Content area

Abstract

Given the drawbacks of implementing multivariate analysis for mapping multiple traits in genome-wide association study (GWAS), principal component analysis (PCA) has been widely used to generate independent 'super traits' from the original multivariate phenotypic traits for the univariate analysis. However, parameter estimates in this framework may not be the same as those from the joint analysis of all traits, leading to spurious linkage results. In this paper, we propose to perform the PCA for residual covariance matrix instead of the phenotypical covariance matrix, based on which multiple traits are transformed to a group of pseudo principal components. The PCA for residual covariance matrix allows analyzing each pseudo principal component separately. In addition, all parameter estimates are equivalent to those obtained from the joint multivariate analysis under a linear transformation. However, a fast least absolute shrinkage and selection operator (LASSO) for estimating the sparse oversaturated genetic model greatly reduces the computational costs of this procedure. Extensive simulations show statistical and computational efficiencies of the proposed method. We illustrate this method in a GWAS for 20 slaughtering traits and meat quality traits in beef cattle.

Details

Title
Multiple-trait genome-wide association study based on principal component analysis for residual covariance matrix
Author
Gao, H; Zhang, T; Wu, Y; Jiang, L; Zhan, J; Li, J; Yang, R
Pages
526-32
Publication year
2014
Publication date
Dec 2014
Publisher
Springer Nature B.V.
ISSN
0018067X
e-ISSN
13652540
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1622591068
Copyright
Copyright Nature Publishing Group Dec 2014