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A Critical Role for Network Structure in Seizure Onset: A Computational Modeling Approach

机译:网络结构在癫痫发作中的关键作用:一种计算建模方法

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摘要

Recent clinical work has implicated network structure as critically important in the initiation of seizures in people with idiopathic generalized epilepsies. In line with this idea, functional networks derived from the electroencephalogram (EEG) at rest have been shown to be significantly different in people with generalized epilepsy compared to controls. In particular, the mean node degree of networks from the epilepsy cohort was found to be statistically significantly higher than those of controls. However, the mechanisms by which these network differences can support recurrent transitions into seizures remain unclear. In this study, we use a computational model of the transition into seizure dynamics to explore the dynamic consequences of these differences in functional networks. We demonstrate that networks with higher mean node degree are more prone to generating seizure dynamics in the model and therefore suggest a mechanism by which increased mean node degree of brain networks can cause heightened ictogenicity.
机译:最近的临床工作表明网络结构对于特发性全身性癫痫患者发作的发作至关重要。与这个想法相一致,与对照组相比,在全身性癫痫患者中,静止时脑电图(EEG)衍生的功能网络已显示出显着差异。特别地,发现癫痫队列的网络平均节点度在统计学上显着高于对照组。然而,这些网络差异可支持复发性转变为癫痫发作的机制仍不清楚。在这项研究中,我们使用转变为癫痫发作动力学的计算模型来探索功能网络中这些差异的动力学后果。我们证明,具有较高平均节点度的网络更容易在模型中生成癫痫发作动态,因此提出了一种机制,通过该机制,大脑网络的平均节点度增加可以导致致烟性。

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