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Sociodemographic Predictors of Depression in US Rural Communities During COVID-19: Implications for Improving Mental Healthcare Access to Increase Disaster Preparedness

Published online by Cambridge University Press:  04 August 2022

Clare EB Cannon*
Affiliation:
University of California, Davis, CA, USA University of the Free State, Bloemfontein, South Africa
Regardt Ferreira
Affiliation:
University of the Free State, Bloemfontein, South Africa Tulane University School of Social Work, New Orleans, LA, USA
Fredrick Buttell
Affiliation:
University of the Free State, Bloemfontein, South Africa Tulane University School of Social Work, New Orleans, LA, USA
Chase Anderson
Affiliation:
Tulane University School of Social Work, New Orleans, LA, USA
*
Corresponding author: Clare Cannon, Email: cebcannon@ucdavis.edu
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Abstract

Objective:

The objective of this research is to identify sociodemographic predictors of depression for a rural population in the US during the COVID-19 pandemic to enhance mental health disaster preparedness.

Methods:

This study uses t-tests to differentiate between gender and ethnicity groups regarding depression status; binary logistic regression to identify socio-demographic characteristics that predict depression status; and t-test to differentiate between average depression scores, measured by the PHQ-9, pre-COVID-19 pandemic (2019) and after it’s start (2020).

Results:

Results indicate that men were less likely than women to report depression. Clients who identified as Latinx/Hispanic were 2.8 times more likely than non-Hispanics to report depression and clients who did not reside in public housing were 19.9% less likely to report depression. There was a statistically significant difference between mean PHQ-9 scores pre- and post-pandemic, with pre-pandemic scores lower on average, with a small effect size.

Conclusions:

Building on findings from this study, we propose ways to increase rural access to mental health services, through equitable access to telemedicine, to meet the needs of rural clients to increase disaster preparedness.

Type
Research Letters
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
© The Author(s), 2022. Published by Cambridge University Press on behalf of Society for Disaster Medicine and Public Health, Inc.

Like other kinds of disasters, the coronavirus disease 2019 (COVID-19) pandemic, as an infectious disease disaster, has likely increased rates of depression across the US. Reference Vahratian, Blumberg, Terlizzi and Schiller1 Even prior to this pandemic, 1 in 6 U adult residents were estimated to have experienced depression in their lifetime. Experiences of depression can be particularly devastating, as they likely increase comorbidities such as anxiety, pain, and cardiovascular disease. Reference Zhang, Chen and Depression2

Few studies have investigated relationships between the COVID-19 pandemic and depression in US rural communities. 3 Prior disaster-focused research has looked at relationships among increased depression after disaster and associated factors such as resource loss, suicidal ideation, and social support in rural areas globally. Yet, little is known of the role of demographic factors in influencing experiences of depression during the COVID-19 pandemic in rural communities in the US.

Generally, it is unclear whether there are higher rates of depression in rural areas in the US compared to urban areas – with some research finding depression rates are slightly higher in rural areas. Reference Brossart, Wendel and Elliott4 What is known is that roughly 20% of Americans live in rural areas and 20% of that population have a mental illness. 5 Yet it is not well understood whether the prevalence of depression varies by gender, race, or ethnicity in rural communities, with research suggesting, generally, that women are more likely than men to experience depression, and to what extent comorbid effects such as higher rates of poverty, may contribute to rates of depression. Reference Brossart, Wendel and Elliott4 Regardless, people living in US rural communities experience a resource gap in medical services and it is clear that depression in these areas is chronically understudied. 2 reasons behind rural mental health disparities include poor access to health care and limited availability of mental health providers. 3 Such lack of resources is particularly acute during disasters, laying the groundwork for exacerbating already existing mental health disparities for rural residents. Given the lack of resources in rural areas, person centered interventions are essential to reducing experiences of depression and their comorbid effects, all while increasing disaster preparedness. Reference Pfefferbaum, Flynn and Schonfeld6

To address this gap in knowledge, the current study investigated sociodemographic predictors of depression among a sample of clients who requested services from a Federally Qualified Health Center (FQHC) in 2019 and 2020. Federally Qualified Health Centers (FQHC) are community-based health centers that provide health care services in areas with limited resources. FQHC have stringent requirements they must meet to qualify for funding from the Health Resources and Services Administration. They must also provide services on a sliding scale, which is tied to household income and/or a patient’s lack of insurance.

