Romani Sandro, Amit Daniel J, Mongillo Gianluigi
Dottorato di Ricerca in Neurofisiologia, Dip. di Fisiologia Umana, Università di Roma La Sapienza, Rome, Italy.
J Comput Neurosci. 2006 Apr;20(2):201-17. doi: 10.1007/s10827-006-6308-x. Epub 2006 Apr 22.
Mean-Field theory is extended to recurrent networks of spiking neurons endowed with short-term depression (STD) of synaptic transmission. The extension involves the use of the distribution of interspike intervals of an integrate-and-fire neuron receiving a Gaussian current, with a given mean and variance, in input. This, in turn, is used to obtain an accurate estimate of the resulting postsynaptic current in presence of STD. The stationary states of the network are obtained requiring self-consistency for the currents-those driving the emission processes and those generated by the emitted spikes. The model network stores in the distribution of two-state efficacies of excitatory-to-excitatory synapses, a randomly composed set of external stimuli. The resulting synaptic structure allows the network to exhibit selective persistent activity for each stimulus in the set. Theory predicts the onset of selective persistent, or working memory (WM) activity upon varying the constitutive parameters (e.g. potentiated/depressed long-term efficacy ratio, parameters associated with STD), and provides the average emission rates in the various steady states. Theoretical estimates are in remarkably good agreement with data "recorded" in computer simulations of the microscopic model.
平均场理论被扩展到具有突触传递短期抑制(STD)的脉冲神经元递归网络。这种扩展涉及使用接收具有给定均值和方差的高斯电流输入的积分发放神经元的脉冲间隔分布。反过来,这又用于在存在STD的情况下获得对由此产生的突触后电流的准确估计。通过要求驱动发射过程的电流和由发射的脉冲产生的电流的自洽性来获得网络的稳态。模型网络在兴奋性到兴奋性突触的双态效率分布中存储一组随机组成的外部刺激。由此产生的突触结构使网络能够对集合中的每个刺激表现出选择性持续活动。理论预测了在改变本构参数(例如增强/抑制的长期效率比、与STD相关的参数)时选择性持续或工作记忆(WM)活动的开始,并提供了各种稳态下的平均发射率。理论估计与微观模型计算机模拟中“记录”的数据非常吻合。