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在包含多基因效应的情况下,全基因组育种值在世代间的准确性得以维持。

Persistence of accuracy of genome-wide breeding values over generations when including a polygenic effect.

机构信息

Norwegian University of Life Sciences, Department of Animal and Aquacultural Sciences, PO Box 5003, N-1432 As, Norway.

出版信息

Genet Sel Evol. 2009 Dec 29;41(1):53. doi: 10.1186/1297-9686-41-53.

Abstract

BACKGROUND

When estimating marker effects in genomic selection, estimates of marker effects may simply act as a proxy for pedigree, i.e. their effect may partially be attributed to their association with superior parents and not be linked to any causative QTL. Hence, these markers mainly explain polygenic effects rather than QTL effects. However, if a polygenic effect is included in a Bayesian model, it is expected that the estimated effect of these markers will be more persistent over generations without having to re-estimate the marker effects every generation and will result in increased accuracy and reduced bias.

METHODS

Genomic selection using the Bayesian method, 'BayesB' was evaluated for different marker densities when a polygenic effect is included (GWpEBV) and not included (GWEBV) in the model. Linkage disequilibrium and a mutation drift balance were obtained by simulating a population with a Ne of 100 over 1,000 generations.

RESULTS

Accuracy of selection was slightly higher for the model including a polygenic effect than for the model not including a polygenic effect whatever the marker density. The accuracy decreased in later generations, and this reduction was stronger for lower marker densities. However, no significant difference in accuracy was observed between the two models. The linear regression of TBV on GWEBV and GWpEBV was used as a measure of bias. The regression coefficient was more stable over generations when a polygenic effect was included in the model, and was always between 0.98 and 1.00 for the highest marker density. The regression coefficient decreased more quickly with decreasing marker density.

CONCLUSIONS

Including a polygenic effect had no impact on the selection accuracy, but showed reduced bias, which is especially important when estimates of genome-wide markers are used to estimate breeding values over more than one generation.

摘要

背景

在基因组选择中估计标记效应时,标记效应的估计值可能仅仅充当系谱的代理,即它们的效应可能部分归因于它们与优秀父母的关联,而与任何因果 QTL 无关。因此,这些标记主要解释多基因效应,而不是 QTL 效应。然而,如果在贝叶斯模型中包含一个多基因效应,则预计这些标记的估计效应在没有必须每代重新估计标记效应的情况下,在几代内会更持久,并且会导致准确性提高和偏差减少。

方法

当在模型中包含(GWpEBV)和不包含(GWEBV)多基因效应时,使用贝叶斯方法“BayesB”评估了不同标记密度的基因组选择。通过在 1000 代内模拟一个 Ne 为 100 的群体,获得了连锁不平衡和突变漂移平衡。

结果

无论标记密度如何,包含多基因效应的模型的选择准确性略高于不包含多基因效应的模型。准确性在后期世代下降,并且这种降低在较低的标记密度下更强。然而,两个模型之间没有观察到准确性的显著差异。将 TBV 对 GWEBV 和 GWpEBV 的线性回归用作偏差的度量。当在模型中包含多基因效应时,回归系数在几代内更稳定,并且对于最高标记密度,回归系数始终在 0.98 和 1.00 之间。随着标记密度的降低,回归系数下降得更快。

结论

包含多基因效应对选择准确性没有影响,但显示出偏差降低,当使用全基因组标记的估计值在超过一代的时间内估计育种值时,这一点尤其重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8806/2813225/f38b19c75aba/1297-9686-41-53-1.jpg

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