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首页> 外文期刊>Biomedical Engineering Letters >Relative wavelet energy and wavelet entropy based epileptic brain signals classification
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Relative wavelet energy and wavelet entropy based epileptic brain signals classification

机译:基于相对小波能量和小波熵的癫痫脑信号分类

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Purpose: Manual analysis of EEG signals by an expert is very much time consuming due to the long length of EEG recordings. The suitable computerized analysis is essentially required to differentiate among the normal, interictal and ictal (epileptic) EEGs. Methods: In the present work the EEG signals are decomposed into different sub-bands using discrete wavelet transform (DWT) to obtain the detail and the approximation wavelet coefficients. The coefficients are used to calculate the quantitative values of relative wavelet energy and wavelet entropy from different data sets to select the features of EEG signals. The support vector machine (SVM), feed forward back-propagation neural network (FFBPNN), k-Nearest Neighbor Classifier (k-NN) and Decision tree classifier (DT) are used to classify the EEG signals. Results: It is revealed that the accuracy between normal subjects with eyes open condition (data set A) epileptic data set E using SVM is obtained as 96. 25%. Classification accuracy between the normal subjects with eye closed condition and epileptic data set E is obtained as 83. 75% using k-NN classifier. Similar accuracies while discriminating the interictal data set C versus ictal data set E, and interictal data set D versus ictal data set E are obtained as 97. 5% and 97. 5% respectively, using a FFBPNN. These accuracies are quite higher than the earlier results published. The results are discussed quite in detail towards the last sections of the present paper. Conclusions: Our experimental results demonstrate that the proposed method gives quite high statistical parameters for EEG classifications especially to classify the interictal data(C, D) and ictal data (E). These experiments indicate that the present method can be useful in analyzing and detecting the EEG signal associated with epilepsy.
机译:目的:由于脑电图记录时间长,因此由专家手动分析脑电图信号非常耗时。本质上需要适当的计算机分析来区分正常,发作间和发作(癫痫)的脑电图。方法:在本工作中,使用离散小波变换(DWT)将脑电信号分解为不同的子带,以获得细节和近似小波系数。系数用于从不同数据集中计算相对小波能量和小波熵的定量值,以选择EEG信号的特征。支持向量机(SVM),前馈反向传播神经网络(FFBPNN),k最近邻分类器(k-NN)和决策树分类器(DT)用于对EEG信号进行分类。结果:揭示了使用SVM获得的睁眼条件正常受试者(数据集A)和癫痫数据集E之间的准确率为96. 25%。使用k-NN分类器,闭眼正常受试者和癫痫数据集E之间的分类精度为83. 75%。使用FFBPNN,在区分间期数据集C和期末数据集E以及期末数据集D和期末数据集E时,获得了类似的准确度,分别为97.5%和97.5%。这些精度比以前公布的结果要高得多。在本文的最后部分中将对结果进行详细讨论。结论:我们的实验结果表明,该方法为脑电分类提供了相当高的统计参数,尤其是对脑间数据(C,D)和眼内数据(E)进行了分类。这些实验表明,本方法可用于分析和检测与癫痫有关的EEG信号。

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