A Shared Genetic Signature for Common Chronic Pain Conditions and its Impact on Biopsychosocial Traits

Farrell, Scott F., , Lundberg, Mischa, Campos, Adrián I., , de Zoete, Rutger M.J., Sterling, Michele, Ngo, Trung Thanh, & Cuéllar-Partida, Gabriel (2023) A Shared Genetic Signature for Common Chronic Pain Conditions and its Impact on Biopsychosocial Traits. Journal of Pain, 24(3), pp. 369-386.

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Description

The multiple comorbidities & dimensions of chronic pain present a formidable challenge in disentangling its aetiology. Here, we performed genome-wide association studies of 8 chronic pain types using UK Biobank data (N =4,037–79,089 cases; N = 239,125 controls), followed by bivariate linkage disequilibrium-score regression and latent causal variable analyses to determine (respectively) their genetic correlations and genetic causal proportion (GCP) parameters with 1,492 other complex traits. We report evidence of a shared genetic signature across chronic pain types as their genetic correlations and GCP directions were broadly consistent across an array of biopsychosocial traits. Across 5,942 significant genetic correlations, 570 Savetrait pairs could be explained by a causal association (|GCP| >0.6; 5% false discovery rate), including 82 traits affected by pain while 410 contributed to an increased risk of chronic pain (cf. 78 with a decreased risk) such as certain somatic pathologies (eg, musculoskeletal), psychiatric traits (eg, depression), socioeconomic factors (eg, occupation) and medical comorbidities (eg, cardiovascular disease). This data-driven phenome-wide association analysis has demonstrated a novel and efficient strategy for identifying genetically supported risk & protective traits to enhance the design of interventional trials targeting underlying causal factors and accelerate the development of more effective treatments with broader clinical utility. Perspective: Through large-scale phenome-wide association analyses of >1,400 biopsychosocial traits, this article provides evidence for a shared genetic signature across 8 common chronic pain types. It lays the foundation for further translational studies focused on identifying causal genetic variants and pathophysiological pathways to develop novel diagnostic & therapeutic technologies and strategies.

Impact and interest:

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ID Code: 246840
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Kho, Pik Fangorcid.org/0000-0001-7831-6062
Measurements or Duration: 18 pages
Additional URLs:
Keywords: Chronic pain, Genetic predisposition to disease, Genome-wide association studies, Musculoskeletal pain, Phenome-wide association analysis
DOI: 10.1016/j.jpain.2022.10.005
ISSN: 1526-5900
Pure ID: 163150555
Divisions: Current > QUT Faculties and Divisions > Faculty of Health
Current > Schools > School of Biomedical Sciences
Funding Information: AIC & ML were supported by a UQ Research Training Scholarship from The University of Queensland. ML thanks the support of the Commonwealth Scientific and Industrial Research Organisation through a Postgraduate Top-Up Scholarship. PFK was supported by an Australian Government Research Training Program Scholarship from Queensland University of Technology (QUT). RECOVER Injury Research Centre (MS, SFF) receives unrestricted grant funding from the Motor Accident Insurance Commission (Queensland). The funders had no role in the design or interpretation of this study. This research was initially carried out at the Translational Research Institute (TRI), Woolloongabba, QLD 4102, Australia. TRI is supported by a grant from the Australian Government. SFF, TTN & GC-P conceived the study. TTN & GC-P co-supervised the study as part of a broader Precision Pain Medicine R&D program (led by TTN). SFF & TTN performed the literature search. AIC & MER performed the GWAS. SFF & ML performed downstream analyses with support from GC-P. SFF prepared the figures with support from TTN & GC-P. All authors contributed to interpretation of results. SFF, TTN & GC-P wrote the manuscript with feedback from all coauthors. GC-P contributed to this study while employed at The University of Queensland. He is now an employee of 23andMe, Inc and may hold stock in the company. The other authors have no conflicts of interest to declare.
Copyright Owner: 2022 United States Association for the Study of Pain, Inc.
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Deposited On: 05 Mar 2024 07:04
Last Modified: 04 Jun 2024 20:11