4.7 Article

A comparison of partial least squares (PLS) and sparse PLS regressions in genomic selection in French dairy cattle

Journal

JOURNAL OF DAIRY SCIENCE
Volume 95, Issue 4, Pages 2120-2131

Publisher

ELSEVIER SCIENCE INC
DOI: 10.3168/jds.2011-4647

Keywords

partial least squares regression; sparse partial least squares; genomic selection; French dairy cattle

Funding

  1. AMASGEN
  2. French National Research Agency (ANR, Paris France)
  3. ApisGene (Paris, France)

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Genomic selection involves computing a prediction equation from the estimated effects of a large number of DNA markers based on a limited number of genotyped animals with phenotypes. The number of observations is much smaller than the number of independent variables, and the challenge is to find methods that perform well in this context. Partial least squares regression (PLS) and sparse PLS were used with a reference population of 3,940 genotyped and phenotyped French Holstein bulls and 39,738 polymorphic single nucleotide polymorphism markers. Partial least squares regression reduces the number of variables by projecting independent variables onto latent structures. Sparse PLS combines variable selection and modeling in a one-step procedure. Correlations between observed phenotypes and phenotypes predicted by PLS and sparse PLS were similar, but sparse PLS highlighted some genome regions more clearly. Both PLS and sparse PLS were more accurate than pedigree-based BLUP and generally provided lower correlations between observed and predicted phenotypes than did genomic BLUP. Furthermore, PLS and sparse PLS required similar computing time to genomic BLUP for the study of 6 traits.

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