cs.AI updates on arXiv.org 10月21日 12:11
基于混合框架的AMI恶性室性心律失常预测
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本文提出一种混合预测框架,结合ECG基础模型和XGBoost分类器,以提高急性心肌梗死(AMI)患者恶性室性心律失常(VT/VF)的识别准确性和可解释性。通过分析6634例AMI患者的ECG记录,模型性能优于其他方法,并揭示关键特征与临床知识高度一致。

arXiv:2510.17172v1 Announce Type: new Abstract: Malignant ventricular arrhythmias (VT/VF) following acute myocardial infarction (AMI) are a major cause of in-hospital death, yet early identification remains a clinical challenge. While traditional risk scores have limited performance, end-to-end deep learning models often lack the interpretability needed for clinical trust. This study aimed to develop a hybrid predictive framework that integrates a large-scale electrocardiogram (ECG) foundation model (ECGFounder) with an interpretable XGBoost classifier to improve both accuracy and interpretability. We analyzed 6,634 ECG recordings from AMI patients, among whom 175 experienced in-hospital VT/VF. The ECGFounder model was used to extract 150-dimensional diagnostic probability features , which were then refined through feature selection to train the XGBoost classifier. Model performance was evaluated using AUC and F1-score , and the SHAP method was used for interpretability. The ECGFounder + XGBoost hybrid model achieved an AUC of 0.801 , outperforming KNN (AUC 0.677), RNN (AUC 0.676), and an end-to-end 1D-CNN (AUC 0.720). SHAP analysis revealed that model-identified key features, such as "premature ventricular complexes" (risk predictor) and "normal sinus rhythm" (protective factor), were highly consistent with clinical knowledge. We conclude that this hybrid framework provides a novel paradigm for VT/VF risk prediction by validating the use of foundation model outputs as effective, automated feature engineering for building trustworthy, explainable AI-based clinical decision support systems.

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急性心肌梗死 恶性室性心律失常 混合框架 深度学习 可解释性
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