Rheumatoid arthritis (RA) is the commonest chronic, systemic, inflammatory disorder affecting ~1% of the world population. It has a strong genetic component and a growing number of associated genes have been discovered in genome-wide association studies (GWAS), which nevertheless only account for 23% of the total genetic risk. We aimed to identify additional susceptibility loci through the analysis of GWAS in the context of biological function. We bridge the gap between pathway and gene-oriented analyses of GWAS, by introducing a pathway-driven gene stability-selection methodology that identifies potential causal genes in the top-associated disease pathways that may be driving the pathway association signals. We analysed the WTCCC and the NARAC studies of ~5000 and ~2000 subjects, respectively. We examined 700 pathways comprising ~8000 genes. Ranking pathways by significance revealed that the NARAC top-ranked ~6% laid within the top 10% of WTCCC. Gene selection on those pathways identified 58 genes in WTCCC and 61 in NARAC; 21 of those were common (P overlap< 10 -21), of which 16 were novel discoveries. Among the identified genes, we validated 10 known RA associations in WTCCC and 13 in NARAC, not discovered using single-SNP approaches on the same data. Gene ontology functional enrichment analysis on the identified genes showed significant over-representation of signalling activity (P< 10 -29) in both studies. Our findings suggest a novel model of RA genetic predisposition, which involves cell-membrane receptors and genes in second messenger signalling systems, in addition to genes that regulate immune responses, which have been the focus of interest previously. © The Author 2011. Published by Oxford University Press. All rights reserved.
CITATION STYLE
Eleftherohorinou, H., Hoggart, C. J., Wright, V. J., Levin, M., & Coin, L. J. M. (2011). Pathway-driven gene stability selection of two rheumatoid arthritis GWAS identifies and validates new susceptibility genes in receptor mediated signalling pathways. Human Molecular Genetics, 20(17), 3494–3506. https://doi.org/10.1093/hmg/ddr248
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