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Genomic Relationship Matrix for Correcting Pedigree Errors in Breeding Populations: Impact on Genetic Parameters and Genomic Selection Accuracy

机译:校正育种种群谱系错误的基因组关系矩阵:对遗传参数和基因组选择准确性的影响

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Quantitative genetic analyses aim to estimate genetic parameters and breeding values to select superior parents, families, and individuals. For these estimates a relationship matrix derived from the pedigree typically is used in a mixed model framework. However, breeding is a complex, multistep process and errors in the pedigree are common. Because errors reduce the accuracy of genetic parameter estimates and affect genetic gain, it is important to correct these errors. Here we show that a realized relationship matrix (RRM) derived from single nucleotide polymorphism markers based on the normality of the relationship coefficients can be used to correct pedigree errors. For a loblolly pine (Pinus taeda L.) breeding population, errors in the pedigree were detected and corrected with the RRM. With the corrected pedigree, best linear unbiased predictor (BLUP) models fit the data significantly better for 14 out of 15 traits evaluated, and the predictive ability of the genomic selection models using ridge regression BLUP increased for 13 traits. The corrected pedigree based on the normality of the relationship coefficients improves accuracy of traditional estimations of heritability and breeding values as well as genomic selection predictions. As more breeding programs begin to use genomic selection, we recommend first using the dense panel of markers to correct pedigree errors and then using the improved information to develop genomic selection prediction models.
机译:定量遗传分析旨在估计遗传参数和育种价值,以选择上等父母,家庭和个人。对于这些估计,通常在混合模型框架中使用从谱系派生的关系矩阵。但是,育种是一个复杂的,多步骤的过程,并且系谱中的错误很常见。由于错误会降低遗传参数估计的准确性并影响遗传增益,因此更正这些错误非常重要。在这里,我们显示基于关系系数的正态性从单核苷酸多态性标记得出的已实现的关系矩阵(RRM)可用于校正谱系错误。对于火炬松(Pinus taeda L.)繁殖种群,系谱中的错误被检测到并通过RRM进行校正。有了校正的谱系,最佳线性无偏预测器(BLUP)模型对评估的15个性状中的14个性状的数据拟合得更好,并且使用岭回归BLUP的基因组选择模型对13个性状的预测能力提高。基于关系系数的正态性的校正谱系提高了传统的遗传力和育种值估计以及基因组选择预测的准确性。随着越来越多的育种计划开始使用基因组选择,我们建议首先使用密集的标记来校正谱系错误,然后使用改进的信息来开发基因组选择预测模型。

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