基于平移不变小波变换的心脏异常判别分析

Ritu Singh, N. Rajpal, R. Mehta
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引用次数: 2

摘要

近年来,基于监督学习的心电图心律失常自动检测得到了广泛的关注。本文对支持向量机(SVM)、极限学习机(ELM)和k近邻(KNN)等分类器的性能进行了分析,这些分类器具有高效的时间利用率,显示了针对特定医疗应用的多分类。利用双树复小波变换进行噪声滤波和节拍分割,提取了130个信息样本。进一步,应用线性判别分析对MIT/BIH心电数据库中收集的12个最相关的特征进行降维和精化,用于分类正常心跳和4个异常心跳。该系统对SVM、ELM和KNN的分类器测试时间分别为0.0081秒、0.0031秒和0.0234秒,准确率分别为99.8、97和99.8。模拟实验结果与现有工作的比较得到了足够的精度和计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application-Specific Discriminant Analysis of Cardiac Anomalies Using Shift-Invariant Wavelet Transform
Automatic arrhythmia detection in electrocardiogram (ECG) using supervised learning has gained significant considerations in recent years. This paper projects the performance analysis of classifiers such as support vector machine (SVM), extreme learning machine (ELM), and k-nearest neighbor (KNN) with efficient time utilization showing multi-classification for specific medical application. The wavelet double decomposition is used to show the shift-invariant use of dual-tree complex wavelet transform for noise filtering and beat segmentation is done to extract 130 informative samples. Further, the linear discriminant analysis is applied to dimensionally reduce and elite the 12 most relevant features for classifying normal and four abnormal beats collected from MIT/BIH ECG database. The proposed executed system distinguishes SVM, ELM, and KNN with percentage accuracy of 99.8, 97, and 99.8 having classifier testing time as 0.0081s, 0.0031s, and 0.0234s, respectively. The simulated experimental outcomes in comparison with existing work yields adequate accuracy, and computational time.
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