We sought to develop a prediction model using prenatal diagnosis codes that could help clinicians objectively stratify a women’s risk for delivery-related morbidity. We performed a prospective cohort study of… Click to show full abstract
We sought to develop a prediction model using prenatal diagnosis codes that could help clinicians objectively stratify a women’s risk for delivery-related morbidity. We performed a prospective cohort study of women delivering at a single academic medical center between 2016 and 2019. Diagnosis codes from outpatient encounters were extracted from the electronic health record. Standard and common machine-learning methods for variable selection were compared. The performance characteristics from the selected model in the training data set—a LASSO model with a lambda that minimized the Bayes information criteria—were compared in a testing and external validation set. The model identified a group of women, those in the highest decile of predicted risk, who were at a two to threefold increased risk of maternal morbidity. As EHR data becomes more ubiquitous, other data types generated from the prenatal period may improve the model’s performance.
               
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