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均值-方差关系揭示了功能磁共振成像中动态脑连接分析的两种可能策略。

The mean-variance relationship reveals two possible strategies for dynamic brain connectivity analysis in fMRI.

作者信息

Thompson William H, Fransson Peter

机构信息

Department of Clinical Neuroscience, Karolinska Institute Stockholm, Sweden.

出版信息

Front Hum Neurosci. 2015 Jul 14;9:398. doi: 10.3389/fnhum.2015.00398. eCollection 2015.

Abstract

When studying brain connectivity using fMRI, signal intensity time-series are typically correlated with each other in time to compute estimates of the degree of interaction between different brain regions and/or networks. In the static connectivity case, the problem of defining which connections that should be considered significant in the analysis can be addressed in a rather straightforward manner by a statistical thresholding that is based on the magnitude of the correlation coefficients. More recently, interest has come to focus on the dynamical aspects of brain connectivity and the problem of deciding which brain connections that are to be considered relevant in the context of dynamical changes in connectivity provides further options. Since we, in the dynamical case, are interested in changes in connectivity over time, the variance of the correlation time-series becomes a relevant parameter. In this study, we discuss the relationship between the mean and variance of brain connectivity time-series and show that by studying the relation between them, two conceptually different strategies to analyze dynamic functional brain connectivity become available. Using resting-state fMRI data from a cohort of 46 subjects, we show that the mean of fMRI connectivity time-series scales negatively with its variance. This finding leads to the suggestion that magnitude- versus variance-based thresholding strategies will induce different results in studies of dynamic functional brain connectivity. Our assertion is exemplified by showing that the magnitude-based strategy is more sensitive to within-resting-state network (RSN) connectivity compared to between-RSN connectivity whereas the opposite holds true for a variance-based analysis strategy. The implications of our findings for dynamical functional brain connectivity studies are discussed.

摘要

在使用功能磁共振成像(fMRI)研究大脑连通性时,信号强度时间序列通常在时间上相互关联,以计算不同脑区和/或网络之间相互作用程度的估计值。在静态连通性的情况下,通过基于相关系数大小的统计阈值化,可以以相当直接的方式解决在分析中确定哪些连接应被视为显著连接的问题。最近,人们的兴趣开始集中在大脑连通性的动态方面,而在连通性动态变化的背景下决定哪些大脑连接应被视为相关的问题提供了更多选择。由于在动态情况下,我们关注的是连通性随时间的变化,相关时间序列的方差就成为一个相关参数。在本研究中,我们讨论了大脑连通性时间序列的均值和方差之间的关系,并表明通过研究它们之间的关系,可以获得两种概念上不同的分析动态功能脑连通性的策略。使用来自46名受试者队列的静息态fMRI数据,我们表明fMRI连通性时间序列的均值与其方差呈负相关。这一发现表明,在动态功能脑连通性研究中,基于幅度与基于方差的阈值化策略将产生不同的结果。我们通过表明基于幅度的策略与基于静息态网络(RSN)之间的连通性相比,对RSN内部的连通性更敏感,而基于方差的分析策略则相反,来例证我们的观点。我们讨论了这些发现对动态功能脑连通性研究的意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1942/4500903/ddb0133984b3/fnhum-09-00398-g001.jpg

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