Allan Thomas W, Francis Susan T, Caballero-Gaudes Cesar, Morris Peter G, Liddle Elizabeth B, Liddle Peter F, Brookes Matthew J, Gowland Penny A
Sir Peter Mansfield Imagaing Centre, School of Physics and Astronomy, University of Nottingham, University Park, Nottingham, United Kingdom.
Basque Center on Cognition, Brain and Language, Donostia-San Sebastian, Spain.
PLoS One. 2015 Apr 29;10(4):e0124577. doi: 10.1371/journal.pone.0124577. eCollection 2015.
Functional brain signals are frequently decomposed into a relatively small set of large scale, distributed cortical networks that are associated with different cognitive functions. It is generally assumed that the connectivity of these networks is static in time and constant over the whole network, although there is increasing evidence that this view is too simplistic. This work proposes novel techniques to investigate the contribution of spontaneous BOLD events to the temporal dynamics of functional connectivity as assessed by ultra-high field functional magnetic resonance imaging (fMRI). The results show that: 1) spontaneous events in recognised brain networks contribute significantly to network connectivity estimates; 2) these spontaneous events do not necessarily involve whole networks or nodes, but clusters of voxels which act in concert, forming transiently synchronising sub-networks and 3) a task can significantly alter the number of localised spontaneous events that are detected within a single network. These findings support the notion that spontaneous events are the main driver of the large scale networks that are commonly detected by seed-based correlation and ICA. Furthermore, we found that large scale networks are manifestations of smaller, transiently synchronising sub-networks acting dynamically in concert, corresponding to spontaneous events, and which do not necessarily involve all voxels within the network nodes oscillating in unison.
功能性脑信号常常被分解为相对较少的一组大规模、分布式的皮层网络,这些网络与不同的认知功能相关。通常认为这些网络的连通性在时间上是静态的,并且在整个网络中是恒定的,尽管越来越多的证据表明这种观点过于简单化。这项工作提出了新颖的技术,以研究自发的血氧水平依赖(BOLD)事件对通过超高场功能磁共振成像(fMRI)评估的功能连通性时间动态的贡献。结果表明:1)公认脑网络中的自发事件对网络连通性估计有显著贡献;2)这些自发事件不一定涉及整个网络或节点,而是协同作用的体素簇,形成瞬时同步的子网;3)一项任务可以显著改变在单个网络中检测到的局部自发事件的数量。这些发现支持了这样一种观点,即自发事件是通过基于种子的相关性和独立成分分析(ICA)通常检测到的大规模网络的主要驱动因素。此外,我们发现大规模网络是较小的、瞬时同步的子网动态协同作用的表现,这些子网对应于自发事件,并且不一定涉及网络节点内所有体素同步振荡。