Content area

Abstract

Pain is a primary driver of learning and motivated action. It is also a target of learning, as nociceptive brain responses are shaped by learning processes. We combined an instrumental pain avoidance task with an axiomatic approach to assessing fMRI signals related to prediction errors (PEs), which drive reinforcement-based learning. We found that pain PEs were encoded in the periaqueductal gray (PAG), a structure important for pain control and learning in animal models. Axiomatic tests combined with dynamic causal modeling suggested that ventromedial prefrontal cortex, supported by putamen, provides an expected value-related input to the PAG, which then conveys PE signals to prefrontal regions important for behavioral regulation, including orbitofrontal, anterior mid-cingulate and dorsomedial prefrontal cortices. Thus, pain-related learning involves distinct neural circuitry, with implications for behavior and pain dynamics.

Details

Title
Representation of aversive prediction errors in the human periaqueductal gray
Author
Roy, Mathieu; Shohamy, Daphna; Daw, Nathaniel; Jepma, Marieke; Wimmer, G Elliott; Wager, Tor D
Pages
1607-12
Publication year
2014
Publication date
Nov 2014
Publisher
Nature Publishing Group
ISSN
10976256
e-ISSN
15461726
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1656318376
Copyright
Copyright Nature Publishing Group Nov 2014