Methods

This study utilized de-identified data from FQHC clinics serving contiguous rural communities that span North-East Texas, North-West Louisiana, and South-West Arkansas. The Tulane Social/Behavioral Institutional Review Board approved this study. Data consisted of all documented visits of individuals throughout 2019 and 2020 for which data were available (n = 2762). Specifically, this study used the PHQ-9, a well-validated measure for assessing depression, Reference Costantini, Pasquarellan and Odone7 and demographic variables (e.g., race, ethnicity) to advance understanding of how the COVID-19 pandemic intersects with demographic variables for a rural population. The PHQ-9 was administered to clients and demographic measures collected as part of the intake process for the FQHC. Analysis included both t-tests and a series of binary logistic regression models that focused on both average rates of depression among the rural sample and investigations into differences in depression by race, ethnicity, and gender. Another t-test was used to identify differences in pre-COVID-19 pandemic mean PHQ-9 scores (2019) and mean PHQ-9 scores after the pandemic’s start (2020).

Results

The sample of 2762 clients had a mean age of 43.87 years (SD = 20.42), with 62.0% identifying as females (n = 1713), 33.8% as men (n = 934), and 4.2% (n = 115) as other. Most of the sample identified as white 79.6% (n = 2199). Regarding ethnicity, 3.1% (n = 87) identified as Hispanic/Latino. Less than 1% (0.7%, n = 18) identified English as a second spoken language. With respect to veteran status, 2.8% (n = 78) of the sample identified as being veterans. Regarding public housing 1.1% (n = 30) of the sample were making use of public housing. Most of the sample (99.9%, n = 2759) did not identify as immigrants. The sample had 0.2% (n = 5) respondents that reported homelessness. Regarding the PHQ-9, respondents had a mean score of 9.48 (SD = 6.71) for the 9-item questionnaire. Table 1 provides a detailed description of the sample.

Table 1. Demographic characteristics

Group differences for depression score (PHQ-9) for gender and race

An independent sample t-test was performed to determine if there was a difference between mean scores of PHQ-9 experienced by males and females. The mean PHQ-9 score for the male group was 8.25 (SD = 6.38) and for the female group was 10.12 (SD = 6.79), indicating that the female group reported higher levels of depression compared to the male group. This difference was significant (t (2645) = 6.905, P = 0.001) with a small effect size (Cohen’s d = 0.283). An independent sample t-test was performed to determine if there was a difference between mean scores of depression experienced by 2 racial groups, white/minority, on the PHQ-9. The mean PHQ-9 score for the white group was 9.61 (SD = 6.82) and for the minority group was 9.00 (SD = 6.25), indicating that the white group reported higher levels of depression compared to the minority group. This difference was significant (t (2760) = 1.935, P = 0.027) with a small effect size (Cohen’s d = 0.091).

Model testing: predicting group membership for depression and gender

2 logistic regression models investigated group membership based on depression and gender with their odds ratios presented in Table 2. A binary logistic regression analysis was performed to investigate how well age, gender, race, ethnicity, veteran status, and public housing status predicted group membership based on depression status. To create a binary depression variable, PHQ-9 scores of 0 - 9 were used to create the category termed ‘none or low depression’ and PHQ-9 scores of 10 - 27 were used to create the category termed ‘depression.’ Reference Costantini, Pasquarellan and Odone7 The group that did not exhibit depression was 55.6% (n = 1535) of the sample compared to 44.4% (n = 1227) of the sample that did exhibit depression. The model consisted of 6 predictors and allowed for simultaneous entry of all the independent variables. A test of the full model against a constant-only model was statistically significant (χ 2 = 21.84, df = 6, P = 0.01). Prediction success for the cases used in the development of the model had an overall success rate of 94.1%. Gender, ethnicity status, and public housing status were statistically significant. Women were 1.3 times more likely than men to belong to the depression group. Clients who identified as Latino/Hispanic were 2.8 times more likely than non-Hispanics to experience depression. Clients who did not reside in public housing were 19.9% less likely to experience depression.

