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Using measures of race to make clinical predictions: Decision making, patient health, and fairness

Charles F. Manski, John Mullahy, Atheendar Venkataramani

2023Proceedings of the National Academy of Sciences41 citationsDOIOpen Access PDF

Abstract

The use of race measures in clinical prediction models is contentious. We seek to inform the discourse by evaluating the inclusion of race in probabilistic predictions of illness that support clinical decision making. Adopting a static utilitarian framework to formalize social welfare, we show that patients of all races benefit when clinical decisions are jointly guided by patient race and other observable covariates. Similar conclusions emerge when the model is extended to a two-period setting where prevention activities target systemic drivers of disease. We also discuss non-utilitarian concepts that have been proposed to guide allocation of health care resources.

Topics & Concepts

Race (biology)CovariateProbabilistic logicInclusion (mineral)Health careWelfareActuarial scienceDiseasePsychologyComputer sciencePublic economicsMedicineSocial psychologyBusinessEconomicsArtificial intelligenceMachine learningSociologyMarket economyGender studiesEconomic growthPathologyHealthcare cost, quality, practicesHealthcare Policy and ManagementColorectal Cancer Screening and Detection
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