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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Synergetic and Redundant Information Flow Detected by Unnormalized Granger Causality: Application to Resting State fMRI
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Synergetic and Redundant Information Flow Detected by Unnormalized Granger Causality: Application to Resting State fMRI

机译:由非规范化的格兰杰因果关系检测的协同和冗余信息流:在静止状态fMRI中的应用

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摘要

Objectives: We develop a framework for the analysis of synergy and redundancy in the pattern of information flow between subsystems of a complex network. Methods: The presence of redundancy and/or synergy in multivariate time series data renders difficulty to estimate the neat flow of information from each driver variable to a given target. We show that adopting an unnormalized definition of Granger causality, one may put in evidence redundant multiplets of variables influencing the target by maximizing the total Granger causality to a given target, over all the possible partitions of the set of driving variables. Consequently, we introduce a pairwise index of synergy which is zero when two independent sources additively influence the future state of the system, differently from previous definitions of synergy. Results: We report the application of the proposed approach to resting state functional magnetic resonance imaging data from the Human Connectome Project showing that redundant pairs of regions arise mainly due to space contiguity and interhemispheric symmetry, while synergy occurs mainly between nonhomologous pairs of regions in opposite hemispheres. Conclusions: Redundancy and synergy, in healthy resting brains, display characteristic patterns, revealed by the proposed approach. Significance: The pairwise synergy index, here introduced, maps the informational character of the system at hand into a weighted complex network: the same approach can be applied to other complex systems whose normal state corresponds to a balance between redundant and synergetic circuits.
机译:目标:我们开发了一个框架,用于分析复杂网络子系统之间的信息流模式中的协同作用和冗余。方法:多元时间序列数据中冗余和/或协同作用的存在使估算从每个驱动变量到给定目标的整洁信息流变得困难。我们表明,采用非规范的格兰杰因果关系定义,可以通过在一组驱动变量的所有可能分区上最大化对给定目标的总格兰杰因果关系来证明变量冗余的多重影响目标。因此,与以前的协同作用定义不同,当两个独立来源加成影响系统的未来状态时,我们引入的协同作用成对指数为零。结果:我们报告了所提出的方法在人类Connectome项目的静止状态功能磁共振成像数据中的应用,结果表明,多余的区域对主要是由于空间连续性和半球间对称性而产生的,而协同作用主要发生在相对的非同源区域对之间半球。结论:在健康的静息大脑中,冗余和协同作用显示出特征性模式,这是该方法所揭示的。启示:这里介绍的成对协同指数将手头系统的信息特征映射到一个加权的复杂网络中:同样的方法可以应用于正常状态对应于冗余电路和协同电路之间平衡的其他复杂系统。

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