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Structure and Topology Dynamics of Hyper-Frequency Networks during Rest and Auditory Oddball Performance

机译:休息和听觉奇数表演中超高频网络的结构和拓扑动力学

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Resting-state and task-related recordings are characterized by oscillatory brain activity and widely distributed networks of synchronized oscillatory circuits. Electroencephalographic recordings (EEG) were used to assess network structure and network dynamics during resting state with eyes open and closed, and auditory oddball performance through phase synchronization between EEG channels. For this assessment, we constructed a hyper-frequency network (HFN) based on within- and cross-frequency coupling (WFC and CFC, respectively) at 10 oscillation frequencies ranging between 2 and 20 Hz. We found that CFC generally differentiates between task conditions better than WFC. CFC was the highest during resting state with eyes open. Using a graph-theoretical approach (GTA), we found that HFNs possess small-world network (SWN) topology with a slight tendency to random network characteristics. Moreover, analysis of the temporal fluctuations of HFNs revealed specific network topology dynamics (NTD), i.e., temporal changes of different graph-theoretical measures such as strength, clustering coefficient, characteristic path length (CPL), local, and global efficiency determined for HFNs at different time windows. The different topology metrics showed significant differences between conditions in the mean and standard deviation of these metrics both across time and nodes. In addition, using an artificial neural network approach, we found stimulus-related dynamics that varied across the different network topology metrics. We conclude that functional connectivity dynamics (FCD), or NTD, which was found using the HFN approach during rest and stimulus processing, reflects temporal and topological changes in the functional organization and reorganization of neuronal cell assemblies.
机译:静止状态和与任务有关的记录的特征是大脑活动性震荡和同步震荡电路分布广泛的网络。脑电图记录(EEG)用于通过睁眼和闭眼评估静息状态下的网络结构和网络动态,以及通过EEG通道之间的相位同步来评估听觉怪胎的表现。为了进行此评估,我们在2至20 Hz的10个振荡频率下,基于同频和同频耦合(分别为WFC和CFC)构建了一个高频网络(HFN)。我们发现,CFC通常比WFC更好地区分任务条件。睁着眼睛休息时,CFC最高。使用图论方法(GTA),我们发现HFN拥有小世界网络(SWN)拓扑,并且具有轻微的随机网络特征趋势。此外,对HFNs的时间波动的分析揭示了特定的网络拓扑动力学(NTD),即,针对HFN确定的不同图论度量(例如强度,聚类系数,特征路径长度(CPL),局部和全局效率)的时间变化在不同的时间窗口。不同的拓扑指标显示条件在时间和节点上的均值和标准偏差之间存在显着差异。此外,使用人工神经网络方法,我们发现与刺激相关的动力学在不同的网络拓扑指标之间有所不同。我们得出的结论是,在休息和刺激过程中使用HFN方法发现的功能连接动力学(FCD)或NTD,反映了神经元细胞装配体的功能组织和重组中的时间和拓扑变化。

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