Acute myocardial infarction prognosis prediction with reliable and interpretable artificial intelligence system

Author:

Kim Minwook1,Kang Donggil1,Kim Min Sun2,Choe Jeong Cheon2,Lee Sun-Hack2,Ahn Jin Hee2,Oh Jun-Hyok23,Choi Jung Hyun23,Lee Han Cheol23,Cha Kwang Soo23,Jang Kyungtae4,Bong WooR I5,Song Giltae16ORCID,Lee Hyewon23

Affiliation:

1. School of Computer Science and Engineering, Pusan National University , Busan 46421, Republic of Korea

2. Department of Cardiology, Medical Research Institute, Pusan National University Hospital , Busan 49241, Republic of Korea

3. College of Medicine, Pusan National University , Gyeongsangnam-do 50612, Republic of Korea

4. Gupo Sungshim Hospital , Busan 46581, Republic of Korea

5. Division of Cardiology, Department of Medicine, Busan Veterans Hospital , Busan 46996, Republic of Korea

6. Center for Artificial Intelligence Research, Pusan National University , Busan 46421, Republic of Korea

Abstract

Abstract Objective Predicting mortality after acute myocardial infarction (AMI) is crucial for timely prescription and treatment of AMI patients, but there are no appropriate AI systems for clinicians. Our primary goal is to develop a reliable and interpretable AI system and provide some valuable insights regarding short, and long-term mortality. Materials and methods We propose the RIAS framework, an end-to-end framework that is designed with reliability and interpretability at its core and automatically optimizes the given model. Using RIAS, clinicians get accurate and reliable predictions which can be used as likelihood, with global and local explanations, and “what if” scenarios to achieve desired outcomes as well. Results We apply RIAS to AMI prognosis prediction data which comes from the Korean Acute Myocardial Infarction Registry. We compared FT-Transformer with XGBoost and MLP and found that FT-Transformer has superiority in sensitivity and comparable performance in AUROC and F1 score to XGBoost. Furthermore, RIAS reveals the significance of statin-based medications, beta-blockers, and age on mortality regardless of time period. Lastly, we showcase reliable and interpretable results of RIAS with local explanations and counterfactual examples for several realistic scenarios. Discussion RIAS addresses the “black-box” issue in AI by providing both global and local explanations based on SHAP values and reliable predictions, interpretable as actual likelihoods. The system’s “what if” counterfactual explanations enable clinicians to simulate patient-specific scenarios under various conditions, enhancing its practical utility. Conclusion The proposed framework provides reliable and interpretable predictions along with counterfactual examples.

Funder

Basic Science Research Program

National Research Foundation of Korea

Korea Government

Institute of Information & Communications Technology Planning & Evaluation

Artificial Intelligence Convergence Innovation Human Resources Development

Pusan National University Hospital Clinical Research Funding

Publisher

Oxford University Press (OUP)

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