Department of Animal Sciences, Purdue University, West Lafayette, IN 47907; Department of Animal Science, College of Agricultural and Veterinary Sciences, São Paulo State University (UNESP), Jaboticabal, 14884-900, SP, Brazil.
Department of Animal Science, College of Agricultural and Veterinary Sciences, São Paulo State University (UNESP), Jaboticabal, 14884-900, SP, Brazil.
J Dairy Sci. 2021 May;104(5):5768-5793. doi: 10.3168/jds.2020-19534. Epub 2021 Mar 6.
Genomic selection has been widely implemented in many livestock breeding programs, but it remains incipient in buffalo. Therefore, this study aimed to (1) estimate variance components incorporating genomic information in Murrah buffalo; (2) evaluate the performance of genomic prediction for milk-related traits using single- and multitrait random regression models (RRM) and the single-step genomic best linear unbiased prediction approach; and (3) estimate longitudinal SNP effects and candidate genes potentially associated with time-dependent variation in milk, fat, and protein yields, as well as somatic cell score (SCS) in multiple parities. The data used to estimate the genetic parameters consisted of a total of 323,140 test-day records. The average daily heritability estimates were moderate (0.35 ± 0.02 for milk yield, 0.22 ± 0.03 for fat yield, 0.42 ± 0.03 for protein yield, and 0.16 ± 0.03 for SCS). The highest heritability estimates, considering all traits studied, were observed between 20 and 280 d in milk (DIM). The genetic correlation estimates at different DIM among the evaluated traits ranged from -0.10 (156 to 185 DIM for SCS) to 0.61 (36 to 65 DIM for fat yield). In general, direct selection for any of the traits evaluated is expected to result in indirect genetic gains for milk yield, fat yield, and protein yield but also increase SCS at certain lactation stages, which is undesirable. The predicted RRM coefficients were used to derive the genomic estimated breeding values (GEBV) for each time point (from 5 to 305 DIM). In general, the tuning parameters evaluated when constructing the hybrid genomic relationship matrices had a small effect on the GEBV accuracy and a greater effect on the bias estimates. The SNP solutions were back-solved from the GEBV predicted from the Legendre random regression coefficients, which were then used to estimate the longitudinal SNP effects (from 5 to 305 DIM). The daily SNP effect for 3 different lactation stages were performed considering 3 different lactation stages for each trait and parity: from 5 to 70, from 71 to 150, and from 151 to 305 DIM. Important genomic regions related to the analyzed traits and parities that explain more than 0.50% of the total additive genetic variance were selected for further analyses of candidate genes. In general, similar potential candidate genes were found between traits, but our results suggest evidence of differential sets of candidate genes underlying the phenotypic expression of the traits across parities. These results contribute to a better understanding of the genetic architecture of milk production traits in dairy buffalo and reinforce the relevance of incorporating genomic information to genetically evaluate longitudinal traits in dairy buffalo. Furthermore, the candidate genes identified can be used as target genes in future functional genomics studies.
基因组选择已在许多家畜育种计划中得到广泛应用,但在水牛中仍处于起步阶段。因此,本研究旨在:(1)估计纳入基因组信息的摩拉水牛的方差分量;(2)使用单性状和多性状随机回归模型(RRM)和单步基因组最佳线性无偏预测方法评估与牛奶相关性状的基因组预测表现;(3)估计与牛奶、脂肪和蛋白质产量以及体细胞评分(SCS)随时间变化相关的纵向 SNP 效应和候选基因,这些基因在多个胎次中都有表现。用于估计遗传参数的数据总共包含 323,140 个测试日记录。平均日遗传力估计值适中(产奶量为 0.35 ± 0.02,产脂肪量为 0.22 ± 0.03,产蛋白质量为 0.42 ± 0.03,SCS 为 0.16 ± 0.03)。在考虑所有研究性状的情况下,最高的遗传力估计值出现在泌乳的 20 至 280 日龄之间(DIM)。在评估的性状中,不同 DIM 之间的遗传相关估计值在-0.10(SCS 的 156 至 185 DIM)和 0.61(脂肪产量的 36 至 65 DIM)之间。一般来说,对任何评估性状的直接选择预计将导致产奶量、产脂肪量和产蛋白质量的间接遗传增益,但也会在某些泌乳阶段增加 SCS,这是不理想的。预测的 RRM 系数用于为每个时间点(从 5 到 305 DIM)推导基因组估计育种值(GEBV)。一般来说,在构建混合基因组关系矩阵时评估的调整参数对 GEBV 准确性的影响较小,对偏差估计的影响较大。SNP 解决方案是从预测 Legendre 随机回归系数的 GEBV 中反向求解的,然后用于估计纵向 SNP 效应(从 5 到 305 DIM)。对 3 个不同的泌乳阶段的每日 SNP 效应进行了考虑,每个性状和胎次都有 3 个不同的泌乳阶段:从 5 到 70 天,从 71 到 150 天,从 151 到 305 天 DIM。选择了与分析性状和胎次相关的重要基因组区域,这些区域解释了总加性遗传方差的 0.50%以上,用于进一步分析候选基因。一般来说,在性状之间发现了类似的潜在候选基因,但我们的结果表明,在不同胎次中,性状表现的候选基因存在差异。这些结果有助于更好地理解奶牛产奶性状的遗传结构,并加强了在奶牛中遗传评估纵向性状时纳入基因组信息的相关性。此外,鉴定的候选基因可用作未来功能基因组学研究的靶基因。