心电分类的领域自适应方法

Y. Bazi, N. Alajlan, H. Alhichri, S. Malek
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引用次数: 44

摘要

利用心电图信号检测和分类心律失常一直是文献研究的一个活跃领域。通常,为了评估所提出的分类方法的有效性,从相同的心电记录中提取训练和测试数据。然而,在实际场景中,测试数据可能来自不同的记录。在这种情况下,由于这些样本之间的统计偏移,分类结果可能不太准确。为了解决这个问题,我们在本文中研究了最近在机器学习文献中提出的两种领域自适应方法的能力。第一种是域转移支持向量机,第二种是重要性加权核逻辑回归方法。为了评估这两种方法的有效性,实验中使用了MIT-BIH心律失常数据库。
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Domain adaptation methods for ECG classification
The detection and classification of heart arrhythmias using Electrocardiogram signals (ECG) has been an active area of research in the literature. Usually, to assess the effectiveness of a proposed classification method, training and test data are extracted from the same ECG record. However, in real scenarios test data may come from different records. In this case, the classification results may be less accurate due to the statistical shift between these samples. In order to solve this issue, we investigate, in this paper, the capabilities of two domain adaption methods proposed recently in the literature of machine learning. The first is known as domain transfer SVM, whereas the second is the importance weighted kernel logistic regression method. To assess the effectiveness of both methods, the MIT-BIH arrhythmia database is used in the experiments.
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