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Stimulus reconstruction from neural spike trains: Are conventional filters suitable for both periodic and aperiodic stimuli?

机译:来自神经尖峰序列的刺激重建:传统的过滤器是否适合周期性和非周期性的刺激?

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摘要

Human neurone system encodes all stimuli into series of spike trains and our brain reconstructs the stimulus back from the spikes. Main purpose of this paper is to identify the suitability of conventional filters to mimic the process of original stimulus reconstruction from neural spike trains as brain does. As human brain receives periodic and aperiodic types of signals, in this paper we have used pulse oximetry waveforms (periodic) and Gaussian signal (aperiodic) as the stimuli. For the neural spike train generation two different neurone models have been used, one model was very simple single threshold level crossing detector and the other one was an advanced simulated stochastic leaky integrate-and-fire neurone model with dynamical threshold. Level crossing detector model is used to generate spike trains from periodic signal whereas both neurone models have been used to generate spike trains for aperiodic Gaussian signal. A simple low-pass Butterworth filter and an advanced Wiener-Kolmogorov filter have been used for reconstructing the stimuli from spike trains. Comparison of the results has been done by the measure of cross correlation coefficients between the actual stimulus and the reconstructed counterpart. Comparison of the results reveal that simple level crossing detector model along with an advanced Wiener-Kolmogorov filter can achieve reconstruction of periodic signal up to 98.91 % whereas combination of the advanced simulated neurone models with an advanced Wiener-Kolmogorov filter does not achieve reconstruction of more than 55% for aperiodic signal. This study proves that conventional filters are good for periodic signal reconstruction from their neural spike trains but they are not suitable for aperiodic signals. (C) 2005 Elsevier B.V. All rights reserved.
机译:人类神经元系统将所有刺激编码为一系列尖峰序列,而我们的大脑则从尖峰中重建出刺激。本文的主要目的是确定常规过滤器是否适合于模拟大脑像神经刺激序列那样的原始刺激重建过程。当人脑接收周期性和非周期性的信号时,本文中我们使用脉搏血氧饱和度波形(周期性)和高斯信号(非周期性)作为刺激。对于神经尖峰序列生成,已使用了两种不同的神经元模型,一种模型是非常简单的单阈值水平交叉检测器,另一种模型是具有动态阈值的高级模拟随机泄漏积分与发射神经元模型。电平交叉检测器模型用于从周期性信号生成尖峰序列,而两种神经元模型都已用于生成非周期性高斯信号的尖峰序列。一个简单的低通巴特沃斯滤波器和一个先进的维纳-科莫哥罗夫滤波器已被用于重建尖峰脉冲序列的刺激。通过比较实际刺激和重建刺激之间的互相关系数来完成结果的比较。结果比较表明,简单的电平交叉检测器模型与先进的Wiener-Kolmogorov滤波器可以实现高达98.91%的周期信号重建,而先进的模拟神经元模型与先进的Wiener-Kolmogorov滤波器的组合不能实现更多的重建。非周期性信号的55%以上。这项研究证明,常规滤波器对于从其神经尖峰序列进行周期性信号重建是有好处的,但它们不适用于非周期性信号。 (C)2005 Elsevier B.V.保留所有权利。

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