Polidura, C.; Gil, M.J.; Marcos, A.; Matías-Guiu, J. Cognitive dysfunction associated with COVID-19: A comprehensive neuropsychological study. J. Psychiatr. Res. 2022, 150, 40–46. [Google Scholar] [CrossRef] [PubMed]
  32. Cauberghe, V.; Van Wesenbeeck, I.; De Jans, S.; Hudders, L.; Ponnet, K. How adolescents use social media to cope with feelings of loneliness and anxiety during COVID-19 lockdown. Cyberpsychol. Behav. Soc. Netw. 2021, 24, 250–257. [Google Scholar] [CrossRef]
  33. Gotlib, I.H.; Joormann, J. Cognition and depression: Current status and future directions. Annu. Rev. Clin. Psychol. 2010, 6, 285–312. [Google Scholar] [CrossRef]
  34. Snyder, H.R. Major depressive disorder is associated with broad impairments on neuropsychological measures of executive function: A meta-analysis and review. Psychol. Bull. 2013, 139, 81. [Google Scholar] [CrossRef]
  35. Sobin, C.; Sackeim, H.A. Psychomotor symptoms of depression. Am. J. Psychiatry 1997, 154, 4–17. [Google Scholar] [CrossRef]
  36. Buyukdura, J.S.; McClintock, S.M.; Croarkin, P.E. Psychomotor retardation in depression: Biological underpinnings, measurement, and treatment. Prog. Neuro-Psychopharmacol. Biol. Psychiatry 2011, 35, 395–409. [Google Scholar] [CrossRef]
  37. Nadesalingam, N.; Lefebvre, S.; Alexaki, D.; Baumann Gama, D.; Wüthrich, F.; Kyrou, A.; Kerkeni, H.; Kalla, R.; Walther, S. The behavioral mapping of psychomotor slowing in psychosis demonstrates heterogeneity among patients suggesting distinct pathobiology. Schizophr. Bull. 2023, 49, 507–517. [Google Scholar] [CrossRef] [PubMed]
  38. Talidong, K.J.B.; Toquero, C.M.D. Philippine teachers’ practices to deal with anxiety amid COVID-19. J. Loss Trauma 2020, 25, 573–579. [Google Scholar] [CrossRef]
  39. Perlis, R.H.; Ognyanova, K.; Santillana, M.; Lin, J.; Druckman, J.; Lazer, D.; Green, J.; Simonson, M.; Baum, M.A.; Della Volpe, J. Association of Major Depressive Symptoms with Endorsement of COVID-19 Vaccine Misinformation Among US Adults. JAMA Netw. Open 2022, 5, e2145697. [Google Scholar] [CrossRef] [PubMed]
  40. Zhai, Y.; Du, X. Association between COVID-19 testing uptake and mental disorders among adults in US post-secondary education, 2020–2021. BJPsych Open 2022, 8, e171. [Google Scholar] [CrossRef] [PubMed]
  41. Wang, S.Y.; Juthani, P.V.; Borges, K.A.; Shallow, M.K.; Gupta, A.; Price, C.; Won, C.H.; Chun, H.J. Severe breakthrough COVID-19 cases in the SARS-CoV-2 delta (B. 1.617. 2) variant era. Lancet Microbe 2022, 3, e4–e5. [Google Scholar] [CrossRef]
  42. Birhane, M.; Bressler, S.; Chang, G.; Clark, T.; Dorough, L.; Fischer, M.; Watkins, L.F.; Goldstein, J.M.; Kugeler, K.; Langley, G.; et al. COVID-19 Vaccine Breakthrough Infections Reported to CDC—United States, January 1–April 30, 2021. Morb. Mortal. Wkly. Rep. 2021, 70, 792–793. [Google Scholar] [CrossRef]
  43. Kuhlmann, C.; Mayer, C.K.; Claassen, M.; Maponga, T.; Burgers, W.A.; Keeton, R.; Riou, C.; Sutherland, A.D.; Suliman, T.; Shaw, M.L.; et al. Breakthrough infections with SARS-CoV-2 omicron despite mRNA vaccine booster dose. Lancet 2022, 399, 625–626. [Google Scholar] [CrossRef]
  44. Mallhi, T.H.; Liaqat, A.; Abid, A.; Khan, Y.H.; Alotaibi, N.H.; Alzarea, A.I.; Tanveer, N.; Khan, T.M. Multilevel engagements of pharmacists during the COVID-19 pandemic: The way forward. Front. Public Health 2020, 8, 561924. [Google Scholar] [CrossRef]
  45. Andrejko, K.L.; Pry, J.M.; Myers, J.F.; Fukui, N.; DeGuzman, J.L.; Openshaw, J.; Watt, J.P.; Lewnard, J.A.; Jain, S.; California COVID-19 Case-Control Study Team. Effectiveness of face mask or respirator use in indoor public settings for prevention of SARS-CoV-2 infection—California, February–December 2021. Morb. Mortal. Wkly. Rep. 2022, 71, 212. [Google Scholar] [CrossRef] [PubMed]
