Li Chuang, Yuan Han, Shou Guofa, Cha Yoon-Hee, Sunderam Sridhar, Besio Walter, Ding Lei
School of Electrical and Computer Engineering, University of Oklahoma, Norman, OK, United States.
Stephenson School of Biomedical Engineering, University of Oklahoma, Norman, OK, United States.
Front Neurosci. 2018 May 30;12:365. doi: 10.3389/fnins.2018.00365. eCollection 2018.
Resting state networks (RSNs) have been found in human brains during awake resting states. RSNs are composed of spatially distributed regions in which spontaneous activity fluctuations are temporally and dynamically correlated. A new computational framework for reconstructing RSNs with human EEG data has been developed in the present study. The proposed framework utilizes independent component analysis (ICA) on short-time Fourier transformed inverse source maps imaged from EEG data and statistical correlation analysis to generate cortical tomography of electrophysiological RSNs. The proposed framework was evaluated on three sets of resting-state EEG data obtained in the comparison of two conditions: (1) healthy controls with eyes closed and eyes open; (2) healthy controls and individuals with a balance disorder; (3) individuals with a balance disorder before and after receiving repetitive transcranial magnetic stimulation (rTMS) treatment. In these analyses, the same group of five RSNs with similar spatial and spectral patterns were successfully reconstructed by the proposed framework from each individual EEG dataset. These EEG RSN tomographic maps showed significant similarity with RSN templates derived from functional magnetic resonance imaging (fMRI). Furthermore, significant spatial and spectral differences of RSNs among compared conditions were observed in tomographic maps as well as their spectra, which were consistent with findings reported in the literature. Beyond the success of reconstructing EEG RSNs spatially on the cortical surface as in fMRI studies, this novel approach defines RSNs further with spectra, providing a new dimension in understanding and probing basic neural mechanisms of RSNs. The findings in patients' data further demonstrate its potential in identifying biomarkers for the diagnosis and treatment evaluation of neuropsychiatric disorders.
静息态网络(RSNs)已在人类大脑清醒静息状态下被发现。RSNs由空间分布的区域组成,其中自发活动波动在时间和动态上具有相关性。本研究开发了一种用于利用人类脑电图(EEG)数据重建RSNs的新计算框架。所提出的框架在从EEG数据成像的短时傅里叶变换逆源图上利用独立成分分析(ICA)和统计相关性分析来生成电生理RSNs的皮质断层扫描。在所提出的框架在比较两种情况时获得的三组静息态EEG数据上进行了评估:(1)闭眼和睁眼的健康对照;(2)健康对照和患有平衡障碍的个体;(3)接受重复经颅磁刺激(rTMS)治疗前后患有平衡障碍的个体。在这些分析中,所提出的框架从每个个体EEG数据集中成功重建了具有相似空间和频谱模式的同一组五个RSNs。这些EEG RSN断层扫描图与从功能磁共振成像(fMRI)得出的RSN模板显示出显著的相似性。此外,在断层扫描图及其频谱中观察到了比较条件之间RSNs的显著空间和频谱差异,这与文献中报道的结果一致。除了像fMRI研究那样在皮质表面在空间上成功重建EEG RSNs之外,这种新方法还通过频谱进一步定义了RSNs,为理解和探究RSNs的基本神经机制提供了一个新的维度。患者数据中的发现进一步证明了其在识别神经精神疾病诊断和治疗评估生物标志物方面的潜力。