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Presenting efficient features for automatic CAP detection in sleep EEG signals

机译:睡眠EEG信号中的自动盖检测的高效功能

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Research findings show that several diseases can be detected by quantitative analysis of sleep signals. Detecting and analyzing cyclic alternative pattern (CAP) is an essential part of the sleep analysis. Although some methods have been suggested for automatic CAP detection, none of them can provide an acceptable accuracy. In this paper, a family of entropy based features is evaluated by support vector machine (SVM), K-nearest neighbor (KNN) and linear discriminant analysis (LDA) to distinguish CAP from non-CAP parts. To assess the suggested feature set, sleep EEG of 4 healthy subjects and 4 patients are analyzed by the conventional and the suggested features. Comparative results demonstrate that a subset of suggested features can drastically outperform the previous features for both groups of healthy and patients.
机译:研究结果表明,通过对睡眠信号的定量分析可以检测多种疾病。检测和分析循环替代模式(帽)是睡眠分析的重要组成部分。虽然已经建议用于自动帽检测的一些方法,但它们都不可以提供可接受的精度。本文通过支持向量机(SVM),K最近邻(KNN)和线性判别分析(LDA)来评估基于熵的特征,以区分来自非盖子部件的盖子。为了评估建议的功能集,通过传统和建议的特征分析了4名健康受试者和4名患者的睡眠脑电图。比较结果表明,建议的特征的子集可以大幅度优于两组健康和患者的先前特征。

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