Last updated:
Author(s):
Christophe Tanguay-Sabourin, Matt Fillingim, Gianluca V. Guglietti, Azin Zare, Marc Parisien, Jax Norman, Hilary Sweatman, Ronrick Da-ano, Eveliina Heikkala, Jordi Perez, Jaro Karppinen, Sylvia Villeneuve, Scott J. Thompson, Marc O. Martel, Mathieu Roy, Luda Diatchenko, Etienne Vachon-Presseau
Publish date:
6 July 2023
Journal:
Nature Medicine
PubMed ID:
37414898

Abstract

Chronic pain is a complex condition influenced by a combination of biological, psychological and social factors. Using data from the UK Biobank (n = 493,211), we showed that pain spreads from proximal to distal sites and developed a biopsychosocial model that predicted the number of coexisting pain sites. This data-driven model was used to identify a risk score that classified various chronic pain conditions (area under the curve (AUC) 0.70-0.88) and pain-related medical conditions (AUC 0.67-0.86). In longitudinal analyses, the risk score predicted the development of widespread chronic pain, the spreading of chronic pain across body sites and high-impact pain about 9 years later (AUC 0.68-0.78). Key risk factors included sleeplessness, feeling ‘fed-up’, tiredness, stressful life events and a body mass index >30. A simplified version of this score, named the risk of pain spreading, obtained similar predictive performance based on six simple questions with binarized answers. The risk of pain spreading was then validated in the Northern Finland Birth Cohort (n = 5,525) and the PREVENT-AD cohort (n = 178), obtaining comparable predictive performance. Our findings show that chronic pain conditions can be predicted from a common set of biopsychosocial factors, which can aid in tailoring research protocols, optimizing patient randomization in clinical trials and improving pain management.

Related projects

Full cohort, with the possibility of adding data from the future web-based questionnaire on pain.

Institution:
McGill University, Canada

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