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Dopamine selectively remediates 'model-based' reward learning: a computational approach

机译:多巴胺选择性地补救“基于模型”的奖励学习:一种计算方法

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Patients with loss of dopamine due to Parkinson's disease are impaired at learning from reward. However, it remains unknown precisely which aspect of learning is impaired. In particular, learning from reward, or reinforcement learning, can be driven by two distinct computational processes. One involves habitual stamping-in of stimulus-response associations, hypothesized to arise computationally from 'model-free' learning. The other, 'model-based' learning, involves learning a model of the world that is believed to support goal-directed behaviour. Much work has pointed to a role for dopamine in model-free learning. But recent work suggests model-based learning may also involve dopamine modulation, raising the possibility that model-based learning may contribute to the learning impairment in Parkinson's disease. To directly test this, we used a two-step reward-learning task which dissociates model-free versus model-based learning. We evaluated learning in patients with Parkinson's disease tested ON versus OFF their dopamine replacement medication and in healthy controls. Surprisingly, we found no effect of disease or medication on model-free learning. Instead, we found that patients tested OFF medication showed a marked impairment in model-based learning, and that this impairment was remediated by dopaminergic medication. Moreover, model-based learning was positively correlated with a separate measure of working memory performance, raising the possibility of common neural substrates. Our results suggest that some learning deficits in Parkinson's disease may be related to an inability to pursue reward based on complete representations of the environment.
机译:因帕金森氏病而丧失多巴胺的患者在学习奖励方面会受到损害。但是,确切地尚不清楚学习的哪个方面受到损害。特别地,可以通过两个不同的计算过程来驱动从奖励中学习或强化学习。一种涉及刺激-响应关联的惯常踩踏,它们被认为是从“无模型”学习中计算出来的。另一种“基于模型”的学习涉及学习被认为支持目标导向行为的世界模型。许多工作指出了多巴胺在无模型学习中的作用。但是最近的工作表明,基于模型的学习也可能涉及多巴胺调节,从而增加了基于模型的学习可能导致帕金森氏病学习障碍的可能性。为了直接测试这一点,我们使用了两步式的奖励学习任务,该任务将无模型学习与基于模型的学习进行了分离。我们评估了接受多巴胺替代药物治疗的帕金森病患者的学习情况,以及健康对照者的学习情况。令人惊讶的是,我们发现疾病或药物对无模型学习没有影响。相反,我们发现接受OFF药物测试的患者在基于模型的学习中表现出明显的损伤,并且这种损伤可以通过多巴胺能药物予以纠正。此外,基于模型的学习与工作记忆性能的单独度量呈正相关,从而增加了常见神经底物的可能性。我们的结果表明,帕金森氏病的某些学习缺陷可能与无法基于完整的环境表征寻求奖励有关。

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