A predictive coding account of value-based learning in PTSD: Implications for precision treatments
- PMID: 35609683
- DOI: 10.1016/j.neubiorev.2022.104704
A predictive coding account of value-based learning in PTSD: Implications for precision treatments
Abstract
While there are a number of recommended first-line interventions for posttraumatic stress disorder (PTSD), treatment efficacy has been less than ideal. Generally, PTSD treatment models explain symptom manifestation via associative learning, treating the individual as a passive organism - acted upon - rather than self as agent. At their core, predictive coding (PC) models introduce the fundamental role of self-conceptualisation and hierarchical processing of one's sensory context in safety learning. This theoretical article outlines how predictive coding models of emotion offer a parsimonious framework to explain PTSD treatment response within a value-based decision-making framework. Our model integrates the predictive coding elements of the perceived: self, world and self-in the world and how they impact upon one or more discrete stages of value-based decision-making: (1) mental representation; (2) emotional valuation; (3) action selection and (4) outcome valuation. We discuss treatment and research implications stemming from our hypotheses.
Keywords: Active inference; Bayesian brain; Interoception; Perceptual inference; Posttraumatic stress disorder; Predictive coding.
Copyright © 2022 Elsevier Ltd. All rights reserved.
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