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Modulation of the sensory and affective dimensions of pain by expectations and uncertainty: a Bayesian modeling approach

Arnaud Poublan-Couzardot, Giuseppe Pagnoni, Antoine Lutz

August 2, 2022 preprint DOI: 10.31219/osf.io/nteg7 via OpenAlex

Summary

Pain perception is shaped by expectations and individual differences in how people think and feel about pain. Using predictive processing theory, which views the brain as a Bayesian inference machine, researchers analyzed pain intensity and unpleasantness ratings from 54 healthy meditation practitioners. They modeled how the brain integrates sensory information, expectations, and a stable personal prior about pain. The model extended previous work by separately accounting for sensory and affective pain components. Pain catastrophizing and cognitive defusion correlated oppositely with model parameters representing their computational counterparts. Lifetime meditation practice was strongly and inversely linked to the weight of short-term expectations and to a trait-like prior affecting the emotional dimension of pain.

Study at a glance

Characteristics Experimental study
Sample size 54
Population Healthy subjects with experience in meditation practice
Topics Meditation
Keywords Perception Cognition Cognitive psychology Trait
Citations 10
Key finding Lifetime meditation practice was strongly and inversely correlated with the weight of short-term expectations in the perceptual process and with a trait-like prior influencing the affective dimension of pain.

Abstract

The perception of pain is sensitive to various mental processes such as expectation about the nociceptive stimulus or individual differences in the affective and cognitive evaluations of pain. A promising approach to the investigation of the neurocomputational principles of pain perception is the theory of predictive processing which offers a general framework to understand perception and cognition. Rethinking the brain as a Bayesian inference organ, this theory has been recently applied to the experience of pain and its modulation with convincing results. We adapted an existing pain cueing paradigm to collect pain intensity and unpleasantness ratings from fifty-four healthy subjects with experience in meditation practice, while manipulating expectations and uncertainty about impending electrical stimulations. Using state-of-the-art statistical modeling, we modeled the generation of trial-wise pain ratings as a Bayesian inference process integrating probability distributions over sensory information, cue-based expectations and a trait-like, individual prior about pain experience. Notably, we extended previous hierarchical Bayesian models of pain by accounting for both the sensory and the affective components of pain. As predicted, individual psychological scores of pain catastrophizing and cognitive defusion showed opposite correlation patterns with the model parameters representing their computational counterparts. Furthermore, lifetime meditation practice was strongly and inversely correlated with the weight of short-term expectations in the perceptual process, as well as with a trait-like prior influencing the affective dimension of pain. We conclude that this approach offers a promising avenue for a principled investigation of pain perception mechanisms and, more specifically, of the effect of contemplative practices on the latter.

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