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使用多域特征提取结合最小二乘支持向量机分类器检测脑电图信号中的K复合波。

Detection of k-complexes in EEG signals using a multi-domain feature extraction coupled with a least square support vector machine classifier.

作者信息

Al-Salman Wessam, Li Yan, Wen Peng

机构信息

School of Sciences, University of Southern Queensland, Australia; Thi-Qar University, College of Education for Pure Science, Iraq.

School of Sciences, University of Southern Queensland, Australia.

出版信息

Neurosci Res. 2021 Nov;172:26-40. doi: 10.1016/j.neures.2021.03.012. Epub 2021 May 11.

Abstract

Sleep scoring is one of the primary tasks for the classification of sleep stages using electroencephalogram (EEG) signals. It is one of the most important diagnostic methods in sleep research and must be carried out with a high degree of accuracy because any errors in the scoring in the patient's sleep EEG recordings can cause serious problems. The aim of this research is to develop a new automatic method for detecting the most important characteristics in sleep stage 2 such as k-complexes based on multi-domain features. In this study, each EEG signal is divided into a set of segments using a sliding window technique. Based on extensive experiments during the training phase, the size of the sliding window is set to 0.5 s (s). Then a set of statistical, fractal, frequency and non-linear features are extracted from each epoch based on the time domain, Katz's algorithm, power spectrum density (PSD) and tunable Q-factor wavelet transform (TQWT). As a result, a vector of twenty-two features is obtained to represent each EEG segment. In order to detect k-complexes, the extracted features were analysed for their ability to detect the k-complex waveforms. Based on the analysis of the features, twelve out of twenty-two features are selected and forwarded to a least square support vector machine (LS-SVM) classifier to identify k-complexes in EEG signals. A set of various classification techniques of K-means and extreme learning machine classifiers are used to compare the obtained results and to evaluate the performance of the proposed method.The experimental results showed that the proposed method, based on multi-domain features, achieved better recognition results than other methods and classifiers. An average accuracy, sensitivity and specificity of 97.7 %, 97 %, and 94.2 % were obtained, respectively, with the CZ-A1 channel according to the R&K standard. The experimental results with high classification performance demonstrated that the technique can help doctors optimize the diagnosis and treatment of sleep disorders.

摘要

睡眠评分是使用脑电图(EEG)信号对睡眠阶段进行分类的主要任务之一。它是睡眠研究中最重要的诊断方法之一,必须高精度地进行,因为患者睡眠EEG记录中的评分错误可能会导致严重问题。本研究的目的是开发一种基于多域特征检测睡眠第二阶段最重要特征(如K复合波)的新自动方法。在本研究中,使用滑动窗口技术将每个EEG信号划分为一组片段。基于训练阶段的大量实验,将滑动窗口的大小设置为0.5秒(s)。然后基于时域、Katz算法、功率谱密度(PSD)和可调Q因子小波变换(TQWT)从每个时段提取一组统计、分形、频率和非线性特征。结果,获得了一个二十二维特征向量来表示每个EEG片段。为了检测K复合波,分析提取的特征检测K复合波波形的能力。基于特征分析,从二十二个特征中选择十二个,并转发到最小二乘支持向量机(LS-SVM)分类器以识别EEG信号中的K复合波。使用一组K均值和极限学习机分类器的各种分类技术来比较获得的结果并评估所提出方法的性能。实验结果表明,基于多域特征的所提出方法比其他方法和分类器取得了更好的识别结果。根据R&K标准,使用CZ-A1通道分别获得了97.7%、97%和94.2%的平均准确率、灵敏度和特异性。具有高分类性能的实验结果表明,该技术可以帮助医生优化睡眠障碍的诊断和治疗。

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