Abstract
Social determinants of health (SDOH) - the conditions in which people live, grow, and age - play a crucial role in a person's health and well-being. There is a large, compelling body of evidence in population health studies showing that a wide range of SDOH is strongly correlated with health outcomes. Yet, a majority of the risk prediction models based on electronic health records (EHR) do not incorporate a comprehensive set of SDOH features as they are often noisy or simply unavailable. Our work links a publicly available EHR database, MIMIC-IV, to well-documented SDOH features. We investigate the impact of such features on common EHR prediction tasks across different patient populations. We find that community-level SDOH features do not improve model performance for a general patient population, but can improve data-limited model fairness for specific subpopulations. We also demonstrate that SDOH features are vital for conducting thorough audits of algorithmic biases beyond protective attributes. We hope the new integrated EHR-SDOH database will enable studies on the relationship between community health and individual outcomes and provide new benchmarks to study algorithmic biases beyond race, gender, and age.
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Yang, M. Y., Kwak, G. H., Pollard, T., Celi, L. A., & Ghassemi, M. (2023). Evaluating the Impact of Social Determinants on Health Prediction in the Intensive Care Unit. In AIES 2023 - Proceedings of the 2023 AAAI/ACM Conference on AI, Ethics, and Society (pp. 333–350). Association for Computing Machinery, Inc. https://doi.org/10.1145/3600211.3604719
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