短心电信号病理的多类别分类

G. Nalbantov, Svetoslav Ivanov, J. V. Prehn
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引用次数: 2

摘要

基于ECG信号同时检测几种关键心脏病理的能力,是在心脏病学中建立人工智能模型的实际应用的关键。这样的多标签分类任务不仅需要性能良好的二元分类模型,还需要一种将这些模型组合成一个整体分类建模结构的方法。我们使用了来自PhysioNet/Computing in Cardiology Challenge 2020的12-1头心电图分类的材料来完成这项任务。重复的心电图条已被移除。在MATLAB®中创建了标记ECG波点和间隔/模板的注释工具,并用于标记病理间隔,以及ECG数据与预分配标签之间的噪声间隔和不一致。建立了几个一对一的二元分类器,其中从信号中生成了特定于每种病理的形态学特征。使用纠错输出码(ECOC)方法对二元分类器进行了多类分类器的扩充。我们的方法获得了挑战验证分数为0.616,完整测试分数为0.194,在41个官方排名中排名第23 (DSC团队)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Class Classification of Pathologies Found on Short ECG Signals
The ability to detect several key cardiac pathologies simultaneously, based on ECG signals, is key towards establishing a real-world application of AI models in cardiology. Such a multi-label classification task requires not only well-performing binary classification models, but also a way to combine such models into an overall classification modeling structure. We have approached this task using materials from Classification of 12-1ead ECGs for the PhysioNet/Computing in Cardiology Challenge 2020. Duplicate ECG strips have been removed. An annotation tool for labeling ECG wave points and intervals/templates has been created in MATLAB®, and used for labeling pathological intervals, as well as noisy intervals and inconsistencies between the ECG data and the pre-assigned labels. Several one-vs-rest binary classifiers were built, where morphological features specific to each pathology had been generated from the signals. The binary classifiers were augmented by a multi-class classifier using an Error Correcting Output Codes (ECOC) methodology. Our approach achieved a challenge validation score of 0.616, and full test score of 0.194, placing us 23 (team DSC) out of 41 in the official ranking.
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