Literature DB >> 32525345

A systems-neuroscience model of phasic dopamine.

Jessica A Mollick1, Thomas E Hazy1, Kai A Krueger1, Ananta Nair1, Prescott Mackie1, Seth A Herd1, Randall C O'Reilly1.   

Abstract

We describe a neurobiologically informed computational model of phasic dopamine signaling to account for a wide range of findings, including many considered inconsistent with the simple reward prediction error (RPE) formalism. The central feature of this PVLV framework is a distinction between a primary value (PV) system for anticipating primary rewards (Unconditioned Stimuli [USs]), and a learned value (LV) system for learning about stimuli associated with such rewards (CSs). The LV system represents the amygdala, which drives phasic bursting in midbrain dopamine areas, while the PV system represents the ventral striatum, which drives shunting inhibition of dopamine for expected USs (via direct inhibitory projections) and phasic pausing for expected USs (via the lateral habenula). Our model accounts for data supporting the separability of these systems, including individual differences in CS-based (sign-tracking) versus US-based learning (goal-tracking). Both systems use competing opponent-processing pathways representing evidence for and against specific USs, which can explain data dissociating the processes involved in acquisition versus extinction conditioning. Further, opponent processing proved critical in accounting for the full range of conditioned inhibition phenomena, and the closely related paradigm of second-order conditioning. Finally, we show how additional separable pathways representing aversive USs, largely mirroring those for appetitive USs, also have important differences from the positive valence case, allowing the model to account for several important phenomena in aversive conditioning. Overall, accounting for all of these phenomena strongly constrains the model, thus providing a well-validated framework for understanding phasic dopamine signaling. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

Entities:  

Year:  2020        PMID: 32525345     DOI: 10.1037/rev0000199

Source DB:  PubMed          Journal:  Psychol Rev        ISSN: 0033-295X            Impact factor:   8.934


  4 in total

1.  A gradual temporal shift of dopamine responses mirrors the progression of temporal difference error in machine learning.

Authors:  Ryunosuke Amo; Sara Matias; Akihiro Yamanaka; Kenji F Tanaka; Naoshige Uchida; Mitsuko Watabe-Uchida
Journal:  Nat Neurosci       Date:  2022-07-07       Impact factor: 28.771

Review 2.  Biological constraints on neural network models of cognitive function.

Authors:  Friedemann Pulvermüller; Rosario Tomasello; Malte R Henningsen-Schomers; Thomas Wennekers
Journal:  Nat Rev Neurosci       Date:  2021-06-28       Impact factor: 34.870

Review 3.  The Role of the Lateral Habenula in Inhibitory Learning from Reward Omission.

Authors:  Rodrigo Sosa; Jesús Mata-Luévanos; Mario Buenrostro-Jáuregui
Journal:  eNeuro       Date:  2021-06-22

4.  "Liking" as an early and editable draft of long-run affective value.

Authors:  Peter Dayan
Journal:  PLoS Biol       Date:  2022-01-05       Impact factor: 8.029

  4 in total

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