Fine-tuning an ECG foundation model yields moderate accuracy (AUC 0.68-0.74) for predicting coronary stenosis on CCTA and improves risk stratification when combined with clinical pretest probability scores.
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Fine-tuning an ECG Foundation Model to Predict Coronary CT Angiography Outcomes
Fine-tuning an ECG foundation model yields moderate accuracy (AUC 0.68-0.74) for predicting coronary stenosis on CCTA and improves risk stratification when combined with clinical pretest probability scores.