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Automatic recognition of sleep spindles in EEG via radial basis support vector machine based on a modified feature selection algorithm

机译:基于改进特征选择算法的径向基支持向量机自动识别脑电图中的睡眠纺锤

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摘要

This paper presents an application of a radial basis support vector machine (RB-SVM) to the recognition of the sleep spindles (SSs) in electroencephalo-graphic (EEG) signal. The proposed system comprises of two stages. In the first stage, for feature extraction, a set of raw amplitude values, a set of discrete cosine transform (DCT) coefficients, a set of discrete wavelet transform (DWT) approximation coefficients and a set of adaptive autoregressive (AAR) parameters are calculated and extracted from signals separately as four different sets of feature vectors. Thus, four different feature vectors for the same data are comparatively examined. In the second stage, these features are then selected by a modified adaptive feature selection method based on sensitivity analysis, which mainly supports input dimension reduction via selecting the most significant feature elements. Then, the feature vectors are classified by a support vector machine (SVM) classifier, which is relatively new and powerful technique for solving supervised binary classification problems due to it's generalization ability. Visual evaluation, by two electroencephalographers (EEGers), of 19 channel EEG records of six subjects showed that the best performance is obtained with an RB-SVM providing an average sensitivity of 97.7%, an average specificity of 97.4% and an average accuracy of 97.5%.
机译:本文提出了一种径向基支持向量机(RB-SVM)在脑电图(EEG)信号中识别睡眠纺锤体(SSs)的应用。拟议的系统包括两个阶段。在第一阶段,为了进行特征提取,计算了一组原始幅度值,一组离散余弦变换(DCT)系数,一组离散小波变换(DWT)近似系数和一组自适应自回归(AAR)参数然后分别从信号中提取出四组不同的特征向量。因此,比较检查了相同数据的四个不同特征向量。在第二阶段,然后通过基于敏感性分析的改进的自适应特征选择方法选择这些特征,该方法主要通过选择最重要的特征元素来支持输入尺寸的减小。然后,通过支持向量机(SVM)分类器对特征向量进行分类,由于其泛化能力,这是一种解决有监督的二进制分类问题的相对较新且功能强大的技术。两名脑电图师(EEGers)对六个对象的19条通道EEG记录进行的视觉评估显示,使用RB-SVM可获得最佳性能,其平均灵敏度为97.7%,平均特异性为97.4%,平均准确度为97.5 %。

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