Journal article

Improving the efficiency of genomic selection

M Scutari, I Mackay, D Balding

Statistical Applications in Genetics and Molecular Biology | Published : 2013

Abstract

We investigate two approaches to increase the efficiency of phenotypic prediction from genomewide markers, which is a key step for genomic selection (GS) in plant and animal breeding. The first approach is feature selection based on Markov blankets, which provide a theoretically-sound framework for identifying non-informative markers. Fitting GS models using only the informative markers results in simpler models, which may allow cost savings from reduced genotyping. We show that this is accompanied by no loss, and possibly a small gain, in predictive power for four GS models: partial least squares (PLS), ridge regression, LASSO and elastic net. The second approach is the choice of kinship co..

View full abstract

University of Melbourne Researchers

Grants

Awarded by Technology Strategy Board


Funding Acknowledgements

The work presented in this paper forms part of the MIDRIB project, which is funded by the UK Technology Strategy Board (TSB) and Biotechnology & Biological Sciences Research Council (BBSRC), grant TS/I002170/1. We thank our project partners for helpful discussions. We also thank the AGOUEB Consortium (supported by UK DEFRA, the Scottish Government, through the Sustainable Arable LINK Program Grant 302/BB/D522003/1) for making their data available.