大规模脑网络的定向交互:介绍一种估计静息状态有效连接MRI的新方法

Nan Xu, R. N. Spreng, P. Doerschuk
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引用次数: 3

摘要

静息状态功能MRI (rs fMRI)被广泛应用于对人脑网络的无创研究。通过计算特定兴趣区域(roi)中血氧水平依赖(BOLD)信号之间的标准相关性来估计网络功能连通性。然而,标准相关性不能表征区域间的因果关系和信息流的方向,而这是表征网络的重要因素。在这里,我们使用因果线性时不变模型,通过信息准则估计脉冲响应持续时间,来描述roi之间的有效连通性。为此,我们将BOLD信号之间的标准相关性替换为BOLD信号与通过该BOLD信号模型进行的预测之间的相关性。然后在网络分析中使用预测相关性,类似于使用标准相关性。我们的结果包括因果关系信息、信息流方向和信息流延迟的可能性。这种方法复制了先前用标准相关性观察到的人类大脑的局部和分布式网络架构,并为组成这些网络的区域的定向交互提供了新的见解。
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Directed interactivity of large-scale brain networks: Introducing a new method for estimating resting-state effective connectivity MRI
Resting-state functional MRI (rs fMRI) is widely used to non-invasively study human brain networks. Network functional connectivity is estimated by calculating the standard correlation between blood-oxygen-level dependent (BOLD) signals in specific regions of interests (ROIs). However, standard correlation fails to characterize the causality and the direction of information flow between regions, which are important factors in characterizing a network. Here, we use causal linear time-invariant models, with the impulse response duration estimated by Information Criteria, to describe the effective connectivity between ROIs. To do so, we replace the standard correlation between BOLD signals with a correlation between a BOLD signal and a prediction via the model of that BOLD signal. Prediction correlation is then used in a network analysis similar to that used with standard correlation. Our results include the causality information, the direction of information flow, and the possibility of delays in information flow. This approach replicates the local and distributed network architecture of the human brain previously observed with standard correlations, as well as providing novel insight into the directed interactivity of regions comprising these networks.
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