Avila Akerberg Oscar, Chacron Maurice J
Department of Physics, Centre for Nonlinear Dynamics in Phyiology and Medicine, McGill University, 3655 Sir William Osler, Montréal, Québec, Canada, H3G-1Y6.
Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Jan;79(1 Pt 1):011914. doi: 10.1103/PhysRevE.79.011914. Epub 2009 Jan 21.
Many neurons display intrinsic interspike interval correlations in their spike trains. However, the effects of such correlations on information transmission in neural populations are not well understood. We quantified signal processing using linear response theory supported by numerical simulations in networks composed of two different models: One model generates a renewal process where interspike intervals are not correlated while the other generates a nonrenewal process where subsequent interspike intervals are negatively correlated. Our results show that the fractional rate of increase in information rate as a function of network size and stimulus intensity is lower for the nonrenewal model than for the renewal one. We show that this is mostly due to the lower amount of effective noise in the nonrenewal model. We also show the surprising result that coupling has opposite effects in renewal and nonrenewal networks: Excitatory (inhibitory coupling) will decrease (increase) the information rate in renewal networks while inhibitory (excitatory coupling) will decrease (increase) the information rate in nonrenewal networks. We discuss these results and their applicability to other classes of excitable systems.
许多神经元在其放电序列中表现出内在的峰峰间隔相关性。然而,这种相关性对神经群体中信息传递的影响尚未得到很好的理解。我们使用线性响应理论,并通过由两种不同模型组成的网络中的数值模拟来量化信号处理:一种模型产生更新过程,其中峰峰间隔不相关,而另一种模型产生非更新过程,其中后续的峰峰间隔呈负相关。我们的结果表明,对于非更新模型,信息率随网络大小和刺激强度的分数增长率低于更新模型。我们表明,这主要是由于非更新模型中有效噪声量较低。我们还展示了一个惊人的结果,即耦合在更新和非更新网络中有相反的效果:兴奋性(抑制性耦合)将降低(增加)更新网络中的信息率,而抑制性(兴奋性耦合)将降低(增加)非更新网络中的信息率。我们讨论了这些结果及其对其他类可兴奋系统的适用性。