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A New Framework for Cortico-Striatal Plasticity: Behavioural Theory Meets In Vitro Data at the Reinforcement-Action Interface

机译:皮质-纹状体可塑性的新框架:行为理论在增强作用界面上遇到体外数据

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摘要

Operant learning requires that reinforcement signals interact with action representations at a suitable neural interface. Much evidence suggests that this occurs when phasic dopamine, acting as a reinforcement prediction error, gates plasticity at cortico-striatal synapses, and thereby changes the future likelihood of selecting the action(s) coded by striatal neurons. But this hypothesis faces serious challenges. First, cortico-striatal plasticity is inexplicably complex, depending on spike timing, dopamine level, and dopamine receptor type. Second, there is a credit assignment problem—action selection signals occur long before the consequent dopamine reinforcement signal. Third, the two types of striatal output neuron have apparently opposite effects on action selection. Whether these factors rule out the interface hypothesis and how they interact to produce reinforcement learning is unknown. We present a computational framework that addresses these challenges. We first predict the expected activity changes over an operant task for both types of action-coding striatal neuron, and show they co-operate to promote action selection in learning and compete to promote action suppression in extinction. Separately, we derive a complete model of dopamine and spike-timing dependent cortico-striatal plasticity from in vitro data. We then show this model produces the predicted activity changes necessary for learning and extinction in an operant task, a remarkable convergence of a bottom-up data-driven plasticity model with the top-down behavioural requirements of learning theory. Moreover, we show the complex dependencies of cortico-striatal plasticity are not only sufficient but necessary for learning and extinction. Validating the model, we show it can account for behavioural data describing extinction, renewal, and reacquisition, and replicate in vitro experimental data on cortico-striatal plasticity. By bridging the levels between the single synapse and behaviour, our model shows how striatum acts as the action-reinforcement interface.
机译:操作者学习要求强化信号在适当的神经接口处与动作表示进行交互。许多证据表明,当多巴胺作为增强预测误差,在皮质-纹状体突触中控制可塑性时,就会发生这种情况,从而改变了将来选择由纹状体神经元编码的动作的可能性。但是这个假设面临着严峻的挑战。首先,皮质-纹状体的可塑性非常复杂,这取决于尖峰时间,多巴胺水平和多巴胺受体类型。其次,存在信用分配问题-行动选择信号早于随后的多巴胺强化信号出现。第三,两种类型的纹状体输出神经元对动作选择具有明显相反的作用。这些因素是否排除了界面假说以及它们如何相互作用以产生强化学习尚不清楚。我们提出了一个应对这些挑战的计算框架。我们首先预测两种类型的动作编码纹状体神经元在一项操作任务上的预期活动变化,并显示它们协同合作以促进学习中的动作选择并竞争以促进灭绝中的动作抑制。另外,我们从体外数据中得出了多巴胺和穗定时依赖的皮质-纹状体可塑性的完整模型。然后,我们显示此模型产生了在一项操作任务中学习和消亡所必需的预测活动变化,这是自下而上的数据驱动的可塑性模型与学习理论的自上而下的行为要求的显着融合。此外,我们表明皮质纹状体可塑性的复杂依赖性不仅是足够的,而且对于学习和消亡是必要的。验证模型,我们证明它可以解释描述灭绝,更新和重新获得的行为数据,并复制皮质-纹状体可塑性的体外实验数据。通过桥接单个突触和行为之间的水平,我们的模型显示了纹状体如何充当行动-增强界面。

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