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Moment to moment variability in functional brain networks during cognitive activity in EEG data

机译:脑电数据中认知活动过程中功能性大脑网络的矩矩变化

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摘要

Functional brain networks (FBNs) are gaining increasing attention in computational neuroscience due to their ability to reveal dynamic interdependencies between brain regions. The dynamics of such networks during cognitive activity between stimulus and response using multi-channel electroencephalogram (EEG), recorded from 16 healthy human participants are explored in this research. Successive EEG segments of 500 ms duration starting from the onset of cognitive stimulation have been used to analyze and understand the cognitive dynamics. The approach employs a combination of signal processing techniques, nonlinear statistical measures and graph-theoretical analysis. The efficacy of this approach in detecting and tracking cognitive load induced changes in EEG data is clearly demonstrated using graph metrics. It is revealed that most cognitive activity occurs within approximately 500 ms of the stimulus presentation in addition to temporal variability in the FBNs. It is shown that mutual information (MI), a nonlinear measure, produces good correlations between the EEG channels thus enabling the construction of FBNs which are sensitive to cognitive load induced changes in EEG. Analyses of the dynamics of FBNs and the visualization approach reveal hard to detect subtle changes in cognitive function and hence may lead to a better understanding of cognitive processing in the brain. The techniques exploited have the potential to detect human cognitive dysfunction (impairments).
机译:功能性大脑网络(FBNs)由于能够揭示大脑区域之间的动态相互依赖性,因此越来越受到计算神经科学的关注。在这项研究中,探索了使用16多名健康人记录的多通道脑电图(EEG)在刺激和反应之间的认知活动期间这种网络的动力学。从认知刺激发作开始的持续500毫秒的连续EEG段已用于分析和理解认知动力学。该方法结合了信号处理技术,非线性统计量度和图论分析功能。使用图形指标清楚地证明了这种方法在检测和跟踪认知负荷诱发的脑电数据变化中的功效。据揭示,除了FBNs的时间变异性外,大多数认知活动都在刺激表现的大约500毫秒内发生。结果表明,互为信息(MI)是一种非线性度量,可在EEG通道之间产生良好的相关性,从而能够构建对认知负荷诱发的EEG变化敏感的FBN。 FBNs动力学和可视化方法的分析表明,很难检测到认知功能的细微变化,因此可能会更好地理解大脑的认知过程。开发的技术具有检测人类认知功能障碍(障碍)的潜力。

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