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首页> 外文期刊>Biological Cybernetics >A review of the methods for signal estimation in stochastic diffusion leaky integrate-and-fire neuronal models
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A review of the methods for signal estimation in stochastic diffusion leaky integrate-and-fire neuronal models

机译:随机扩散泄漏积分与发射神经元模型中信号估计方法的综述

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Parameters in diffusion neuronal models are divided into two groups; intrinsic and input parameters. Intrinsic parameters are related to the properties of the neuronal membrane and are assumed to be known throughout the paper. Input parameters characterize processes generated outside the neuron and methods for their estimation are reviewed here. Two examples of the diffusion neuronal model, which are based on the integrate-and-fire concept, are investigated—the Ornstein–Uhlenbeck model as the most common one and the Feller model as an illustration of state-dependent behavior in modeling the neuronal input. Two types of experimental data are assumed—intracellular describing the membrane trajectories and extracellular resulting in knowledge of the interspike intervals. The literature on estimation from the trajectories of the diffusion process is extensive and thus the stress in this review is set on the inference made from the interspike intervals.
机译:扩散神经元模型中的参数分为两组。内部参数和输入参数。内在参数与神经元膜的特性有关,并被认为在整个论文中都是已知的。输入参数表征了在神经元外部产生的过程,其估算方法在此进行了综述。研究了基于积分即火概念的扩散神经元模型的两个示例:Ornstein–Uhlenbeck模型(最常见的模型)和Feller模型(作为对神经元输入进行建模的状态相关行为的例证) 。假设有两种类型的实验数据-细胞内描述膜的轨迹和细胞外,从而了解突突间隔。关于从扩散过程的轨迹进行估计的文献非常丰富,因此本次审查的重点是根据尖峰间的间隔得出的推论。

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