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Full-Text Articles in Medicine and Health
Social Vulnerability And The Prevalence Of Opioid Use Disorder Among Older Medicare Beneficiaries In U.S. Counties, Tse-Chuan Yang, Seulki Kim, Stephen A. Matthews, Carla Shoff
Social Vulnerability And The Prevalence Of Opioid Use Disorder Among Older Medicare Beneficiaries In U.S. Counties, Tse-Chuan Yang, Seulki Kim, Stephen A. Matthews, Carla Shoff
Department of Sociology: Faculty Publications
Objectives: Recent research has investigated the factors associated with the prevalence of opioid use disorder (OUD) among older adults (65+), which has rapidly increased in the past decade. However, little is known about the relationship between social vulnerability and the prevalence of OUD, and even less about whether the correlates of the prevalence of OUD vary across the social vulnerability spectrum. This study aims to fill these gaps. Methods: We assemble a county-level data set in the contiguous United States (U.S.) by merging 2021 Medicare claims with the CDC’s social vulnerability index and other covariates. Using the total number of …
County Social Isolation And Opioid Use Disorder Among Older Adults: A Longitudinal Analysis Of Medicare Data, 2013–2018, Tse-Chuan Yang, Carla Shoff, Seulki Kim, Benjamin A. Shaw
County Social Isolation And Opioid Use Disorder Among Older Adults: A Longitudinal Analysis Of Medicare Data, 2013–2018, Tse-Chuan Yang, Carla Shoff, Seulki Kim, Benjamin A. Shaw
Department of Sociology: Faculty Publications
This study aims to fill three knowledge gaps: (1) unclear role of ecological factors in shaping older adults’ risk of opioid use disorder (OUD), (2) a lack of longitudinal perspective in OUD research among older adults, and (3) underexplored racial/ethnic differences in the determinants of OUD in older populations. This study estimates the effects of county-level social isolation, concentrated disadvantage, and income inequality on older adults’ risk of OUD using longitudinal data analysis. We merged the 2013–2018 Medicare population (aged 65+) data to the American Community Survey 5-year county-level estimates to create a person-year dataset (N = 47,291,217 person-years) and …