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重性抑郁障碍中的奖惩反转学习。

Reward and punishment reversal-learning in major depressive disorder.

机构信息

Department of Psychiatry.

Departments of Psychology and Neuroscience.

出版信息

J Abnorm Psychol. 2020 Nov;129(8):810-823. doi: 10.1037/abn0000641. Epub 2020 Oct 1.

Abstract

Depression has been associated with impaired reward and punishment processing, but the specific nature of these deficits is still widely debated. We analyzed reinforcement-based decision making in individuals with major depressive disorder (MDD) to identify the specific decision mechanisms contributing to poorer performance. Individuals with MDD ( = 64) and matched healthy controls ( = 64) performed a probabilistic reversal-learning task in which they used feedback to identify which of two stimuli had the highest probability of reward (reward condition) or lowest probability of punishment (punishment condition). Learning differences were characterized using a hierarchical Bayesian reinforcement learning model. Depressed individuals made fewer optimal choices and adjusted more slowly to reversals in both the reward and punishment conditions. Computational modeling revealed that depressed individuals showed lower learning-rates and, to a lesser extent, lower value sensitivity in both the reward and punishment conditions. Learning-rates also predicted depression more accurately than simple performance metrics. These results demonstrate that depression is characterized by a hyposensitivity to positive outcomes, but not a hypersensitivity to negative outcomes. Additionally, we demonstrate that computational modeling provides a more precise characterization of the dynamics contributing to these learning deficits, offering stronger insights into the mechanistic processes affected by depression. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

摘要

抑郁与受损的奖惩处理有关,但这些缺陷的具体性质仍存在广泛争议。我们分析了患有重度抑郁症(MDD)个体的基于强化的决策制定,以确定导致较差表现的具体决策机制。64 名 MDD 患者(=64)和匹配的健康对照组(=64)进行了概率反转学习任务,他们使用反馈来确定两个刺激中哪一个具有最高的奖励概率(奖励条件)或最低的惩罚概率(惩罚条件)。使用分层贝叶斯强化学习模型来描述学习差异。抑郁个体在奖励和惩罚条件下做出的最佳选择更少,调整速度也更慢。计算模型表明,抑郁个体在奖励和惩罚条件下的学习率较低,并且在一定程度上价值敏感性较低。学习率比简单的绩效指标更能准确地预测抑郁。这些结果表明,抑郁的特征是对正结果的敏感性降低,但对负结果的敏感性没有增加。此外,我们证明计算模型提供了对导致这些学习缺陷的动态的更精确描述,为理解抑郁所影响的机制过程提供了更强有力的见解。(PsycInfo 数据库记录(c)2020 APA,保留所有权利)。

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