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Accuracy of Genomic Selection Methods in a Standard Data Set of Loblolly Pine (Pinus taeda L.)

机译:火炬松(Pinus taeda L.)标准数据集中基因组选择方法的准确性

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摘要

Genomic selection can increase genetic gain per generation through early selection. Genomic selection is expected to be particularly valuable for traits that are costly to phenotype and expressed late in the life cycle of long-lived species. Alternative approaches to genomic selection prediction models may perform differently for traits with distinct genetic properties. Here the performance of four different original methods of genomic selection that differ with respect to assumptions regarding distribution of marker effects, including (i) ridge regression–best linear unbiased prediction (RR–BLUP), (ii) Bayes A, (iii) Bayes Cπ, and (iv) Bayesian LASSO are presented. In addition, a modified RR–BLUP (RR–BLUP B) that utilizes a selected subset of markers was evaluated. The accuracy of these methods was compared across 17 traits with distinct heritabilities and genetic architectures, including growth, development, and disease-resistance properties, measured in a Pinus taeda (loblolly pine) training population of 951 individuals genotyped with 4853 SNPs. The predictive ability of the methods was evaluated using a 10-fold, cross-validation approach, and differed only marginally for most method/trait combinations. Interestingly, for fusiform rust disease-resistance traits, Bayes Cπ, Bayes A, and RR–BLUB B had higher predictive ability than RR–BLUP and Bayesian LASSO. Fusiform rust is controlled by few genes of large effect. A limitation of RR–BLUP is the assumption of equal contribution of all markers to the observed variation. However, RR-BLUP B performed equally well as the Bayesian approaches.The genotypic and phenotypic data used in this study are publically available for comparative analysis of genomic selection prediction models.
机译:基因组选择可以通过早期选择提高每一代的遗传增益。预期基因组选择对于表型代价高昂且在长寿命物种生命周期后期表达的性状特别有价值。对于具有不同遗传特性的性状,基因组选择预测模型的替代方法可能会有所不同。在这里,四种关于基因组选择的原始方法的性能在标记效应分布的假设方面有所不同,包括(i)岭回归-最佳线性无偏预测(RR-BLUP),(ii)贝叶斯A,(iii)贝叶斯给出了Cπ和(iv)贝叶斯LASSO。此外,还评估了利用选定标记子集的改良RR-BLUP(RR-BLUP B)。比较了这些方法的准确性,对17种具有不同遗传力和遗传结构的性状进行了比较,包括生长,发育和抗病特性,这些结果在951个个体的taeda taeda(多叶松)训练基因型4853个SNP中进行了测量。该方法的预测能力是使用10倍交叉验证方法进行评估的,对于大多数方法/特征组合而言,只有很小的差异。有趣的是,对于梭形抗锈病性状,BayesCπ,Bayes A和RR–BLUB B具有比RR–BLUP和贝叶斯LASSO更高的预测能力。梭状锈病受少数效果显着的基因控制。 RR–BLUP的局限性是假设所有标记对观察到的变化均等贡献。然而,RR-BLUP B的表现与贝叶斯方法一样好。本研究中使用的基因型和表型数据可公开用于基因组选择预测模型的比较分析。

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