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Separation of Nonstationary EEG Epileptic Seizures Using Time-Frequency-Based Blind Signal Processing Techniques

机译:使用基于时频的盲信号处理技术分离非持久性EEG癫痫发作

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Epilepsy is a neural disorder in which the electrical discharge in the brain is abnormal, synchronized and excessive. Scalp Electroencephalogram (EEG) is often used in the diagnosis and treatment of epilepsy by examining the epileptic seizures and epileptic spikes. By modeling the signal acquired at each electrode of the EEG measurement system as a linear combination of source signals generated in the brain, we can apply Blind Source Separation (BSS) techniques to separate the seizures from other signals. Alternating Columns - Diagonal Centers (AC-DC) and Second-Order-Blind Identification (SOBI) are well-known BSS algorithms and have been previously applied to the separation of seizures. However, the seizure signals in new-born babies exhibit nonstationary second order statistics. In this paper, we concentrate on applying two time-frequency (TF) based algorithms: TF-SOBI and TF-UBSS to seizure separation. These algorithms are more appropriate for analyzing nonstationary signals and have not been previously applied to studies of EEG-based seizures.
机译:癫痫是一种神经障碍,其中大脑的放电异常,同步和过度。头皮脑电图(EEG)通常用于通过检查癫痫癫痫发作和癫痫尖峰的诊断和治疗。通过将在EEG测量系统的每个电极的信号建模为大脑中产生的源信号的线性组合,我们可以应用盲源分离(BSS)技术来将癫痫发作与其他信号分开。交替的柱 - 对角线中心(AC-DC)和二阶盲鉴定(SOBI)是众所周知的BSS算法,并且先前已被应用于癫痫发作的分离。然而,新出生的婴儿中的癫痫发作信号表现出非子性二阶统计数据。在本文中,我们专注于应用两种基于时间频率(TF)的算法:TF-SOBI和TF-UBS来癫痫发作。这些算法更适合于分析非间断信号,并且尚未以前应用于基于EEG的癫痫发作的研究。

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