Paiva José Teodoro, Mota Rodrigo Reis, Lopes Paulo Sávio, Hammami Hedi, Vanderick Sylvie, Oliveira Hinayah Rojas, Veroneze Renata, Silva Fabyano Fonseca E, Gengler Nicolas
Department of Animal Sciences, Universidade Federal de Viçosa, Viçosa, MG, Brazil.
Gembloux Agro-Bio Tech, University of Liège, TERRA Teaching and Research Centre, B-5030 Gembloux, Belgium.
J Dairy Res. 2022 Sep 5:1-9. doi: 10.1017/S0022029922000474.
The aims of this study were to: (1) estimate genetic correlation for milk production traits (milk, fat and protein yields and fat and protein contents) and fatty acids (FA: C16:0, C18:1 -9, LCFA, SFA, and UFA) over days in milk, (2) investigate the performance of genomic predictions using single-step GBLUP (ssGBLUP) based on random regression models (RRM), and (3) identify the optimal scaling and weighting factors to be used in the construction of the matrix. A total of 302 684 test-day records of 63.875 first lactation Walloon Holstein cows were used. Positive genetic correlations were found between milk yield and fat and protein yield ( from 0.46 to 0.85) and between fat yield and milk FA ( from 0.17 to 0.47). On the other hand, negative correlations were estimated between fat and protein contents ( from -0.22 to -0.59), between milk yield and milk FA ( from -0.22 to -0.62), and between protein yield and milk FA ( from -0.11 to -0.19). The selection for high fat content increases milk FA throughout lactation ( from 0.61 to 0.98). The test-day ssGBLUP approach showed considerably higher prediction reliability than the parent average for all milk production and FA traits, even when no scaling and weighting factors were used in the matrix. The highest validation reliabilities ( from 0.09 to 0.38) and less biased predictions ( from 0.76 to 0.92) were obtained using the optimal parameters (i.e., ω = 0.7 and α = 0.6) for the genomic evaluation of milk production traits. For milk FA, the optimal parameters were ω = 0.6 and α = 0.6. However, biased predictions were still observed ( from 0.32 to 0.81). The findings suggest that using ssGBLUP based on RRM is feasible for the genomic prediction of daily milk production and FA traits in Walloon Holstein dairy cattle.
(1)估计产奶量性状(产奶量、乳脂产量、乳蛋白产量、乳脂率和乳蛋白率)和脂肪酸(FA:C16:0、C18:1 -9、长链脂肪酸、饱和脂肪酸和不饱和脂肪酸)在整个泌乳天数中的遗传相关性;(2)研究基于随机回归模型(RRM)的单步基因组最佳线性无偏预测(ssGBLUP)的预测性能;(3)确定构建矩阵时使用的最佳缩放和加权因子。共使用了63875头首次产犊的瓦隆荷斯坦奶牛的302684条测定日记录。产奶量与乳脂产量和乳蛋白产量之间存在正遗传相关性(0.46至0.85),乳脂产量与乳脂肪酸之间存在正遗传相关性(0.17至0.47)。另一方面,乳脂率和乳蛋白率之间存在负相关性(-0.22至-0.59),产奶量与乳脂肪酸之间存在负相关性(-0.22至-0.62),乳蛋白产量与乳脂肪酸之间存在负相关性(-0.11至-0.19)。选择高脂肪含量会使整个泌乳期的乳脂肪酸增加(0.61至0.98)。即使在矩阵中不使用缩放和加权因子,测定日ssGBLUP方法对所有产奶量和脂肪酸性状的预测可靠性也明显高于亲本平均值。使用产奶量性状基因组评估的最佳参数(即ω = 0.7和α = 0.6)可获得最高的验证可靠性(0.09至0.38)和偏差较小的预测(0.76至0.92)。对于乳脂肪酸,最佳参数为ω = 0.6和α = 0.6。然而,仍观察到有偏差的预测(0.32至0.81)。研究结果表明,基于RRM的ssGBLUP可用于瓦隆荷斯坦奶牛日产奶量和脂肪酸性状的基因组预测。