DataGene Limited, Agriculture Victoria, AgriBio Centre for AgriBusiness, 5 Ring Rd., Bundoora, Victoria 3083, Australia.
Melbourne School of Land and Environment, University of Melbourne, Parkville, Victoria 3010, Australia.
J Dairy Sci. 2020 Sep;103(9):8305-8316. doi: 10.3168/jds.2020-18242. Epub 2020 Jul 1.
The objectives of this study were (1) to evaluate the computational feasibility of the multitrait test-day single-step SNP-BLUP (ssSNP-BLUP) model using phenotypic records of genotyped and nongenotyped animals, and (2) to compare accuracies (coefficient of determination; R) and bias of genomic estimated breeding values (GEBV) and de-regressed proofs as response variables in 3 Australian dairy cattle breeds (i.e., Holstein, Jersey, and Red breeds). Additive genomic random regression coefficients for milk, fat, protein yield and somatic cell score were predicted in the first, second, and third lactation. The predicted coefficients were used to derive 305-d GEBV and were compared with the traditional parent averages obtained from a BLUP model without genomic information. Cow fertility traits were evaluated from the 5-trait repeatability model (i.e., calving interval, days from calving to first service, pregnancy diagnosis, first service nonreturn rate, and lactation length). The de-regressed proofs were only for calving interval. Our results showed that ssSNP-BLUP using multitrait test-day model increased reliability and reduced bias of breeding values of young animals when compared with parent average from traditional BLUP in Australian Holsten, Jersey, and Red breeds. The use of a custom selection of approximately 46,000 SNP (custom XT SNP list) increased the reliability of GEBV compared with the results obtained using the commercial Illumina 50K chip (Illumina, San Diego, CA). The use of the second preconditioner substantially improved the convergence rate of the preconditioned conjugate gradient method, but further work is needed to improve the efficiency of the computation of the Kronecker matrix product by vector. Application of ssSNP-BLUP to multitrait random regression models is computationally feasible.
(1) 评估基于表型记录的多性状测试日单步 SNP-BLUP(ssSNP-BLUP)模型在已遗传和未遗传动物中的计算可行性;(2) 比较澳大利亚 3 个奶牛品种(荷斯坦、泽西和红)中作为响应变量的基因组估计育种值(GEBV)和去回归估计值的准确性(决定系数;R)和偏差。在第一、二和三泌乳期预测了牛奶、脂肪、蛋白质产量和体细胞评分的加性基因组随机回归系数。预测的系数用于推导 305 天 GEBV,并与没有基因组信息的 BLUP 模型获得的传统亲本平均值进行比较。奶牛繁殖力性状通过 5 性状重复力模型(即产犊间隔、产犊后至首次配种天数、妊娠诊断、首次配种受胎率和泌乳期长度)进行评估。去回归证明仅用于产犊间隔。我们的结果表明,与传统 BLUP 中的亲本平均值相比,使用多性状测试日模型的 ssSNP-BLUP 增加了澳大利亚荷斯坦、泽西和红奶牛品种中年轻动物的育种值可靠性并降低了其偏差。与使用商业性 Illumina 50K 芯片(Illumina,圣地亚哥,CA)获得的结果相比,使用约 46,000 个 SNP 的定制选择(定制 XT SNP 列表)增加了 GEBV 的可靠性。第二个预条件器的使用大大提高了预条件共轭梯度法的收敛速度,但需要进一步的工作来提高 Kronecker 矩阵乘积的向量计算效率。ssSNP-BLUP 应用于多性状随机回归模型在计算上是可行的。