Omidvarnia Amir, Pedersen Mangor, Walz Jennifer M, Vaughan David N, Abbott David F, Jackson Graeme D
The Florey Institute of Neuroscience and Mental Health, Heidelberg, Victoria, Australia.
Florey Department of Neuroscience and Mental Health, The University of Melbourne, Heidelberg, Victoria, Australia.
Hum Brain Mapp. 2016 May;37(5):1970-85. doi: 10.1002/hbm.23151. Epub 2016 Mar 28.
Dynamic functional brain connectivity analysis is a fast expanding field in computational neuroscience research with the promise of elucidating brain network interactions. Sliding temporal window based approaches are commonly used in order to explore dynamic behavior of brain networks in task-free functional magnetic resonance imaging (fMRI) data. However, the low effective temporal resolution of sliding window methods fail to capture the full dynamics of brain activity at each time point. These also require subjective decisions regarding window size and window overlap. In this study, we introduce dynamic regional phase synchrony (DRePS), a novel analysis approach that measures mean local instantaneous phase coherence within adjacent fMRI voxels. We evaluate the DRePS framework on simulated data showing that the proposed measure is able to estimate synchrony at higher temporal resolution than sliding windows of local connectivity. We applied DRePS analysis to task-free fMRI data of 20 control subjects, revealing ultra-slow dynamics of local connectivity in different brain areas. Spatial clustering based on the DRePS feature time series reveals biologically congruent local phase synchrony networks (LPSNs). Taken together, our results demonstrate three main findings. Firstly, DRePS has increased temporal sensitivity compared to sliding window correlation analysis in capturing locally synchronous events. Secondly, DRePS of task-free fMRI reveals ultra-slow fluctuations of ∼0.002-0.02 Hz. Lastly, LPSNs provide plausible spatial information about time-varying brain local phase synchrony. With the DRePS method, we introduce a framework for interrogating brain local connectivity, which can potentially provide biomarkers of human brain function in health and disease. Hum Brain Mapp 37:1970-1985, 2016. © 2016 Wiley Periodicals, Inc.
动态功能脑连接性分析是计算神经科学研究中一个快速发展的领域,有望阐明脑网络的相互作用。基于滑动时间窗的方法常用于探索静息态功能磁共振成像(fMRI)数据中脑网络的动态行为。然而,滑动窗方法的有效时间分辨率较低,无法捕捉每个时间点脑活动的完整动态。这些方法还需要对窗口大小和窗口重叠进行主观决策。在本研究中,我们引入了动态区域相位同步(DRePS),这是一种新的分析方法,用于测量相邻fMRI体素内的平均局部瞬时相位相干性。我们在模拟数据上评估了DRePS框架,结果表明,与局部连接性的滑动窗相比,该方法能够以更高的时间分辨率估计同步性。我们将DRePS分析应用于20名对照受试者的静息态fMRI数据,揭示了不同脑区局部连接性的超慢动态。基于DRePS特征时间序列的空间聚类揭示了生物学上一致的局部相位同步网络(LPSNs)。综上所述,我们的结果有三个主要发现。首先,在捕捉局部同步事件方面,与滑动窗相关分析相比,DRePS具有更高的时间敏感性。其次,静息态fMRI的DRePS揭示了约0.002 - 0.02 Hz的超慢波动。最后,LPSNs提供了关于时变脑局部相位同步的合理空间信息。通过DRePS方法,我们引入了一个用于研究脑局部连接性的框架,该框架可能为健康和疾病状态下的人类脑功能提供生物标志物。《人类脑图谱》37:1970 - 1985,2016年。© 2016威利期刊公司