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Temporal Characteristics of Wavelet Subbands of Epileptic Scalp EEG Data Based on the Number of Local Min-Max

机译:基于局部最大-最大数目的癫痫头皮脑电数据小波子带的时间特征

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Epilepsy is a chronic brain disorder characterized by recurrent seizures. An electroencephalogram (EEG) which records the electrical activity of the brain can help diagnose seizures. Temporal characteristics of the EEG provide an insight into the states of the brain including epileptic seizures. In this study, the temporal characteristics of epileptic scalp EEG subband signals obtained using the discrete wavelet transform associated with various states of the brain including the pre-ictal, ictal and post-ictal states, are examined using a simple computational measure, referred to as the number of local min-max. From the computational results, it is observed that in any wavelet subband the EEG subband signals associated with different states of the brain exhibit distinguishing characteristics of the number of local min-max. The most remarkable temporal characteristics of EEG subband signals can be observed in the D_1 and A_3 subbands which, respectively, correspond to the highest and lowest frequency components of the EEG signals. In particular, during an epileptic seizure activity the computational results suggest that there is an increase of amplitude regularity of the highest frequency components while there is a decrease of amplitude regularity of the lowest frequency components. Furthermore, the computational results show that the number of local min-max of the D_1 and A_3 subband signals of epileptic EEG can be potentially useful for epileptic seizure classification and detection accompanied with further digital signal processing and analysis.
机译:癫痫病是一种以反复发作为特征的慢性脑部疾病。记录大脑电活动的脑电图(EEG)有助于诊断癫痫发作。脑电图的时间特征提供了对包括癫痫发作在内的大脑状态的洞察力。在这项研究中,使用简单的计算方法(称为发作前,发作后和发作后状态)检查使用与大脑各种状态相关的离散小波变换获得的癫痫性头皮EEG子带信号的时间特性。本地最小-最大数。从计算结果可以看出,在任何小波子带中,与大脑不同状态相关的EEG子带信号都表现出局部最小值-最大值的区别特征。可以在D_1和A_3子带中观察到EEG子带信号最显着的时间特性,它们分别对应于EEG信号的最高和最低频率分量。特别地,在癫痫发作活动期间,计算结果表明,最高频率分量的幅度规则性增加,而最低频率分量的幅度规则性降低。此外,计算结果表明,癫痫脑电图的D_1和A_3子带信号的局部最小值-最大值可能对癫痫发作的分类和检测以及进一步的数字信号处理和分析很有用。

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