Eliminating Algorithmic Racial Bias in Clinical Decision Support Algorithms: Use Cases from the Veterans Health Administration.
Justin M ListSusan T CrowleySuzanne TamangSusan CrowleyDavid AuWilliam C YarbroughAmol S NavatheCraig KreislerRavi B ParikhJessica Wang-RodriguezJ Stacey KluttsPaul ConlinLeonard PogachEsther MeerwijkErnest MoyPublished in: Health equity (2023)
The Veterans Health Administration uses equity- and evidence-based principles to examine, correct, and eliminate use of potentially biased clinical equations and predictive models. We discuss the processes, successes, challenges, and next steps in four examples. We detail elimination of the race modifier for estimated kidney function and discuss steps to achieve more equitable pulmonary function testing measurement. We detail the use of equity lenses in two predictive clinical modeling tools: Stratification Tool for Opioid Risk Mitigation (STORM) and Care Assessment Need (CAN) predictive models. We conclude with consideration of ways to advance racial health equity in clinical decision support algorithms.
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