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Analysis of nonlinear dynamics of healthy and epileptic EEG signals using recurrence based complex network approach

机译:基于递归的复杂网络方法分析健康和癫痫性脑电信号的非线性动力学

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Epilepsy is a neurological condition characterized by sudden occurrences of rapid electrical discharges. Different non-linear methods like correlation dimension, Lyapunov exponent, entropy and more recently recurrence quantification analysis (RQA) have been used to characterize the non-linear dynamics behind interictal (between seizures) and ictal (during seizure) activities. While RQA is sensitive to embedding parameters other non-linear methods mentioned above require long and stationary data. In this study we propose recurrence network (RN) based approach to quantify the non-linear dynamics of the underlying attractors in healthy, interictal and ictal electroencephalographic (EEG) data. The dataset used to test the method is obtained from Department of Epileptology, Bonn University, Germany and consists of altogether 500 signals from interictal, ictal and healthy (eyes open and eyes closed) EEG activity. We compute network measures like clustering coefficient o and path length x on RN derived from EEG time series to characterize the underlying attractor. Our results show that interictal signals are characterized by chaotic attractors and their networks display small world property (high o and low x) while ictal signals are characterized by quasiperiodic attractors with high values of o and x. Further, our results show that for healthy EEG signals with eyes closed, the attractors are highly chaotic while for EEG signals with eyes open the attractors are less complex than fully chaotic attractor. RN based approach for the characterization of nonlinear dynamics of epileptic EEG signals is promising and has advantages over other non-linear approaches as it makes no assumptions about data stationarity, length and is not sensitive to embedding parameters.
机译:癫痫病是一种神经系统疾病,其特征是突然发生快速放电。相关维度,李雅普诺夫指数,熵和最近的递归量化分析(RQA)等不同的非线性方法已被用来表征发作间(发作之间)和发作(发作期间)活动背后的非线性动力学。尽管RQA对嵌入参数很敏感,但上述其他非线性方法也需要较长且固定的数据。在这项研究中,我们提出基于递归网络(RN)的方法来量化健康,发作间和发作间脑电图(EEG)数据中潜在吸引子的非线性动力学。用于测试该方法的数据集来自德国波恩大学癫痫学系,由来自发作,发作和健康(睁眼和闭眼)EEG活动的总共500个信号组成。我们计算网络度量值,例如从EEG时间序列得出的RN上的聚类系数o和路径长度x,以表征潜在的吸引子。我们的结果表明,间隔信号以混沌吸引子为特征,并且它们的网络显示出较小的世界属性(高o和低x),而瞬时信号则以具有高o和x值的拟周期吸引子为特征。此外,我们的结果表明,对于闭着眼睛的健康EEG信号,吸引子是高度混乱的,而对于睁着眼睛的EEG信号,吸引子的复杂性要比完全混乱的吸引子复杂。基于RN的癫痫EEG信号非线性动力学特性的方法是有前途的,并且比其他非线性方法更具优势,因为它不对数据的平稳性,长度和假设做出任何假设,而且对嵌入参数不敏感。

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