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静息态下 MEG 的功能连接网络有多可靠?

How reliable are the functional connectivity networks of MEG in resting states?

机构信息

MEG Center, Seoul National University Hospital, Seoul National University, Seoul, Republic of Korea.

出版信息

J Neurophysiol. 2011 Dec;106(6):2888-95. doi: 10.1152/jn.00335.2011. Epub 2011 Aug 31.

DOI:10.1152/jn.00335.2011
PMID:21880941
Abstract

We investigated the reliability of nodal network metrics of functional connectivity (FC) networks of magnetoencephalography (MEG) covering the whole brain at the sensor level in the eyes-closed (EC) and eyes-open (EO) resting states. Mutual information (MI) was employed as a measure of FC between sensors in theta, alpha, beta, and gamma frequency bands of MEG signals. MI matrices were assessed with three nodal network metrics, i.e., nodal degree (Dnodal), nodal efficiency (Enodal), and betweenness centrality (normBC). Intraclass correlation (ICC) values were calculated as a measure of reliability. We observed that the test-retest reliabilities of the resting states ranged from a poor to good level depending on the bands and metrics used for defining the nodal centrality. The dominant alpha-band FC network changes were the salient features of the state-related FC changes. The FC networks in the EO resting state showed greater reliability when assessed by Dnodal (maximum mean ICC = 0.655) and Enodal (maximum mean ICC = 0.604) metrics. The gamma-band FC network was less reliable than the theta, alpha, and beta networks across the nodal network metrics. However, the sensor-wise ICC values for the nodal centrality metrics were not uniformly distributed, that is, some sensors had high reliability. This study provides a sense of how the nodal centralities of the human resting state MEG are distributed at the sensor level and how reliable they are. It also provides a fundamental scientific background for continued examination of the resting state of human MEG.

摘要

我们研究了在闭眼(EC)和睁眼(EO)静息状态下,整个大脑的脑磁图(MEG)功能连接(FC)网络的节点网络度量的可靠性。互信息(MI)被用作 MEG 信号的θ、α、β和γ频带中传感器之间 FC 的度量。MI 矩阵使用三个节点网络度量进行评估,即节点度(Dnodal)、节点效率(Enodal)和介数中心性(normBC)。内类相关(ICC)值被计算为可靠性的度量。我们观察到,根据用于定义节点中心性的频段和度量,静息状态的测试-重测可靠性从较差到较好不等。主导的α频带 FC 网络变化是状态相关 FC 变化的显著特征。EO 静息状态的 FC 网络通过 Dnodal(最大平均 ICC = 0.655)和 Enodal(最大平均 ICC = 0.604)度量评估时具有更高的可靠性。与θ、α和β频段相比,γ频段的 FC 网络可靠性较低。然而,节点中心性度量的传感器间 ICC 值分布不均匀,即一些传感器具有较高的可靠性。本研究提供了一种感觉,即人类静息状态 MEG 的节点中心性如何在传感器水平上分布以及它们的可靠性如何。它还为继续检查人类 MEG 的静息状态提供了一个基本的科学背景。

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