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首页> 外文期刊>Clinical EEG and neuroscience: official journal of the EEG and Clinical Neuroscience Society (ENCS) >Brain Network Connectivity and Topological Analysis During Voluntary Arm Movements
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Brain Network Connectivity and Topological Analysis During Voluntary Arm Movements

机译:自愿手臂运动过程中的脑网络连通性和拓扑分析

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Functional connectivity estimates the temporal synchrony among functionally homogeneous brain regions based on the assessment of the dynamics of topologically localized neurophysiological responses. The aim of this study was to investigate task-related changes in brain activity and functional connectivity by applying different methods namely event-related desynchronization (ERD), coherence, and graph-theoretical analysis to electroencephalographic (EEG) recordings, for comparing their respective descriptive power and complementarity. As it is well known, ERD provides an estimate of differences in power spectral densities between active (or task) and rest conditions, functional connectivity allows assessing the level of synchronization between the signals recorded at different scalp locations and graph analysis enables the estimation of the functional network features and topology. EEG activity was recorded on 10 subjects during left/right arm movements. The theta, alpha, and beta bands were considered. Conventional analysis showed a significant ERD in both alpha and beta bands over the sensorimotor cortex during the left arm movement and in beta band during the right arm movement, besides identifying the regions involved in the task, as it was expected. On the other hand, connectivity assessment highlighted that stronger connections are those that involved the motor regions for which graph analysis revealed reduced accessibility and an increased centrality during the movement. Jointly, the last two methods allow identifying the cortical areas that are functionally related in the active condition as well as the topological organization of the functional network. Results support the hypothesis that network analysis brings complementary knowledge with respect to established approaches for modeling motor-induced functional connectivity and could be profitably exploited in clinical contexts.
机译:功能连通性基于对拓扑局部神经生理反应动力学的评估,估计功能同质的大脑区域之间的时间同步性。这项研究的目的是通过应用不同的方法(即事件相关的去同步(ERD),相干性和脑电图(EEG)记录的图论分析)来研究大脑活动和功能连接的任务相关变化,以比较它们各自的描述性力量和互补性。众所周知,ERD提供了活动(或任务)和休息条件之间功率谱密度差异的估计,功能连接性允许评估在不同头皮位置记录的信号之间的同步水平,而图分析则可以估计功能性网络功能和拓扑。在左/右臂运动期间记录了10名受试者的EEG活动。考虑θ,α和β带。常规分析显示,在左臂运动过程中,感觉运动皮层的α和β谱带均显着ERD,在右臂运动过程中,β谱带均具有显着的ERD,除了可以预期地确定了参与该任务的区域。另一方面,连通性评估强调,更强的连接是涉及运动区域的那些连接,对于这些运动区域,图形分析显示运动过程中可访问性降低并且中心性增加。结合起来,后两种方法可以识别在活动状态下功能相关的皮质区域以及功能网络的拓扑结构。结果支持以下假设:网络分析带来了有关建模运动诱发功能连通性的既定方法的补充知识,并且可以在临床环境中有利地加以利用。

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