A principled framework for phenotyping postpartum hemorrhage across multiple levels of severity

Maternal morbidity and mortality have gained major attention recently, spurred on by rising domestic rates even as maternal mortality decreases in Europe. A major driver of morbidity and mortality among delivering women is postpartum hemorrhage (PPH). PPH is currently phenotyped using the subjective...

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Bibliographic Details
Published in:AMIA ... Annual Symposium proceedings Vol. 2019; pp. 691 - 698
Main Authors: Oberhardt, Matthew, Friedman, Alexander M, Perotte, Rimma, Sheen, Jean-Ju, Kessler, Alan, Vawdrey, David K, Green, Robert, D'Alton, Mary E, Goffman, Dena
Format: Journal Article
Language:English
Published: United States American Medical Informatics Association 2019
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Summary:Maternal morbidity and mortality have gained major attention recently, spurred on by rising domestic rates even as maternal mortality decreases in Europe. A major driver of morbidity and mortality among delivering women is postpartum hemorrhage (PPH). PPH is currently phenotyped using the subjective measure of 'Estimated blood loss' (EBL), which has been shown to be unreliable for tracking quality. Here we present a framework for phenotyping PPH into multiple severity levels, using a combination of data-driven techniques and expert-derived clinical indicators. We validate the framework by predicting large drops in hematocrit and quantitative blood loss, finding that the framework performs better in predicting coded PPH than a hematocrit-based predictor or predictors based on other metrics such as blood transfusions, and does better in predicting quantitative blood loss, a gold standard metric for blood loss that we have for a subset of patients, than any predictor we could build using hematocrit drops alone. In all, we present a principled framework that can be used to phenotype PPH in hospitals using readily available EHR data, and that will perform with more granularity and accuracy than existing methods.
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ISSN:1559-4076