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分析 Granger 因果关系和动态因果建模的连接性。

Analysing connectivity with Granger causality and dynamic causal modelling.

机构信息

The Wellcome Trust Centre for Neuroimaging, University College London, Queen Square, London WC1N 3BG, UK.

出版信息

Curr Opin Neurobiol. 2013 Apr;23(2):172-8. doi: 10.1016/j.conb.2012.11.010. Epub 2012 Dec 21.

Abstract

This review considers state-of-the-art analyses of functional integration in neuronal macrocircuits. We focus on detecting and estimating directed connectivity in neuronal networks using Granger causality (GC) and dynamic causal modelling (DCM). These approaches are considered in the context of functional segregation and integration and--within functional integration--the distinction between functional and effective connectivity. We review recent developments that have enjoyed a rapid uptake in the discovery and quantification of functional brain architectures. GC and DCM have distinct and complementary ambitions that are usefully considered in relation to the detection of functional connectivity and the identification of models of effective connectivity. We highlight the basic ideas upon which they are grounded, provide a comparative evaluation and point to some outstanding issues.

摘要

这篇综述考虑了神经元巨网络中功能整合的最新分析方法。我们专注于使用格兰杰因果关系(GC)和动态因果建模(DCM)来检测和估计神经元网络中的有向连接。这些方法在功能分离和整合的背景下进行考虑,并且在功能整合内,区分功能连接和有效连接。我们回顾了最近的发展,这些发展在发现和量化功能脑结构方面得到了快速应用。GC 和 DCM 具有不同但互补的目标,在检测功能连接和识别有效连接模型时,它们都很有用。我们强调了它们所基于的基本思想,提供了比较评估,并指出了一些悬而未决的问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c152/3925802/2f13fce9b878/gr1.jpg

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