Wang Xinlong, Wanniarachchi Hashini, Wu Anqi, Liu Hanli
Department of Bioengineering, University of Texas at Arlington, Arlington, TX, United States.
Front Hum Neurosci. 2022 May 10;16:853909. doi: 10.3389/fnhum.2022.853909. eCollection 2022.
Transcranial Photobiomodulation (tPBM) has demonstrated its ability to alter electrophysiological activity in the human brain. However, it is unclear how tPBM modulates brain electroencephalogram (EEG) networks and is related to human cognition. In this study, we recorded 64-channel EEG from 44 healthy humans before, during, and after 8-min, right-forehead, 1,064-nm tPBM or sham stimulation with an irradiance of 257 mW/cm. In data processing, a novel methodology by combining group singular value decomposition (gSVD) with the exact low-resolution brain electromagnetic tomography (eLORETA) was implemented and performed on the 64-channel noise-free EEG time series. The gSVD+eLORETA algorithm produced 11 gSVD-derived principal components (PCs) projected in the 2D sensor and 3D source domain/space. These 11 PCs took more than 70% weight of the entire EEG signals and were justified as 11 EEG brain networks. Finally, baseline-normalized power changes of each EEG brain network in each EEG frequency band (delta, theta, alpha, beta and gamma) were quantified during the first 4-min, second 4-min, and post tPBM/sham periods, followed by comparisons of frequency-specific power changes between tPBM and sham conditions. Our results showed that tPBM-induced increases in alpha powers occurred at default mode network, executive control network, frontal parietal network and lateral visual network. Moreover, the ability to decompose EEG signals into individual, independent brain networks facilitated to better visualize significant decreases in gamma power by tPBM. Many similarities were found between the cortical locations of SVD-revealed EEG networks and fMRI-identified resting-state networks. This consistency may shed light on mechanistic associations between tPBM-modulated brain networks and improved cognition outcomes.
经颅光生物调节(tPBM)已证明其能够改变人类大脑中的电生理活动。然而,目前尚不清楚tPBM如何调节脑电(EEG)网络以及与人类认知的关系。在本研究中,我们在44名健康受试者的右前额进行8分钟、波长1064纳米、辐照度为257 mW/cm²的tPBM或假刺激之前、期间和之后记录了64通道EEG。在数据处理中,我们实施了一种将组奇异值分解(gSVD)与精确低分辨率脑电磁断层扫描(eLORETA)相结合的新方法,并对64通道无噪声EEG时间序列进行了分析。gSVD+eLORETA算法在二维传感器和三维源域/空间中生成了11个源自gSVD的主成分(PC)。这11个PC占整个EEG信号权重的70%以上,并被认定为11个EEG脑网络。最后,对每个EEG频段(δ、θ、α、β和γ)中每个EEG脑网络在最初4分钟、第二个4分钟以及tPBM/假刺激后期间的基线归一化功率变化进行了量化,随后比较了tPBM和假刺激条件下特定频率的功率变化。我们的结果表明,tPBM诱导的α功率增加发生在默认模式网络、执行控制网络、额顶网络和外侧视觉网络。此外,将EEG信号分解为单个独立脑网络的能力有助于更好地可视化tPBM导致的γ功率显著降低。在SVD揭示的EEG网络的皮层位置与功能磁共振成像(fMRI)识别的静息态网络之间发现了许多相似之处。这种一致性可能有助于揭示tPBM调节的脑网络与改善认知结果之间的机制关联。