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关于相关性作为网络连通性度量的使用。

On the use of correlation as a measure of network connectivity.

机构信息

Melbourne Neuropsychiatry Centre, The University of Melbourne and Melbourne Health, Melbourne, Australia.

出版信息

Neuroimage. 2012 May 1;60(4):2096-106. doi: 10.1016/j.neuroimage.2012.02.001. Epub 2012 Feb 11.

Abstract

Numerous studies have demonstrated that brain networks derived from neuroimaging data have nontrivial topological features, such as small-world organization, modular structure and highly connected hubs. In these studies, the extent of connectivity between pairs of brain regions has often been measured using some form of statistical correlation. This article demonstrates that correlation as a measure of connectivity in and of itself gives rise to networks with non-random topological features. In particular, networks in which connectivity is measured using correlation are inherently more clustered than random networks, and as such are more likely to be small-world networks. Partial correlation as a measure of connectivity also gives rise to networks with non-random topological features. Partial correlation networks are inherently less clustered than random networks. Network measures in correlation networks should be benchmarked against null networks that respect the topological structure induced by correlation measurements. Prevalently used random rewiring algorithms do not yield appropriate null networks for some network measures. Null networks are proposed to explicitly normalize for the inherent topological structure found in correlation networks, resulting in more conservative estimates of small-world organization. A number of steps may be needed to normalize each network measure individually and control for distinct features (e.g. degree distribution). The main conclusion of this article is that correlation can and should be used to measure connectivity, however appropriate null networks should be used to benchmark network measures in correlation networks.

摘要

许多研究表明,从神经影像学数据得出的大脑网络具有重要的拓扑特征,例如小世界组织、模块结构和高度连接的枢纽。在这些研究中,通常使用某种形式的统计相关性来测量脑区之间的连通程度。本文表明,相关性作为一种连接性的度量本身就会产生具有非随机拓扑特征的网络。特别是,使用相关性来测量连通性的网络比随机网络更具有聚类性,因此更有可能是小世界网络。作为连接性度量的偏相关性也会产生具有非随机拓扑特征的网络。与随机网络相比,偏相关网络的聚类性较低。相关性网络中的网络度量应该与尊重相关性测量所诱导的拓扑结构的空网络进行基准测试。常用的随机重连算法并不能为某些网络度量生成适当的空网络。提出空网络是为了明确归一化相关性网络中发现的固有拓扑结构,从而对小世界组织进行更保守的估计。可能需要采取一些步骤来单独归一化每个网络度量,并控制不同的特征(例如,度分布)。本文的主要结论是,相关性可以并且应该用于测量连通性,但是应该使用适当的空网络来基准相关性网络中的网络度量。

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