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Detecting seizure origin using basic multiscale population dynamic measures: Preliminary findings

机译:使用基本的多尺度人口动态指标检测癫痫发作的起源:初步发现

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摘要

Many types of electrographic seizures are readily identifiable by direct visual examination of electroencephalographic or electrocorticographic recordings. This process can, however, be painstakingly slow, and much effort has been expended to automate the process using various dynamic properties of epileptiform waveforms. As methods have become more subtle and powerful they have been used for seizure subclassification, seizure prediction, and seizure onset identification and localization. Here we concentrate on the last, with reference to seizures of neocortical origin. We briefly review some of the methods used and introduce preliminary results from a very simple dynamic model based on key electrophysiological properties found in some seizure types: occurrence of very fast oscillations (sometimes called ripples), excess gamma frequency oscillations, electroencephalographic/electrocorticographic flattening, and changes in global synchrony. We show how this multiscale analysis may reveal features unique to seizure onset and speculate on the underlying cellular and network phenomena responsible.
机译:通过对脑电图或脑电图记录的直接视觉检查,很容易识别出许多类型的电图发作。但是,该过程可能会非常缓慢,并且已花费大量精力使用癫痫状波形的各种动态特性来使该过程自动化。随着方法变得越来越微妙和强大,它们已被用于癫痫发作的亚分类,癫痫发作预测以及癫痫发作的识别和定位。在这里,我们集中在最后一个方面,涉及新皮质起源的癫痫发作。我们简要回顾了一些使用的方法,并基于一些癫痫发作类型的主要电生理特性,基于非常简单的动态模型介绍了初步结果:非常快速的振荡(有时称为波动),伽马频率振荡过多,脑电图/皮层皮层变平,以及全球同步的变化。我们展示了这种多尺度分析如何揭示癫痫发作独特的特征,并推测潜在的细胞和网络现象。

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