2022
DOI: 10.1101/2022.12.06.22283140
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Extraction and validation of patient housing and food insecurity status in a large electronic health records database using selective prediction and active learning

Abstract: Objective: Information on patient social determinants of health is frequently recorded in unstructured clinical notes, making it inaccessible for researchers and policymakers. We aimed to extract and validate food and housing insecurity status on a large electronic health record-derived patient cohort by combining selective prediction and active learning. Materials and Methods: Manually labeled charts selected via active learning were used to train L1-regularized logistic regression models to identify the pres… Show more

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