Journal article

LASSO with cross-validation for genomic selection

MG Usai, ME Goddard, BJ Hayes

Genetics Research | Published : 2009

Abstract

We used a least absolute shrinkage and selection operator (LASSO) approach to estimate marker effects for genomic selection. The least angle regression (LARS) algorithm and cross-validation were used to define the best subset of markers to include in the model. The LASSO-LARS approach was tested on two data sets: a simulated data set with 5865 individuals and 6000 Single Nucleotide Polymorphisms (SNPs); and a mouse data set with 1885 individuals genotyped for 10 656 SNPs and phenotyped for a number of quantitative traits. In the simulated data, three approaches were used to split the reference population into training and validation subsets for cross-validation: random splitting across the w..

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University of Melbourne Researchers

Grants

Awarded by ARC


Awarded by Sardinian Government


Funding Acknowledgements

ARC grant DP0770096 of Mike Goddard contributed to this project. Graziano Usai was funded during his Stay at the DPI by the Sardinian Government program 'Master and Back', D. G. R. no. 27/13 and no. 59/34.