Fine-tuning an ECG Foundation Model to Predict Coronary CT Angiography Outcomes
Yujie Xiao, Qinghao Zhao, Gongzheng Tang, Hao Zhang, Zhuoran Kan, Deyun Zhang, Jun Li, Guangkun Nie, Xiaocheng Fang, Haoyu Wang, Shun Huang, Tong Liu, Jian Liu, Kangyin Chen, Shenda Hong

TL;DR
This study developed and validated an AI-ECG model using CCTA as a reference to predict coronary stenosis, demonstrating its potential as a scalable, non-invasive CAD screening tool with consistent performance across diverse groups.
Contribution
The paper introduces a novel AI-ECG model trained with CCTA data for vessel-specific coronary stenosis prediction, showing improved risk stratification and clinical utility.
Findings
AI-ECG achieved AUC of 0.683-0.744 across vessels.
Model stratified patients into low, intermediate, and high risk with good calibration.
Risk predictions correlated with adverse cardiovascular event risk.
Abstract
CAD remains a major global public health burden, yet scalable screening tools are limited. Although CCTA is a first-line non-invasive diagnostic modality, its use is constrained by resource requirements and radiation exposure. AI-ECG may offer a complementary approach for CAD risk stratification. In this multicenter study, we developed and validated an AI-ECG model using CCTA as the anatomical reference standard to predict vessel-specific coronary stenosis. In internal validation, the model achieved AUC values of 0.683-0.744 across vessels and showed consistent external performance. Discrimination was maintained in clinically normal ECGs and remained broadly stable across subgroups. Model-predicted probabilities increased monotonically with CCTA-defined stenosis severity. Model probabilities were converted into vessel-specific low-, intermediate-, and high-risk strata using predefined…
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Taxonomy
TopicsCardiac Imaging and Diagnostics · ECG Monitoring and Analysis · Atrial Fibrillation Management and Outcomes
