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Genome-Wide Association Study of Metabolic Traits Reveals Novel Gene-Metabolite-Disease Links
Authors:Rico Rueedi  Mirko Ledda  Andrew W Nicholls  Reza M Salek  Pedro Marques-Vidal  Edgard Morya  Koichi Sameshima  Ivan Montoliu  Laeticia Da Silva  Sebastiano Collino  Fran?ois-Pierre Martin  Serge Rezzi  Christoph Steinbeck  Dawn M Waterworth  Gérard Waeber  Peter Vollenweider  Jacques S Beckmann  Johannes Le Coutre  Vincent Mooser  Sven Bergmann  Ulrich K Genick  Zoltán Kutalik
Abstract:Metabolic traits are molecular phenotypes that can drive clinical phenotypes and may predict disease progression. Here, we report results from a metabolome- and genome-wide association study on 1H-NMR urine metabolic profiles. The study was conducted within an untargeted approach, employing a novel method for compound identification. From our discovery cohort of 835 Caucasian individuals who participated in the CoLaus study, we identified 139 suggestively significant (P<5×10−8) and independent associations between single nucleotide polymorphisms (SNP) and metabolome features. Fifty-six of these associations replicated in the TasteSensomics cohort, comprising 601 individuals from São Paulo of vastly diverse ethnic background. They correspond to eleven gene-metabolite associations, six of which had been previously identified in the urine metabolome and three in the serum metabolome. Our key novel findings are the associations of two SNPs with NMR spectral signatures pointing to fucose (rs492602, P = 6.9×10−44) and lysine (rs8101881, P = 1.2×10−33), respectively. Fine-mapping of the first locus pinpointed the FUT2 gene, which encodes a fucosyltransferase enzyme and has previously been associated with Crohn''s disease. This implicates fucose as a potential prognostic disease marker, for which there is already published evidence from a mouse model. The second SNP lies within the SLC7A9 gene, rare mutations of which have been linked to severe kidney damage. The replication of previous associations and our new discoveries demonstrate the potential of untargeted metabolomics GWAS to robustly identify molecular disease markers.
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