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Network Scaling Effects in Graph Analytic Studies of Human Resting-State fMRI Data

机译:人类静息状态fMRI数据图分析研究中的网络缩放效应

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摘要

Graph analysis has become an increasingly popular tool for characterizing topological properties of brain connectivity networks. Within this approach, the brain is modeled as a graph comprising N nodes connected by M edges. In functional magnetic resonance imaging (fMRI) studies, the nodes typically represent brain regions and the edges some measure of interaction between them. These nodes are commonly defined using a variety of regional parcellation templates, which can vary both in the volume sampled by each region, and the number of regions parcellated. Here, we sought to investigate how such variations in parcellation templates affect key graph analytic measures of functional brain organization using resting-state fMRI in 30 healthy volunteers. Seven different parcellation resolutions (84, 91, 230, 438, 890, 1314, and 4320 regions) were investigated. We found that gross inferences regarding network topology, such as whether the brain is small-world or scale-free, were robust to the template used, but that both absolute values of, and individual differences in, specific parameters such as path length, clustering, small-worldness, and degree distribution descriptors varied considerably across the resolutions studied. These findings underscore the need to consider the effect that a specific parcellation approach has on graph analytic findings in human fMRI studies, and indicate that results obtained using different templates may not be directly comparable.
机译:图分析已成为表征大脑连接网络拓扑特性的一种越来越流行的工具。在这种方法中,大脑被建模为一个图形,该图形包含由M条边连接的N个节点。在功能磁共振成像(fMRI)研究中,这些结点通常代表大脑区域和边缘,它们之间有一些相互作用。通常使用各种区域分割模板来定义这些节点,这些模板可以在每个区域采样的体积以及分割区域的数量上有所变化。在这里,我们试图研究如何利用30例健康志愿者的静息态功能磁共振成像(spMRI)来分析这些模板变化如何影响功能性大脑组织的关键图分析方法。研究了七个不同的拆分分辨率(84、91、230、438、890、1314和4320个区域)。我们发现,有关网络拓扑结构的粗略推论(例如大脑是小世界还是无尺度的)对于所使用的模板是可靠的,但是特定参数(例如路径长度,聚类)的绝对值和个体差异都可以,小世界和度分布描述符在所研究的分辨率之间差异很大。这些发现强调了需要考虑一种特定的细胞分裂方法对人类fMRI研究中图分析结果的影响,并表明使用不同模板获得的结果可能无法直接比较。

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