Black Dog Institute and School of Psychiatry, University of New South Wales, Sydney, Australia.
Neuroimage. 2011 Jun 15;56(4):2068-79. doi: 10.1016/j.neuroimage.2011.03.069. Epub 2011 Apr 1.
Complex functional brain networks are large networks of brain regions and functional brain connections. Statistical characterizations of these networks aim to quantify global and local properties of brain activity with a small number of network measures. Important functional network measures include measures of modularity (measures of the goodness with which a network is optimally partitioned into functional subgroups) and measures of centrality (measures of the functional influence of individual brain regions). Characterizations of functional networks are increasing in popularity, but are associated with several important methodological problems. These problems include the inability to characterize densely connected and weighted functional networks, the neglect of degenerate topologically distinct high-modularity partitions of these networks, and the absence of a network null model for testing hypotheses of association between observed nontrivial network properties and simple weighted connectivity properties. In this study we describe a set of methods to overcome these problems. Specifically, we generalize measures of modularity and centrality to fully connected and weighted complex networks, describe the detection of degenerate high-modularity partitions of these networks, and introduce a weighted-connectivity null model of these networks. We illustrate our methods by demonstrating degenerate high-modularity partitions and strong correlations between two complementary measures of centrality in resting-state functional magnetic resonance imaging (MRI) networks from the 1000 Functional Connectomes Project, an open-access repository of resting-state functional MRI datasets. Our methods may allow more sound and reliable characterizations and comparisons of functional brain networks across conditions and subjects.
复杂的功能大脑网络是大脑区域和功能大脑连接的大型网络。这些网络的统计特征旨在通过少量的网络度量来量化大脑活动的全局和局部特性。重要的功能网络度量包括模块性度量(衡量网络被最优地划分为功能子组的程度)和中心性度量(衡量单个大脑区域的功能影响的程度)。功能网络的描述越来越受欢迎,但也存在几个重要的方法学问题。这些问题包括无法描述密集连接和加权功能网络、忽略这些网络退化拓扑上不同的高模块性分区以及缺乏网络零模型来检验观察到的非平凡网络特性与简单加权连接特性之间关联的假设。在这项研究中,我们描述了一组克服这些问题的方法。具体来说,我们将模块性和中心性度量推广到全连接和加权复杂网络,描述这些网络退化拓扑上不同的高模块性分区的检测,并引入这些网络的加权连接零模型。我们通过演示 1000 个功能连接组项目中静息态功能磁共振成像(MRI)网络的退化高模块性分区和两个互补的中心性度量之间的强相关性来说明我们的方法,该项目是静息态功能 MRI 数据集的开放访问存储库。我们的方法可能允许更合理和可靠地描述和比较不同条件和对象的功能大脑网络。