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Automatic Detection Of Epileptic Seizures In Eeg Using Discrete Wavelet Transform And Approximate Entropy

机译:离散小波变换和近似熵自动检测脑电中的癫痫发作

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In this study,a new scheme was presented for detecting epileptic seizures from electro-encephalo-gram (EEG) data recorded from normal subjects and epileptic patients.The new scheme was based on approximate entropy (ApEn) and discrete wavelet transform (DWT) analysis of EEG signals.Seizure detection was accomplished in two stages.In the first stage,EEG signals were decomposed into approximation and detail coefficients using DWT.In the second stage,ApEn values of the approximation and detail coefficients were computed.Significant differences were found between the ApEn values of the epileptic and the normal EEG allowing us to detect seizures with over 96% accuracy.Without DWT as preprocessing step,it was shown that the detection rate was reduced to 73%.The analysis results depicted that during seizure activity EEG had lower ApEn values compared to normal EEG.This suggested that epileptic EEG was more predictable or less complex than the normal EEG.The data was further analyzed with surrogate data analysis methods to test for evidence of nonlinearities.It was shown that epileptic EEG had significant nonlinearity whereas normal EEG behaved similar to Gaussian linear stochastic process.
机译:在这项研究中,提出了一种从正常受试者和癫痫患者记录的脑电图(EEG)数据中检测癫痫发作的新方案,该新方案基于近似熵(ApEn)和离散小波变换(DWT)分析癫痫发作检测分两个阶段进行:第一阶段,使用DWT将EEG信号分解为近似系数和细节系数;第二阶段,计算近似系数和细节系数的ApEn值,发现两者之间存在显着差异癫痫和正常脑电图的ApEn值使我们能够以超过96%的准确率检测癫痫发作。在不进行DWT预处理的情况下,结果表明检出率降低到73%。分析结果表明,癫痫发作期间脑电图具有与正常脑电图相比,ApEn值较低,这表明癫痫性脑电图比正常脑电图更可预测或较不复杂。门数据分析方法用于检验非线性证据。研究表明,癫痫脑电图具有明显的非线性,而正常脑电图的表现类似于高斯线性随机过程。

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