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A Computational Mechanism for Unified Gain and Timing Control in the Cerebellum

机译:小脑统一增益和时序控制的计算机制

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摘要

Precise gain and timing control is the goal of cerebellar motor learning. Because the basic neural circuitry of the cerebellum is homogeneous throughout the cerebellar cortex, a single computational mechanism may be used for simultaneous gain and timing control. Although many computational models of the cerebellum have been proposed for either gain or timing control, few models have aimed to unify them. In this paper, we hypothesize that gain and timing control can be unified by learning of the complete waveform of the desired movement profile instructed by climbing fiber signals. To justify our hypothesis, we adopted a large-scale spiking network model of the cerebellum, which was originally developed for cerebellar timing mechanisms to explain the experimental data of Pavlovian delay eyeblink conditioning, to the gain adaptation of optokinetic response (OKR) eye movements. By conducting large-scale computer simulations, we could reproduce some features of OKR adaptation, such as the learning-related change of simple spike firing of model Purkinje cells and vestibular nuclear neurons, simulated gain increase, and frequency-dependent gain increase. These results suggest that the cerebellum may use a single computational mechanism to control gain and timing simultaneously.
机译:精确的增益和定时控制是小脑运动学习的目标。由于小脑的基本神经电路在整个小脑皮层中是同质的,因此可以将单个计算机制用于同时的增益和时序控制。尽管已经提出了小脑的许多计算模型用于增益或时序控制,但很少有模型旨在将它们统一起来。在本文中,我们假设可以通过学习由攀爬光纤信号指示的所需运动曲线的完整波形来统一增益和时序控制。为了证明我们的假设是正确的,我们采用了小脑的大型尖峰网络模型,该模型最初是为小脑计时机制开发的,用于解释巴甫洛夫式延迟眨眼条件调节的实验数据,以适应光动力反应(OKR)眼球运动的增益。通过进行大规模的计算机仿真,我们可以重现OKR适应性的一些特征,例如与学习相关的模型Purkinje细胞和前庭核神经元简单尖峰发射的变化,模拟增益的增加以及频率相关的增益的增加。这些结果表明,小脑可能使用单个计算机制来同时控制增益和时序。

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