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Characterizing ISI and sub-threshold membrane potential distributions: Ensemble of IF neurons with random squared-noise intensity

机译:表征ISI和子阈值膜电位分布:如果神经元具有随机平方噪声强度的集合

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摘要

A theoretical investigation is presented that characterizes the emerging sub-threshold membrane potential and inter-spike interval (ISI) distributions of an ensemble of IF neurons that group together and fire together. The squared-noise intensity sigma(2) of the ensemble of neurons is treated as a random variable to account for the electrophysiological variations across population of nearly identical neurons. Employing superstatistical framework, both ISI distribution and sub-threshold membrane potential distribution of neuronal ensemble are obtained in terms of generalized K-distribution. The resulting distributions exhibit asymptotic behavior akin to stretched exponential family. Extensive simulations of the underlying SDE with random sigma(2) are carried out. The results are found to be in excellent agreement with the analytical results. The analysis has been extended to cover the case corresponding to independent random fluctuations in drift in addition to random squared-noise intensity. The novelty of the proposed analytical investigation for the ensemble of IF neurons is that it yields closed form expressions of probability distributions in terms of generalized K-distribution. Based on a record of spiking activity of thousands of neurons, the findings of the proposed model are validated. The squared-noise intensity sigma(2) of identified neurons from the data is found to follow gamma distribution. The proposed generalized K-distribution is found to be in excellent agreement with that of empirically obtained ISI distribution of neuronal ensemble. (C) 2018 Elsevier B.V. All rights reserved.
机译:提出了一种理论上的研究,其特征在于新出现的子阈值膜电位和峰值间隔(ISI)分布,如果将群体的集合群体群体一起群体和释放在一起。神经元集合的平方噪声强度Sigma(2)被视为随机变量,以考虑跨越几乎相同神经元的电生理变异。采用克斯特统计框架,在广义k分布方面获得了神经元集合的ISI分布和子阈值膜电位分布。所得到的分布表现出类似于拉伸指数家庭的渐近行为。进行随机SIGMA(2)的底层SDE的广泛模拟。结果被发现与分析结果非常吻合。除了随机平方噪声强度之外,还扩展了分析以覆盖与漂移的独立随机波动相对应的情况。如果神经元的结合的拟议分析研究的新颖性是它在广义K分布方面产生了概率分布的闭合形式表达。基于成千上万神经元的尖峰活动的记录,验证了所提出的模型的发现。发现来自数据的鉴定神经元的平方噪声强度Sigma(2)遵循伽马分布。拟议的广义K分布被认为是与经验所得ISI分布的神经元集合的分布非常一致。 (c)2018 Elsevier B.v.保留所有权利。

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