Thivierge Jean-Philippe
School of Psychology and Center for Neural Dynamics, University of Ottawa, Ottawa, Ontario, Canada K1N 6N5.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Aug;90(2):022721. doi: 10.1103/PhysRevE.90.022721. Epub 2014 Aug 29.
A form of activity that is highly studied in cultured cortical networks is the neuronal avalanche, characterized by bursts whose distribution follows a power law. While the statistics of neuronal avalanches are well characterized, much less is known about the neuronal interactions from which they arise. We examined statistical dependencies between pairs of cells in spontaneously active cultures of cortical neurons using an information measure of transfer entropy. We show that the distribution of transfer entropy follows a power law with a slope near 3/2. Using graph-theoretic approaches of weighted networks, we demonstrate that this power law maximizes a measure of global economy that accounts for both the efficiency of neuronal interactions as well as the overall traffic in the network. Finally, we describe a pairwise Poisson model that captures the statistics of information transfer in a population of spiking neurons. Using this model, we show that avalanches can occur in systems with weak pairwise interactions, and that strong pairwise interactions can arise without avalanches, suggesting that these two measures capture distinct properties of brain dynamics.
在培养的皮层网络中得到深入研究的一种活动形式是神经元雪崩,其特征是爆发的分布遵循幂律。虽然神经元雪崩的统计特征已得到很好的描述,但对于其产生的神经元相互作用却知之甚少。我们使用转移熵的信息测度,研究了皮层神经元自发活动培养物中细胞对之间的统计依赖性。我们表明,转移熵的分布遵循斜率接近3/2的幂律。使用加权网络的图论方法,我们证明这种幂律使一种全局经济性测度最大化,该测度既考虑了神经元相互作用的效率,也考虑了网络中的总体流量。最后,我们描述了一个成对泊松模型,该模型捕捉了一群发放神经元中信息传递的统计特征。使用这个模型,我们表明在具有弱成对相互作用的系统中可能发生雪崩,而在没有雪崩的情况下也可能出现强成对相互作用,这表明这两种测度捕捉了大脑动力学的不同特性。