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Tunable-Q Wavelet Transform Based Multiscale Entropy Measure for Automated Classification of Epileptic EEG Signals

机译:基于可调Q小波变换的多尺度熵测度用于癫痫脑电信号的自动分类

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This paper analyzes the underlying complexity and non-linearity of electroencephalogram (EEG) signals by computing a novel multi-scale entropy measure for the classification of seizure, seizure-free and normal EEG signals. The quality factor ( Q ) based multi-scale entropy measure is proposed to compute the entropy of the EEG signal in different frequency-bands of interest. The Q -based entropy (QEn) is computed by decomposing the signal with the tunable-Q wavelet transform (TQWT) into the number of sub-bands and estimating K-nearest neighbor (K-NN) entropies from various sub-bands cumulatively. The optimal selection of Q and the redundancy parameter ( R ) of TQWT showed better robustness for entropy computation in the presence of high- and low-frequency components. The extracted features are fed to the support vector machine (SVM) classifier with the wrapper-based feature selection method. The proposed method has achieved accuracy of 100% in classifying normal (eyes-open and eyes-closed) and seizure EEG signals, 99.5% in classifying seizure-free EEG signals (from the hippocampal formation of the opposite hemisphere of the brain) from seizure EEG signals and 98% in classifying seizure-free EEG signals (from the epileptogenic zone) from seizure EEG signals, respectively, using the SVM classifier. We have also achieved classification accuracies of 99% and 98.6% in classifying seizure versus non-seizure EEG signals and the individual three classes, namely normal, seizure-free and seizure EEG signals, respectively. The performance measure of the proposed multi-scale entropy has been found to be comparable with the existing state of the art epileptic EEG signals classification methods studied using the same database.
机译:本文通过计算新型的多尺度熵测度对癫痫,无癫痫和正常EEG信号进行分类,分析了脑电图(EEG)信号的潜在复杂性和非线性。提出了基于质量因子(Q)的多尺度熵测度,以计算感兴趣的不同频带下的脑电信号的熵。通过将具有可调Q小波变换(TQWT)的信号分解为子带数,并从各个子带累计估计K近邻(K-NN)熵,可以计算基于Q的熵(QEn)。 Q的最佳选择和TQWT的冗余参数(R)在存在高频和低频分量的情况下对熵计算显示出更好的鲁棒性。提取的特征通过基于包装的特征选择方法被馈送到支持向量机(SVM)分类器。所提出的方法对癫痫发作的正常(睁眼和闭眼)和癫痫发作的脑电信号进行分类的准确率达到100%,对无癫痫发作的脑电信号(来自大脑对侧半球的海马形成)进行分类的准确性达到99.5%使用SVM分类器分别从癫痫发作的EEG信号分类无癫痫发作的EEG信号(来自癫痫发作区)和98%的脑电信号。在将癫痫发作与非癫痫发作的EEG信号进行分类以及分别分为正常,无癫痫发作和癫痫发作的EEG信号这三个类别中,我们还实现了99%和98.6%的分类精度。已经发现,所提出的多尺度熵的性能度量可与使用相同数据库研究的现有技术水平的癫痫性脑电信号分类方法进行比较。

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