AgResearch Limited, Ruakura Research Centre, Hamilton 3214, New Zealand; Centre for Animal Science, Queensland Alliance for Agriculture and Food Innovation, University of Queensland, St. Lucia, QLD 4067, Australia.
Institute for Molecular Biosciences, University of Queensland, St. Lucia, QLD 4067, Australia.
J Dairy Sci. 2023 Dec;106(12):9125-9135. doi: 10.3168/jds.2022-23135. Epub 2023 Sep 9.
The productivity of smallholder dairy farms is very low in developing countries. Important genetic gains could be realized using genomic selection, but genetic evaluations need to be tailored for lack of pedigree information and very small farm sizes. To accommodate this situation, we propose a flexible Bayesian model for the genetic evaluation of milk yield, which allows us to simultaneously account for nongenetic random effects for farms and varying SNP variance (BayesR model). First, we used simulations based on real genotype data from Indian crossbred dairy cattle to demonstrate that the proposed model can separate the true genetic and nongenetic parameters even for small farm sizes (2 cows on average) although with high standard errors in scenarios with low heritability. The accuracy of genomic genetic evaluation increased until farm size was approximately 5. We then applied the model to real data from 4,655 crossbred cows with 106,109 monthly test day milk records and 689,750 autosomal SNPs. We estimated a heritability of 0.16 (0.04) for milk yield and using cross-validation, a genomic estimated breeding value (GEBV) accuracy of 0.45 and bias (regression of phenotype on GEBV) of 1.04 (0.26). Estimated genetic parameters were very similar using BayesR, BayesC, and genomic BLUP approaches. Candidate genes near the top variants, IMMP2L and ARHGEF2, have been previously associated with milk protein composition, mastitis resistance, and milk cholesterol content. The estimated heritability and GEBV accuracy for milk yield are much lower than those from intensive or pasture-based systems in many countries. Further increases in the number of phenotyped and genotyped animals in farms with at least 2 cows (preferably 3-5, to allow for dropout of cows) are needed to improve the estimation of genetic effects in these smallholder dairy farms.
发展中国家小农户奶牛场的生产力非常低。利用基因组选择可以实现重要的遗传进展,但遗传评估需要针对缺乏系谱信息和农场规模非常小的情况进行调整。为了适应这种情况,我们提出了一种用于牛奶产量遗传评估的灵活贝叶斯模型,该模型允许我们同时考虑农场的非遗传随机效应和不同的 SNP 方差(BayesR 模型)。首先,我们使用基于印度杂交奶牛真实基因型数据的模拟来证明,即使在遗传力低的情况下,该模型也可以分离真实的遗传和非遗传参数,即使对于小农户规模(平均 2 头牛)也是如此,尽管在标准误差较高的情况下。随着农户规模的增加,基因组遗传评估的准确性增加,直到农户规模约为 5。然后,我们将模型应用于 4655 头杂交奶牛的真实数据,这些奶牛有 106109 次月度测试日牛奶记录和 689750 个常染色体 SNP。我们估计产奶量的遗传力为 0.16(0.04),使用交叉验证,基因组估计育种值(GEBV)的准确性为 0.45,偏倚(表型对 GEBV 的回归)为 1.04(0.26)。使用 BayesR、BayesC 和基因组 BLUP 方法估计的遗传参数非常相似。位于前几个变异体附近的候选基因 IMMP2L 和 ARHGEF2 之前与牛奶蛋白组成、乳腺炎抗性和牛奶胆固醇含量有关。与许多国家的集约化或基于牧场的系统相比,产奶量的估计遗传力和 GEBV 准确性要低得多。需要进一步增加至少有 2 头牛的农场(最好是 3-5 头,以允许奶牛脱落)的表型和基因型动物数量,以提高这些小农户奶牛场遗传效应的估计。