Chen Jingyuan E, Lewis Laura D, Chang Catie, Tian Qiyuan, Fultz Nina E, Ohringer Ned A, Rosen Bruce R, Polimeni Jonathan R
Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Boston, MA, USA; Department of Radiology, Harvard Medical School, Boston, MA, USA.
Department of Biomedical Engineering, Boston University, Boston, MA, USA.
Neuroimage. 2020 Jun;213:116707. doi: 10.1016/j.neuroimage.2020.116707. Epub 2020 Mar 5.
Slow changes in systemic brain physiology can elicit large fluctuations in fMRI time series, which manifest as structured spatial patterns of temporal correlations between distant brain regions. Here, we investigated whether such "physiological networks"-sets of segregated brain regions that exhibit similar responses following slow changes in systemic physiology-resemble patterns associated with large-scale networks typically attributed to remotely synchronized neuronal activity. By analyzing a large group of subjects from the 3T Human Connectome Project (HCP) database, we demonstrate brain-wide and noticeably heterogenous dynamics tightly coupled to either respiratory variation or heart rate changes. We show, using synthesized data generated from physiological recordings across subjects, that these physiologically-coupled fluctuations alone can produce networks that strongly resemble previously reported resting-state networks, suggesting that, in some cases, the "physiological networks" seem to mimic the neuronal networks. Further, we show that such physiologically-relevant connectivity estimates appear to dominate the overall connectivity observations in multiple HCP subjects, and that this apparent "physiological connectivity" cannot be removed by the use of a single nuisance regressor for the entire brain (such as global signal regression) due to the clear regional heterogeneity of the physiologically-coupled responses. Our results challenge previous notions that physiological confounds are either localized to large veins or globally coherent across the cortex, therefore emphasizing the necessity to consider potential physiological contributions in fMRI-based functional connectivity studies. The rich spatiotemporal patterns carried by such "physiological" dynamics also suggest great potential for clinical biomarkers that are complementary to large-scale neuronal networks.
全脑生理的缓慢变化可引发功能磁共振成像(fMRI)时间序列的大幅波动,这种波动表现为远距离脑区之间时间相关性的结构化空间模式。在此,我们研究了这种“生理网络”——在全身生理缓慢变化后表现出相似反应的分离脑区集合——是否类似于通常归因于远程同步神经元活动的大规模网络相关模式。通过分析来自3T人类连接组计划(HCP)数据库的一大组受试者,我们证明了全脑范围内明显异质的动力学与呼吸变化或心率变化紧密耦合。我们利用跨受试者生理记录生成的合成数据表明,仅这些生理耦合波动就能产生与先前报道的静息态网络极为相似的网络,这表明在某些情况下,“生理网络”似乎在模仿神经元网络。此外,我们表明,这种与生理相关的连通性估计似乎在多个HCP受试者的整体连通性观测中占主导地位,并且由于生理耦合反应存在明显的区域异质性,使用针对整个大脑的单个干扰回归器(如全局信号回归)无法消除这种明显的“生理连通性”。我们的结果挑战了先前的观念,即生理干扰要么局限于大静脉,要么在整个皮层上全局相干,因此强调了在基于fMRI的功能连通性研究中考虑潜在生理贡献的必要性。这种“生理”动力学所携带的丰富时空模式也表明,作为大规模神经元网络补充的临床生物标志物具有巨大潜力。