Gunia M, Saintilan R, Venot E, Hozé C, Fouilloux M N, Phocas F
INRA, UMR 1313 Génétique Animale et Biologie Intégrative, 78350 Jouy-en-Josas, France AgroParisTech, UMR 1313 Génétique Animale et Biologie Intégrative, 75231 Paris, France.
Union Nationale des Coopératives agricoles d'Elevage et d'Insémination Animale, 149 rue de Bercy, 75595 Paris Cedex 12, France.
J Anim Sci. 2014 Aug;92(8):3258-69. doi: 10.2527/jas.2013-7478. Epub 2014 Jun 19.
The objective of the study was to develop a genomic evaluation for French beef cattle breeds and assess accuracy and bias of prediction for different genomic selection strategies. Based on a reference population of 2,682 Charolais bulls and cows, genotyped or imputed to a high-density SNP panel (777K SNP), we tested the influence of different statistical methods, marker densities (50K versus 777K), and training population sizes and structures on the quality of predictions. Four different training sets containing up to 1,979 animals and a unique validation set of 703 young bulls only known on their individual performances were formed. BayesC method had the largest average accuracy compared to genomic BLUP or pedigree-based BLUP. No gain of accuracy was observed when increasing the density of markers from 50K to 777K. For a BayesC model and 777K SNP panels, the accuracy calculated as the correlation between genomic predictions and deregressed EBV (DEBV) divided by the square root of heritability was 0.42 for birth weight, 0.34 for calving ease, 0.45 for weaning weight, 0.52 for muscular development, and 0.27 for skeletal development. Half of the training set constituted animals having only their own performance recorded, whose contribution only represented 5% of the accuracy. Using DEBV as a response brought greater accuracy than using EBV (+5% on average). Considering a residual polygenic component strongly reduced bias for most of the traits. The optimal percentage of polygenic variance varied across traits. Among the methodologies tested to implement genomic selection in the French Charolais beef cattle population, the most accurate and less biased methodology was to analyze DEBV under a BayesC strategy and a residual polygenic component approach. With this approach, a 50K SNP panel performed as well as a 777K panel.
本研究的目的是开发针对法国肉牛品种的基因组评估方法,并评估不同基因组选择策略预测的准确性和偏差。基于2682头夏洛来公牛和母牛的参考群体,这些个体进行了基因分型或推算至高密度SNP芯片(777K SNP),我们测试了不同统计方法、标记密度(50K与777K)以及训练群体大小和结构对预测质量的影响。形成了四个不同的训练集,包含多达1979头动物,以及一个仅根据个体性能已知的703头年轻公牛的唯一验证集。与基因组最佳线性无偏预测(GBLUP)或基于系谱的最佳线性无偏预测相比,贝叶斯C方法具有最高的平均准确性。当标记密度从50K增加到777K时,未观察到准确性的提高。对于贝叶斯C模型和777K SNP芯片,以基因组预测与去回归估计育种值(DEBV)之间的相关性除以遗传力的平方根计算的准确性,出生体重为0.42,产犊难易度为0.34,断奶体重为0.45,肌肉发育为0.52,骨骼发育为0.27。训练集的一半构成仅记录了自身性能的动物,其贡献仅占准确性的5%。使用DEBV作为响应比使用估计育种值(EBV)带来更高的准确性(平均提高5%)。考虑残余多基因成分可大大降低大多数性状的偏差。多基因方差的最佳百分比因性状而异。在法国夏洛来肉牛群体中实施基因组选择所测试的方法中,最准确且偏差最小的方法是在贝叶斯C策略和残余多基因成分方法下分析DEBV。采用这种方法,50K SNP芯片的表现与777K芯片一样好。