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Mixed Model Methods for Genomic Prediction and Variance Component Estimation of Additive and Dominance Effects Using SNP Markers

机译:使用SNP标记进行基因组预测和方差分量估计加性和优势效应的混合模型方法

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摘要

We established a genomic model of quantitative trait with genomic additive and dominance relationships that parallels the traditional quantitative genetics model, which partitions a genotypic value as breeding value plus dominance deviation and calculates additive and dominance relationships using pedigree information. Based on this genomic model, two sets of computationally complementary but mathematically identical mixed model methods were developed for genomic best linear unbiased prediction (GBLUP) and genomic restricted maximum likelihood estimation (GREML) of additive and dominance effects using SNP markers. These two sets are referred to as the CE and QM sets, where the CE set was designed for large numbers of markers and the QM set was designed for large numbers of individuals. GBLUP and associated accuracy formulations for individuals in training and validation data sets were derived for breeding values, dominance deviations and genotypic values. Simulation study showed that GREML and GBLUP generally were able to capture small additive and dominance effects that each accounted for 0.00005–0.0003 of the phenotypic variance and GREML was able to differentiate true additive and dominance heritability levels. GBLUP of the total genetic value as the summation of additive and dominance effects had higher prediction accuracy than either additive or dominance GBLUP, causal variants had the highest accuracy of GREML and GBLUP, and predicted accuracies were in agreement with observed accuracies. Genomic additive and dominance relationship matrices using SNP markers were consistent with theoretical expectations. The GREML and GBLUP methods can be an effective tool for assessing the type and magnitude of genetic effects affecting a phenotype and for predicting the total genetic value at the whole genome level.
机译:我们建立了具有基因组加性和优势关系的数量性状的基因组模型,该模型与传统的定量遗传学模型相似,该模型将基因型值划分为育种值加优势性偏差,并使用系谱信息计算加性和优势性关系。基于此基因组模型,开发了两组计算上互补但数学上相同的混合模型方法,用于使用SNP标记进行加和和优势效应的基因组最佳线性无偏预测(GBLUP)和基因组受限最大似然估计(GREML)。这两套被称为CE和QM套,其中CE套设计用于大量标记,而QM套设计用于大量个体。针对训练和验证数据集中的个体,得出了GBLUP以及相关的准确度公式,以得出育种值,优势度偏差和基因型值。仿真研究表明,GREML和GBLUP通常能够捕获较小的加性和显性效应,它们各自占表型方差的0.00005-0.0003,而GREML能够区分真实的加性和显性遗传度水平。总遗传价值的GBLUP作为加性和显性效应的总和比加性或显性GBLUP具有更高的预测准确性,因果变异具有GREML和GBLUP的最高准确性,并且预测的准确性与观察到的准确性一致。使用SNP标记的基因组加性和优势关系矩阵与理论预期一致。 GREML和GBLUP方法可以成为评估影响表型的遗传效应的类型和大小以及预测整个基因组水平的总遗传价值的有效工具。

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