Ponce-Alvarez Adrián, He Biyu J, Hagmann Patric, Deco Gustavo
Center for Brain and Cognition, Computational Neuroscience Group, Department of Information and Communication Technologies, Universitat Pompeu Fabra, Barcelona, Spain.
National Institute of Neurological Disorders and Stroke, National Institutes of Health, Bethesda, Maryland, United States of America.
PLoS Comput Biol. 2015 Aug 28;11(8):e1004445. doi: 10.1371/journal.pcbi.1004445. eCollection 2015 Aug.
How a stimulus or a task alters the spontaneous dynamics of the brain remains a fundamental open question in neuroscience. One of the most robust hallmarks of task/stimulus-driven brain dynamics is the decrease of variability with respect to the spontaneous level, an effect seen across multiple experimental conditions and in brain signals observed at different spatiotemporal scales. Recently, it was observed that the trial-to-trial variability and temporal variance of functional magnetic resonance imaging (fMRI) signals decrease in the task-driven activity. Here we examined the dynamics of a large-scale model of the human cortex to provide a mechanistic understanding of these observations. The model allows computing the statistics of synaptic activity in the spontaneous condition and in putative tasks determined by external inputs to a given subset of brain regions. We demonstrated that external inputs decrease the variance, increase the covariances, and decrease the autocovariance of synaptic activity as a consequence of single node and large-scale network dynamics. Altogether, these changes in network statistics imply a reduction of entropy, meaning that the spontaneous synaptic activity outlines a larger multidimensional activity space than does the task-driven activity. We tested this model's prediction on fMRI signals from healthy humans acquired during rest and task conditions and found a significant decrease of entropy in the stimulus-driven activity. Altogether, our study proposes a mechanism for increasing the information capacity of brain networks by enlarging the volume of possible activity configurations at rest and reliably settling into a confined stimulus-driven state to allow better transmission of stimulus-related information.
刺激或任务如何改变大脑的自发动力学仍是神经科学中一个基本的开放性问题。任务/刺激驱动的大脑动力学最显著的标志之一是相对于自发水平变异性的降低,这种效应在多种实验条件下以及在不同时空尺度观察到的脑信号中都能看到。最近,有人观察到在任务驱动的活动中,功能磁共振成像(fMRI)信号的逐次试验变异性和时间方差会降低。在此,我们研究了人类皮层大规模模型的动力学,以对这些观察结果提供一种机制性理解。该模型能够计算自发条件下以及由给定脑区子集的外部输入所确定的假定任务中的突触活动统计数据。我们证明,由于单节点和大规模网络动力学,外部输入会降低方差、增加协方差并降低突触活动的自协方差。总之,网络统计数据的这些变化意味着熵的降低,这意味着自发突触活动勾勒出的多维活动空间比任务驱动活动的更大。我们在静息和任务条件下采集的健康人类的fMRI信号上测试了该模型的预测,发现在刺激驱动的活动中熵显著降低。总之,我们的研究提出了一种机制,即通过扩大静息时可能的活动配置量并可靠地稳定到受限的刺激驱动状态,以提高脑网络的信息容量,从而更好地传递与刺激相关的信息。