Rajdl Kamil, Lansky Petr
Department of Mathematics and Statistics, Faculty of Science, Masaryk University, Kotlarska 2, 611 37, Brno, Czech Republic,
Biol Cybern. 2015 Jun;109(3):389-99. doi: 10.1007/s00422-015-0650-x. Epub 2015 Apr 25.
The input of Stein's model of a single neuron is usually described by using a Poisson process, which is assumed to represent the behaviour of spikes pooled from a large number of presynaptic spike trains. However, such a description of the input is not always appropriate as the variability cannot be separated from the intensity. Therefore, we create and study Stein's model with a more general input, a sum of equilibrium renewal processes. The mean and variance of the membrane potential are derived for this model. Using these formulas and numerical simulations, the model is analyzed to study the influence of the input variability on the properties of the membrane potential and the output spike trains. The generalized Stein's model is compared with the original Stein's model with Poissonian input using the relative difference of variances of membrane potential at steady state and the integral square error of output interspike intervals. Both of the criteria show large differences between the models for input with high variability.
单个神经元的斯坦因模型的输入通常用泊松过程来描述,该过程被假定代表从大量突触前尖峰序列汇总而来的尖峰行为。然而,这种对输入的描述并不总是合适的,因为变异性无法与强度分离。因此,我们创建并研究了具有更一般输入的斯坦因模型,即平衡更新过程的总和。推导了该模型的膜电位的均值和方差。利用这些公式和数值模拟,对该模型进行分析,以研究输入变异性对膜电位特性和输出尖峰序列的影响。使用稳态下膜电位方差的相对差异和输出峰峰间隔的积分平方误差,将广义斯坦因模型与具有泊松输入的原始斯坦因模型进行比较。对于具有高变异性的输入,这两个标准都表明模型之间存在很大差异。