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Coding and Decoding with Adapting Neurons: A Population Approach to the Peri-Stimulus Time Histogram

机译:编码和解码与适应性神经元:周围刺激时间直方图的人口方法。

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The response of a neuron to a time-dependent stimulus, as measured in a Peri-Stimulus-Time-Histogram (PSTH), exhibits an intricate temporal structure that reflects potential temporal coding principles. Here we analyze the encoding and decoding of PSTHs for spiking neurons with arbitrary refractoriness and adaptation. As a modeling framework, we use the spike response model, also known as the generalized linear neuron model. Because of refractoriness, the effect of the most recent spike on the spiking probability a few milliseconds later is very strong. The influence of the last spike needs therefore to be described with high precision, while the rest of the neuronal spiking history merely introduces an average self-inhibition or adaptation that depends on the expected number of past spikes but not on the exact spike timings. Based on these insights, we derive a ‘quasi-renewal equation’ which is shown to yield an excellent description of the firing rate of adapting neurons. We explore the domain of validity of the quasi-renewal equation and compare it with other rate equations for populations of spiking neurons. The problem of decoding the stimulus from the population response (or PSTH) is addressed analogously. We find that for small levels of activity and weak adaptation, a simple accumulator of the past activity is sufficient to decode the original input, but when refractory effects become large decoding becomes a non-linear function of the past activity. The results presented here can be applied to the mean-field analysis of coupled neuron networks, but also to arbitrary point processes with negative self-interaction.
机译:神经元对随时间变化的刺激的反应,如在围刺激时间直方图(PSTH)中测量的,表现出反映潜在的时间编码原理的复杂时间结构。在这里,我们分析了PSTHs的编码和解码,以刺激任意神经元和适应神经元。作为建模框架,我们使用峰值响应模型,也称为广义线性神经元模型。由于耐火性,最近的峰值对几毫秒后的峰值概率的影响非常强。因此,需要以较高的精度描述最后一个尖峰的影响,而其余的神经元尖峰历史仅会引入平均自我抑制或适应能力,这取决于过去尖峰的预期数量,而不取决于确切的尖峰时间。基于这些见解,我们得出了一个“准更新方程”,该方程可很好地描述适应神经元的放电速率。我们探索了拟更新方程有效性的范围,并将其与其他速率方程用于尖峰神经元群体的比较。类似地解决了从人口响应(或PSTH)中解码刺激的问题。我们发现,对于较小级别的活动和较弱的适应性,过去活动的简单累加器就足以对原始输入进行解码,但是,当耐火效果变大时,解码就成为过去活动的非线性函数。这里介绍的结果可以应用于耦合神经元网络的均值场分析,也可以应用于具有负自相互作用的任意点过程。

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