| Literature DB >> 35492024 |
Whitney S Brakefield1,2, Olufunto A Olusanya1, Brianna White1, Arash Shaban-Nejad1.
Abstract
Coronavirus disease 2019 (COVID-19) has placed massive socio-psychological, health, and economic burdens including deaths on countless lives; however, it has disproportionally impacted certain populations. Co-occurring Social Determinants of Health (SDoH) disparities and other underlying determinants have exacerbated the COVID-19 pandemic. This literature review sought to (1) examine literature focused on SDoH and COVID-19 outcomes ie, infectivity, hospitalization, and death rates among marginalized communities; and (2) identify SDoH disparities associated with COVID-19 outcomes. We searched electronic databases for studies published from October 2019 to October 2021. Studies that were selected were those intersecting SDoH indicators and COVID-19 outcomes and were conducted in the United States. Our review underscored the disproportionate vulnerabilities and adverse outcomes from COVID-19 that have impacted racial/ethnic minority communities and other disadvantaged groups (ie, senior citizens, and displaced/homeless individuals). COVID-19 outcomes were associated with SDoH indicators, ie, race/ethnicity, poverty, median income level, housing density, housing insecurity, health-care access, occupation, transportation/commuting patterns, education, air quality, food insecurity, old age, etc. Our review concluded with recommendations and a call to action to integrate SDoH indicators along with relevant health data when implementing intelligent solutions and intervention strategies to pandemic response/recovery among vulnerable populations.Entities:
Keywords: COVID-19; SARS-CoV-2; ethnic minorities; health disparities; health intelligence; pandemic preparedness; social determinants of health
Year: 2022 PMID: 35492024 PMCID: PMC9237492 DOI: 10.1017/dmp.2022.104
Source DB: PubMed Journal: Disaster Med Public Health Prep ISSN: 1935-7893 Impact factor: 5.556
Figure 1.Literature review flow diagram.
Summary table representing the characteristics of selected studies
| Reference first author | Purpose | Study/article location | Study type | Analytical method | SDoH indicators | Author’s conclusion |
|---|---|---|---|---|---|---|
|
| Explored the county-level effects of SDoH on COVID-19 mortality rates in rural-urban settings | USA | Retrospective Cohort | Binomial regression, Cluster Analysis, Bayesian Model, | Neighborhood and built environment, race/ethnicity, socioeconomic status, education level, access to health care, rurality, walkability, access to transportation, percent unemployed, income inequality ratio, health status, substance abuse rates. | SDoH plays an important role in explaining differential COVID-19 mortality rates and should be considered for resource allocations and policy decisions on operational needs for businesses and schools at county levels. |
|
| Evaluate self-reported and census-based SDoH as a mediator of health disparities in COVID-19 | USA | Cross-sectional | Ecological analysis | Race and ethnicity, median household income, average household size, education, financial strain, stress, social isolation scale, health literacy, and delays in receiving health care. | Study depicts that in Miami-Dade County, COVID-19 infection is associated with the economic disadvantage and stress reported in a particular geographical area and not with its racial/ethnic distribution. |
|
| Examined the impact of the density of African American communities on (COVID-19) prevalence and death rate within the 3 most populous counties in each U.S. state and territory | USA | Cross-sectional | Ecological analysis | Percentage of county/parish population who identified as African American, poverty level, and median age for the counties/parishes. | There was a direct association between African American density and COVID-19 prevalence. COVID-19 prevalence was found to increase by 5% for every 1% increase in county African American density ( |
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| Examined the COVID-19’s epidemiologic evidence and racial disparities in COVID-19 outcomes | Michigan, USA | Editorial | ---- | Densely populated neighborhoods, lower socioeconomic status, closer contact between individuals, less equitable health care access, and lower rates of COVID-19 testing. | Studies are still needed to gain a thorough understanding of the epidemiology of COVID-19. The call to action suggests a higher priority assessment of racial and ethnic disparities as related to COVID-19, which they believe will reduce morbidity and mortality among African Americans. |
|
| Discussed the disproportional impact of COVID-19 on African Americans as related to SDoH | USA | Review | ---- | Race/ethnicity, racism/discrimination, socioeconomic status, residential segregation, housing type and transportation, health status | Conclusion suggests the COVID-19 pandemic has had an unprecedented effect on African American communities and is unmasking higher vulnerabilities among people of color. |
|
