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Decoding Poisson Spike Trains by Gaussian Filtering

机译:用高斯滤波解码泊松峰值列。

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摘要

The temporal waveform of neural activity is commonly estimated by low-pass filtering spike train data through convolution with a gaussian kernel. However, the criteria for selecting the gaussian width σ are not well understood. Given an ensemble of Poisson spike trains generated by an instantaneous firing rate function λ(t), the problem was to recover an optimal estimate of λ(t) by gaussian filtering. We provide equations describing the optimal value of σ using an error minimization criterion and examine how the optimal σ varies within a parameter space defining the statistics of inhomogeneous Poisson spike trains. The process was studied both analytically and through simulations. The rate functions λ(t) were randomly generated, with the three parameters defining spike statistics being the mean of λ(t), the variance of λ(t), and the exponent α of the Fourier amplitude spectrum 1/f~α of λ(t). The value of σ_(opt) followed a power law as a function of the pooled mean interspike interval I, σ_(opt) = aI~b, where a was inversely related to the coefficient of variation C_v of λ(t), and b was inversely related to the Fourier spectrum exponent α. Besides applications for data analysis, optimal recovery of an analog signal waveform λ(t) from spike trains may also be useful in understanding neural signal processing in vivo.
机译:神经活动的时间波形通常是通过与高斯核卷积的低通滤波尖峰序列数据来估计的。然而,对于选择高斯宽度σ的标准还没有很好地理解。给定由瞬时点火速率函数λ(t)生成的Poisson峰值序列的集合,问题是要通过高斯滤波来恢复λ(t)的最优估计。我们提供了使用误差最小化准则描述σ最佳值的方程式,并研究了最佳σ如何在定义非均匀泊松尖峰序列统计信息的参数空间内变化。对该过程进行了分析和模拟研究。速率函数λ(t)是随机生成的,定义尖峰统计的三个参数分别是λ(t)的平均值,λ(t)的方差和傅立叶振幅谱的指数α/ f〜α。 λ(t)。 σ_(opt)的值遵循幂律,作为集合平均尖峰间隔I的函数,σ_(opt)= aI〜b,其中a与λ(t)的变异系数C_v成反比,而b与傅立叶谱指数α成反比。除了用于数据分析的应用程序之外,从峰值序列中模拟信号波形λ(t)的最佳恢复在理解体内神经信号处理方面也可能有用。

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  • 来源
    《Neural computation》 |2010年第5期|p.1245-1271|共27页
  • 作者

    Sidney R. Lehky;

  • 作者单位

    Computational Neuroscience Lab, Salk Institute, La Jolla, CA 92037, U.S.A.;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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