4.7 Article

Genomic predictions based on haplotypes fitted as pseudo-SNP for milk production and udder type traits and SCS in French dairy goats

Journal

JOURNAL OF DAIRY SCIENCE
Volume 103, Issue 12, Pages 11559-11573

Publisher

ELSEVIER SCIENCE INC
DOI: 10.3168/jds.2020-18662

Keywords

genomic selection; haplotype-based models; individual SNP-based models; ssGBLUP; weighted ssGBLUP

Funding

  1. French Genovicap program [ANR (Paris, France)]
  2. French Genovicap program [ApisGene (Paris)]
  3. French Genovicap program [CASDAR, FranceAgriMer (Montreuil, France)]
  4. French Genovicap program [France Genetique Elevage (Paris)]
  5. French Genovicap program [French Ministry of Agriculture Agrifood, and Forestry (Paris)]
  6. French Phenofinlait program [ANR (Paris, France)]
  7. French Phenofinlait program [ApisGene (Paris)]
  8. French Phenofinlait program [CASDAR, FranceAgriMer (Montreuil, France)]
  9. French Phenofinlait program [France Genetique Elevage (Paris)]
  10. French Phenofinlait program [French Ministry of Agriculture Agrifood, and Forestry (Paris)]
  11. European 3SR Project
  12. Occitanie region
  13. French National Institute for Agricultural Research (INRAE, Paris) SELGEN program (INCoMINGS)

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The development of statistical methods aiming to improve the accuracy of genomic predictions is of utmost value for dairy goat breeding programs. In this context, the use of haplotypes, instead of individual SNP, could improve the accuracy of genomic predictions by better capturing the effect of causal variants, instead of relying solely on linkage disequilibrium with individual SNP. Haplotypes can be included in genomic evaluation models in various ways, such as fitting them as pseudo-SNP (i.e., haplotypes converted into biallelic SNP format). This can be easily incorporated in the software already available for single-step genornic predictions (ssGBLUP). Therefore, the aim of this study was to compare the predictive performances of ssGBLUP and weighted ssGBLUP (WssGBLUP) based on individual SNP or on haplotypes fitted as pseudo-SNP. Performance was compared in terms of accuracy, bias, and weights for SNP versus pseudo-SNP. Genomic predictions were performed on 5 milk production traits, 5 udder type traits, and somatic cell score (SCS). The training population was formed by 307 Alpine and 247 Saanen progeny-tested bucks, genotyped using the Illumina Goat SNP50 BeadChip (Illumina, San Diego, CA). The validation population included 205 Alpine and 146 Saanen young bucks. The accuracy of genomic predictions was evaluated in the validation population as the Pearson correlation between genomic estimated breeding values (GEBV), predicted based on various methods, and daughter deviation (DD) based on the official genetic evaluation of January 2016. Haplotypebased models were shown to improve the performance of genomic predictions for some traits. Gains in accuracy of up to +19% (0.310 to 0.368 for fat yield) in Alpine and up to +3% (0.361 to 0.373 for udder shape) in Saanen were observed with ssGBLUP. The ssGBLUP accuracies averaged across all traits and methods were equal to 0.467 (SNP) versus 0.471 (pseudo-SNP) in Alpine and 0.528 (SNP) versus 0.523 (pseudo-SNP) in Saanen. With WssGBLUP, gains in accuracy of up to 24% (0.298 to 0.370 for fat yield) in Alpine and 14% (0.431 to 0.490 for SCS) in Saanen were observed with WssGBLUP. Accuracies of WssGBLUP averaged across all traits and methods were equal to 0.455 (SNP and pseudo-SNP) in Alpine and 0.542 (SNP) versus 0.528 (pseudo-SNP) in Saanen. The average (+SD) slope of the regression of DD on GEBV for the validation animals, across all breeds, traits and scenarios, were equal to 0.82 +/- 0.20 (SNP) and 0.83 +/- 0.18 (pseudo-SNP) for ssGBLUP and 0.67 +/- 0.16 (SNP) and 0.65 +/- 0.16 (pseudo-SNP) for WssGBLUP, which suggest that haplotype-based models and ssGBLUP sN p were similarly biased. However, WssGBLUP was more biased than ssGBLUP, and its gains in accuracies were limited to milk production traits. Despite the fact that genomic predictions based on haplotypes require additional steps and time, the observed gains in GEBV predictive performance indicate that haplotype-based methods could be recommended for some traits.

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