Dillon Daniel G, Belleau Emily L, Origlio Julianne, McKee Madison, Jahan Aava, Meyer Ashley, Souther Min Kang, Brunner Devon, Kuhn Manuel, Ang Yuen Siang, Cusin Cristina, Fava Maurizio, Pizzagalli Diego A
Center for Depression, Anxiety and Stress Research, McLean Hospital, Belmont MA, USA.
Harvard Medical School, Boston MA, USA.
Comput Psychiatr. 2024 May 3;8(1):46-69. doi: 10.5334/cpsy.108. eCollection 2024.
The Probabilistic Reward Task (PRT) is widely used to investigate the impact of Major Depressive Disorder (MDD) on reinforcement learning (RL), and recent studies have used it to provide insight into decision-making mechanisms affected by MDD. The current project used PRT data from unmedicated, treatment-seeking adults with MDD to extend these efforts by: (1) providing a more detailed analysis of standard PRT metrics-response bias and discriminability-to better understand how the task is performed; (2) analyzing the data with two computational models and providing psychometric analyses of both; and (3) determining whether response bias, discriminability, or model parameters predicted responses to treatment with placebo or the atypical antidepressant bupropion. Analysis of standard metrics replicated recent work by demonstrating a dependency between response bias and response time (RT), and by showing that reward totals in the PRT are governed by discriminability. Behavior was well-captured by the Hierarchical Drift Diffusion Model (HDDM), which models decision-making processes; the HDDM showed excellent internal consistency and acceptable retest reliability. A separate "belief" model reproduced the evolution of response bias over time better than the HDDM, but its psychometric properties were weaker. Finally, the predictive utility of the PRT was limited by small samples; nevertheless, depressed adults who responded to bupropion showed larger pre-treatment starting point biases in the HDDM than non-responders, indicating greater sensitivity to the PRT's asymmetric reinforcement contingencies. Together, these findings enhance our understanding of reward and decision-making mechanisms that are implicated in MDD and probed by the PRT.
概率奖励任务(PRT)被广泛用于研究重度抑郁症(MDD)对强化学习(RL)的影响,最近的研究利用它来深入了解受MDD影响的决策机制。当前项目使用来自未接受药物治疗、寻求治疗的成年MDD患者的PRT数据,通过以下方式扩展这些研究:(1)对标准PRT指标——反应偏差和辨别力进行更详细的分析,以更好地理解任务的执行方式;(2)用两种计算模型分析数据并对两者进行心理测量分析;(3)确定反应偏差、辨别力或模型参数是否能预测对安慰剂或非典型抗抑郁药安非他酮治疗的反应。对标准指标的分析重复了近期的研究工作,证明了反应偏差与反应时间(RT)之间的相关性,并表明PRT中的奖励总量受辨别力支配。分层漂移扩散模型(HDDM)很好地捕捉了行为,该模型对决策过程进行建模;HDDM显示出出色的内部一致性和可接受的重测信度。一个单独的“信念”模型比HDDM更好地再现了反应偏差随时间的演变,但其心理测量特性较弱。最后,PRT的预测效用受样本量小的限制;尽管如此,对安非他酮有反应的抑郁症成年人在HDDM中治疗前的起始点偏差比无反应者更大,这表明对PRT的不对称强化意外情况更敏感。总之,这些发现增强了我们对与MDD相关且由PRT探测的奖励和决策机制的理解。