Literature DB >> 35289748

Dopaminergic challenge dissociates learning from primary versus secondary sources of information.

Alicia J Rybicki1, Sophie L Sowden1, Bianca Schuster1, Jennifer L Cook1.   

Abstract

Some theories of human cultural evolution posit that humans have social-specific learning mechanisms that are adaptive specialisations moulded by natural selection to cope with the pressures of group living. However, the existence of neurochemical pathways that are specialised for learning from social information and individual experience is widely debated. Cognitive neuroscientific studies present mixed evidence for social-specific learning mechanisms: some studies find dissociable neural correlates for social and individual learning, whereas others find the same brain areas and, dopamine-mediated, computations involved in both. Here, we demonstrate that, like individual learning, social learning is modulated by the dopamine D2 receptor antagonist haloperidol when social information is the primary learning source, but not when it comprises a secondary, additional element. Two groups (total N = 43) completed a decision-making task which required primary learning, from own experience, and secondary learning from an additional source. For one group, the primary source was social, and secondary was individual; for the other group this was reversed. Haloperidol affected primary learning irrespective of social/individual nature, with no effect on learning from the secondary source. Thus, we illustrate that dopaminergic mechanisms underpinning learning can be dissociated along a primary-secondary but not a social-individual axis. These results resolve conflict in the literature and support an expanding field showing that, rather than being specialised for particular inputs, neurochemical pathways in the human brain can process both social and non-social cues and arbitrate between the two depending upon which cue is primarily relevant for the task at hand.
© 2022, Rybicki et al.

Entities:  

Keywords:  dopamine; haloperidol; human; neuroscience; reinforcement learning; reward learning; social learning

Mesh:

Substances:

Year:  2022        PMID: 35289748      PMCID: PMC9023054          DOI: 10.7554/eLife.74893

Source DB:  PubMed          Journal:  Elife        ISSN: 2050-084X            Impact factor:   8.713


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1.  Dopaminergic challenge dissociates learning from primary versus secondary sources of information.

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Journal:  Elife       Date:  2022-03-15       Impact factor: 8.713

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