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Complexity Based Multilevel Signal Analysis for Epileptic Seizure Detection

机译:基于复杂性的癫痫癫痫发作检测的多级信号分析

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The electroencephalogram (EEG) signal is a signal produced by a complex biological system. Thus, a signal complexity analysis can be useful for analyzing the EEG signal. Many studies have shown the vast development of signal complexity analysis in the EEG. The most commonly used methods were the entropy and fractal dimension measurement. These methods were able to perform well in the epileptic EEG seizure detection system. They were suitable for time, frequency, and wavelet domain signal processing. The use of wavelet analysis, such as discrete wavelet transform (DWT) and wavelet packet decomposition (WPD), was quite famous. In many studies, the feature extraction process was performed in the DWT or WPD process sub-band signal. One of the developments of WPD was called as the multilevel wavelet packet entropy (MWPE), which produced less features than that of WPD. This study developed a new method based on WPE, which used signal complexity measurement at each level as in MWPE. The seizure detection process in this study was started with a channel selection method to reduce the processed channels. EEG signals from selected channels were then decomposed using a five-level of wavelet packet decomposition (WPD), producing 32 wavelet coefficients. The feature extraction process was performed using the entropy and fractal dimension for all 32 sub-bands, that were segmented using a ten-minute non-overlapping window. A support vector machine (SVM) was used to classify the feature set into a seizure and normal conditions. The system was evaluated using the CHBMIT EEG dataset, which was recorded from 24 patients having a total of 198 seizure events. The highest average accuracy of 91% was achieved by using multilevel wavelet higuchi fractal dimension (MWHF) analysis. This indicates that the use of fractal based measurement has a good opportunity to be implemented in epileptic seizure detection and prediction system.
机译:脑电图(EEG)信号是由复杂的生物系统产生的信号。因此,信号复杂性分析可用于分析EEG信号。许多研究表明EEG中信号复杂性分析的广泛发展。最常用的方法是熵和分形维数测量。这些方法能够在癫痫发作检测系统中表现良好。它们适用于时间,频率和小波域信号处理。小波分析的使用,如离散小波变换(DWT)和小波包分解(WPD)非常有名。在许多研究中,特征提取过程在DWT或WPD处理子带信号中进行。 WPD的一个发展之一被称为多级小波包熵(MWPE),其产生比WPD更少的特征。本研究开发了一种基于WPE的新方法,它在每个级别都使用MWPE中的信号复杂度测量。本研究中的癫痫发作检测过程以渠道选择方法启动以减少处理的通道。然后使用五级小波分组分解(WPD)分解来自所选信道的EEG信号,产生32个小波系数。使用熵和分形尺寸对所有32个子带进行分割的特征提取过程,其使用十分钟的非重叠窗口分割。支持向量机(SVM)用于将特征分类为癫痫发作和正常情况。系统使用CHBMIT EEG数据集进行评估,该数据集已从共有198名癫痫发作事件的24名患者中记录。通过使用多级小波HIGUCHI分形尺寸(MWHF)分析来实现91%的最高平均精度。这表明使用基于分形的测量具有良好的机会,可以在癫痫癫痫发作检测和预测系统中实现。

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