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从单个神经元放电序列估计非平稳输入信号。

Estimating nonstationary input signals from a single neuronal spike train.

作者信息

Kim Hideaki, Shinomoto Shigeru

机构信息

Department of Physics, Graduate School of Science, Kyoto University, Sakyo-ku, Kyoto 606-8502, Japan.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Nov;86(5 Pt 1):051903. doi: 10.1103/PhysRevE.86.051903. Epub 2012 Nov 2.

DOI:10.1103/PhysRevE.86.051903
PMID:23214810
Abstract

Neurons temporally integrate input signals, translating them into timed output spikes. Because neurons nonperiodically emit spikes, examining spike timing can reveal information about input signals, which are determined by activities in the populations of excitatory and inhibitory presynaptic neurons. Although a number of mathematical methods have been developed to estimate such input parameters as the mean and fluctuation of the input current, these techniques are based on the unrealistic assumption that presynaptic activity is constant over time. Here, we propose tracking temporal variations in input parameters with a two-step analysis method. First, nonstationary firing characteristics comprising the firing rate and non-Poisson irregularity are estimated from a spike train using a computationally feasible state-space algorithm. Then, information about the firing characteristics is converted into likely input parameters over time using a transformation formula, which was constructed by inverting the neuronal forward transformation of the input current to output spikes. By analyzing spike trains recorded in vivo, we found that neuronal input parameters are similar in the primary visual cortex V1 and middle temporal area, whereas parameters in the lateral geniculate nucleus of the thalamus were markedly different.

摘要

神经元对输入信号进行时间整合,将其转化为定时的输出脉冲。由于神经元非周期性地发放脉冲,检查脉冲时间可以揭示有关输入信号的信息,这些信息由兴奋性和抑制性突触前神经元群体的活动所决定。尽管已经开发了许多数学方法来估计输入电流的均值和波动等输入参数,但这些技术基于一个不切实际的假设,即突触前活动随时间是恒定的。在这里,我们提出用一种两步分析法来跟踪输入参数的时间变化。首先,使用一种计算上可行的状态空间算法从脉冲序列中估计包括发放率和非泊松不规则性在内的非平稳发放特征。然后,利用一个通过反转从输入电流到输出脉冲的神经元正向变换而构建的变换公式,将有关发放特征的信息转换为随时间可能的输入参数。通过分析在体记录的脉冲序列,我们发现初级视觉皮层V1和颞中区的神经元输入参数相似,而丘脑外侧膝状体的参数则明显不同。

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Nat Commun. 2019 Oct 30;10(1):4933. doi: 10.1038/s41467-019-12572-0.
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Estimation of the synaptic input firing rates and characterization of the stimulation effects in an auditory neuron.听觉神经元中突触输入放电率的估计及刺激效应的表征。
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