Theoretical and Computational Neuroscience Group, Center for Brain and Cognition, Universitat Pompeu Fabra, Barcelona 08018, Spain.
Theoretical and Computational Neuroscience Group, Center for Brain and Cognition, Universitat Pompeu Fabra, Barcelona 08018, Spain.
Neuroimage. 2011 Jul 1;57(1):130-139. doi: 10.1016/j.neuroimage.2011.04.010. Epub 2011 Apr 12.
Spatio-temporally organized low-frequency fluctuations (<0.1 Hz), observed in BOLD fMRI signal during rest, suggest the existence of underlying network dynamics that emerge spontaneously from intrinsic brain processes. Furthermore, significant correlations between distinct anatomical regions-or functional connectivity (FC)-have led to the identification of several widely distributed resting-state networks (RSNs). This slow dynamics seems to be highly structured by anatomical connectivity but the mechanism behind it and its relationship with neural activity, particularly in the gamma frequency range, remains largely unknown. Indeed, direct measurements of neuronal activity have revealed similar large-scale correlations, particularly in slow power fluctuations of local field potential gamma frequency range oscillations. To address these questions, we investigated neural dynamics in a large-scale model of the human brain's neural activity. A key ingredient of the model was a structural brain network defined by empirically derived long-range brain connectivity together with the corresponding conduction delays. A neural population, assumed to spontaneously oscillate in the gamma frequency range, was placed at each network node. When these oscillatory units are integrated in the network, they behave as weakly coupled oscillators. The time-delayed interaction between nodes is described by the Kuramoto model of phase oscillators, a biologically-based model of coupled oscillatory systems. For a realistic setting of axonal conduction speed, we show that time-delayed network interaction leads to the emergence of slow neural activity fluctuations, whose patterns correlate significantly with the empirically measured FC. The best agreement of the simulated FC with the empirically measured FC is found for a set of parameters where subsets of nodes tend to synchronize although the network is not globally synchronized. Inside such clusters, the simulated BOLD signal between nodes is found to be correlated, instantiating the empirically observed RSNs. Between clusters, patterns of positive and negative correlations are observed, as described in experimental studies. These results are found to be robust with respect to a biologically plausible range of model parameters. In conclusion, our model suggests how resting-state neural activity can originate from the interplay between the local neural dynamics and the large-scale structure of the brain.
静息状态下 BOLD fMRI 信号中观察到的时空组织的低频波动(<0.1 Hz)表明存在潜在的网络动力学,这些动力学自发地从内在的大脑过程中出现。此外,不同解剖区域之间的显著相关性——即功能连接(FC)——导致了几个广泛分布的静息状态网络(RSN)的识别。这种缓慢的动力学似乎受到解剖连接的高度约束,但背后的机制及其与神经活动的关系,特别是在伽马频率范围内,仍然知之甚少。事实上,神经元活动的直接测量揭示了类似的大规模相关性,特别是在局部场电位伽马频率范围振荡的慢功率波动中。为了解决这些问题,我们研究了人类大脑神经活动的大规模模型中的神经动力学。模型的一个关键要素是由经验衍生的长程大脑连接定义的结构大脑网络,以及相应的传导延迟。假设在伽马频率范围内自发振荡的神经群体被放置在每个网络节点上。当这些振荡单元集成在网络中时,它们表现为弱耦合振荡器。节点之间的时滞相互作用由相位振荡器的 Kuramoto 模型描述,这是耦合振荡系统的一种基于生物学的模型。对于真实的轴突传导速度设置,我们表明时滞网络相互作用导致缓慢的神经活动波动的出现,其模式与经验测量的 FC 显著相关。模拟 FC 与经验测量的 FC 之间的最佳一致性是在一组参数下找到的,其中节点子集倾向于同步,尽管网络不是全局同步的。在这些簇内,发现节点之间的模拟 BOLD 信号是相关的,实例化了经验观察到的 RSN。在簇之间,观察到正相关和负相关的模式,如实验研究中所述。这些结果对于模型参数的生物合理范围具有稳健性。总之,我们的模型表明静息状态神经活动如何源自局部神经动力学和大脑的大尺度结构之间的相互作用。