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Genome-Enabled Estimates of Additive and Nonadditive Genetic Variances and Prediction of Apple Phenotypes Across Environments

机译:在整个环境中添加和不添加遗传变异的基因组估计和苹果表型的预测。

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摘要

The nonadditive genetic effects may have an important contribution to total genetic variation of phenotypes, so estimates of both the additive and nonadditive effects are desirable for breeding and selection purposes. Our main objectives were to: estimate additive, dominance and epistatic variances of apple (Malus × domestica Borkh.) phenotypes using relationship matrices constructed from genome-wide dense single nucleotide polymorphism (SNP) markers; and compare the accuracy of genomic predictions using genomic best linear unbiased prediction models with or without including nonadditive genetic effects. A set of 247 clonally replicated individuals was assessed for six fruit quality traits at two sites, and also genotyped using an Illumina 8K SNP array. Across several fruit quality traits, the additive, dominance, and epistatic effects contributed about 30%, 16%, and 19%, respectively, to the total phenotypic variance. Models ignoring nonadditive components yielded upwardly biased estimates of additive variance (heritability) for all traits in this study. The accuracy of genomic predicted genetic values (GEGV) varied from about 0.15 to 0.35 for various traits, and these were almost identical for models with or without including nonadditive effects. However, models including nonadditive genetic effects further reduced the bias of GEGV. Between-site genotypic correlations were high (>0.85) for all traits, and genotype-site interaction accounted for <10% of the phenotypic variability. The accuracy of prediction, when the validation set was present only at one site, was generally similar for both sites, and varied from about 0.50 to 0.85. The prediction accuracies were strongly influenced by trait heritability, and genetic relatedness between the training and validation families.
机译:非累加性遗传效应可能对表型的总体遗传变异有重要贡献,因此对于育种和选择目的,需要对累加性和非累加性效应进行估算。我们的主要目标是:使用由全基因组密集单核苷酸多态性(SNP)标记构建的关系矩阵,估计苹果(Malus×domestica Borkh。)表型的加性,优势和上位变异;并使用具有或不包括非累加遗传效应的最佳基因组线性无偏预测模型比较基因组预测的准确性。评估了一组247个无性系复制个体在两个位点的六个水果品质特征,并使用Illumina 8K SNP阵列进行了基因分型。在几种水果品质性状中,加性,优势和上位性效应分别为总表型变异贡献了约30%,16%和19%。忽略非加性成分的模型产生了本研究中所有性状的加性方差(遗传性)的向上偏差估计。对于各种性状,基因组预测遗传值(GEGV)的准确性从约0.15到0.35不等,并且对于具有或不具有非加性效应的模型,这些几乎相同。但是,包括非累加遗传效应的模型进一步降低了GEGV的偏倚。所有性状的位点之间的基因型相关性均较高(> 0.85),而基因型-位点间的相互作用占表型变异性的<10%。当验证集仅存在于一个站点时,预测的准确性通常对于两个站点都是相似的,并且在约0.50至0.85之间变化。预测准确性受到性状遗传力以及训练和验证家族之间遗传相关性的强烈影响。

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