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Brain causality investigation based on FMRI images time series using dynamic causal modelling augmented by Granger Causality

机译:基于FMRI图像时间序列的脑因果关系研究,使用Granger因果关系增强的动态因果建模

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We propose a model that describes the interactions of several Brain Regions based on Functional Magnetic Resonance Imaging (FMRI) time series to make inferences about functional integration and segregation within the human brain. The method is demonstrated using dynamic causal modelling (DCM) augmented by Granger Causality (GC) using real data to show how such models are able to characterize interregional dependence. We extend estimating and reviewing designed model to characterize the interactions between regions and showing the direction of the signal over regions. A further benefit is to estimate the effective connectivity between these regions. All designs, estimates, reviews are implemented using Statistical Parametric Mapping (SPM) and GCCA toolbox, one of the free best software packages and published toolbox used to design the models and analysis for inferring about FMRI functional magnetic resonance imaging time series.
机译:我们提出了一个模型,该模型基于功能磁共振成像(FMRI)时间序列描述几个大脑区域的相互作用,以推断出人脑内的功能整合和分离。该方法通过使用真实数据的Granger因果关系(GC)进行增强的动态因果模型(DCM)进行了演示,以显示此类模型如何表征区域间依赖性。我们扩展了估计和审查设计的模型,以表征区域之间的相互作用并显示区域上信号的方向。另一个好处是估计这些区域之间的有效连接。所有设计,估计,审查均使用统计参数映射(SPM)和GCCA工具箱实现,该工具箱是免费的最佳软件包和已发布的工具箱之一,用于设计模型和分析以推断FMRI功能磁共振成像时间序列。

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