[en] We herein describe a new method to fine-map GWAS-identified risk loci based on the Bayesian Least Absolute Shrinkage Selection Operator (LASSO) combined with a Monte Carlo Markov Chain (MCMC) approach, and corresponding software package (BayesFM). We characterize the performances of BayesFM using simulated data, showing that it outperforms standard forward selection both in terms of sensitivity and specificity. We apply the method to the NOD2 locus, a well-established risk locus for Crohn's disease, in which we identify 13 putative independent signals.
Disciplines :
Genetics & genetic processes
Author, co-author :
Fang, Ming; Life Science College, Heilongjiang Bayi Agricultural University, 163319-Daqing
Georges, Michel ; Université de Liège > Département des productions animales (DPA) > GIGA-R : Génomique animale
Language :
English
Title :
BayesFM: a software program to fine-map multiple causative variants in GWAS identified risk loci.