| Literature DB >> 35731646 |
Marieke Jepma1,2,3, Mathieu Roy4,5, Kiran Ramlakhan2,6, Monique van Velzen7, Albert Dahan7.
Abstract
Both unexpected pain and unexpected pain absence can drive avoidance learning, but whether they do so via shared or separate neural and neurochemical systems is largely unknown. To address this issue, we combined an instrumental pain-avoidance learning task with computational modeling, functional magnetic resonance imaging (fMRI), and pharmacological manipulations of the dopaminergic (100 mg levodopa) and opioidergic (50 mg naltrexone) systems (N = 83). Computational modeling provided evidence that untreated participants learned more from received than avoided pain. Our dopamine and opioid manipulations negated this learning asymmetry by selectively increasing learning rates for avoided pain. Furthermore, our fMRI analyses revealed that pain prediction errors were encoded in subcortical and limbic brain regions, whereas no-pain prediction errors were encoded in frontal and parietal cortical regions. However, we found no effects of our pharmacological manipulations on the neural encoding of prediction errors. Together, our results suggest that human pain-avoidance learning is supported by separate threat- and safety-learning systems, and that dopamine and endogenous opioids specifically regulate learning from successfully avoided pain.Entities:
Keywords: computational modeling; dopamine; endogenous opioids; fMRI; human; neuroscience; pain-avoidance learning
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Year: 2022 PMID: 35731646 PMCID: PMC9217130 DOI: 10.7554/eLife.74149
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.713