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Epileptic seizures detection in EEG using DWT-based ApEn and artificial neural network - Springer

机译:使用基于DWT的ApEn和人工神经网络在脑电图中进行癫痫发作检测-Springer

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摘要

There are numerous neurological disorders such as dementia, headache, traumatic brain injuries, stroke, and epilepsy. Out of these epilepsy is the most prevalent neurological disorder in the human after stroke. Electroencephalogram (EEG) contains valuable information related to different physiological state of the brain. A scheme is presented for detecting epileptic seizures from EEG data recorded from normal subjects and epileptic patients. The scheme is based on discrete wavelet transform (DWT) analysis and approximate entropy (ApEn) of EEG signals. Seizure detection is performed in two stages. In the first stage, EEG signals are decomposed by DWT to calculate approximation and detail coefficients. In the second stage, ApEn values of the approximation and detail coefficients are calculated. Significant differences have been found between the ApEn values of the epileptic and the normal EEG allowing us to detect seizures with 100 % classification accuracy using artificial neural network. The analysis results depicted that during seizure activity, EEG had lower ApEn values compared to normal EEG. This gives that epileptic EEG is more predictable or less complex than the normal EEG. In this study, feed-forward back-propagation neural network has been used for classification and training algorithm for this network that updates the weight and bias values according to Levenberg–Marquardt optimization technique.
机译:有许多神经系统疾病,例如痴呆,头痛,脑外伤,中风和癫痫病。这些癫痫病是中风后人类中最普遍的神经系统疾病。脑电图(EEG)包含与大脑不同生理状态有关的有价值的信息。提出了一种从正常受试者和癫痫患者记录的EEG数据中检测癫痫发作的方案。该方案基于离散小波变换(DWT)分析和EEG信号的近似熵(ApEn)。癫痫发作检测分为两个阶段。在第一阶段,DWT对EEG信号进行分解,以计算近似系数和细节系数。在第二阶段,计算近似系数和细节系数的ApEn值。已发现癫痫的ApEn值与正常EEG之间存在显着差异,这使我们能够使用人工神经网络以100%的分类精度检测癫痫发作。分析结果表明,在癫痫发作期间,脑电图的ApEn值低于正常脑电图。这使得癫痫性脑电图比正常脑电图更可预测或较不复杂。在本研究中,前馈反向传播神经网络已用于该网络的分类和训练算法,该算法根据Levenberg-Marquardt优化技术更新权重和偏差值。

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