Goelman Gadi, Dan Rotem
MRI Lab, the Human Biology Research Center, Department of Medical Biophysics, Hadassah Hebrew University Medical Center, Jerusalem, Israel.
Edmond and Lily Safra Center for Brain Sciences (ELSC), The Hebrew University of Jerusalem, Jerusalem, Israel.
Hum Brain Mapp. 2017 Mar;38(3):1374-1386. doi: 10.1002/hbm.23460. Epub 2016 Nov 16.
Network analysis is increasingly advancing the field of neuroimaging. Neural networks are generally constructed from pairwise interactions with an assumption of linear relations between them. Here, a high-order statistical framework to calculate directed functional connectivity among multiple regions, using wavelet analysis and spectral coherence has been presented. The mathematical expression for 4 regions was derived and used to characterize a quartet of regions as a linear, combined (nonlinear), or disconnected network. Phase delays between regions were used to obtain network's temporal hierarchy and directionality. The validity of the mathematical derivation along with the effects of coupling strength and noise on its outcomes were studied by computer simulations of the Kuramoto model. The simulations demonstrated correct directionality for a large range of coupling strength and low sensitivity to Gaussian noise compared with pairwise coherences. The analysis was applied to resting-state fMRI data of 40 healthy young subjects to characterize the ventral visual system, motor system and default mode network (DMN). It was shown that the ventral visual system was predominantly composed of linear networks while the motor system and the DMN were composed of combined (nonlinear) networks. The ventral visual system exhibits its known temporal hierarchy, the motor system exhibits center ↔ out hierarchy and the DMN has dorsal ↔ ventral and anterior ↔ posterior organizations. The analysis can be applied in different disciplines such as seismology, or economy and in a variety of brain data including stimulus-driven fMRI, electrophysiology, EEG, and MEG, thus open new horizons in brain research. Hum Brain Mapp 38:1374-1386, 2017. © 2016 Wiley Periodicals, Inc.
网络分析正日益推动神经影像学领域的发展。神经网络通常由成对的相互作用构建而成,并假设它们之间存在线性关系。在此,提出了一种高阶统计框架,该框架利用小波分析和谱相干性来计算多个区域之间的定向功能连接性。推导了4个区域的数学表达式,并用于将一组四个区域表征为线性、组合(非线性)或非连接网络。利用区域之间的相位延迟来获得网络的时间层次结构和方向性。通过Kuramoto模型的计算机模拟研究了数学推导的有效性以及耦合强度和噪声对其结果的影响。与成对相干性相比,模拟结果表明在大范围的耦合强度下具有正确的方向性,并且对高斯噪声具有低敏感性。该分析应用于40名健康年轻受试者的静息态功能磁共振成像数据,以表征腹侧视觉系统、运动系统和默认模式网络(DMN)。结果表明,腹侧视觉系统主要由线性网络组成,而运动系统和DMN由组合(非线性)网络组成。腹侧视觉系统呈现出其已知的时间层次结构,运动系统呈现出中心↔外周层次结构,而DMN具有背侧↔腹侧和前侧↔后侧组织。该分析可应用于地震学、经济学等不同学科以及包括刺激驱动功能磁共振成像、电生理学、脑电图和脑磁图在内的各种脑数据,从而为脑研究开辟新的视野。《人类大脑图谱》38:1374 - 1386,2017年。© 2016威利期刊公司。