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评估 RR-BLUP 基因组选择模型,该模型在玉米和高粱中纳入了全基因组关联研究信号的峰值。

Evaluation of RR-BLUP Genomic Selection Models that Incorporate Peak Genome-Wide Association Study Signals in Maize and Sorghum.

出版信息

Plant Genome. 2019 Mar;12(1). doi: 10.3835/plantgenome2018.07.0052.

DOI:10.3835/plantgenome2018.07.0052
PMID:30951091
Abstract

Certain agronomic crop traits are complex and thus governed by many small-effect loci. Statistical models typically used in a genome-wide association study (GWAS) and genomic selection (GS) quantify these signals by assessing genomic marker contributions in linkage disequilibrium (LD) with these loci to trait variation. These models have been used in separate quantitative genetics contexts until recently, when, in published studies, the predictive ability of GS models that include peak associated markers from a GWAS as fixed-effect covariates was assessed. Previous work suggests that such models could be useful for predicting traits controlled by several large-effect and many small-effect genes. We expand this work by evaluating simulated traits from diversity panels in maize ( L.) and sorghum [ (L.) Moench] using ridge-regression best linear unbiased prediction (RR-BLUP) models that include fixed-effect covariates tagging peak GWAS signals. The ability of such covariates to increase GS prediction accuracy in the RR-BLUP model under a wide variety of genetic architectures and genomic backgrounds was quantified. Of the 216 genetic architectures that we simulated, we identified 60 where the addition of fixed-effect covariates boosted prediction accuracy. However, for the majority of the simulated data, no increase or a decrease in prediction accuracy was observed. We also noted several instances where the inclusion of fixed-effect covariates increased both the variability of prediction accuracies and the bias of the genomic estimated breeding values. We therefore recommend that the performance of such a GS model be explored on a trait-by-trait basis prior to its implementation into a breeding program.

摘要

某些农艺作物性状复杂,因此受许多微效位点控制。全基因组关联研究(GWAS)和基因组选择(GS)中常用的统计模型通过评估与这些位点相关的基因组标记在连锁不平衡(LD)中的贡献来量化这些信号与性状变异的关系。这些模型在单独的数量遗传学背景下使用,直到最近,在已发表的研究中,评估了包括 GWAS 中与峰相关标记作为固定效应协变量的 GS 模型的预测能力。先前的工作表明,这些模型可能有助于预测由几个大效应和许多小效应基因控制的性状。我们通过使用包含标记 GWAS 峰的固定效应协变量的脊回归最佳线性无偏预测(RR-BLUP)模型来评估玉米( L.)和高粱[(L.)Moench]多样性面板中的模拟性状,从而扩展了这项工作。RR-BLUP 模型中固定效应协变量增加 GS 预测准确性的能力在多种遗传结构和基因组背景下进行了量化。在我们模拟的 216 种遗传结构中,我们确定了 60 种添加固定效应协变量可以提高预测准确性。然而,对于大多数模拟数据,没有观察到预测准确性的增加或减少。我们还注意到在某些情况下,包含固定效应协变量会增加预测准确性的可变性和基因组估计育种值的偏差。因此,我们建议在将这种 GS 模型实施到育种计划之前,根据性状逐个探索其性能。

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