A Novel Generative Multi-Task Representation Learning Approach for Predicting Postoperative Complications in Cardiac Surgery Patients
Junbo Shen, Bing Xue, Thomas Kannampallil, Chenyang Lu, Joanna Abraham

TL;DR
This paper introduces surgVAE, a novel variational autoencoder model that improves prediction accuracy for postoperative complications in cardiac surgery patients by leveraging cross-task and cross-cohort learning, outperforming existing models.
Contribution
The study presents surgVAE, a new generative multi-task learning approach that enhances prediction and interpretability of postoperative risks in cardiac surgery patients.
Findings
surgVAE achieved higher AUPRC and AUROC than existing models.
Model effectively identified key risk factors using Integrated Gradients.
Demonstrated robustness in small and complex datasets.
Abstract
Early detection of surgical complications allows for timely therapy and proactive risk mitigation. Machine learning (ML) can be leveraged to identify and predict patient risks for postoperative complications. We developed and validated the effectiveness of predicting postoperative complications using a novel surgical Variational Autoencoder (surgVAE) that uncovers intrinsic patterns via cross-task and cross-cohort presentation learning. This retrospective cohort study used data from the electronic health records of adult surgical patients over four years (2018 - 2021). Six key postoperative complications for cardiac surgery were assessed: acute kidney injury, atrial fibrillation, cardiac arrest, deep vein thrombosis or pulmonary embolism, blood transfusion, and other intraoperative cardiac events. We compared prediction performances of surgVAE against widely-used ML models and advanced…
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Taxonomy
TopicsMachine Learning in Healthcare
