Test–retest reliability of Bayesian estimations of the effects of stimulation, prior information and individual traits on pain perception

Background There is inter‐individual variability in the influence of different components (e.g. nociception and expectations) on pain perception. Identifying the individual effect of these components could serve for patient stratification, but only if these influences are stable in time. Methods In...

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Published in:European journal of pain Vol. 28; no. 3; pp. 434 - 453
Main Authors: Delgado‐Sanchez, Ariane, Charalambous, Christiana, Trujillo‐Barreto, Nelson J., Safi, Hannah, Jones, Anthony, Sivan, Manoj, Talmi, Deborah, Brown, Christopher
Format: Journal Article
Language:English
Published: England 01-03-2024
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Summary:Background There is inter‐individual variability in the influence of different components (e.g. nociception and expectations) on pain perception. Identifying the individual effect of these components could serve for patient stratification, but only if these influences are stable in time. Methods In this study, 30 healthy participants underwent a cognitive pain paradigm in which they rated pain after viewing a probabilistic cue informing of forthcoming pain intensity and then receiving electrical stimulation. The trial information was then used in a Bayesian probability model to compute the relative weight each participant put on stimulation, cue, cue uncertainty and trait‐like bias. The same procedure was repeated 2 weeks later. Relative and absolute test–retest reliability of all measures was assessed. Results Intraclass correlation results showed good reliability for the effect of the stimulation (0.83), the effect of the cue (0.75) and the trait‐like bias (0.75 and 0.75), and a moderate reliability for the effect of the cue uncertainty (0.55). Absolute reliability measures also supported the temporal stability of the results and indicated that a change in parameters corresponding to a difference in pain ratings ranging between 0.47 and 1.45 (depending on the parameters) would be needed to consider differences in outcomes significant. The comparison of these measures with the closest clinical data we possess supports the reliability of our results. Conclusions These findings support the hypothesis that inter‐individual differences in the weight placed on different pain factors are stable in time and could therefore be a possible target for patient stratification. Significance Our results demonstrate the temporal stability of the weight healthy individuals place on the different factors leading to the pain response. These findings give validity to the idea of using Bayesian estimations of the influence of different factors on pain as a way to stratify patients for treatment personalization.
Bibliography:Deborah Talmi and Christopher Brown shared senior authorship.
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ISSN:1090-3801
1532-2149
DOI:10.1002/ejp.2193