R. Pascual-Marqui, D. Lehmann, P. Faber, P. Milz, K. Kochi, M. Yoshimura, K. Nishida, T. Isotani, T. Kinoshita
{"title":"The resting microstate networks (RMN): cortical distributions, dynamics, and frequency specific information flow","authors":"R. Pascual-Marqui, D. Lehmann, P. Faber, P. Milz, K. Kochi, M. Yoshimura, K. Nishida, T. Isotani, T. Kinoshita","doi":"10.5167/UZH-100596","DOIUrl":null,"url":null,"abstract":"A brain microstate is characterized by a unique, fixed spatial distribution of electrically active neurons with time varying amplitude. It is hypothesized that a microstate implements a functional/physiological state of the brain during which specific neural computations are performed. Based on this hypothesis, brain electrical activity is modeled as a time sequence of non-overlapping microstates with variable, finite durations (Lehmann and Skrandies 1980, 1984; Lehmann et al 1987). In this study, EEG recordings from 109 participants during eyes closed resting condition are modeled with four microstates. In a first part, a new confirmatory statistics method is introduced for the determination of the cortical distributions of electric neuronal activity that generate each microstate. All microstates have common posterior cingulate generators, while three microstates additionally include activity in the left occipital/parietal, right occipital/parietal, and anterior cingulate cortices. This appears to be a fragmented version of the metabolically (PET/fMRI) computed default mode network (DMN), supporting the notion that these four regions activate sequentially at high time resolution, and that slow metabolic imaging corresponds to a low-pass filtered version. In the second part of this study, the microstate amplitude time series are used as the basis for estimating the strength, directionality, and spectral characteristics (i.e., which oscillations are preferentially transmitted) of the connections that are mediated by the microstate transitions. The results show that the posterior cingulate is an important hub, sending alpha and beta oscillatory information to all other microstate generator regions. Interestingly, beyond alpha, beta oscillations are essential in the maintenance of the brain during resting state.","PeriodicalId":298664,"journal":{"name":"arXiv: Neurons and Cognition","volume":"312 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2014-11-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"61","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv: Neurons and Cognition","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.5167/UZH-100596","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 61
Abstract
A brain microstate is characterized by a unique, fixed spatial distribution of electrically active neurons with time varying amplitude. It is hypothesized that a microstate implements a functional/physiological state of the brain during which specific neural computations are performed. Based on this hypothesis, brain electrical activity is modeled as a time sequence of non-overlapping microstates with variable, finite durations (Lehmann and Skrandies 1980, 1984; Lehmann et al 1987). In this study, EEG recordings from 109 participants during eyes closed resting condition are modeled with four microstates. In a first part, a new confirmatory statistics method is introduced for the determination of the cortical distributions of electric neuronal activity that generate each microstate. All microstates have common posterior cingulate generators, while three microstates additionally include activity in the left occipital/parietal, right occipital/parietal, and anterior cingulate cortices. This appears to be a fragmented version of the metabolically (PET/fMRI) computed default mode network (DMN), supporting the notion that these four regions activate sequentially at high time resolution, and that slow metabolic imaging corresponds to a low-pass filtered version. In the second part of this study, the microstate amplitude time series are used as the basis for estimating the strength, directionality, and spectral characteristics (i.e., which oscillations are preferentially transmitted) of the connections that are mediated by the microstate transitions. The results show that the posterior cingulate is an important hub, sending alpha and beta oscillatory information to all other microstate generator regions. Interestingly, beyond alpha, beta oscillations are essential in the maintenance of the brain during resting state.
脑微状态的特征是具有时变振幅的电活动神经元具有独特的、固定的空间分布。假设微状态实现了大脑的功能/生理状态,在此期间执行特定的神经计算。基于这一假设,脑电活动被建模为具有可变、有限持续时间的非重叠微观状态的时间序列(Lehmann和Skrandies 1980, 1984;Lehmann et al . 1987)。在本研究中,109名参与者在闭眼休息状态下的脑电图记录被建模为四种微观状态。在第一部分中,介绍了一种新的验证性统计方法,用于确定产生每种微状态的电神经元活动的皮层分布。所有微状态都有共同的后扣带产生器,而另外三种微状态包括左枕/顶叶皮层、右枕/顶叶皮层和前扣带皮层的活动。这似乎是代谢(PET/fMRI)计算的默认模式网络(DMN)的碎片化版本,支持这四个区域在高时间分辨率下顺序激活的概念,而慢代谢成像对应于低通滤波版本。在本研究的第二部分中,将微态振幅时间序列作为估计由微态转换介导的连接的强度、方向性和频谱特征(即哪些振荡优先传播)的基础。结果表明,后扣带是一个重要的中枢,将α和β振荡信息发送到所有其他微态产生区域。有趣的是,除了α振荡外,β振荡对大脑在静息状态下的维持也是必不可少的。