Applying Reinforcement Learning to Rodent Stress Research.

Q1 Psychology Chronic Stress Pub Date : 2021-02-01 eCollection Date: 2021-01-01 DOI:10.1177/2470547020984732
Clara Liao, Alex C Kwan
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Abstract

Rodent models are an invaluable tool for studying the pathophysiological mechanisms underlying stress and depressive disorders. However, the widely used behavioral assays to measure depressive-like states in rodents have serious limitations. In this commentary, we suggest that learning tasks, particularly those that can be analyzed with the framework of reinforcement learning, are ideal for assaying reward processing deficits relevant to depression. The key advantages of these tasks are their repeatable, quantifiable nature and the link to clinical studies. By optimizing the behavioral readout of stress-induced phenotypes in rodents, a reinforcement learning-based approach may help bridge the translational gap and advance antidepressant discovery.

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将强化学习应用于啮齿动物压力研究。
啮齿动物模型是研究压力和抑郁障碍的病理生理机制的宝贵工具。然而,广泛用于测量啮齿类动物抑郁样状态的行为测定方法存在严重的局限性。在这篇评论中,我们认为学习任务,尤其是那些可以在强化学习框架下进行分析的任务,是评估与抑郁相关的奖赏加工缺陷的理想方法。这些任务的主要优势在于其可重复性、可量化性以及与临床研究的联系。通过优化啮齿动物应激诱导表型的行为读数,基于强化学习的方法可能有助于弥合转化差距并推动抗抑郁药物的发现。
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来源期刊
Chronic Stress
Chronic Stress Psychology-Clinical Psychology
CiteScore
7.40
自引率
0.00%
发文量
25
审稿时长
6 weeks
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