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Sensory Prediction or Motor Control? Application of Marr–Albus Type Models of Cerebellar Function to Classical Conditioning

机译:感觉预测还是运动控制?小脑功能的Marr-Albus型模型在经典条件调节中的应用

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摘要

Marr–Albus adaptive filter models of the cerebellum have been applied successfully to a range of sensory and motor control problems. Here we analyze their properties when applied to classical conditioning of the nictitating membrane response in rabbits. We consider a system-level model of eyeblink conditioning based on the anatomy of the eyeblink circuitry, comprising an adaptive filter model of the cerebellum, a comparator model of the inferior olive and a linear dynamic model of the nictitating membrane plant. To our knowledge, this is the first model that explicitly includes all these principal components, in particular the motor plant that is vital for shaping and timing the behavioral response. Model assumptions and parameters were systematically investigated to disambiguate basic computational capacities of the model from features requiring tuning of properties and parameter values. Without such tuning, the model robustly reproduced a range of behaviors related to sensory prediction, by displaying appropriate trial-level associative learning effects for both single and multiple stimuli, including blocking and conditioned inhibition. In contrast, successful reproduction of the real-time motor behavior depended on appropriate specification of the plant, cerebellum and comparator models. Although some of these properties appear consistent with the system biology, fundamental questions remain about how the biological parameters are chosen if the cerebellar microcircuit applies a common computation to many distinct behavioral tasks. It is possible that the response profiles in classical conditioning of the eyeblink depend upon operant contingencies that have previously prevailed, for example in naturally occurring avoidance movements.
机译:小脑的Marr-Albus自适应滤波器模型已成功应用于一系列感觉和运动控制问题。在这里,我们分析了它们在兔的硝化膜反应的经典条件下的特性。我们考虑基于眨眼电路的解剖结构的眨眼条件调节的系统级模型,包括小脑的自适应滤波器模型,下橄榄的比较器模型和硝化膜植物的线性动态模型。据我们所知,这是第一个明确包含所有这些主要组成部分的模型,尤其是对于塑造和确定行为响应时间至关重要的发动机。系统地研究了模型假设和参数,以消除模型的基本计算能力与需要调整属性和参数值的特征之间的歧义。如果不进行此类调整,该模型将通过显示针对单个和多个刺激(包括阻断和条件抑制)的适当试验级联想学习效果,来健壮地再现与感觉预测有关的一系列行为。相反,实时运动行为的成功再现取决于植物,小脑和比较模型的适当规格。尽管这些属性中的某些属性看起来与系统生物学一致,但是仍然存在一些基本问题,即如果小脑微电路将通用计算应用于许多不同的行为任务,如何选择生物学参数。眨眼的经典条件下的响应曲线有可能取决于先前普遍存在的操作偶然性,例如在自然发生的回避运动中。

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