Iyengar S, Liao Q
Department of Statistics, University of Pittsburgh, PA 15260, USA.
Biol Cybern. 1997 Oct;77(4):289-95. doi: 10.1007/s004220050390.
Spike trains from neurons are often used to make inferences about the underlying processes that generate the spikes. Random walks or diffusions are commonly used to model these processes; in such models, a spike corresponds to the first passage of the diffusion to a boundary, or firing threshold. An important first step in such a study is to fit families of densities to the trains' interspike interval histograms; the estimated parameters, and the families' goodness of fit can then provide information about the process leading to the spikes. In this paper, we propose the generalized inverse Gaussian family because its members arise as first passage time distributions of certain diffusions to a constant boundary. We provide some theoretical support for the use of these diffusions in neural firing models. We compare this family with the lognormal family, using spike trains from retinal ganglion cells of goldfish, and simulations from an integrate-and-fire and a dynamical model for generating spikes. We show that the generalized inverse Gaussian family is closer to the true model in all these cases.
神经元的脉冲序列常被用于推断产生脉冲的潜在过程。随机游走或扩散通常用于对这些过程进行建模;在这类模型中,一个脉冲对应于扩散首次到达边界或激发阈值。此类研究的重要第一步是将密度族拟合到脉冲序列的峰峰间隔直方图;估计的参数以及这些密度族的拟合优度随后可以提供有关导致脉冲的过程的信息。在本文中,我们提出广义逆高斯族,因为其成员作为某些扩散到恒定边界的首次通过时间分布出现。我们为在神经放电模型中使用这些扩散提供了一些理论支持。我们使用金鱼视网膜神经节细胞的脉冲序列以及一个积分发放模型和一个用于生成脉冲的动力学模型的模拟,将这个族与对数正态族进行比较。我们表明,在所有这些情况下,广义逆高斯族更接近真实模型。