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Epileptic brain network from scalp EEG: Identifying the epileptic driver by connectivity analysis on brain waveforms

机译:来自头皮EEG的癫痫脑网络:通过对脑波形的连接分析来识别癫痫驾驶员

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Epilepsy is a neurological disorder characterized by seizures, i.e. abnormal synchronous activity of neurons in the brain. During a focal seizure the epileptic activity spreads rapidly from the ictal onset region to neighboring brain areas. ElectroEncephaloGraphy (EEG) is a commonly used technique to diagnose epilepsy. EEG has a high temporal resolution which allows us to investigate the dynamics of the underlying brain activity. Due to the rapid propagation of a seizure, the seizure can originate from a network of brain regions which are simultaneously active before being noticeable on the EEG. In this paper we investigate two state of the art source localization techniques, the Recursive Applied and Projected (RAP) and the pre-correlated and orthogonally projected (POP) multiple signal classification (MUSIC) algorithm, to identify the location of the driver behind the simulated epileptic brain network. Furthermore we investigate the applicability of connectivity analysis to identify the source driving the underlying brain network. We showed that the POP-MUSIC algorithm outperforms the RAP-MUSIC algorithm to identify the locations of the simultaneous brain activity. Furthermore, we showed the feasibility of identifying the driver behind a brain network by POP-MUSIC algorithm followed by connectivity analysis.
机译:癫痫是一种神经疾病,其特征是癫痫发作,即大脑中神经元的异常活性。在焦点癫痫发作期间,癫痫活动从ICTAL发作区域迅速扩散到邻近的脑区域。脑电图(EEG)是诊断癫痫的常用技术。 eeg具有高的时间分辨率,使我们能够研究潜在的脑活动的动态。由于癫痫发作的快速传播,癫痫发作可以源自脑区域的网络,该网络在脑电图中显着之前同时活跃。在本文中,我们调查了两个技术的本地化技术,递归应用和投影(RAP)和预相关和正交投影(POP)多信号分类(音乐)算法,以识别驾驶员后面的位置模拟癫痫大脑网络。此外,我们研究了连接性分析的适用性,识别驱动底层脑网络的源。我们表明,Pop-Music算法优于RAP - 音乐算法来识别同时脑活动的位置。此外,我们通过Pop-Music算法识别脑网络后面识别驾驶员的可行性,然后通过连接分析。

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