eLife (Feb 2018)

The control of tonic pain by active relief learning

  • Suyi Zhang,
  • Hiroaki Mano,
  • Michael Lee,
  • Wako Yoshida,
  • Mitsuo Kawato,
  • Trevor W Robbins,
  • Ben Seymour

DOI
https://doi.org/10.7554/eLife.31949
Journal volume & issue
Vol. 7

Abstract

Read online

Tonic pain after injury characterises a behavioural state that prioritises recovery. Although generally suppressing cognition and attention, tonic pain needs to allow effective relief learning to reduce the cause of the pain. Here, we describe a central learning circuit that supports learning of relief and concurrently suppresses the level of ongoing pain. We used computational modelling of behavioural, physiological and neuroimaging data in two experiments in which subjects learned to terminate tonic pain in static and dynamic escape-learning paradigms. In both studies, we show that active relief-seeking involves a reinforcement learning process manifest by error signals observed in the dorsal putamen. Critically, this system uses an uncertainty (‘associability’) signal detected in pregenual anterior cingulate cortex that both controls the relief learning rate, and endogenously and parametrically modulates the level of tonic pain. The results define a self-organising learning circuit that reduces ongoing pain when learning about potential relief.

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