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Does SES explain more of the black/white health gap than we thought? Revisiting our approach toward understanding racial disparities in health

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  • Do, D. Phuong
  • Frank, Reanne
  • Finch, Brian Karl

Abstract

Studies of racial health gaps often find that disparities persist even after adjusting for socioeconomic status (SES). We contend that the persistent residual variation may, in part, be the result of conceptual and methodological problems in the operationalization of SES. These include inadequate attention to the content validity of SES measures and insufficient adjustments for SES differences across racial groups. Using data from the 1997–2007 U.S. Panel Study of Income Dynamics (N = 9932), we use longitudinal and multi-level measures of SES and apply a propensity score adjustment strategy to examine the black/white disparity in self-rated health. Compared to conventional regression estimates that yield unexplained racial health gaps, propensity score adjustment accounts for the entire racial disparity in self-rated health. Results suggest that previous studies may have inadequately adjusted for differences in SES across racial groups, that social factors should be carefully and conscientiously considered, and that acknowledgment of the possibility of incomplete SES adjustments should be weighed before any inferences to non-SES etiology can be made.

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  • Do, D. Phuong & Frank, Reanne & Finch, Brian Karl, 2012. "Does SES explain more of the black/white health gap than we thought? Revisiting our approach toward understanding racial disparities in health," Social Science & Medicine, Elsevier, vol. 74(9), pages 1385-1393.
  • Handle: RePEc:eee:socmed:v:74:y:2012:i:9:p:1385-1393
    DOI: 10.1016/j.socscimed.2011.12.048
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    8. Abdulkarim M. Meraya & Nilanjana Dwibedi & Xi Tan & Kim Innes & Sophie Mitra & Usha Sambamoorthi, 2018. "The dynamic relationships between economic status and health measures among working‐age adults in the United States," Health Economics, John Wiley & Sons, Ltd., vol. 27(8), pages 1160-1174, August.

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