Genome-wide meta-analyses of restless legs syndrome yield insights into genetic architecture, disease biology and risk prediction

  • 23andMe Research Team
  • , Barbara Schormair*
  • , Chen Zhao
  • , Steven Bell
  • , Maria Didriksen
  • , Muhammad S Nawaz
  • , Nathalie Schandra
  • , Ambra Stefani
  • , Birgit Högl
  • , Yves Dauvilliers
  • , Cornelius G Bachmann
  • , David Kemlink
  • , Karel Sonka
  • , Walter Paulus
  • , Claudia Trenkwalder
  • , Wolfgang H Oertel
  • , Magdolna Hornyak
  • , Maris Teder-Laving
  • , Andres Metspalu
  • , Georgios M Hadjigeorgiou
  • Olli Polo, Ingo Fietze, Owen A Ross, Zbigniew K Wszolek, Abubaker Ibrahim, Melanie Bergmann, Volker Kittke, Philip Harrer, Joseph Dowsett, Sofiene Chenini, Sisse Rye Ostrowski, Erik Sørensen, Christian Erikstrup, Ole B Pedersen, Mie Topholm Bruun, Kaspar R Nielsen, Adam S Butterworth, Nicole Soranzo, Willem H Ouwehand, David J Roberts, John Danesh, Brendan Burchell, Nicholas A Furlotte, Priyanka Nandakumar, Christopher J Earley, William G Ondo, Lan Xiong, Alex Desautels, Markus Perola, Pavel Vodicka, Christian Dina, Juliane Winkelmann
*Corresponding author af dette arbejde

Publikation: Bidrag til tidsskriftArtikelForskningpeer review

Abstract

Restless 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.

OriginalsprogEngelsk
Sider (fra-til)1090-1099
Antal sider10
TidsskriftNature Genetics
Vol/bind56
Udgave nummer6
DOI
StatusUdgivet - jun. 2024

Finansiering

BevillingsgivereBevillingsgivernummer
Deutsche Restless Legs Vereinigung
German Research Foundation218143125, 310572679, EXC 2145, 390857198
European Regional Development FundGenTransMed 2014-2020.4.01.15-0012
University of Thessaly2845
National Institutes of Health
National Institutes of Health1U19AG063911, FAIN U19AG063911
Mayo Clinic College of Medicine and Science
Haworth Family Professorship in Neurodegenerative Diseases fund
Albertson Parkinson's Research Foundation
National Institutes of HealthP50 NS072187
Mayo Clinic College of Medicine and Science
James C. and Sarah K. Kennedy Fund for Neurodegenerative Disease Research
Canadian Institutes of Health Research376503
Natural Sciences and Engineering Research CouncilRGPIN-2016-04985
Diabetes CanadaOG-3-14-4567-HC
Heart and Stroke Foundation of CanadaG-16-00014085
Charles UniversityLX22NPO5107
RLS and AL Williams Jr. Family Foundation
University of Münster
University of Münster
German Centre for Cardiovascular Research
Boehringer Ingelheim GmbH
Mundipharma GmbH
Roche
UCB S.A.
Helmholtz Zentrum München - German Research Center for Environmental Health
Bayerisches Landesamt für Gesundheit und Lebensmittelsicherheit
Klinikum Augsburg
Ludwig Maximilian University of Munich
NIHR Cambridge Biomedical Research CentreRG64219
National Institute for Health and Care Research - Blood and Transplant Research Unit
NIHR Cambridge Biomedical Research CentreBRC-1215-20014
National Institute for Health and Care Research - Blood and Transplant Research UnitNIHR BTRU-2014-10024
National Institute for Health and Care Research - Blood and Transplant Research UnitNIHR203337
Medical Research CouncilMR/L003120/1
British Heart FoundationRP-PG-0310-1002, RG/09/12/28096
NIHR Cambridge Biomedical Research CentreBRC1215-20014
Medical Research Council
Engineering and Physical Sciences Research CouncilEP/P020259/1
Economic and Social Research Council, UK
Scottish Government
Welsh Government
Public Health Agency
Wellcome Trust
University of Cambridge
Dell
Science and Technology Facilities Council
Cancer Research UKA27657
National Institute for Health and Care Research
European CommissionHEALTH-F2-2012-279233
Wellcome TrustWT098051, WT091310
European CommissionEPIGENESYS 257082, BLUEPRINT HEALTH-F5-2011-282510
National Institute for Health and Care ResearchNIHR-RP-PG-0310-1004
National Institute for Health and Care ResearchLX22 NPO 5102
Danmarks Frie Forskningsfond802000403B
Danske Regioner
Bloddonorernes Forskningsfond
Novo Nordisk FoundationNNF17OC0027594
Helmholtz Zentrum München - German Research Center for Environmental Health
Bundesministerium für Bildung und Forschung
University of Münster

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