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基于节点阈值的静息态功能磁共振成像连接网络的抗碎裂。

Anti-Fragmentation of Resting-State Functional Magnetic Resonance Imaging Connectivity Networks with Node-Wise Thresholding.

机构信息

Department of Psychology, The University of Texas at Austin , Austin, Texas.

出版信息

Brain Connect. 2017 Oct;7(8):504-514. doi: 10.1089/brain.2017.0523.

Abstract

Functional magnetic resonance imaging (fMRI)-based functional connectivity networks are often constructed by thresholding a correlation matrix of nodal time courses. In a typical thresholding approach known as hard thresholding, a single threshold is applied to the entire correlation matrix to identify edges representing superthreshold correlations. However, hard thresholding is known to produce a network with uneven allocation of edges, resulting in a fragmented network with a large number of disconnected nodes. It is suggested that an alternative network thresholding approach, node-wise thresholding, is able to overcome these problems. To examine this, various network characteristics were compared between networks constructed by hard thresholding and node-wise thresholding, with publicly available resting-state fMRI data from 123 healthy young subjects. It was found that networks constructed with hard thresholding included a large number of disconnected nodes, while such network fragmentation was not observed in networks formed with node-wise thresholding. Moreover, in hard thresholding networks, fragmentized modular organization was observed, characterized by a large number of small modules. On the contrary, such modular fragmentation was not observed in node-wise thresholding networks, producing modules that were robust at any threshold and highly consistent across subjects. These results indicate that node-wise thresholding may lead to less fragmented networks. Moreover, node-wise thresholding enables robust characterization of network properties without much influence by the selection of a threshold.

摘要

基于功能磁共振成像(fMRI)的功能连接网络通常通过对节点时间序列的相关矩阵进行阈值处理来构建。在一种称为硬阈值的典型阈值方法中,对整个相关矩阵应用单个阈值以识别表示超阈值相关的边缘。然而,硬阈值已知会产生边缘分配不均匀的网络,从而导致具有大量不连通节点的碎片化网络。有人提出,替代的网络阈值方法,即节点阈值,可以克服这些问题。为了检验这一点,使用来自 123 名健康年轻受试者的公开静息态 fMRI 数据,比较了通过硬阈值和节点阈值构建的网络之间的各种网络特征。结果发现,用硬阈值构建的网络包含大量不连通的节点,而用节点阈值形成的网络中则没有观察到这种网络碎片化。此外,在硬阈值网络中观察到了碎片化的模块组织,其特征是存在大量小模块。相反,在节点阈值网络中没有观察到这种模块化碎片化,产生了在任何阈值下都稳健且在受试者之间高度一致的模块。这些结果表明,节点阈值可能会导致网络碎片化程度降低。此外,节点阈值可以在不受阈值选择影响的情况下,对网络属性进行稳健的特征描述。

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