Comparative analysis of machine learning vs. traditional modeling approaches for predicting in-hospital mortality after cardiac surgery: temporal and spatial external validation based on a nationwide cardiac surgery registry
European Heart Journal - Quality of Care and Clinical Outcomes

Abstract
Preoperative risk assessment is crucial for cardiac surgery. Although previous studies suggested machine learning (ML) may improve in-hospital mortality predictions after cardiac surgery compared to traditional modeling approaches, the validity is doubted due to lacking external validation, limited sample sizes, and inadequate modeling considerations. We aimed to assess predictive performance between ML and traditional modelling approaches, while addressing these major limitations.
Adult cardiac surgery cases (
ML provided only marginal improvements over traditional modelling approaches in predicting cardiac surgery mortality with routine preoperative variables, which calls for more judicious use of ML in practice.
Contributors

Juntong Zeng
Author

Danwei Zhang
Author

Shen Lin
Author

Xiaoting Su
Author

Peng Wang
Author

Yan Zhao
Author
