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首页> 外文期刊>Cognitive Neurodynamics >Feature extraction and recognition of epileptiform activity in EEG by combining PCA with ApEn
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Feature extraction and recognition of epileptiform activity in EEG by combining PCA with ApEn

机译:PCA与ApEn结合提取脑电中癫痫样活动的特征

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摘要

This paper proposes a new method for feature extraction and recognition of epileptiform activity in EEG signals. The method improves feature extraction speed of epileptiform activity without reducing recognition rate. Firstly, Principal component analysis (PCA) is applied to the original EEG for dimension reduction and to the decorrelation of epileptic EEG and normal EEG. Then discrete wavelet transform (DWT) combined with approximate entropy (ApEn) is performed on epileptic EEG and normal EEG, respectively. At last, Neyman-Pearson criteria are applied to classify epileptic EEG and normal ones. The main procedure is that the principle component of EEG after PCA is decomposed into several sub-band signals using DWT, and ApEn algorithm is applied to the sub-band signals at different wavelet scales. Distinct difference is found between the ApEn values of epileptic and normal EEG. The method allows recognition of epileptiform activities and discriminates them from the normal EEG. The algorithm performs well at epileptiform activity recognition in the clinic EEG data and offers a flexible tool that is intended to be generalized to the simultaneous recognition of many waveforms in EEG.
机译:本文提出了一种新的特征提取和识别脑电信号中癫痫样活动的方法。该方法在不降低识别率的情况下提高了癫痫样活动的特征提取速度。首先,将主成分分析(PCA)应用于原始EEG以减小尺寸,并将其应用于癫痫EEG和正常EEG的去相关。然后分别对癫痫脑电图和正常脑电图进行离散小波变换(DWT)和近似熵(ApEn)。最后,采用Neyman-Pearson准则对癫痫脑电图和正常脑电图进行分类。其主要步骤是利用DWT将PCA之后的EEG的主成分分解为几个子带信号,并将ApEn算法应用于不同小波尺度的子带信号。发现癫痫的和正常的EEG的ApEn值之间存在明显差异。该方法可以识别癫痫样活动,并将其与正常脑电图区分开。该算法在临床EEG数据中的癫痫样活动识别方面表现良好,并提供了一种灵活的工具,旨在推广到同时识别EEG中的许多波形。

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