Predicting Postoperative Mortality With Deep Neural Networks and Natural Language Processing: Model Development and Validation

May 10, 2022JMIR medical informatics

Using Deep Learning and Text Analysis to Predict Death Risk After Surgery

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Abstract

The BERT-DNN model achieved an area under the receiver operating characteristic curve (AUROC) of 0.964 for predicting in-hospital 30-day postoperative mortality.

  • The study involved a cohort of 121,313 patients who underwent surgeries.
  • Out of these, 1,562 patients (1.29%) died within 30 days post-surgery.
  • The BERT-DNN model outperformed logistic regression and the American Society of Anesthesiologist Physical Status in AUROC.
  • The AUPRC of the BERT-DNN model was significantly higher than that of other models, including the DNN and random forest.
  • Integrating unstructured text from clinical descriptions may enhance risk identification in surgical patients.

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