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Reward and avoidance learning in the context of aversive environments and possible implications for depressive symptoms

  • Background Aversive stimuli in the environment influence human actions. This includes valence-dependent influences on action selection, e.g., increased avoidance but decreased approach behavior. However, it is yet unclear how aversive stimuli interact with complex learning and decision-making in the reward and avoidance domain. Moreover, the underlying computational mechanisms of these decision-making biases are unknown. Methods To elucidate these mechanisms, 54 healthy young male subjects performed a two-step sequential decision-making task, which allows to computationally model different aspects of learning, e.g., model-free, habitual, and model-based, goal-directed learning. We used a within-subject design, crossing task valence (reward vs. punishment learning) with emotional context (aversive vs. neutral background stimuli). We analyzed choice data, applied a computational model, and performed simulations. Results Whereas model-based learning was not affected, aversive stimuli interacted with model-free learning in a way thatBackground Aversive stimuli in the environment influence human actions. This includes valence-dependent influences on action selection, e.g., increased avoidance but decreased approach behavior. However, it is yet unclear how aversive stimuli interact with complex learning and decision-making in the reward and avoidance domain. Moreover, the underlying computational mechanisms of these decision-making biases are unknown. Methods To elucidate these mechanisms, 54 healthy young male subjects performed a two-step sequential decision-making task, which allows to computationally model different aspects of learning, e.g., model-free, habitual, and model-based, goal-directed learning. We used a within-subject design, crossing task valence (reward vs. punishment learning) with emotional context (aversive vs. neutral background stimuli). We analyzed choice data, applied a computational model, and performed simulations. Results Whereas model-based learning was not affected, aversive stimuli interacted with model-free learning in a way that depended on task valence. Thus, aversive stimuli increased model-free avoidance learning but decreased model-free reward learning. The computational model confirmed this effect: the parameter lambda that indicates the influence of reward prediction errors on decision values was increased in the punishment condition but decreased in the reward condition when aversive stimuli were present. Further, by using the inferred computational parameters to simulate choice data, our effects were captured. Exploratory analyses revealed that the observed biases were associated with subclinical depressive symptoms. Conclusion Our data show that aversive environmental stimuli affect complex learning and decision-making, which depends on task valence. Further, we provide a model of the underlying computations of this affective modulation. Finally, our finding of increased decision-making biases in subjects reporting subclinical depressive symptoms matches recent reports of amplified Pavlovian influences on action selection in depression and suggests a potential vulnerability factor for mood disorders. We discuss our findings in the light of the involvement of the neuromodulators serotonin and dopamine.show moreshow less

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Author details:Miriam Hannah SeboldORCiDGND, Maria GarbusowORCiDGND, P. Jetzschmann, Daniel SchadORCiDGND, S. Nebe, Florian SchlagenhaufORCiDGND, A. Heinz, Michael Armin RappORCiDGND, Nina Romanczuk-SeiferthORCiD
DOI:https://doi.org/10.1007/s00213-019-05299-9
ISSN:0033-3158
ISSN:1432-2072
Pubmed ID:https://pubmed.ncbi.nlm.nih.gov/31254091
Title of parent work (English):Psychopharmacology
Publisher:Springer
Place of publishing:New York
Publication type:Article
Language:English
Date of first publication:2019/06/28
Publication year:2019
Release date:2020/12/07
Tag:Affective modulation; Avoidance learning; Computational psychiatry; Decision-making; Depression symptoms; Reinforcement learning; Reward learning
Volume:236
Issue:8
Number of pages:13
First page:2437
Last Page:2449
Funding institution:German Research Foundation (Deutsche Forschungsgemeinschaft, DFG)German Research Foundation (DFG) [HE2597/14-1, HE2597/14-2, RA1047/2-1, RA1047/2-2, RO 5046/2-2, SCHA1971/1-2, SCHL 1969/4-1, SCHL 1969/2-2]; Federal Ministry of Health (Bundesministerium fur Gesundheit, BMG) [ZMVI1-2516DSM223]
Organizational units:Humanwissenschaftliche Fakultät / Strukturbereich Kognitionswissenschaften / Department Sport- und Gesundheitswissenschaften
DDC classification:1 Philosophie und Psychologie / 15 Psychologie / 150 Psychologie
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