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Fast monitoring of epileptic seizures using recurrence time statistics of electroencephalography

机译:使用脑电图的复发时间统计快速监测癫痫发作

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摘要

Epilepsy is a relatively common brain disorder which may be very debilitating. Currently, determination of epileptic seizures often involves tedious, time-consuming visual inspection of electroencephalography (EEG) data by medical experts. To better monitor seizures and make medications more effective, we propose a recurrence time based approach to characterize brain electrical activity. Recurrence times have a number of distinguished properties that make it very effective for forewarning epileptic seizures as well as studying propagation of seizures: (1) recurrence times amount to periods of periodic signals, (2) recurrence times are closely related to information dimension, Lyapunov exponent, and Kolmogorov entropy of chaotic signals, (3) recurrence times embody Shannon and Renyi entropies of random fields, and (4) recurrence times can readily detect bifurcation-like transitions in dynamical systems. In particular, property (4) dictates that unlike many other non-linear methods, recurrence time method does not require the EEG data be chaotic and/or stationary. Moreover, the method only contains a few parameters that are largely signal-independent, and hence, is very easy to use. The method is also very fast—it is fast enough to on-line process multi-channel EEG data with a typical PC. Therefore, it has the potential to be an excellent candidate for real-time monitoring of epileptic seizures in a clinical setting.
机译:癫痫病是一种相对常见的脑部疾病,可能会使人非常虚弱。当前,确定癫痫发作通常涉及医学专家对脑电图(EEG)数据进行乏味且耗时的目视检查。为了更好地监测癫痫发作并使药物更有效,我们提出了一种基于复发时间的方法来表征脑电活动。复发时间具有许多杰出的特性,使其对于预警癫痫发作以及研究癫痫发作的传播非常有效:(1)复发时间等于周期性信号的周期,(2)复发时间与信息量密切相关,Lyapunov指数和混沌信号的Kolmogorov熵,(3)递归时间体现了随机场的Shannon和Renyi熵,并且(4)递归时间可以很容易地检测动力系统中的分叉状跃迁。特别地,属性(4)规定,与许多其他非线性方法不同,递归时间方法不需要脑电数据混乱和/或平稳。此外,该方法仅包含少数与信号无关的参数,因此非常易于使用。该方法也非常快-它足够快以典型的PC在线处理多通道EEG数据。因此,它有可能成为临床环境中实时监测癫痫发作的极佳候选者。

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