| Examined multiple risk factors including clinical, sociodemographic, and environmental variables associated with COVID-19 infection | USA | Retrospective Cohort | Multivariable Logistic Regression | Health status, race/ethnicity, gender, age, population density, household composition and disability, language barriers, socioeconomic status, substance abuse status, transportation insecurity, relationship status, employment, housing insecurity, and age-stratified communal living | SDoH such as older age, male gender, non-White race, speaking a primary language that is not English, being employed or retired, being married, religious affiliation, having a lower education level, and experiencing financial insecurity were associated with higher risk of COVID-19 infection. |
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| Examined temporal trends among counties with high and low social vulnerability to quantify disparities in COVID-19 incidence trends | USA | Cross-sectional | Retrospective Longitudinal | Social Vulnerability Index (SVI), population size, race/ethnicity, socioeconomic status, gender, daily PCR testing, rurality, health status, household composition and disability | Results suggest that the impact of COVID-19 is not static, rather migrates from less vulnerable populations to more vulnerable populations and back again over time. |
|
| Examined the relationship between social vulnerability of American Indian and Alaska Native populations and risk of COVID-19 infection | USA, American Indian, and Alaska Native People | Review | ---- | Social Vulnerability Index (SVI), household composition and disability, neighborhoods and areas, race/ethnicity, minority status and language, housing type and transportation | Conclusion finds that American Indian and Alaska Native populations are at high risk for COVID-19 contraction and complications due to numerous SDoH. |
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| Explored relationship between COVID-19 inequities and COVID-19 vaccine acceptance in BIPOC populations | Review | ---- | Socioeconomic status, education level, crowded living conditions, household air pollution, lack of running water that makes washing hands challenging, access to health care, transportation insecurity, and inadequate access to healthy foods | Results demonstrate that identification of populations at high risk, with a number of SDoH for COVID-19 infection, morbidity, and mortality is important to developing forecasting model analyses of the spread of infection with the help of machine learning and artificial intelligence. | |
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| Assessed associations between COVID-19 mortality and social determinants such as work environment, immigration status, and insurance coverage | USA | Cross-sectional | Linear Regression and Spatial Autoregressive Models | Non-English-speaking households, hired farmworkers, uninsured individuals under the age of 65, and poverty, higher population density, urban counties, rural counties | COVID-19 mortality is significantly associated with SDoH at the county level, with exacerbation in nonurban counties. Individuals who are non-English speaking, farm work, or impoverished may be at heightened risk for COVID-19 mortality |
|
| Examined the unproportioned effects of the COVID-19 pandemic on elderly populations | Review | ---- | Age, race/ethnicity, socioeconomic status, education level, access to health care, employment, neighborhood and built environment, population composition, lifestyle and living conditions | Results suggest that the current COVID-19 pandemic is further amplifying SDoH and inequities already placing pressure on elderly populations | |
|
| Examined the notion that SDoH may contribute to the disparities in COVID-19 incidence and mortality among minority and underserved Hispanic populations | South Texas, USA | Cross-sectional | Bayesian spatiotemporal negative binomial model | Neighborhoods and areas, race/ethnicity, age, minority status, primary language, socioeconomic status, household composition, housing type and transportation, education level, health status | Findings suggest that the risk of COVID-19 infection was statistically significantly higher among highly disadvantaged Hispanic population, who had identified SDoH such as higher percentages of single-parent households, low income, younger population, and limited English-speaking proficiency. |
|
| Discussed the relationship between housing and homelessness as related to pediatric health during the COVID-19 pandemic | USA | Review | ---- | Access to housing, housing quality, socioeconomic status, age, race/ethnicity, health status | Conclusion suggests that the COVID-19 pandemic has magnified the vulnerability of housing insecure and homeless families, leading to an increase in morbidity and mortality. |
