De-Chih Lee1, Hailun Liang2,3, Leiyu Shi4,5. 1. Department of Information Management, Da-Yeh University, No.168, University Rd., Dacun, Changhua, 51591, Taiwan. 2. School of Public Administration and Policy, Renmin University of China, No.59 Zhongguancun, Beijing, 100872, China. hliang16@jhu.edu. 3. Johns Hopkins Primary Care Policy Center, 624 N. Broadway, Baltimore, MD, 21205, USA. hliang16@jhu.edu. 4. Johns Hopkins Primary Care Policy Center, 624 N. Broadway, Baltimore, MD, 21205, USA. 5. Johns Hopkins Bloomberg School of Public Health, 624 N. Broadway, Baltimore, MD, 21205, USA.
Abstract
OBJECTIVE: This study applied the vulnerability framework and examined the combined effect of race and income on health insurance coverage in the US. DATA SOURCE: The household component of the US Medical Expenditure Panel Survey (MEPS-HC) of 2017 was used for the study. STUDY DESIGN: Logistic regression models were used to estimate the associations between insurance coverage status and vulnerability measure, comparing insured with uninsured or insured for part of the year, insured for part of the year only, and uninsured only, respectively. DATA COLLECTION/EXTRACTION METHODS: We constructed a vulnerability measure that reflects the convergence of predisposing (race/ethnicity), enabling (income), and need (self-perceived health status) attributes of risk. PRINCIPAL FINDINGS: While income was a significant predictor of health insurance coverage (a difference of 6.1-7.2% between high- and low-income Americans), race/ethnicity was independently associated with lack of insurance. The combined effect of income and race on insurance coverage was devastating as low-income minorities with bad health had 68% less odds of being insured than high-income Whites with good health. CONCLUSION: Results of the study could assist policymakers in targeting limited resources on subpopulations likely most in need of assistance for insurance coverage. Policymakers should target insurance coverage for the most vulnerable subpopulation, i.e., those who have low income and poor health as well as are racial/ethnic minorities.
OBJECTIVE: This study applied the vulnerability framework and examined the combined effect of race and income on health insurance coverage in the US. DATA SOURCE: The household component of the US Medical Expenditure Panel Survey (MEPS-HC) of 2017 was used for the study. STUDY DESIGN: Logistic regression models were used to estimate the associations between insurance coverage status and vulnerability measure, comparing insured with uninsured or insured for part of the year, insured for part of the year only, and uninsured only, respectively. DATA COLLECTION/EXTRACTION METHODS: We constructed a vulnerability measure that reflects the convergence of predisposing (race/ethnicity), enabling (income), and need (self-perceived health status) attributes of risk. PRINCIPAL FINDINGS: While income was a significant predictor of health insurance coverage (a difference of 6.1-7.2% between high- and low-income Americans), race/ethnicity was independently associated with lack of insurance. The combined effect of income and race on insurance coverage was devastating as low-income minorities with bad health had 68% less odds of being insured than high-income Whites with good health. CONCLUSION: Results of the study could assist policymakers in targeting limited resources on subpopulations likely most in need of assistance for insurance coverage. Policymakers should target insurance coverage for the most vulnerable subpopulation, i.e., those who have low income and poor health as well as are racial/ethnic minorities.
Entities:
Keywords:
Disparity; Ethnicity; Health insurance; Race
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