Levakova Marie, Tamborrino Massimiliano, Kostal Lubomir, Lansky Petr
Department of Computational Neuroscience, Institute of Physiology of the Czech Academy of Sciences, Videnska 1083, 14220 Prague 4, Czech Republic.
Institute for Stochastics, Johannes Kepler University Linz, Altenbergerstraße 69, 4040 Linz, Austria.
Phys Rev E. 2017 Feb;95(2-1):022310. doi: 10.1103/PhysRevE.95.022310. Epub 2017 Feb 22.
It is widely accepted that neuronal firing rates contain a significant amount of information about the stimulus intensity. Nevertheless, theoretical studies on the coding accuracy inferred from the exact spike counting distributions are rare. We present an analysis based on the number of observed spikes assuming the stochastic perfect integrate-and-fire model with a change point, representing the stimulus onset, for which we calculate the corresponding Fisher information to investigate the accuracy of rate coding. We analyze the effect of changing the duration of the time window and the influence of several parameters of the model, in particular the level of the presynaptic spontaneous activity and the level of random fluctuation of the membrane potential, which can be interpreted as noise of the system. The results show that the Fisher information is nonmonotonic with respect to the length of the observation period. This counterintuitive result is caused by the discrete nature of the count of spikes. We observe also that the signal can be enhanced by noise, since the Fisher information is nonmonotonic with respect to the level of spontaneous activity and, in some cases, also with respect to the level of fluctuation of the membrane potential.
人们普遍认为神经元放电率包含了大量关于刺激强度的信息。然而,从精确的脉冲计数分布推断编码准确性的理论研究却很少。我们基于观察到的脉冲数量进行分析,假设具有变化点的随机完美积分发放模型,该变化点代表刺激开始,我们计算相应的费希尔信息以研究速率编码的准确性。我们分析了改变时间窗口持续时间的影响以及模型几个参数的影响,特别是突触前自发活动水平和膜电位随机波动水平,这可以解释为系统的噪声。结果表明,费希尔信息相对于观察期长度是非单调的。这个违反直觉的结果是由脉冲计数的离散性质引起的。我们还观察到信号可以被噪声增强,因为费希尔信息相对于自发活动水平是非单调的,并且在某些情况下,相对于膜电位波动水平也是非单调的。