Table 2. Logistic regression models predicting membership in depression group, gender group, and racial group

**P < 0.01, *** P < 0.001

A second model assessed how well age, race, ethnicity, veteran status, public housing status, and PHQ-9 predicted group membership based on gender. The model consisted of 6 predictors and allowed for simultaneous entry of all the independent variables. A test of the full model against a constant-only model was statistically significant (χ 2 = 86.22, df = 6, P = 0.001). Prediction success for the cases used in the development of the model were moderate, with an overall success rate of 65.1%. Age, veteran status, and depression status were statistically significant. Older clients were more likely to belong to the female group as were non-veterans compared to veterans. Clients experiencing depression were also 47.8% more likely to be women.

Group differences for depression score (PHQ-9) for pre-COVID-19 pandemic and after the start of the pandemic

There were 2438 individuals for whom data was available pre-COVID-19 pandemic (pre-covid, 2019) and 324 with data available after the start of the COVID-19 pandemic (post-Covid, 2020). An independent t-test was performed to determine if there were differences in PHQ-9 scores before and after the start of the COVID-19 pandemic in the US. The average PHQ-9 score post-covid (mean = 7.09, SD = 0.39) was higher than pre-covid scores (mean = 6.65, SD = 0.14). There was a statistically significant difference between the 2 groups (t(402.32) = -6.25; P < 0.001). The pre-covid PHQ-9 mean score was 0.44 (SE = 0.416) lower than the average post-covid PHQ-9 score, with a small effect size (95% CI = -0.342, -1.78: Cohen’s d = 0.39).

Limitations

There are limitations to the current research. The data is cross-sectional and cannot point towards direct causality between the explanatory and outcome variables. The data represent those that visited a FQHC, limiting the generalizability of the research. Although data from FQHC are an important step in identifying relationships between socio-demographic variables and depression, the sample was overwhelmingly white, limiting the ability of the statistical tests to determine key factors in the relationship between race and depression. Additional data such as drive time and residential zip codes would be useful in assessing accessibility of such centers. Future research should use data more inclusive of racial/ethnic differences and to assess accessibility. Future research should also consider identifying key similarities and differences between rural and urban populations and depression.

Discussion

The research presented here is some of the first to empirically assess potential linkages among depression, race, and gender to an infectious disease disaster for a rural sample. The findings suggest that women, people living in public housing (a strong indicator of poverty), and clients who identified as Latinx/Hispanic were more likely to report depression. The finding that women self-report more depression than men is consistent with data more generally, as is the finding that Hispanic/Latinx clients reported more depression than non-Hispanic/Latinx clients, which may be related to the marginalization of these clients based on ethnicity. Reference Bailey, Mokonogho and Kumar8 Importantly, rural women, older clients, and clients who identified as Latino/Hispanic were more likely to have experienced depression during the COVID pandemic, relative to male clients, younger clients, and those who identified as white. Finally, like other research into the COVID-19 pandemic, Reference Vahratian, Blumberg, Terlizzi and Schiller1 average depression scores measured by the PHQ-9 were higher after the start of the pandemic than before for this sample of rural US residents, evidencing the urgent need to further develop disaster preparedness interventions for mental health, particularly for rural residents, who frequently experience a resource gap in health services. Although this is just 1 study, the findings shed some light on rural people’s experiences with the COVID-19 pandemic and may help inform ways to assist these populations in preparing for the next infectious disease disaster. For example, these findings were provided to the agency partner to assist them in refining their programming in order to increase access to mental health services for rural clients, train health care providers to ask screening questions for all clients including people from diverse racial and ethnic backgrounds, craft person-centered interventions that focus on client strengths and capacities, and increase public health preparedness to disaster. Reference Pfefferbaum, Flynn and Schonfeld6

