Farkhooi Farzad, Strube-Bloss Martin F, Nawrot Martin P
Neuroinformatics & Theoretical Neuroscience, Institute of Biology-Neurobiology, Freie Universität Berlin and Bernstein Center for Computational Neuroscience Berlin, Germany.
Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Feb;79(2 Pt 1):021905. doi: 10.1103/PhysRevE.79.021905. Epub 2009 Feb 6.
The activity of spiking neurons is frequently described by renewal point process models that assume the statistical independence and identical distribution of the intervals between action potentials. However, the assumption of independent intervals must be questioned for many different types of neurons. We review experimental studies that reported the feature of a negative serial correlation of neighboring intervals, commonly observed in neurons in the sensory periphery as well as in central neurons, notably in the mammalian cortex. In our experiments we observed the same short-lived negative serial dependence of intervals in the spontaneous activity of mushroom body extrinsic neurons in the honeybee. To model serial interval correlations of arbitrary lags, we suggest a family of autoregressive point processes. Its marginal interval distribution is described by the generalized gamma model, which includes as special cases the log-normal and gamma distributions, which have been widely used to characterize regular spiking neurons. In numeric simulations we investigated how serial correlation affects the variance of the neural spike count. We show that the experimentally confirmed negative correlation reduces single-neuron variability, as quantified by the Fano factor, by up to 50%, which favors the transmission of a rate code. We argue that the feature of a negative serial correlation is likely to be common to the class of spike-frequency-adapting neurons and that it might have been largely overlooked in extracellular single-unit recordings due to spike sorting errors.
发放神经元的活动通常由更新点过程模型来描述,这些模型假定动作电位之间的间隔具有统计独立性和相同分布。然而,对于许多不同类型的神经元而言,独立间隔的假设是值得质疑的。我们回顾了一些实验研究,这些研究报告了相邻间隔的负序列相关性这一特征,在感觉外周的神经元以及中枢神经元中普遍观察到,尤其是在哺乳动物皮层中。在我们的实验中,我们在蜜蜂蘑菇体外周神经元的自发活动中观察到了相同的间隔短期负序列依赖性。为了对任意滞后的序列间隔相关性进行建模,我们提出了一族自回归点过程。其边际间隔分布由广义伽马模型描述,该模型包括对数正态分布和伽马分布作为特殊情况,这两种分布已被广泛用于表征规则发放神经元。在数值模拟中,我们研究了序列相关性如何影响神经脉冲计数的方差。我们表明,经实验证实的负相关性将由Fano因子量化的单神经元变异性降低了多达50%,这有利于速率编码的传递。我们认为,负序列相关性这一特征可能在脉冲频率适应神经元类别中很常见,并且由于脉冲分类错误,它在细胞外单单元记录中可能很大程度上被忽视了。