Abstract

Genomic evaluations are routine in most plant and livestock breeding programs but are used infrequently in dairy goat breeding schemes. In this context, the purpose of this study was to investigate the use of the single-step genomic BLUP method for predicting genomic breeding values for milk production traits (milk, protein, and fat yields; protein and fat percentages) in Canadian Alpine and Saanen dairy goats. There were 6,409 and 12,236 Alpine records and 3,434 and 5,008 Saanen records for each trait in first and later lactations, respectively, and a total of 1,707 genotyped animals (833 Alpine and 874 Saanen). Two validation approaches were used, forward validation (i.e., animals born after 2013 with an average estimated breeding value accuracy from the full data set ≥0.50) and forward cross-validation (i.e., subsets of all animals included in the forward validation were used in successive replications). The forward cross-validation approach resulted in similar validation accuracies (0.55 to 0.66 versus 0.54 to 0.61) and biases (-0.01 to -0.07 versus -0.03 to 0.11) to the forward validation when averaged across traits. Additionally, both single and multiple-breed analyses were compared, and similar average accuracies and biases were observed across traits. However, there was a small gain in accuracy from the use of multiple-breed models for the Saanen breed. A small gain in validation accuracy for genomically enhanced estimated breeding values (GEBV) relative to pedigree-based estimated breeding values (EBV) was observed across traits for the Alpine breed, but not for the Saanen breed, possibly due to limitations in the validation design, heritability of the traits evaluated, and size of the training populations. Trait-specific gains in theoretical accuracy of GEBV relative to EBV for the validation animals ranged from 17 to 31% in Alpine and 35 to 55% in Saanen, using the cross-validation approach. The GEBV predicted from the full data set were 12 to 16% more accurate than EBV for genotyped animals, but no gains were observed for nongenotyped animals. The largest gains were found for does without lactation records (35-41%) and bucks without daughter records (46-54%), and consequently, the implementation of genomic selection in the Canadian dairy goat population would be expected to increase selection accuracy for young breeding candidates. Overall, this study represents the first step toward implementation of genomic selection in Canadian dairy goat populations.

Highlights

  • The demand for goat cheese and other products derived from goat milk continues to grow in Canada and around the world

  • Mucha et al (2014) reported heritability estimates for milk yield (MY) in first and later lactations ranging from 0.23 ± 0.03 to 0.45 ± 0.02 and 0.10 ± 0.04 to 0.34 ± 0.02, respectively, across lactations (4–400 DIM) using a random regression model for a UK composite dairy goat population developed by crossing Saanen, Alpine, and Toggenburg animals

  • Multiple-breed analyses may be preferred for ease of implementation, and these results suggest that this is likely to make little difference in the accuracy or bias of genomically enhanced estimated breeding values (GEBV)

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Summary

Introduction

The demand for goat cheese and other products derived from goat milk continues to grow in Canada and around the world. Domestic goat milk production approximately doubled between 2008 and 2018 (32.5 to 62.2 million liters), about 108,000 kg of goat cheese was imported into Canada in 2019 (Canadian Dairy Information Centre, 2019). This suggests that an opportunity remains for the expansion of Canadian dairy goat production to meet domestic demand. Genetic selection is one proven method of increasing the efficiency of livestock production (e.g., Miglior et al, 2017) that has been traditionally underutilized in the Canadian dairy goat industry.

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