Brain and Mind Institute, Western University, London, Canada.
Department of Neuroscience, Western University, London, Canada.
Sleep. 2019 Mar 1;42(3). doi: 10.1093/sleep/zsy235.
Resting state network (RSN) functional connectivity (FC) has been investigated under a wealth of different healthy and compromised conditions. Such investigations are often dependent on the defined spatial boundaries and nodes of so-called canonical RSNs, themselves the product of extensive deliberations over distinctions between functional magnetic resonance imaging (fMRI) noise and neural signal, specifically in the context of the healthy waking state. However, a similar unbiased cataloging of noise and networks remains to be done in other states, particularly sleep, a healthy alternate mode of the brain that supports distinct operations from wakefulness, such as dreaming and memory consolidation. The purpose of this study was to explicitly test the hypothesis that there are RSNs unique to sleep. Simultaneous electroencephalography (EEG) and fMRI was used to record brain activity of non-sleep-deprived participants. Independent component analysis was performed on both rapid eye movement (REM; N = 7) and non-REM sleep stage fMRI data (non-REM2; N = 28, non-REM3; N = 11), with the resulting components spatially correlated with the canonical RSNs, for the purpose of identifying spatially distinct RSNs. Surprisingly, all low-correlation components were positively identified as noise, and all high-correlation components comprised the canonical set of RSNs typically observed in wake, indicating that sleep is supported by much the same RSN architecture as wakefulness, despite the unique operations performed during sleep. This further indicates that the implicit assumptions of prior studies, i.e. that the canonical RSNs apply to sleep FC analysis, are valid and have not overlooked sleep-specific RSNs.
静息态网络(RSN)功能连接(FC)已在大量不同的健康和受损条件下进行了研究。此类研究通常依赖于所谓的典型 RSN 的定义的空间边界和节点,这些节点本身是对功能磁共振成像(fMRI)噪声与神经信号之间区别的广泛讨论的产物,特别是在健康清醒状态的背景下。然而,在其他状态下,特别是在睡眠状态下,仍需要对噪声和网络进行类似的无偏分类,睡眠是大脑的一种健康替代模式,支持与清醒不同的操作,例如做梦和记忆巩固。本研究的目的是明确测试以下假设,即存在睡眠特有的 RSN。同时使用脑电图(EEG)和 fMRI 记录非睡眠剥夺参与者的大脑活动。对快速眼动(REM;N=7)和非快速眼动睡眠阶段 fMRI 数据(非 REM2;N=28,非 REM3;N=11)进行独立成分分析,所得成分与典型 RSN 空间相关,目的是识别空间上不同的 RSN。令人惊讶的是,所有低相关成分都被确认为噪声,而所有高相关成分都包含了在清醒状态下通常观察到的典型 RSN 集合,这表明尽管在睡眠期间执行了独特的操作,但睡眠仍由与清醒相同的 RSN 结构支持。这进一步表明,先前研究的隐含假设,即典型 RSN 适用于睡眠 FC 分析,是有效的,并没有忽视睡眠特异性 RSN。