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A new method for automatically modelling brain functional networks

机译:一种自动建模大脑功能网络的新方法

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Traditional methods for constructing brain functional network often need to artificially set a certain threshold, which requires professional and technical personnel to do this work. In order to overcome this deficiency, this study proposed a new method that can automatically construct brain functional network from electroencephalogram (EEG) data, based on positional relations among the vertices and network motif theories. To verify this method, resting state and task state EEG data were converted into brain functional networks with both the new method and traditional methods to explore the discrepancies of network features. The results showed that the mean physical distance increased with the increasing of network edges, evidently suggesting that higher weights of the edges have shorter physical distances, which is the direct model foundation. Besides, consistent results of network features were obtained among these methods, especially in weighted networks, indicating that this new method had the same capacity in accurately characterizing network features compared with the traditional methods. Moreover, this new method can efficiently distinguish the networks that have big differences in the weights, if the network has higher weights, the corresponding network would have more edges, which is in line with one of the traditional methods that using a threshold of weight. We also applied this model in mental fatigue detection, and the results of network characteristics, which obtained from the model and traditional method, have the same variation tendency, approximate values, and similar statistical differences, demonstrating that the proposed model can replace the traditional methods in differentiating similar brain functional states. The new method have potential applications in real-time brain functional networks construction. (C) 2018 Elsevier Ltd. All rights reserved.
机译:传统的构建大脑功能网络的方法通常需要人为地设置一定的阈值,这需要专业技术人员来完成这项工作。为了克服这一缺陷,本研究提出了一种新方法,该方法可以基于脑电图(EEG)的顶点之间的位置关系和网络主题理论自动构建脑功能网络。为了验证该方法,将静止状态和任务状态的脑电数据分别通过新方法和传统方法转换为脑功能网络,以探索网络特征的差异。结果表明,平均物理距离随着网络边缘的增加而增加,这表明边缘的权重越高,物理距离越短,这是直接的模型基础。此外,在这些方法中,尤其是在加权网络中,获得了一致的网络特征结果,这表明与传统方法相比,该新方法具有准确表征网络特征的能力。而且,该新方法可以有效地区分权重差异较大的网络,如果权重较高,则对应的网络将具有更多的边缘,这与使用权重阈值的传统方法之一是一致的。我们还将这个模型应用于精神疲劳检测中,从模型和传统方法获得的网络特征结果具有相同的变化趋势,近似值和相似的统计差异,表明所提出的模型可以替代传统方法区分相似的大脑功能状态。该新方法在实时脑功能网络构建中具有潜在的应用。 (C)2018 Elsevier Ltd.保留所有权利。

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