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Multitrait genome association analysis identifies new susceptibility genes for human anthropometric variation in the GCAT cohort

BACKGROUND: Heritability estimates have revealed an important contribution of SNP variants for most common traits; however, SNP analysis by single-trait genome-wide association studies (GWAS) has failed to uncover their impact. In this study, we applied a multitrait GWAS approach to discover additio...

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Detalles Bibliográficos
Autores principales: Galván-Femenía, Iván, Obón-Santacana, Mireia, Piñeyro, David, Guindo-Martinez, Marta, Duran, Xavier, Carreras, Anna, Pluvinet, Raquel, Velasco, Juan, Ramos, Laia, Aussó, Susanna, Mercader, J M, Puig, Lluis, Perucho, Manuel, Torrents, David, Moreno, Victor, Sumoy, Lauro, de Cid, Rafael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6252362/
https://www.ncbi.nlm.nih.gov/pubmed/30166351
http://dx.doi.org/10.1136/jmedgenet-2018-105437
Descripción
Sumario:BACKGROUND: Heritability estimates have revealed an important contribution of SNP variants for most common traits; however, SNP analysis by single-trait genome-wide association studies (GWAS) has failed to uncover their impact. In this study, we applied a multitrait GWAS approach to discover additional factor of the missing heritability of human anthropometric variation. METHODS: We analysed 205 traits, including diseases identified at baseline in the GCAT cohort (Genomes For Life- Cohort study of the Genomes of Catalonia) (n=4988), a Mediterranean adult population-based cohort study from the south of Europe. We estimated SNP heritability contribution and single-trait GWAS for all traits from 15 million SNP variants. Then, we applied a multitrait-related approach to study genome-wide association to anthropometric measures in a two-stage meta-analysis with the UK Biobank cohort (n=336 107). RESULTS: Heritability estimates (eg, skin colour, alcohol consumption, smoking habit, body mass index, educational level or height) revealed an important contribution of SNP variants, ranging from 18% to 77%. Single-trait analysis identified 1785 SNPs with genome-wide significance threshold. From these, several previously reported single-trait hits were confirmed in our sample with LINC01432 (p=1.9×10(−9)) variants associated with male baldness, LDLR variants with hyperlipidaemia (ICD-9:272) (p=9.4×10(−10)) and variants in IRF4 (p=2.8×10(−57)), SLC45A2 (p=2.2×10(−130)), HERC2 (p=2.8×10(−176)), OCA2 (p=2.4×10(−121)) and MC1R (p=7.7×10(−22)) associated with hair, eye and skin colour, freckling, tanning capacity and sun burning sensitivity and the Fitzpatrick phototype score, all highly correlated cross-phenotypes. Multitrait meta-analysis of anthropometric variation validated 27 loci in a two-stage meta-analysis with a large British ancestry cohort, six of which are newly reported here (p value threshold <5×10(−9)) at ZRANB2-AS2, PIK3R1, EPHA7, MAD1L1, CACUL1 and MAP3K9. CONCLUSION: Considering multiple-related genetic phenotypes improve associated genome signal detection. These results indicate the potential value of data-driven multivariate phenotyping for genetic studies in large population-based cohorts to contribute to knowledge of complex traits.