Though there is a solid body of research supporting the use of tele-health for addressing mental health issues, Reference Myers9 this is not an immediate solution for improving rural residents’ access to mental health services and disaster preparedness. Rural areas suffer from a digital divide relative to urban areas and recent research suggests that as many as 42 million Americans do not have access to broadband. Reference Busby and Tanberk10 Although the CARES Act (2021) set aside money to improve broadband access in rural areas, that will take time. In the meantime, asking depression screening questions of all clients who request services is achievable and makes sense, given these findings. More difficult, but longer-term strategies, include sending out mobile units to see people in rural areas by making use of public spaces, such as schools and other easily accessed public areas (e.g., libraries). As noted above, these efforts should focus on crafting personalized interventions that meet the needs of the rural client to increase disaster preparedness.

Conclusion

The COVID-19 pandemic continues to impact individuals, their families, and communities. Such impacts for rural communities have not been well understood since the pandemic started in the US in 2020. Building on findings from this study, we propose ways to increase rural access to mental health services, through equitable access to telemedicine, as well as suggest personalized interventions that meet the needs of the rural client to increase disaster preparedness.

References

Vahratian, A, Blumberg, SJ, Terlizzi, EP, Schiller, JS. Symptoms of anxiety or depressive disorder and use of mental health care among adults during the COVID-19 Pandemic — United States, August 2020–February 2021. MMWR. 2021;70(13):490-494. doi: 10.15585/mmwr.mm7013e2 Google ScholarPubMed
Zhang, Y, Chen, Y, Depression, Ma L., and cardiovascular disease in elderly: current understanding. J Clin Neurosci. 2018;47:1-5. doi: 10.1016/j.jocn.2017.09.022 CrossRefGoogle ScholarPubMed
Summers-GabrN M. Rural–urban mental health disparities in the United States during COVID-19. Psychol Trauma. 2020;12(S1):S222-S224. doi: 10.1037/tra0000871 CrossRefGoogle Scholar
Brossart, DF, Wendel, ML, Elliott, TR, et al. Assessing depression in rural communities. J Clin Psychol. 2013;69(3):252-63. Doi: 10.1002/jclp.21949 Google ScholarPubMed
Substance Abuse and Mental Health Services Administration. Key substance use and mental health indicators in the United States: results from the 2017 National Survey on drug use and health (HHS Publication No. SMA 18-5068, NSDUH Series H-53). Rockville, MD: Center for Behavioral Health Statistics and Quality, Substance Abuse and Mental Health Services Administration 2018. https://www.samhsa.gov/data/ Accessed October 1, 2021.Google Scholar
Pfefferbaum, B, Flynn, B, Schonfeld, D, et al. The integration of mental and behavioral health into disaster preparedness, response, and recovery. Disaster Med Public Health Prep. 2012;6(1):60-6. doi: 10.1001/dmp.2012.1 Google ScholarPubMed
Costantini, L, Pasquarellan, C, Odone, A, et al. Screening for depression in primary care with Patient Health Questionnaire-9 (PHQ-9): a systematic review. J Affect Disord. 2021;279:473-483. doi: 10.1016/j.jad.2020.09.131 Google ScholarPubMed
Bailey, RK, Mokonogho, J, Kumar, A. Racial and ethnic differences in depression: current perspectives. Neuropsychiatr Dis Treat. 2019;15:603-609. doi: 10.2147/NDT.S128584 CrossRefGoogle ScholarPubMed
Myers, CR. Using telehealth to remediate rural mental health and healthcare disparities. Issues Ment Health Nurs. 2019;40(3):233-239. doi: 10.1080/01612840.2018.1499157 CrossRefGoogle ScholarPubMed
Busby, J, Tanberk, J, BroadbandNow Team. FCC reports broadband unavailable to 21.3 million Americans, BroadbandNow study indicates 42 million do not have access. https://broadbandnow.com/research/fcc-underestimates-unserved-by-50-percent. Accessed September 15, 2021.Google Scholar
Figure 0

Table 1. Demographic characteristics

Figure 1

Table 2. Logistic regression models predicting membership in depression group, gender group, and racial group