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脑电微状态与慢波睡眠期间的大脑功能网络相关。

EEG microstates are correlated with brain functional networks during slow-wave sleep.

机构信息

Laboratory of Applied Brain and Cognitive Sciences, Shanghai International Studies University, Shanghai, China.

Center for MRI Research, Peking University, Beijing, China; Department of Biomedical Engineering, College of Engineering, Peking University, Beijing, China.

出版信息

Neuroimage. 2020 Jul 15;215:116786. doi: 10.1016/j.neuroimage.2020.116786. Epub 2020 Apr 7.

Abstract

Electroencephalography (EEG) microstates have been extensively studied in wakefulness and have been described as the "atoms of thought". Previous studies of EEG have found four microstates, i.e., microstates A, B, C and D, that are consistent among participants across the lifespan during the resting state. Studies using simultaneous EEG and functional magnetic resonance imaging (fMRI) have provided evidence for correlations between EEG microstates and fMRI networks during the resting state. Microstates have also been found during non-rapid eye movement (NREM) sleep. Slow-wave sleep (SWS) is considered the most restorative sleep stage and has been associated with the maintenance of sleep. However, the relationship between EEG microstates and brain functional networks during SWS has not yet been investigated. In this study, simultaneous EEG-fMRI data were collected during SWS to test the correspondence between EEG microstates and fMRI networks. EEG microstate-informed fMRI analysis revealed that three out of the four microstates showed significant correlations with fMRI data: 1) fMRI fluctuations in the insula and posterior temporal gyrus positively correlated with microstate B, 2) fMRI signals in the middle temporal gyrus and fusiform gyrus negatively correlated with microstate C, and 3) fMRI fluctuations in the occipital lobe negatively correlated with microstate D, while fMRI signals in the anterior cingulate and cingulate gyrus positively correlated with this microstate. Functional brain networks were then assessed using group independent component analysis based on the fMRI data. The group-level spatial correlation analysis showed that the fMRI auditory network overlapped the fMRI activation map of microstate B, the executive control network overlapped the fMRI deactivation of microstate C, and the visual and salience networks overlapped the fMRI deactivation and activation maps of microstate D. In addition, the subject-level spatial correlations between the general linear model (GLM) beta map of each microstate and the individual maps of each component yielded by dual regression also showed that EEG microstates were closely associated with brain functional networks measured using fMRI during SWS. Overall, the results showed that EEG microstates were closely related to brain functional networks during SWS, which suggested that EEG microstates provide an important electrophysiological basis underlying brain functional networks.

摘要

脑电图(EEG)微状态在觉醒状态下已经得到了广泛的研究,并被描述为“思维的原子”。之前的 EEG 研究发现,在静息状态下,参与者的一生中都存在四个微状态,即微状态 A、B、C 和 D。使用 EEG 和功能磁共振成像(fMRI)同步进行的研究为静息状态下 EEG 微状态与 fMRI 网络之间的相关性提供了证据。微状态也在非快速眼动(NREM)睡眠期间被发现。慢波睡眠(SWS)被认为是最具恢复性的睡眠阶段,与睡眠的维持有关。然而,SWS 期间 EEG 微状态与大脑功能网络之间的关系尚未被研究。在这项研究中,在 SWS 期间同步采集了 EEG-fMRI 数据,以测试 EEG 微状态与 fMRI 网络之间的对应关系。基于 EEG 微状态的 fMRI 分析显示,四个微状态中的三个与 fMRI 数据有显著相关性:1)岛叶和后颞叶的 fMRI 波动与微状态 B 呈正相关,2)中颞叶和梭状回的 fMRI 信号与微状态 C 呈负相关,3)枕叶的 fMRI 波动与微状态 D 呈负相关,而前扣带回和扣带回的 fMRI 信号与微状态 D 呈正相关。然后使用基于 fMRI 数据的组独立成分分析评估功能脑网络。组水平的空间相关分析显示,fMRI 听觉网络与微状态 B 的 fMRI 激活图重叠,执行控制网络与微状态 C 的 fMRI 去激活图重叠,视觉和突显网络与微状态 D 的 fMRI 去激活和激活图重叠。此外,每个微状态的一般线性模型(GLM)β图与双回归得到的每个成分的个体图之间的受试者水平空间相关性也表明,在 SWS 期间,EEG 微状态与 fMRI 测量的大脑功能网络密切相关。总的来说,结果表明,在 SWS 期间,EEG 微状态与大脑功能网络密切相关,这表明 EEG 微状态为大脑功能网络提供了重要的电生理基础。

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