计算机科学
深度学习
不利影响
多任务学习
人工智能
医学
机器学习
内科学
任务(项目管理)
工程类
系统工程
作者
Ching-Heng Lin,Zhi‐Yong Liu,Pao‐Hsien Chu,Jung‐Sheng Chen,Hsin-Hsu Wu,Ming‐Shien Wen,Chang‐Fu Kuo,Ting-Yu Chang
标识
DOI:10.1038/s41746-024-01410-3
摘要
Deep learning analysis of electrocardiography (ECG) may predict cardiovascular outcomes. We present a novel multi-task deep learning model, the ECG-MACE, which predicts the one-year first-ever major adverse cardiovascular events (MACE) using 2,821,889 standard 12-lead ECGs, including training (n = 984,895), validation (n = 422,061), and test (n = 1,414,933) sets, from Chang Gung Memorial Hospital database in Taiwan. Data from another independent medical center (n = 113,224) was retrieved for external validation. The model's performance achieves AUROCs of 0.90 for heart failure (HF), 0.85 for myocardial infarction (MI), 0.76 for ischemic stroke (IS), and 0.89 for mortality. Furthermore, it outperforms the Framingham risk score at 5-year MACEs and 10-year mortality prediction. Over 10-year follow-ups, the model-predicted-positive group exhibits significantly higher MACE incidences than the model-predicted-negative group (relative incidence ratio: HF: 15.28; MI: 7.87; IS: 4.74; mortality: 13.18). Using solely ECGs, ECG-MACE effectively predicts one-year events and exhibits long-term anticipation. It provides potential applications in preventive medicine.
科研通智能强力驱动
Strongly Powered by AbleSci AI