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Elemental spiking neuron model for reproducing diverse firing patterns and predicting precise firing times.

机译:元素加标神经元模型,用于再现不同的发射模式并预测精确的发射时间。

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摘要

In simulating realistic neuronal circuitry composed of diverse types of neurons, we need an elemental spiking neuron model that is capable of not only quantitatively reproducing spike times of biological neurons given in vivo-like fluctuating inputs, but also qualitatively representing a variety of firing responses to transient current inputs. Simplistic models based on leaky integrate-and-fire mechanisms have demonstrated the ability to adapt to biological neurons. In particular, the multi-timescale adaptive threshold (MAT) model reproduces and predicts precise spike times of regular-spiking, intrinsic-bursting, and fast-spiking neurons, under any fluctuating current; however, this model is incapable of reproducing such specific firing responses as inhibitory rebound spiking and resonate spiking. In this paper, we augment the MAT model by adding a voltage dependency term to the adaptive threshold so that the model can exhibit the full variety of firing responses to various transient current pulses while maintaining the high adaptability inherent in the original MAT model. Furthermore, with this addition, our model is actually able to better predict spike times. Despite the augmentation, the model has only four free parameters and is implementable in an efficient algorithm for large-scale simulation due to its linearity, serving as an element neuron model in the simulation of realistic neuronal circuitry.
机译:在模拟由多种类型的神经元组成的逼真的神经元回路时,我们需要一个基本的尖峰神经元模型,该模型不仅能够定量地重现给定的类似体内波动输入的生物神经元的尖峰时间,而且还能定性地表示对瞬态电流输入。基于泄漏的集成和发射机制的简化模型已证明具有适应生物神经元的能力。尤其是,多时标自适应阈值(MAT)模型可在任何波动的电流下再现并预测常规脉冲,固有脉冲和快速脉冲神经元的精确脉冲时间。但是,该模型无法重现诸如抑制反弹尖峰和共振尖峰之类的特定发射响应。在本文中,我们通过向自适应阈值添加电压依赖性项来增强MAT模型,从而使该模型可以展现对各种瞬态电流脉冲的各种触发响应,同时保持原始MAT模型固有的高适应性。此外,有了这个增加,我们的模型实际上能够更好地预测峰值时间。尽管增加了该模型,但是该模型仅具有四个自由参数,并且由于其线性而可以在大规模仿真的有效算法中实现,在现实的神经元电路的仿真中可以用作基本神经元模型。

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