Genome-wide meta-analyses of restless legs syndrome yield insights into genetic architecture, disease biology and risk prediction
-
Published:2024-06
Issue:6
Volume:56
Page:1090-1099
-
ISSN:1061-4036
-
Container-title:Nature Genetics
-
language:en
-
Short-container-title:Nat Genet
Author:
Schormair BarbaraORCID, Zhao Chen, Bell StevenORCID, Didriksen MariaORCID, Nawaz Muhammad S., Schandra Nathalie, Stefani AmbraORCID, Högl Birgit, Dauvilliers Yves, Bachmann Cornelius G., Kemlink David, Sonka Karel, Paulus Walter, Trenkwalder Claudia, Oertel Wolfgang H., Hornyak Magdolna, Teder-Laving Maris, Metspalu Andres, Hadjigeorgiou Georgios M.ORCID, Polo Olli, Fietze Ingo, Ross Owen A.ORCID, Wszolek Zbigniew K.ORCID, Ibrahim Abubaker, Bergmann Melanie, Kittke VolkerORCID, Harrer Philip, Dowsett JosephORCID, Chenini Sofiene, Ostrowski Sisse RyeORCID, Sørensen Erik, Erikstrup ChristianORCID, Pedersen Ole B.ORCID, Topholm Bruun MieORCID, Nielsen Kaspar R., Butterworth Adam S.ORCID, Soranzo NicoleORCID, Ouwehand Willem H.ORCID, Roberts David J., Danesh John, Burchell Brendan, Furlotte Nicholas A., Nandakumar Priyanka, , , Bonnefond Amélie, Potier Louis, Earley Christopher J., Ondo William G., Xiong Lan, Desautels Alex, Perola Markus, Vodicka Pavel, Dina ChristianORCID, Stoll MonikaORCID, Franke AndreORCID, Lieb WolfgangORCID, Stewart Alexandre F. R.ORCID, Shah Svati H., Gieger ChristianORCID, Peters AnnetteORCID, Rye David B., Rouleau Guy A., Berger Klaus, Stefansson Hreinn, Ullum Henrik, Stefansson Kari, Hinds David A.ORCID, Di Angelantonio Emanuele, Oexle KonradORCID, Winkelmann JulianeORCID
Abstract
AbstractRestless legs syndrome (RLS) affects up to 10% of older adults. Their healthcare is impeded by delayed diagnosis and insufficient treatment. To advance disease prediction and find new entry points for therapy, we performed meta-analyses of genome-wide association studies in 116,647 individuals with RLS (cases) and 1,546,466 controls of European ancestry. The pooled analysis increased the number of risk loci eightfold to 164, including three on chromosome X. Sex-specific meta-analyses revealed largely overlapping genetic predispositions of the sexes (rg = 0.96). Locus annotation prioritized druggable genes such as glutamate receptors 1 and 4, and Mendelian randomization indicated RLS as a causal risk factor for diabetes. Machine learning approaches combining genetic and nongenetic information performed best in risk prediction (area under the curve (AUC) = 0.82–0.91). In summary, we identified targets for drug development and repurposing, prioritized potential causal relationships between RLS and relevant comorbidities and risk factors for follow-up and provided evidence that nonlinear interactions are likely relevant to RLS risk prediction.
Funder
Deutsche Forschungsgemeinschaft
Publisher
Springer Science and Business Media LLC
Reference60 articles.
1. Allen, R. P. et al. Restless legs syndrome: diagnostic criteria, special considerations, and epidemiology. A report from the restless legs syndrome diagnosis and epidemiology workshop at the National Institutes of Health. Sleep Med. 4, 101–119 (2003). 2. Manconi, M. et al. Restless legs syndrome. Nat. Rev. Dis. Primers 7, 80 (2021). 3. Schormair, B. et al. Identification of novel risk loci for restless legs syndrome in genome-wide association studies in individuals of European ancestry: a meta-analysis. Lancet Neurol. 16, 898–907 (2017). 4. Didriksen, M. et al. Large genome-wide association study identifies three novel risk variants for restless legs syndrome. Commun. Biol. 3, 703 (2020). 5. Allen, R. P. et al. Restless legs syndrome/Willis–Ekbom disease diagnostic criteria: updated International Restless Legs Syndrome Study Group (IRLSSG) consensus criteria—history, rationale, description, and significance. Sleep Med. 15, 860–873 (2014).
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|