Analysis of Seizure Prediction Horizon on Scalp EEG Using MDWP Approach

N. Rafiuddin, Y. Khan, Omar Farooq
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Abstract

This study proposes a statistical approach to examine the pre-ictal period before the onset of seizures. The study employs the multidepth wavelet packet (MDWP) approach by excavating through the wavelet packet tree to the eighth level of decomposition. Numerous statistical measures were chosen to extract features over raw signal and the retained wavelet packets from the MDWP approach. This extensive process extracted more than twelve thousand features from every five-minute window taken two hours before to five minutes before the seizure onset. Ranking the features extracted from each five-minute window separately revealed the feature of mode computed on the 11th packet of the 4th level of decomposition, 6th packet of the 3rd level of decomposition and 3rd packet of the 2nd level of decomposition among the top three features during the pre-ictal duration. Moreover, the rank of these features shows a drooping nature around 70 minutes before seizure onset. This indicates the sign of prediction horizon to be close to 70 minutes before seizure onset for patient-1 of the CHB-MIT scalp EEG dataset. MATLAB installed on Workstation with 24 cores was used to process the enormous data involved in this study.
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应用MDWP方法分析头皮脑电图癫痫发作预测水平
本研究提出了一种统计方法来检查癫痫发作前的孕前期。该研究采用多深度小波包(MDWP)方法,通过小波包树挖掘到第8层分解。从MDWP方法中选择了许多统计度量来提取原始信号和保留的小波包的特征。这个广泛的过程从癫痫发作前两小时到发作前五分钟的每五分钟窗口提取12000多个特征。分别对每个5分钟窗口提取的特征进行排序,可以得到前3个特征中第4层分解第11个包、第3层分解第6个包和第2层分解第3个包计算的模式特征。此外,在癫痫发作前70分钟左右,这些特征的排列显示出一种下垂的性质。这表明CHB-MIT头皮脑电图数据集的患者-1的预测范围接近癫痫发作前70分钟。使用安装在24核工作站上的MATLAB来处理本研究涉及的大量数据。
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