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Complex Network Analysis of Experimental EEG Signals for Decoding Brain Cognitive State

机译:解码脑认知状态的实验脑电图信号复杂网络分析

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摘要

Depicting the relationship between brain cognitive state and task difficulty level constitutes a challenging problem of significant importance. In order to probe it, we design an experiment to gather EEG data from mental arithmetic task under different difficulty levels. We construct brain complex networks using a complex network method and information entropy theory. We then employ weighted clustering coefficient to characterize the networks generated from different brain cognitive states. The results show that with the increase in task difficulty level, the mean weighted clustering coefficients show a decrease. This is due to the lack of coordination of brain activity and the low efficiency of the network organization caused by the increase in task difficulty. In addition, we calculate the permutation entropy from the signals of each channel EEG signals to support the findings from our network analysis. These findings render our method particularly useful for depicting the relationship between brain cognitive state and difficulty level.
机译:描绘大脑认知状态与任务难度之间的关系构成了一个有挑战性的重要性问题。为了探测它,我们设计了一个实验,以在不同难度水平下从心理算术任务收集EEG数据。我们使用复杂的网络方法和信息熵理论构建大脑复杂网络。然后,我们采用加权聚类系数来表征从不同脑认知状态生成的网络。结果表明,随着任务难度的增加,平均加权聚类系数显示出降低。这是由于缺乏大脑活动的协调和网络组织的低效率因任务难度的增加而引起的。此外,我们从每个通道EEG信号的信号计算置换熵,以支持我们的网络分析的发现。这些发现使我们的方法特别适用于描绘大脑认知状态和难度水平之间的关系。

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