Kostal Lubomir, Lánský Petr
Institute of Physiology, Academy of Sciences of the Czech Republic, Videnska 1083, 142 20 Prague 4, The Czech Republic.
Network. 2006 Jun;17(2):193-210. doi: 10.1080/09548980600594165.
We propose a measure of the information rate of a single stationary neuronal activity with respect to the state of null information. The measure is based on the Kullback-Leibler distance between two interspike interval distributions. The selected activity is compared with the Poisson model with the same mean firing frequency. We show that the approach is related to the notion of specific information and that the method allows us to judge the relative encoding efficiency. Two classes of neuronal activity models are classified according to their information rate: the renewal process models and the first-order Markov chain models. It has been proven that information can be transmitted changing neither the spike rate nor the coefficient of variation and that the increase in serial correlation does not necessarily increase the information gain. We employ the simple, but powerful, Vasicek's estimator of differential entropy to illustrate an application on the experimental data coming from olfactory sensory neurons of rats.
我们提出了一种针对零信息状态的单个平稳神经元活动信息率的度量方法。该度量基于两个峰峰间隔分布之间的库尔贝克 - 莱布勒距离。将所选活动与具有相同平均发放频率的泊松模型进行比较。我们表明该方法与特定信息的概念相关,并且该方法使我们能够判断相对编码效率。根据其信息率对两类神经元活动模型进行分类:更新过程模型和一阶马尔可夫链模型。已经证明,在不改变发放率和变异系数的情况下也可以传输信息,并且序列相关性的增加不一定会增加信息增益。我们使用简单但功能强大的瓦西切克微分熵估计器来说明对来自大鼠嗅觉感觉神经元的实验数据的应用。