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| Examined the association of Structural and Social Determinants of Health within minority populations with individual risk factors for COVID-19 infection | Arrowhead Regional Medical Center - Colton, California | Retrospective Cohort | Logistic Regression Model | Health status, race/ethnicity, gender, age, population density, household composition and disability, sexual orientation, incarceration, language barriers, socioeconomic status, lack of health insurance, Internet access, violent crimes, physical inactivity, education level, access to exercise | Results suggest that socially and economically disadvantaged populations are at an increased risk of developing COVD-19 infections. |
|
| Examined transmission risk of COVID-19 throughout multiple counties in | New York State, USA | Retrospective cohort | Network Analysis | Commute type - transmission risk (High commute – inward, High commute – outward, High commute – bidirectional, Low inter-county commute) | The use of generated risk maps can provide extra guidance and aid for local or state governments in the fight against COVID-19. These predictions will continue to help officials distribute enough medical resources to increasing areas of risk. |
|
| Examined the temporal association between race/ethnic composition of the Social Vulnerability Index (SVI) with COVID-19 incidence/mortality | USA | Cross-sectional | Negative Binomial Mixed Model | Social Vulnerability Index (SVI), neighborhoods and areas, race/ethnicity, minority status and language, socioeconomic status, household composition and disability, housing type and transportation | Results suggest that communities with high social vulnerability index and high minority populations experienced proportionately worse COVID-19 outcomes when compared to communities with a majority White population. |
|
| Utilized spatial analysis to examine the effects of the COVID-19 pandemic and other similar outbreaks in NYC | New York City, New York | Retrospective cohort | OLS and Geographical Weighted Regression | Medical density, green space density, mean distance traveled, and commuting (walking, carpooling, and public transit), working from home and race/ethnicity | Policymakers should implement prevention measures and re-opening strategies based on localized unique events and within the context of the pandemic. |
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| Investigated the impact of long-term PM2.5 exposure on COVID-19 mortality rates in US counties | USA | Cross-sectional | Binomial Mixed Model | Race/ethnicity (Black, Hispanic), housing density, education, population density, median household income, median house value, long-term PM2.5 exposure | Ecological regression analyses are crucial in understanding rapidly evolving areas of research such as COVID-19. |
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| Investigated racial disparities in COVID-19 disease, death rates and associated determinants | USA | Cross-sectional | Bayesian-Hierarchical Model | More likely to be uninsured and unemployed, higher household occupancy per room, diabetes diagnoses, increased cardiovascular/cerebrovascular risk, HIV diagnoses, air quality | Social conditions, structural racism, and other factors significantly increase the risk for COVID-19 infection and death within Black communities. Overall, advancing the health and well-being of all Americans relies on the use of big data to affect policy change that makes equity a reality in the US. |
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| Examined multiple SDoH and their interrelatedness to COVID-19 infection in low-income households with children | USA | Cross-sectional | Thematic analysis, Qualitative and Quantitative | Socioeconomic status, employment status, availability of food, affordability of food, availability or affordability of housing, access to reliable transportation, access to childcare, access to health care | Results suggest that the risk of negative health outcomes associated with COVID-19 infection is higher for low-income households with children. |
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| Examined the effects of social vulnerability and other health risk factors based on the spatial distribution of COVID-19 deaths | Chicago, Illinois | Cross-sectional | Multivariable Linear Regression | African American density, poverty level, the median age in counties/parishes | Areas with a higher percentage of African American citizens were associated with higher levels of SVI and risk factor scores. These areas with higher levels of SVI and risk factor scores had a significantly higher COVID-19 death rate |
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| Examined the characteristics and clinical outcomes of adult patients hospitalized with COVID-19 in Georgia in March 2020 | Georgia, USA | Cross-sectional | Statistical Analysis, Akaike information criterion approach | Race/ethnicity, health status, access to health insurance | Results found that clinical COVID-19 outcomes of Black patients did not differ significantly from those of non-Black patients. It is important to note that the study found Black patients to be overrepresented in the study population. |
