Neuner Stefan, Edel Christian, Emmerling Reiner, Thaller Georg, Götz Kay-Uwe
Bavarian State Research Center for Agriculture, Institute of Animal Breeding, Grub, Germany.
Genet Sel Evol. 2009 Mar 4;41(1):26. doi: 10.1186/1297-9686-41-26.
In practical implementations of marker-assisted selection economic and logistic restrictions frequently lead to incomplete genotypic data for the animals of interest. This may result in bias and larger standard errors of the estimated parameters and, as a consequence, reduce the benefits of applying marker-assisted selection. Our study examines the impact of the following factors: phenotypic information, depth of pedigree, and missing genotypes in the application of marker-assisted selection. Stochastic simulations were conducted to generate a typical dairy cattle population. Genetic parameters and breeding values were estimated using a two-step approach. First, pre-corrected phenotypes (daughter yield deviations (DYD) for bulls, yield deviations (YD) for cows) were calculated in polygenic animal models for the entire population. These estimated phenotypes were then used in marker assisted BLUP (MA-BLUP) evaluations where only the genotyped animals and their close relatives were included.Models using YD of cows (bull dams) in addition to DYD of bulls resulted in much smaller standard errors for the estimated variance components. The bias in DYD models was larger than in models including YD. Depth of pedigree had the strongest impact on the standard errors of all the estimated variance components. As expected, estimation of variance components was less precise with larger proportions of animals without genotypes in the pedigree. Accuracies of MA-BLUP breeding values for young bull candidates were strongly affected by the inclusion of cow information, but only marginally influenced by pedigree depth and proportions of genotyped animals.
在标记辅助选择的实际应用中,经济和物流方面的限制常常导致目标动物的基因型数据不完整。这可能会导致估计参数出现偏差和更大的标准误差,从而降低应用标记辅助选择的益处。我们的研究考察了以下因素在标记辅助选择应用中的影响:表型信息、系谱深度和缺失的基因型。通过随机模拟生成了一个典型的奶牛群体。使用两步法估计遗传参数和育种值。首先,在整个群体的多基因动物模型中计算预校正的表型(公牛的女儿产量偏差(DYD),母牛的产量偏差(YD))。然后,这些估计的表型被用于标记辅助最佳线性无偏预测(MA - BLUP)评估,其中只包括基因分型动物及其近亲。除了公牛的DYD之外,使用母牛(公牛的母亲)的YD的模型在估计方差分量时标准误差要小得多。DYD模型中的偏差比包含YD的模型更大。系谱深度对所有估计方差分量的标准误差影响最大。正如预期的那样,系谱中无基因型动物比例越大,方差分量的估计就越不精确。年轻公牛候选者的MA - BLUP育种值的准确性受母牛信息的纳入影响很大,但仅略微受系谱深度和基因分型动物比例的影响。