  46. The, U.S.; Centers for Disease Control and Prevention. How to Protect Yourself and Others. Available online: https://www.cdc.gov/coronavirus/2019-ncov/prevent-getting-sick/prevention.html (accessed on 12 August 2022).
  47. Brewer, N.T.; Abad, N. Ways That Mental Health Professionals Can Encourage COVID-19 Vaccination. JAMA Psychiatry 2021, 78, 1301–1302. [Google Scholar] [CrossRef] [PubMed]
  48. Schuman-Olivier, Z.; Trombka, M.; Lovas, D.A.; Brewer, J.A.; Vago, D.R.; Gawande, R.; Dunne, J.P.; Lazar, S.W.; Loucks, E.B.; Fulwiler, C. Mindfulness and behavior change. Harv. Rev. Psychiatry 2020, 28, 371. [Google Scholar] [CrossRef] [PubMed]
  49. Aldahadha, B. Metacognition, mindfulness attention awareness, and their relationships with depression and anxiety. J. Ration. Emot. Cogn. Behav. Ther. 2021, 39, 183–200. [Google Scholar] [CrossRef]
  50. Henshaw, E.J.; Freedman-Doan, C.R. Conceptualizing mental health care utilization using the health belief model. Clin. Psychol. Sci. Pract. 2009, 16, 420. [Google Scholar] [CrossRef]
Table 1. Demographic Characteristics of the Sample, 2020–2021 (n = 9884).
Table 1. Demographic Characteristics of the Sample, 2020–2021 (n = 9884).
CharacteristicParticipants, No. (%) a
Age
18–215161 (50.7)
22–252184 (21.9)
26–301229 (11.4)
≥311310 (15.9)
Sex
Female8278 (74.5)
Male1602 (25.4)
Other4 (0.1)
Race/ethnicity
American Indian/Alaskan Native153 (2.2)
Asian611 (5.5)
Black/African American838 (9.2)
Latinx524 (5.1)
Native Hawaiian/Pacific Islander27 (0.3)
Middle Eastern/Arab81 (0.7)
White7544 (75.5)
Other106 (1.5)
Disability status
Yes1888 (20.6)
No7996 (79.4)
Socioeconomic status (current financial stress)
Always stressful1585 (17.9)
Often stressful2530 (26.8)
Sometimes stressful3353 (32.8)
Rarely stressful1849 (17.5)
Never stressful567 (5.1)
Geographic region
Northeast Region New England Division (Connecticut, Maine, Massachusetts, New Hampshire, Rhode Island, Vermont)492 (3.5)
Northeast Region Middle Atlantic Division (New Jersey, New York, Pennsylvania)1570 (16.6)
Midwest Region East North Central Division (Illinois, Indiana, Michigan, Ohio, Wisconsin)2421 (21.9)
Midwest Region West North Central Division (Iowa, Kansas, Minnesota, Missouri, Nebraska, North Dakota, South Dakota)545 (6.6)
South Region South Atlantic Division (Delaware, District of Columbia, Florida, Georgia, Maryland, North Carolina, South Carolina, Virginia, West Virginia)2555 (21.4)
South Region East South Central Division (Alabama, Kentucky, Mississippi, Tennessee)538 (8.2)
South Region West South Central Division (Arkansas, Louisiana, Oklahoma, Texas)155 (2.8)
West Region Mountain Division (Arizona, Colorado, Idaho, Montana, Nevada, New Mexico, Utah, Wyoming)540 (6.8)
West Region Pacific Division (Alaska, California, Hawaii, Oregon, Washington)1068 (12.1)
Chronic health condition
Diabetes164 (1.8)
Hypertension357 (5.1)
Asthma1778 (18.4)
Thyroid disease447 (4.8)
Gastrointestinal disease464 (4.3)
Arthritis321 (3.3)
Sickle cell anemia17 (0.1)
Seizure disorders117 (1.2)
Cancers93 (1.0)
High cholesterol338 (4.3)
HIV/AIDS12 (0.3)
Other autoimmune disorder347 (3.9)
Other chronic disease930 (9.2)
COVID-19 infection
Yes2439 (25.6)
No7445 (74.4)
GAD−7
≥10 (moderate level of anxiety)5267 (53.5)
≥15 (severe level of anxiety)2714 (27.9)
PHQ−9
≥10 (moderate level of depression)5651 (58.2)
≥15 (severe level of depression)3291 (34.6)
Masking
All the time9224 (90.8)
Most of the time544 (7.0)
