Validating a measure of the precision of ascending noxious signals

Aadya Singh, Roi Treister, Christiana Charalambous, Flavia Mancini, Deborah Talmi

Research output: Preprint/Working paperPreprint

Abstract

Pain perception can be described as a process of Bayesian inference, which generates sensory estimates based on prior expectations and afferent information. The inference is affected by within-individual variations in the precision (inverse variance) of the distribution of centrally-predicted ascending noxious signals. While the top-down effect of priors (expectations and beliefs) on pain perception has received much attention within the Bayesian framework, there remains a lack of validated quantitative measures that capture within-individual variations in the likelihood function. Using a 2x2 fully factorial within-individual design, we measured and compared the precision of the likelihood function in four tasks administered to 57 healthy adults:the cued-pain task (CPT) and the Focused Analgesia Test (FAST), in two noxious modalities, thermal and electrical. A hierarchical Bayesian model was applied to the CPT, and the FAST was employed as a validation criterion, given that it is known to correlate with clinical pain reports and the placebo response. Individuals with a more precise representation of ascending sensory signals in the cued-pain task produced less variable pain reports in the FAST. We validated the result by replicating this correlation across thermal and electrical pain. These results support the validity of our approach to the measurement of precision of ascending noxious signals. Their correlation with FAST scores supports their criterion validity and their correlation across noxious sub-modalities support the concurrent validity of this measurement. Quantifying the precision of noxious inputs could inform work on placebo sensitivity and strengthen the assay sensitivity of randomised clinical trials involving pain.
Original languageUndefined
PublisherPsyArXiv
Pages1-45
Number of pages45
DOIs
Publication statusPublished - 12 Mar 2024

Keywords

  • Pain
  • Predictive processing
  • Bayes
  • Likehood
  • Variability

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