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整合静息脑活动的不同方面:基于功能磁共振成像的静息态网络中脑电图特征综述

Integrating Different Aspects of Resting Brain Activity: A Review of Electroencephalographic Signatures in Resting State Networks Derived from Functional Magnetic Resonance Imaging.

作者信息

Nishida Keiichiro, Razavi Nadja, Jann Kay, Yoshimura Masafumi, Dierks Thomas, Kinoshita Toshihiko, Koenig Thomas

出版信息

Neuropsychobiology. 2015;71(1):6-16. doi: 10.1159/000363342. Epub 2015 Feb 27.

DOI:10.1159/000363342
PMID:25766483
Abstract

Electroencephalography (EEG) is an established measure in the field of brain resting state with a range of quantitative methods (qEEG) that yield unique information about neuronal activation and synchronization. Meanwhile, in the last decade, functional magnetic resonance imaging (fMRI) studies have revealed the existence of more than a dozen resting state networks (RSNs), and combined qEEG and fMRI have allowed us to gain understanding about the relationship of qEEG and fMRI-RSNs. However, the overall picture is less clear because there is no a priori hypothesis about which EEG features correspond well to fMRI-RSNs. We reviewed the associations of several types of qEEG features to four RSNs considered as neurocognitive systems central for higher brain processes: the default mode network, dorsal and ventral frontoparietal networks, and the salience network. We could identify 12 papers correlating qEEG and RSNs in adult human subjects and employing a simultaneous design under a no-task resting state condition. A systematic overview investigates which qEEG features replicably relate to the chosen RSNs. This review article leads to the conclusion that spatially delimited θ and whole/local α may be the most promising measures, but the time domain methods add important additional information. © 2015 S. Karger AG, Basel.

摘要

脑电图(EEG)是脑静息状态领域一种既定的测量方法,有一系列定量方法(定量脑电图,qEEG),能产生有关神经元激活和同步化的独特信息。同时,在过去十年中,功能磁共振成像(fMRI)研究揭示了十多个静息状态网络(RSNs)的存在,qEEG与fMRI相结合使我们能够了解qEEG与fMRI-RSNs之间的关系。然而,总体情况尚不清楚,因为对于哪些脑电图特征与fMRI-RSNs有良好对应关系尚无先验假设。我们回顾了几种类型的qEEG特征与四个被视为对高级脑功能至关重要的神经认知系统的RSNs之间的关联:默认模式网络、背侧和腹侧额顶叶网络以及突显网络。我们能够找到12篇关于成年人类受试者qEEG与RSNs相关性的论文,这些研究采用了无任务静息状态下的同步设计。一项系统综述调查了哪些qEEG特征与所选RSNs有可重复的关联。这篇综述文章得出结论,空间限定的θ波和整体/局部α波可能是最有前景的测量方法,但时域方法也能提供重要的额外信息。© 2〇15 S. Karger AG,巴塞尔。

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