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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Brain Network Analysis From High-Resolution EEG Recordings by the Application of Theoretical Graph Indexes
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Brain Network Analysis From High-Resolution EEG Recordings by the Application of Theoretical Graph Indexes

机译:应用理论图索引从高分辨率脑电图记录进行脑网络分析

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The extraction of the salient characteristics from brain connectivity patterns is an open challenging topic since often the estimated cerebral networks have a relative large size and complex structure. Since a graph is a mathematical representation of a network, which is essentially reduced to nodes and connections between them, the use of a theoretical graph approach would extract significant information from the functional brain networks estimated through different neuroimaging techniques. The present work intends to support the development of the ldquobrain network analysis:rdquo a mathematical tool consisting in a body of indexes based on the graph theory able to improve the comprehension of the complex interactions within the brain. In the present work, we applied for demonstrative purpose some graph indexes to the time-varying networks estimated from a set of high-resolution EEG data in a group of healthy subjects during the performance of a motor task. The comparison with a random benchmark allowed extracting the significant properties of the estimated networks in the representative Alpha (7-12 Hz) band. Altogether, our findings aim at proving how the brain network analysis could reveal important information about the time-frequency dynamics of the functional cortical networks.
机译:从大脑连通性模式中提取显着特征是一个开放的挑战性课题,因为经常估计的大脑网络通常具有相对较大的规模和复杂的结构。由于图形是网络的数学表示形式,实际上可以简化为节点和节点之间的连接,因此,使用理论图方法可以从通过不同的神经成像技术估算的功能性大脑网络中提取大量信息。本工作旨在支持ldquobrain网络分析的发展:一种基于图论的,由一组索引组成的数学工具,能够提高对大脑内部复杂相互作用的理解。在当前的工作中,我们出于演示目的将一些图形索引应用于时变网络,该网络是根据一组健康受试者在执行运动任务时的一组高分辨率EEG数据估算的时变网络。与随机基准进行比较可以提取代表性Alpha(7-12 Hz)频带中估计网络的重要属性。总之,我们的发现旨在证明大脑网络分析如何揭示有关功能性皮质网络的时频动态的重要信息。

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