Sometimes79 (1.2)
Rarely27 (0.7)
Never10 (0.3)
Social distancing
Very closely5304 (52.5)
Somewhat closely3853 (39.5)
Not closely598 (6.5)
Not at all129 (1.6)
Hygiene practices
Very closely5917 (58.9)
Somewhat closely3598 (36.9)
Not closely316 (3.6)
Not at all53 (0.5)
GAD−7: Generalized Anxiety Disorder–7; PHQ−9: Patient Health Questionnaire–9; a Percentages are weighted to be representative of the population at each institution.
Table 2. Main Effects of Health Behaviors on COVID-19 Infection in Stratified Models a,b.
Table 2. Main Effects of Health Behaviors on COVID-19 Infection in Stratified Models a,b.
VariableCOVID-19 Infection
aOR (95% CI)p Value
Model 1
Anxiety symptom severity1.02 (1.01–1.03)<0.001
Masking0.64 (0.58–0.70)<0.001
Model 2
Anxiety symptom severity1.02 (1.01–1.03)<0.001
Social distancing0.68 (0.63–0.72)<0.001
Model 3
Anxiety symptom severity1.02 (1.01–1.03)<0.001
Hygiene practice0.82 (0.75–0.88)<0.001
Model 4
Depressive symptom severity1.02 (1.01–103)<0.001
Masking0.63 (0.57–0.69)<0.001
Model 5
Depressive symptom severity1.02 (1.01–1.02)<0.001
Social distancing0.67 (0.63–0.72)<0.001
Model 6
Depressive symptom severity1.02 (1.01–1.02)<0.001
Hygiene practice0.84 (0.78–0.91)<0.001
aOR: adjusted odds ratio; CI: confidence interval; a adjusted for age, sex, race/ethnicity, disability status, socioeconomic status, geographic region, and chronic health conditions. b Predictors and covariates were entered into each stratified model at the same time.
Table 3. Interaction Effects of Anxiety and Depressive Symptom Severity with COVID-19 Health Behaviors a,b.
Table 3. Interaction Effects of Anxiety and Depressive Symptom Severity with COVID-19 Health Behaviors a,b.
VariableCOVID-19 Infection
CoefficientStandard Errorp Value
Model 1
Anxiety symptom severity × masking0.0120.0080.11
Model 2
Anxiety symptom severity × social distancing0.0160.0060.005
Model 3
Anxiety symptom severity × hygiene practice0.0020.0070.72
Model 4
Depressive symptom severity × masking0.0200.0070.002
Model 5
Depressive symptom severity × social distancing0.0180.005<0.001
Model 6
Depressive symptom severity × hygiene practice0.0140.0060.02
Note: Bold font indicates statistical significance; a adjusted for age, biological sex, race/ethnicity, disability status, socioeconomic status, geographic region, and chronic health conditions; b in each stratified model, all variables were input at the same time.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Zhai, Y.; Almaawali, M.; Du, X. The Moderating Role of Anxiety and Depressive Symptoms in Protective Effects of Health Behaviors among Clients Using Mental Health Services. J. Clin. Med. 2024, 13, 1753. https://doi.org/10.3390/jcm13061753

AMA Style

Zhai Y, Almaawali M, Du X. The Moderating Role of Anxiety and Depressive Symptoms in Protective Effects of Health Behaviors among Clients Using Mental Health Services. Journal of Clinical Medicine. 2024; 13(6):1753. https://doi.org/10.3390/jcm13061753

Chicago/Turabian Style

Zhai, Yusen, Mahmood Almaawali, and Xue Du. 2024. "The Moderating Role of Anxiety and Depressive Symptoms in Protective Effects of Health Behaviors among Clients Using Mental Health Services" Journal of Clinical Medicine 13, no. 6: 1753. https://doi.org/10.3390/jcm13061753

APA Style

Zhai, Y., Almaawali, M., & Du, X. (2024). The Moderating Role of Anxiety and Depressive Symptoms in Protective Effects of Health Behaviors among Clients Using Mental Health Services. Journal of Clinical Medicine, 13(6), 1753. https://doi.org/10.3390/jcm13061753

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop