包括左心室应变分析在内的机器学习模型用于肥厚性心肌病心源性猝死预测

A Al Wazzan, M Taconne, V Le Rolle, M Inngjerdingen Forsaa, K Hermann Haugaa, E Galli, A Hernandez, T Edvardsen, E Donal
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引用次数: 0

摘要

资金来源类型:无。背景肥厚性心肌病(HCM)患者的超额死亡率主要归因于心源性猝死(SCD)的发生。室性心律失常的预测仍然具有挑战性,可以改进。目的:本研究评估基于机器学习的模型结合临床和常规影像学参数以及左心室应变分析信息预测HCM患者SCD的附加预测价值。方法回顾性分析来自两个不同国家的两个转诊中心的434例HCM患者(65%为男性,平均年龄56岁),并进行纵向随访(平均持续时间6年)。从每位患者的左心室纵向应变曲线中自动提取应变参数,并将其与常规临床和影像学数据一起纳入Ridge回归模型。复合终点包括持续性室性心动过速、适当的植入式心律转复除颤器治疗、流产的心脏骤停或心源性猝死。结果34例患者(7.8%)达到终点,室性心律失常发生率为0.9%/年。在18个最具判别性的参数中,有7个来自左心室纵向应变段曲线分析(图1)。经过n=200轮交叉验证,最终模型的平均曲线下面积(AUC)为0.83±0.8,而2014年ESC风险评分和2020年AHA/ACC模型的AUC分别为0.56和0.61,与传统模型相比,最终模型的预测性能优于传统模型。结论与现有模型相比,包含自动提取左心室应变衍生参数的机器学习模型在预测HCM患者持续性室性心律失常和SCD方面具有优势。包括左心室纵向应变分析在内的机器学习模型可以改善HCM患者的SCD风险分层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning model including left ventricular strain analysis for sudden cardiac death prediction in hypertrophic cardiomyopathy
Abstract Funding Acknowledgements Type of funding sources: None. Background The excess mortality in hypertrophic cardiomyopathy (HCM) patients is mainly attributed to the occurrence of sudden cardiac death (SCD). The prediction of ventricular arrhythmias remains challenging and could be improved. Purpose This study evaluated the added predictive value of a machine learning-based model combining clinical and conventional imaging parameters with information from left ventricular strain analysis to predict SCD in patients with HCM. Methods A total of 434 HCM patients (65% men, mean age 56 years) were retrospectively included from two referral centers from two different countries and followed longitudinally (mean duration 6 years). Strain parameters were automatically extracted from the left ventricle longitudinal strain segmental curves of each patient and included in a Ridge Regression model alongside conventional clinical and imaging data. The composite endpoint included sustained ventricular tachycardia, appropriate implantable cardioverter defibrillator therapy, aborted cardiac arrest, or sudden cardiac death. Results 34 patients (7.8%) met the endpoint with an incidence of ventricular arrhythmias of 0.9%/years. Among the 18 most discriminating parameters, 7 were derived from left ventricle longitudinal strain segmental curves analysis (figure 1). After n=200 rounds of cross-validation, the final model showed superior predictive performance compared to conventional models with a mean area under the curve (AUC) of 0.83 ± 0.8 compared with an AUC of 0.56 and 0.61 for the 2014 ESC risk score and the 2020 AHA/ACC model, respectively. Conclusion A machine learning model including automatically extracted left ventricular strain-derived parameters was superior in the prediction of sustained ventricular arrhythmias and SCD in patients with HCM compared to existing models. A machine learning model including left ventricle longitudinal strain analysis could improve SCD risk stratification in HCM patients.
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来源期刊
European Journal of Echocardiography
European Journal of Echocardiography 医学-心血管系统
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