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首页> 外文期刊>Genetics and Molecular Research >Relevance of Additive and Nonadditive Genetic Relatedness for Genomic Prediction in Rice Population under Recurrent Selection Breeding
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Relevance of Additive and Nonadditive Genetic Relatedness for Genomic Prediction in Rice Population under Recurrent Selection Breeding

机译:反复选择育种下水稻群体基因组预测的加性和非加性遗传相关性

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In genomic recurrent selection programs of self-pollinated crops, additive genetic effects (breeding values) are effectively relevant for selection of superior progenies as new parents. However, considering additive and nonadditive genetic effects can improve the prediction of genome-enhanced breeding values (GEBV) of progenies, for quantitative traits. In this study, we assessed the magnitude of additive and nonadditive genetic variances for eight key traits in a rice population under recurrent selection, using marker-based relationship matrices. We then assessed the goodness-to-fit, bias, stability and accuracy of prediction for breeding values and total (additive plus nonadditive) genetic values, in five genomic best linear unbiased prediction (GBLUP) models, ignoring or not nonadditive genetic effects. The models were compared using 6174 single nucleotide polymorphisms (SNP) markers from 174 S1:3 progenies evaluated in field yield trial. We found dominance effects accounting for a substantial proportion of the total genetic variance for the key traits in rice, especially for days to flowering. In average of the traits, the component of variance additive, dominance, and epistatic contributed to about 34%, 14% and 9% for phenotypic variance. Additive genomic models, ignoring nonadditive genetic effects, showed better fit to the data and lower bias, in addition to greater stability and accuracy for predict GEBV of progenies. These results improve our understanding of the genetic architecture of the key traits in rice, evaluated in early-generation testing. Clearly, this study highlighted the advantages of additive models using genome-wide information, for genomic prediction applied to recurrent selection in a self-pollinated crop.
机译:在自花授粉作物的基因组轮回选择计划中,加性遗传效应(育种值)与选择优良后代作为新亲本有效相关。但是,考虑到累加和非累加的遗传效应,可以改善对数量性状的后代的基因组增强育种值(GEBV)的预测。在这项研究中,我们使用基于标记的关系矩阵,评估了轮回选择下水稻群体八个关键性状的加性和非加性遗传方差的大小。然后,我们在五个基因组最佳线性无偏预测(GBLUP)模型中评估了繁殖值和总(加性与非加性)遗传值的预测的拟合优度,偏倚,稳定性和准确性,而忽略或不考虑非加性遗传效应。使用来自田间产量试验的174个S1:3后代的6174个单核苷酸多态性(SNP)标记对模型进行了比较。我们发现优势效应在水稻关键性状的遗传变异中占很大比例,尤其是开花期。平均而言,表型差异的方差加性,支配性和上位性成分分别约占34%,14%和9%。忽略非加性遗传效应的加性基因组模型显示出更好的数据拟合性和较低的偏倚,此外还具有更高的稳定性和准确性,可预测子代的GEBV。这些结果提高了我们对水稻关键性状的遗传结构的了解,并在早期测试中进行了评估。显然,这项研究强调了使用全基因组信息的加性模型的优势,这对于将基因组预测应用于自花授粉作物的轮回选择具有重要意义。

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