危及生命的心律失常识别算法的比较

A. Nemirko, L. A. Manilo, B. E. Alekseev, A. Sokolova, Z. Yuldashev
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引用次数: 2

摘要

在对人类心脏活动的临床监测中,主要目标是尽早发现心律失常并捕获其前兆。我们决定应用2秒滑动窗口来识别危及生命的心律失常。根据心律失常对生命的危害程度,将心律失常分为6类。这些类别分为两部分:威胁人类生命和威胁他人生命。选取频谱高达15hz的傅里叶变换作为分类特征。本文描述了形成的心电片段数据集,并比较了不同简单分类算法对这两类问题的效率。测试了以下算法:k近邻算法、最近邻凸包算法、最近邻均值算法和不同核的支持向量机。结果似乎是足够适当的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Comparison of Algorithms for Life-threatening Cardiac Arrhythmias Recognition
During the clinical monitoring of the human heart activity the main goal is to detect heart arrhythmias and capture their precursors as early as possible. And we decided to apply 2 seconds gliding window for lifethreatening cardiac arrhythmias recognition. All types of arrhythmias were grouped into six classes depending on their danger to the human life. And these classes were separated in two parts: threatening humans’ life and others. As a classification features Fourier transform with spectrum up to 15 Hz were picked. In this paper we describe the formed dataset of ECG fragments and compare efficiency of different simple classification algorithms for this two-class problem. The following algorithms were tested: k-nearest neighbours, nearest convex hull algorithm, nearest mean and SVMs with different kernels. The results appeared to be sufficiently appropriate.
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