Evaluation of Machine Learning Techniques for ECG T-Wave Alternans

O. Karnaukh, Y. Karplyuk, Nataliia Nikitiuk
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引用次数: 4

Abstract

This paper presents the evaluation of T-wave alternans (TWA) detection based on machine learning techniques. F1-score metric was used for optimal features set selection. KNN, LR, RFC, SVC classifiers were evaluated as a part of TWA detection system. T-criteria was proposed as justification approach to select optimal features number based on classifiers performance. Designed optimal TWA classification system was evaluated on PhysioBank database and classification F1-score about 89% was obtained for RFC classifier.
心电图t波交替的机器学习技术评价
本文提出了基于机器学习技术的t波交替(TWA)检测评价方法。采用f1评分指标选择最优特征集。作为TWA检测系统的一部分,对KNN、LR、RFC、SVC分类器进行了评价。提出了t准则作为判别方法,根据分类器的性能选择最优特征数量。在PhysioBank数据库上对设计的最佳TWA分类系统进行评价,RFC分类器的分类f1得分约为89%。
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