Zhang Yujin, Zhu Chaozhe
Brainnetome Center, Institute of Automation, Chinese Academy of Sciences, Beijing, China.
National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing, China.
Front Neurosci. 2020 Jan 24;13:1430. doi: 10.3389/fnins.2019.01430. eCollection 2019.
The coordination of brain activity between disparate neural populations is highly dynamic. Investigations into intrinsic brain organization by evaluating dynamic resting-state functional connectivity (dRSFC) have attracted great attention in recent years. However, there are few dRSFC studies based on functional near-infrared spectroscopy (fNIRS) even though it has some advantages for studying the temporal evolution of brain function. In this research, we recruited 20 young adults and measured their resting-state brain fluctuations in several areas of the frontal, parietal, temporal, and occipital lobes using fNIRS-electroencephalography (EEG) simultaneous recording. Based on a sliding-window approach, we found that the variability of the dRSFC within any region of interest was significantly lower than the connections between region of interests but noticeably greater than the correlation between the channels with a short interoptode distance, which mainly consist of physiological fluctuations occurring in the superficial layers. Furthermore, based on a time-resolved -means clustering analysis, the temporal evolution was extracted for three dominant functional networks. These networks were roughly consistent between different subject subgroups and in varying sliding time window lengths of 20, 30, and 60 s. Between these three functional networks, there were obvious time-varied and system-specific synchronous relationships. In addition, the oscillation of the frontal-parietal-temporal network showed significant correlation with the switching of one EEG microstate, a finding which is consistent with a previous functional MRI-EEG study. All this evidence implies the functional significance of fNIRS-dRSFC and demonstrates the feasibility of fNIRS for extracting the dominant functional networks based on RSFC dynamics.
不同神经群体之间的大脑活动协调是高度动态的。近年来,通过评估动态静息态功能连接性(dRSFC)来研究大脑内在组织引起了广泛关注。然而,基于功能近红外光谱(fNIRS)的dRSFC研究很少,尽管它在研究脑功能的时间演变方面具有一些优势。在本研究中,我们招募了20名年轻成年人,使用fNIRS-脑电图(EEG)同步记录测量了他们额叶、顶叶、颞叶和枕叶几个区域的静息态脑波动。基于滑动窗口方法,我们发现任何感兴趣区域内dRSFC的变异性显著低于感兴趣区域之间的连接,但明显大于短光极间距通道之间的相关性,这些通道主要由表层发生的生理波动组成。此外,基于时间分辨均值聚类分析,提取了三个主要功能网络的时间演变。这些网络在不同的受试者亚组之间以及20、30和60秒的不同滑动时间窗口长度内大致一致。在这三个功能网络之间,存在明显的时变和系统特异性同步关系。此外,额顶颞网络的振荡与一种EEG微状态的切换显示出显著相关性,这一发现与先前的功能磁共振成像-EEG研究一致。所有这些证据都暗示了fNIRS-dRSFC的功能意义,并证明了fNIRS基于RSFC动力学提取主要功能网络的可行性。