Purpose: This study aimed to optimize machine learning (ML) models for predicting inhospital mortality in patients with ST-segment elevation acute myocardial infarction (STEMI). Patients and Methods: A total of 5708 STEMI patients were enrolled and divided into two groups according to patients’ hospital outcomes. Both groups were randomly split into a training set (75%) and a testing set (25%). Four ML models were trained with data, which applied random under-sampling (RUS). The performance of optimized ML models was evaluated with respect to accuracy, sensitivity, specificity, G-mean and AUC. Two sets of features in chronological order were considered: a full set that included all variables during hospitalization and a simplified set that only included variables prior to reperfusion therapy, and the performance of the prediction models trained with these two sets of features was compared. Results: For the comprehensive metric – G-mean, the models trained with RUS outperformed those without, 80.54% vs 23.31% on average in the full set and 75.72% vs 35.76% on average in the simplified set. For models trained with the full set, the SVM achieved the best performance with 85.62% accuracy, 84.21% sensitivity, 85.66% specificity, 84.93% G-mean and 0.919 AUC. For models trained with the simplified set, the SVM achieved 83.48% G-mean, which was comparable to the models trained using the full set. For the most critical metric – sensitivity, the SVM trained using the simplified set achieved 89.47%, which even exceed the SVM (84.21%), DT (81.58%) and RF (81.58%) trained using the full set. Conclusion: Applying RUS can improve the performance of prediction models, and the models trained with simplified set, which only included variables prior to reperfusion therapy can accurately predict high-risk patients.
CITATION STYLE
Zhao, J., Zhao, P., Li, C., & Hou, Y. (2021). Optimized machine learning models to predict in-hospital mortality for patients with st-segment elevation myocardial infarction. Therapeutics and Clinical Risk Management, 17, 951–961. https://doi.org/10.2147/TCRM.S321799
Mendeley helps you to discover research relevant for your work.