Biomedical Engineering, Yale University School of Medicine, United States.
Interdepartmental Neuroscience Program, Yale University School of Medicine, United States; MD/PhD program, Yale University School of Medicine, United States.
Neuroimage. 2021 Oct 15;240:118332. doi: 10.1016/j.neuroimage.2021.118332. Epub 2021 Jul 2.
Interest in understanding the organization of the brain has led to the application of graph theory methods across a wide array of functional connectivity studies. The fundamental basis of a graph is the node. Recent work has shown that functional nodes reconfigure with brain state. To date, all graph theory studies of functional connectivity in the brain have used fixed nodes. Here, using fixed-, group-, state-specific, and individualized- parcellations for defining nodes, we demonstrate that functional connectivity changes within the nodes significantly influence the findings at the network level. In some cases, state- or group-dependent changes of the sort typically reported do not persist, while in others, changes are only observed when node reconfigurations are considered. The findings suggest that graph theory investigations into connectivity contrasts between brain states and/or groups should consider the influence of voxel-level changes that lead to node reconfigurations; the fundamental building block of a graph.
人们对于理解大脑组织结构的兴趣,促使图论方法在广泛的功能连接研究中得到应用。图的基本组成部分是节点。最近的研究表明,功能节点会随着大脑状态而重新配置。迄今为止,大脑功能连接的所有图论研究都使用固定节点。在这里,我们使用固定、群组、特定状态和个体化分区来定义节点,结果表明,节点内的功能连接变化会显著影响网络层面的发现。在某些情况下,通常报告的那种与状态或群组相关的变化不会持续存在,而在其他情况下,只有在考虑节点重新配置时才会观察到变化。这些发现表明,对大脑状态和/或群组之间连接对比的图论研究应该考虑到导致节点重新配置的体素级变化的影响;这是图的基本构建块。