论文标题
奖章 - XL:通过电生理模拟获得的16,900个健康和病理12铅ECG
MedalCare-XL: 16,900 healthy and pathological 12 lead ECGs obtained through electrophysiological simulations
论文作者
论文摘要
机械心脏电生理模型允许对心脏中的电活动以及随之而来的心电图(ECG)进行个性化模拟。因此,合成信号具有潜在疾病的已知地面真实标签,除临床信号外,还可以用于验证机器学习ECG分析工具。最近,使用合成的心电图来丰富稀疏的临床数据,甚至在训练过程中完全替换它们,从而改善了现实世界中临床测试数据的性能。因此,我们生成了一个新型的合成数据库,其中包括基于电生理模拟的16,900 12个铅ECG,同样分布在健康对照和7种病理学类别中。心肌违法的病理病例有6个子类。虚拟队列与公开临床心电图数据库之间提取的特征的比较表明,合成信号代表了具有高忠诚度的健康和病理亚群的临床ECG。 ECG数据库分为培训,验证和测试折叠,以开发和客观评估新型机器学习算法。
Mechanistic cardiac electrophysiology models allow for personalized simulations of the electrical activity in the heart and the ensuing electrocardiogram (ECG) on the body surface. As such, synthetic signals possess known ground truth labels of the underlying disease and can be employed for validation of machine learning ECG analysis tools in addition to clinical signals. Recently, synthetic ECGs were used to enrich sparse clinical data or even replace them completely during training leading to improved performance on real-world clinical test data. We thus generated a novel synthetic database comprising a total of 16,900 12 lead ECGs based on electrophysiological simulations equally distributed into healthy control and 7 pathology classes. The pathological case of myocardial infraction had 6 sub-classes. A comparison of extracted features between the virtual cohort and a publicly available clinical ECG database demonstrated that the synthetic signals represent clinical ECGs for healthy and pathological subpopulations with high fidelity. The ECG database is split into training, validation, and test folds for development and objective assessment of novel machine learning algorithms.