Tabet J M, Lourenco D, Bussiman F, Bermann M, Misztal I, VanRaden P M, Vitezica Z G, Legarra A
Department of Animal and Dairy Science, University of Georgia, Athens, GA 30602.
Department of Animal and Dairy Science, University of Georgia, Athens, GA 30602.
J Dairy Sci. 2025 Jan;108(1):694-706. doi: 10.3168/jds.2024-25281. Epub 2024 Dec 16.
The US dairy cattle genetic evaluation is currently a multistep process, including multibreed traditional BLUP estimations followed by single-breed SNP effects estimation. Single-step GBLUP (ssGBLUP) combines pedigree and genomic data for all breeds in one analysis. Unknown parent groups (UPG) or metafounders (MF) can be used to address missing pedigree information. Fertility traits are notably difficult to evaluate due to low heritabilities, changing management, and a higher recent emphasis on selection to move in a favorable direction. We assessed bias, dispersion, and accuracy of fertility traits in all-breed US dairy cattle using pedigree-based BLUP (PBLUP) and ssGBLUP with UPG or MF; with 5% or 10% residual polygenic effect. Validation methods included the linear regression method and comparison of early and late deregressed proofs for Holstein and Jersey breeds. By comparing MF or UPG in PBLUP, we observed similar results in terms of bias, dispersion, and correlations between early and recent predictions. When genomics was used, ssGBLUP with MF and 10% residual polygenic effect consistently outperformed other models regarding bias, dispersion, and correlations. Compared with multistep results, ssGBLUP with MF and 10% residual polygenic effect showed less bias and increased correlations but slightly overdispersed estimates. Overall, genomic prediction of fertility traits using ssGBLUP was accurate and unbiased, more so with MF than with UPG.
美国奶牛遗传评估目前是一个多步骤过程,包括多品种传统最佳线性无偏预测(BLUP)估计,随后是单品种单核苷酸多态性(SNP)效应估计。单步基因组最佳线性无偏预测(ssGBLUP)在一次分析中结合了所有品种的系谱和基因组数据。未知亲本组(UPG)或元祖先(MF)可用于处理缺失的系谱信息。由于遗传力低、管理方式不断变化以及近期对朝着有利方向进行选择的重视程度提高,繁殖性状的评估尤为困难。我们使用基于系谱的BLUP(PBLUP)以及带有UPG或MF的ssGBLUP,对美国所有品种奶牛的繁殖性状偏差、离散度和准确性进行了评估;残差多基因效应设定为5%或10%。验证方法包括线性回归法以及对荷斯坦和泽西品种早期和晚期去回归证明的比较。通过比较PBLUP中的MF或UPG,我们在偏差、离散度以及早期和近期预测之间的相关性方面观察到了相似的结果。使用基因组学时,带有MF和10%残差多基因效应的ssGBLUP在偏差、离散度和相关性方面始终优于其他模型。与多步骤结果相比,带有MF和10%残差多基因效应的ssGBLUP偏差更小且相关性增加,但估计值的离散度略高。总体而言,使用ssGBLUP对繁殖性状进行基因组预测是准确且无偏差的,使用MF时比使用UPG时更是如此。