Laboratory of Molecular Biology and Bovine Breeding, Institute of Animal Sciences, Chinese Academy of Agricultural Sciences, Beijing, 100193, China.
National Centre of Beef Cattle Genetic Evaluation, Beijing, 100193, China.
Anim Genet. 2019 Dec;50(6):634-643. doi: 10.1111/age.12853. Epub 2019 Sep 9.
Genomic prediction has been widely utilized to estimate genomic breeding values (GEBVs) in farm animals. In this study, we conducted genomic prediction for 20 economically important traits including growth, carcass and meat quality traits in Chinese Simmental beef cattle. Five approaches (GBLUP, BayesA, BayesB, BayesCπ and BayesR) were used to estimate the genomic breeding values. The predictive accuracies ranged from 0.159 (lean meat percentage estimated by BayesCπ) to 0.518 (striploin weight estimated by BayesR). Moreover, we found that the average predictive accuracies across 20 traits were 0.361, 0.361, 0.367, 0.367 and 0.378, and the averaged regression coefficients were 0.89, 0.86, 0.89, 0.94 and 0.95 for GBLUP, BayesA, BayesB, BayesCπ and BayesR respectively. The genomic prediction accuracies were mostly moderate and high for growth and carcass traits, whereas meat quality traits showed relatively low accuracies. We concluded that Bayesian regression approaches, especially for BayesR and BayesCπ, were slightly superior to GBLUP for most traits. Increasing with the sizes of reference population, these two approaches are feasible for future application of genomic selection in Chinese beef cattle.
基因组预测已广泛应用于估算农场动物的基因组育种值(GEBV)。本研究对中国西门塔尔牛的 20 个重要经济性状(生长、胴体和肉质性状)进行了基因组预测。采用了 5 种方法(GBLUP、BayesA、BayesB、BayesCπ和 BayesR)来估计基因组育种值。预测准确性范围从 0.159(BayesCπ估计的瘦肉百分比)到 0.518(BayesR 估计的牛里脊重量)。此外,我们发现 20 个性状的平均预测准确性分别为 0.361、0.361、0.367、0.367 和 0.378,GBLUP、BayesA、BayesB、BayesCπ和 BayesR 的平均回归系数分别为 0.89、0.86、0.89、0.94 和 0.95。生长和胴体性状的基因组预测准确性大多为中等和高度,而肉质性状的准确性相对较低。我们得出结论,贝叶斯回归方法,特别是 BayesR 和 BayesCπ,对于大多数性状略优于 GBLUP。随着参考群体规模的增加,这两种方法在未来的中国肉牛基因组选择中是可行的。