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Resting-state networks show dynamic functional connectivity in awake humans and anesthetized macaques

机译:静止状态网络在清醒的人类和麻醉的猕猴中显示出动态的功能连通性

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Characterization of large-scale brain networks using blood-oxygenation-level-dependent functional magnetic resonance imaging is typically based on the assumption of network stationarity across the duration of scan. Recent studies in humans have questioned this assumption by showing that within-network functional connectivity fluctuates on the order of seconds to minutes. Time-varying profiles of resting-state networks (RSNs) may relate to spontaneously shifting, electrophysiological network states and are thus mechanistically of particular importance. However, because these studies acquired data from awake subjects, the fluctuating connectivity could reflect various forms of conscious brain processing such as passive mind wandering, active monitoring, memory formation, or changes in attention and arousal during image acquisition. Here, we characterize RSN dynamics of anesthetized macaques that control for these accounts, and compare them to awake human subjects. We find that functional connectivity among nodes comprising the "oculomotor (OCM) network" strongly fluctuated over time during awake as well as anaesthetized states. For time dependent analysis with short windows (<60 s), periods of positive functional correlations alternated with prominent anticorrelations that were missed when assessed with longer time windows. Similarly, the analysis identified network nodes that transiently link to the OCM network and did not emerge in average RSN analysis. Furthermore, time-dependent analysis reliably revealed transient states of large-scale synchronization that spanned all seeds. The results illustrate that resting-state functional connectivity is not static and that RSNs can exhibit nonstationary, spontaneous relationships irrespective of conscious, cognitive processing. The findings imply that mechanistically important network information can be missed when using average functional connectivity as the single network measure.
机译:使用依赖于血氧水平的功能磁共振成像对大规模脑网络进行表征通常是基于整个扫描期间网络平稳性的假设。最近的人类研究对这种假设提出了质疑,表明网络内部功能连接的波动幅度在几秒到几分钟之间。静止状态网络(RSN)的时变轮廓可能与自发移动的电生理网络状态有关,因此在机制上特别重要。但是,因为这些研究从清醒的受试者中获取数据,所以波动的连接性可能反映出各种形式的意识脑处理,例如被动思维游荡,主动监控,记忆形成或图像采集过程中注意力和唤醒的变化。在这里,我们描述了控制这些帐户的麻醉猕猴的RSN动态,并将它们与清醒的人类受试者进行比较。我们发现,在清醒以及麻醉状态下,组成“动眼神经网络(OCM)网络”的节点之间的功能连接性会随时间剧烈波动。对于短窗口(<60 s)的时间依赖性分析,正函数相关性的周期与显着的反相关交替出现,而当使用较长的时间窗口进行评估时,它们会被忽略。类似地,该分析确定了瞬态链接到OCM网络的网络节点,而这些节点并未出现在平均RSN分析中。此外,基于时间的分析可靠地揭示了跨越所有种子的大规模同步的瞬时状态。结果表明,静止状态的功能连接不是静态的,并且RSN可以表现出非平稳的,自发的关系,而与意识,认知过程无关。研究结果表明,在将平均功能连接性用作单个网络度量时,可能会忽略具有机械重要性的网络信息。

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