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Characterization of Mental States through Node Connectivity between Brain Signals

机译:通过脑信号之间的节点连通性表征精神状态

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Discriminating mental states from brain signals is crucial for many applications in cognitive and clinical neuroscience. Most of the studies relied on the feature extraction from the activity of single brain areas, thus neglecting the potential contribution of their functional coupling, or connectivity. Here, we consider spectral coherence and imaginary coherence to infer brain connectivity networks from electroencephalographic (EEG) signals recorded during motor imagery and resting states in a group of healthy subjects. By using a graph theoretic approach, we then extract the weighted node degree from each network and evaluate its ability to discriminate the two mental states as a function of the number of available observations. The obtained results show that the features extracted from spectral coherence networks outperform those obtained from imaginary coherence in terms of significant difference, neurophysiological interpretation and reliability with fewer observations. Taken together, these findings suggest that graph algebraic descriptors of brain connectivity networks can be further explored to classify mental states.
机译:从大脑信号中区分精神状态对于认知和临床神经科学中的许多应用至关重要。大多数研究都依赖于从单脑区域活动中提取特征,从而忽略了它们的功能耦合或连通性的潜在贡献。在这里,我们考虑频谱相干性和虚相干性,以从一组健康受试者的运动图像和静止状态期间记录的脑电图(EEG)信号推断出大脑连接网络。通过使用图论方法,我们然后从每个网络中提取加权节点度,并评估其根据可用观察次数区分两种心理状态的能力。所得结果表明,从频谱相干网络中提取的特征在显着性差异,神经生理学解释和可靠性方面(从较少的观察结果来看)优于从虚构相干获得的特征。综上所述,这些发现表明,可以进一步探索大脑连接网络的图代数描述符来对精神状态进行分类。

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