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| Discussed COVID-19 increased mortality and health care disparities within African American communities | Chicago, Illinois | Review | ---- | High housing density, high crime rates, and poor access to healthy foods, low socioeconomic status, cardiovascular risk factors | COVID-19 has presented a “moment of ethical reckoning” related to how disparities within minority populations are connected to negative health outcomes. There is a call to action for the U.S. to begin to identify and address disparities to aid in the fight against COVID-19 and other infectious diseases. |
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| Examined mortalities and economic disruption related to COVID-19 in vulnerable populations | Maryland, USA | Review | ---- | Racism and discrimination, economic and educational disadvantages, health care access and quality, individual behavior, and biology, occupation, high-density areas, poverty, education | Studies are needed to determine the short-term and long-term effects of COVID-19 on population health and how these are connected to disparities minority populations encounter. |
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| Examined the racial and ethnic distribution of COVID-19 confirmed cases and fatalities in the state of Connecticut. Also sought to explore the myth of Black immunity to the virus | Connecticut, USA | Review | ---- | Poverty, limited access to health care, high-density neighborhoods and areas, education (graduation rates, degrees, etc.) greater disease burden, higher poverty rates, higher rates of jobs in service industries | COVID-19 may have devastating effects on vulnerable populations. America has a longstanding history of discrimination, creating potential negative public health outcomes as seen in the fight against HIV, influenza, and other infectious diseases. The call for action implores the reader to identify present disparities and address their effect on minority communities against COVID-19. |
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| Examined the relationship between the social determinants of health and COVID-19 infection outcomes | USA | Review | ---- | Race/ethnicity, gender, socioeconomic status, household composition and disability, housing type and transportation | Results suggest that vulnerable minority populations have been disproportionately impacted by COVID-19, as related to hospitalizations and mortality rates. Reflection on social and health policies implemented and their relatedness to SDoH are necessary to ensure health inequalities are mitigated moving forward. |
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| Analyzed chest radiograph severity in patients with COVID-19 at initial presentation to the emergency department | New York, USA | Retrospective Cohort | Multivariable Logistic Regression | Race/ethnicity, health status, gender, age, substance abuse history | Results suggest there were no statistically significant differences in primary health outcomes of COVID-19 patients according to race or ethnicity. |
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| Explored the process of identifying patient SDoH and their associations with COVID-19 pandemic response | Pittsburgh, Pennsylvania | Retrospective Cohort | Statistical Analysis | Access to food, socioeconomic status, and access to health care, access to exercise, health status | Conclusion finds that identifying SDoH barriers via telemedicine can help to properly allocate resources to those who need it most, decreasing long-term effects of the pandemic. |
Components of our SDoH classification
| Economic stability | Neighborhood and built environment | Health and health-care access | Social and community context |
|---|---|---|---|
| Employment | Housing quality and transportation | Comorbidity and mortality | Discrimination |
| Poverty | Air quality and environmental toxins | Access to health care | Civic participation |
| Education | Healthy food access | Health literacy | Social support |
SDoH recommendations to address COVID-19 outcome disparities
| Recommended action | Description |
|---|---|
| Economic instability | Resources for economic assistance, access to social services (ie, local food banks, loans), training/education on job seeking and skills acquisition |
| Education and language | Resources for language translation, eg, document translation, telephone interpretation, service in multiple languages; education (ie, free community college); scholarships; financial aid |
| Neighborhood and built environment | Health policies and intervention strategies that are focused on addressing barriers in counties with a higher percentile of Social Vulnerability Index, with particular attention to structural inequities, eg, access to healthy foods, housing, health care |
| Health and health-care access | Health interventions that are adapted within local contexts, eg, culturally adapted mental health services; point-of-care testing and vaccinations within community health centers. Mitigation policies that address racism/discrimination and disruptions to health-care delivery as well as address barriers to health literacy and telemedicine diffusion. |
| Social and Community Context | Support services for hard-to-reach groups through community partnerships |