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Classification of epileptic seizures using wavelet packet log energy and norm entropies with recurrent Elman neural network classifier

机译:利用小波包对数能量和范数熵和递归Elman神经网络分类器对癫痫发作进行分类

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摘要

Electroencephalogram shortly termed as EEG is considered as the fundamental segment for the assessment of the neural activities in the brain. In cognitive neuroscience domain, EEG-based assessment method is found to be superior due to its non-invasive ability to detect deep brain structure while exhibiting superior spatial resolutions. Especially for studying the neurodynamic behavior of epileptic seizures, EEG recordings reflect the neuronal activity of the brain and thus provide required clinical diagnostic information for the neurologist. This specific proposed study makes use of wavelet packet based log and norm entropies with a recurrent Elman neural network (REN) for the automated detection of epileptic seizures. Three conditions, normal, pre-ictal and epileptic EEG recordings were considered for the proposed study. An adaptive Weiner filter was initially applied to remove the power line noise of 50 Hz from raw EEG recordings. Raw EEGs were segmented into 1 s patterns to ensure stationarity of the signal. Then wavelet packet using Haar wavelet with a five level decomposition was introduced and two entropies, log and norm were estimated and were applied to REN classifier to perform binary classification. The non-linear Wilcoxon statistical test was applied to observe the variation in the features under these conditions. The effect of log energy entropy (without wavelets) was also studied. It was found from the simulation results that the wavelet packet log entropy with REN classifier yielded a classification accuracy of 99.70 % for normal-pre-ictal, 99.70 % for normal-epileptic and 99.85 % for pre-ictal-epileptic.
机译:脑电图简称为EEG,被认为是评估大脑神经活动的基本部分。在认知神经科学领域,基于EEG的评估方法由于其无创的检测深部大脑结构同时展现出卓越的空间分辨率的能力而被认为是优越的。特别是对于研究癫痫发作的神经动力学行为,EEG记录反映了大脑的神经元活动,因此为神经科医生提供了所需的临床诊断信息。这项拟议的具体研究利用基于小波包的对数和范数熵以及递归Elman神经网络(REN)来自动检测癫痫发作。拟议的研究考虑了三种情况,正常,发作前和癫痫性脑电图记录。最初使用自适应Weiner滤波器从原始EEG记录中去除50Hz的电源线噪声。将原始EEG分为1种模式,以确保信号的平稳性。然后引入具有五级分解的Haar小波的小波包,并估计对数和范数两个熵,并将其应用于REN分类器进行二进制分类。非线性Wilcoxon统计检验用于观察在这些条件下特征的变化。还研究了对数能量熵(无小波)的影响。从仿真结果中发现,使用REN分类器的小波包对数熵对正常发作前的分类准确率为99.70%,对于正常癫痫为99.70%,对癫痫发作前为99.85%。

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