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在北欧红牛群体中使用不同模型和响应变量进行基因组预测的准确性。

Accuracy of genomic prediction using different models and response variables in the Nordic Red cattle population.

作者信息

Gao H, Lund M S, Zhang Y, Su G

机构信息

Center for Quantitative Genetics and Genomics, Department of Molecular Biology and Genetics, Aarhus University, Tjele, Denmark; College of Animal Science and Technology, China Agricultural University, Beijing, China.

出版信息

J Anim Breed Genet. 2013 Oct;130(5):333-40. doi: 10.1111/jbg.12039. Epub 2013 Apr 26.

Abstract

Breeding animals can be accurately evaluated using appropriate genomic prediction models, based on marker data and phenotype information. In this study, direct genomic values (DGV) were estimated for 16 traits of Nordic Total Merit (NTM) Index in Nordic Red cattle population using three models and two different response variables. The three models were as follows: a linear mixed model (GBLUP), a Bayesian variable selection model similar to BayesA (BayesA*) and a Bayesian least absolute shrinkage and selection operator model (Bayesian Lasso). The response variables were deregressed proofs (DRP) and conventional estimated breeding values (EBV). The reliability of genomic predictions was measured on bulls in the validation data set as the squared correlation between DGV and DRP divided by the reliability of DRP. Using DRP as response variable, the reliabilities of DGV among the 16 traits ranged from 0.151 to 0.569 (average 0.317) for GBLUP, from 0.152 to 0.576 (average 0.318) for BayesA* and from 0.150 to 0.570 (average 0.320) for Bayesian Lasso. Using EBV as response variable, the reliabilities ranged from 0.159 to 0.580 (average 0.322) for GBLUP, from 0.157 to 0.578 (average 0.319) for BayesA* and from 0.159 to 0.582 (average 0.325) for Bayesian Lasso. In summary, Bayesian Lasso performed slightly better than the other two models, and EBV performed slightly better than DRP as response variable, with regard to prediction reliability of DGV. However, these differences were not statistically significant. Moreover, using EBV as response variable would result in problems with the scale of the resulting DGV and potential problem due to double counting.

摘要

基于标记数据和表型信息,使用适当的基因组预测模型可以准确评估种畜。在本研究中,利用三种模型和两种不同的响应变量,对北欧红牛群体的北欧总优(NTM)指数的16个性状估计了直接基因组值(DGV)。这三种模型如下:线性混合模型(GBLUP)、类似于BayesA的贝叶斯变量选择模型(BayesA*)和贝叶斯最小绝对收缩和选择算子模型(贝叶斯套索)。响应变量为去回归证明(DRP)和传统估计育种值(EBV)。基因组预测的可靠性在验证数据集中的公牛上进行测量,计算方法是DGV与DRP之间的平方相关性除以DRP的可靠性。以DRP作为响应变量时,GBLUP模型对16个性状的DGV可靠性范围为0.151至0.569(平均0.317),BayesA模型为0.152至0.576(平均0.318),贝叶斯套索模型为0.150至0.570(平均0.320)。以EBV作为响应变量时,GBLUP模型的可靠性范围为0.159至0.580(平均0.322),BayesA模型为0.157至0.578(平均0.319),贝叶斯套索模型为0.159至0.582(平均0.325)。总之,就DGV的预测可靠性而言,贝叶斯套索模型的表现略优于其他两个模型,EBV作为响应变量的表现略优于DRP。然而,这些差异没有统计学意义。此外,以EBV作为响应变量会导致所得DGV的尺度问题以及由于重复计算导致的潜在问题。

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