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Classifying the Epilepsy EEG Signal by Hybrid Model of CSHMM on the Basis of Clinical Features of Interictal Epileptiform Discharges

机译:基于间质癫痫样放电临床特征的CSHMM混合模型对癫痫脑电信号进行分类

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Many methods of processing epileptic EEG signals are concentrated in the classification, and most of them use the wavelet transform and SVM classification algorithm. Although these algorithms acquire the high accuracy, it is still unable to provide a good explanation of quantitative difference and physical meaning between epileptic EEG and normal EEG. This paper presents a new hybrid algorithm (CWT-SVM-HMM) to classify epileptic EEG signal. By the results of classification of HMM, we can track back abnormal signal frequency sources, through the analysis of the sources of seizures during different frequency band, we can get a seizure of accurate quantitative analysis according to clinical feature of interictal epileptiform discharges.
机译:处理癫​​痫性脑电信号的许多方法都集中在分类中,并且大多数使用小波变换和SVM分类算法。尽管这些算法具有很高的准确性,但仍无法很好地解释癫痫性脑电图与正常脑电图之间的定量差异和物理意义。本文提出了一种新的混合算法(CWT-SVM-HMM)来对癫痫性脑电信号进行分类。通过对HMM的分类结果,我们可以追溯异常信号的频率源,通过对不同频段癫痫发作的来源进行分析,可以根据发作间期癫痫样放电的临床特征对癫痫发作进行准确的定量分析。

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