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Dynamics on Networks: The Role of Local Dynamics and Global Networks on the Emergence of Hypersynchronous Neural Activity

机译:网络动力学:局部动力学和全局网络在超同步神经活动出现中的作用

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摘要

Graph theory has evolved into a useful tool for studying complex brain networks inferred from a variety of measures of neural activity, including fMRI, DTI, MEG and EEG. In the study of neurological disorders, recent work has discovered differences in the structure of graphs inferred from patient and control cohorts. However, most of these studies pursue a purely observational approach; identifying correlations between properties of graphs and the cohort which they describe, without consideration of the underlying mechanisms. To move beyond this necessitates the development of computational modeling approaches to appropriately interpret network interactions and the alterations in brain dynamics they permit, which in the field of complexity sciences is known as dynamics on networks. In this study we describe the development and application of this framework using modular networks of Kuramoto oscillators. We use this framework to understand functional networks inferred from resting state EEG recordings of a cohort of 35 adults with heterogeneous idiopathic generalized epilepsies and 40 healthy adult controls. Taking emergent synchrony across the global network as a proxy for seizures, our study finds that the critical strength of coupling required to synchronize the global network is significantly decreased for the epilepsy cohort for functional networks inferred from both theta (3–6 Hz) and low-alpha (6–9 Hz) bands. We further identify left frontal regions as a potential driver of seizure activity within these networks. We also explore the ability of our method to identify individuals with epilepsy, observing up to 80 predictive power through use of receiver operating characteristic analysis. Collectively these findings demonstrate that a computer model based analysis of routine clinical EEG provides significant additional information beyond standard clinical interpretation, which should ultimately enable a more appropriate mechanistic stratification of people with epilepsy leading to improved diagnostics and therapeutics.
机译:图论已发展成为研究复杂的大脑网络的有用工具,该网络可通过多种神经活动测量方法推断得出,包括fMRI,DTI,MEG和EEG。在神经系统疾病的研究中,最近的工作发现从患者和对照人群推断出的图结构上存在差异。但是,大多数这些研究都追求纯粹的观察性方法。在不考虑潜在机制的情况下,确定图的属性与其描述的同类群组之间的相关性。为了超越这一点,必须发展计算建模方法来适当地解释网络交互作用和它们允许的大脑动力学变化,这在复杂性科学领域被称为网络动力学。在这项研究中,我们使用仓本振荡器的模块化网络描述了该框架的开发和应用。我们使用此框架来了解从35名成年人的静息状态EEG录音推断的功能网络,这些成年人具有异质性特发性全身性癫痫和40名健康的成人对照。以全球网络中出现的紧急情况作为癫痫发作的代理,我们的研究发现,从θ(3–6 Hz)和低角度推断的功能性网络癫痫队列中,同步全球网络所需的耦合临界强度显着降低。 -alpha(6–9 Hz)频段。我们进一步确定左额叶区域是这些网络内癫痫发作活动的潜在驱动因素。我们还探索了我们的方法识别癫痫患者的能力,通过使用接收器工作特征分析观察了多达80种预测能力。这些发现共同表明,基于计算机模型的常规临床脑电图分析提供了除标准临床解释以外的大量其他信息,这最终应能使癫痫患者进行更适当的机械分层,从而改善诊断和治疗方法。

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