| Literature DB >> 33350387 |
Christopher Gagne1,2, Ondrej Zika3, Peter Dayan2,4, Sonia J Bishop1,5,6.
Abstract
Using a contingency volatility manipulation, we tested the hypothesis that difficulty adapting probabilistic decision-making to second-order uncertainty might reflect a core deficit that cuts across anxiety and depression and holds regardless of whether outcomes are aversive or involve reward gain or loss. We used bifactor modeling of internalizing symptoms to separate symptom variance common to both anxiety and depression from that unique to each. Across two experiments, we modeled performance on a probabilistic decision-making under volatility task using a hierarchical Bayesian framework. Elevated scores on the common internalizing factor, with high loadings across anxiety and depression items, were linked to impoverished adjustment of learning to volatility regardless of whether outcomes involved reward gain, electrical stimulation, or reward loss. In particular, high common factor scores were linked to dampened learning following better-than-expected outcomes in volatile environments. No such relationships were observed for anxiety- or depression-specific symptom factors.Entities:
Keywords: anxiety; computational psychiatry; decision making; depression; human; neuroscience; reinforcement learning; uncertainty
Mesh:
Year: 2020 PMID: 33350387 PMCID: PMC7755392 DOI: 10.7554/eLife.61387
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140