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首页> 外文期刊>Heredity: An International Journal of Genetics >Improving accuracies of genomic predictions for drought tolerance in maize by joint modeling of additive and dominance effects in multi-environment trials
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Improving accuracies of genomic predictions for drought tolerance in maize by joint modeling of additive and dominance effects in multi-environment trials

机译:通过联合建模在多环境试验中提高玉米干旱耐受性耐旱性耐受的准确性

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Breeding for drought tolerance is a challenging task that requires costly, extensive, and precise phenotyping. Genomic selection (GS) can be used to maximize selection efficiency and the genetic gains in maize (Zea mays L.) breeding programs for drought tolerance. Here, we evaluated the accuracy of genomic selection (GS) using additive (A) and additive + dominance (AD) models to predict the performance of untested maize single-cross hybrids for drought tolerance in multi-environment trials. Phenotypic data of five drought tolerance traits were measured in 308 hybrids along eight trials under water-stressed (WS) and well-watered (WW) conditions over two years and two locations in Brazil. Hybrids' genotypes were inferred based on their parents' genotypes (inbred lines) using single-nucleotide polymorphism markers obtained via genotyping-by-sequencing. GS analyses were performed using genomic best linear unbiased prediction by fitting a factor analytic (FA) multiplicative mixed model. Two cross-validation (CV) schemes were tested: CV1 and CV2. The FA framework allowed for investigating the stability of additive and dominance effects across environments, as well as the additive-by-environment and the dominance-by-environment interactions, with interesting applications for parental and hybrid selection. Results showed differences in the predictive accuracy between A and AD models, using both CV1 and CV2, for the five traits in both water conditions. For grain yield (GY) under WS and using CV1, the AD model doubled the predictive accuracy in comparison to the A model. Through CV2, GS models benefit from borrowing information of correlated trials, resulting in an increase of 40% and 9% in the predictive accuracy of GY under WS for A and AD models, respectively. These results highlight the importance of multi-environment trial analyses using GS models that incorporate additive and dominance effects for genomic predictions of GY under drought in maize single-cross hybrids.
机译:耐旱育种是一项具有挑战性的任务,需要昂贵、广泛和精确的表型。基因组选择(GS)可用于最大限度地提高玉米(Zea mays L.)抗旱育种计划的选择效率和遗传增益。在这里,我们使用加性(A)和加性+显性(AD)模型评估了基因组选择(GS)的准确性,以预测未经试验的玉米单杂交种在多环境试验中的抗旱性能。在巴西的两个地点,在两年多的时间里,在水分胁迫(WS)和充足水分(WW)条件下,对308个杂交种的五个耐旱性状的表型数据进行了测定。杂交种的基因型是根据其亲本的基因型(自交系)通过测序获得的单核苷酸多态性标记推断的。通过拟合因子分析(FA)乘法混合模型,使用基因组最佳线性无偏预测进行GS分析。测试了两种交叉验证(CV)方案:CV1和CV2。FA框架允许研究不同环境中加性和显性效应的稳定性,以及环境加性和环境显性相互作用,并在亲本和杂交选择方面有有趣的应用。结果表明,在两种水分条件下,使用CV1和CV2的A和AD模型对这五个性状的预测准确性存在差异。对于WS和CV1条件下的粮食产量(GY),AD模型比A模型的预测精度提高了一倍。通过CV2,GS模型受益于借用相关试验的信息,从而使A和AD模型在WS下的GY预测准确性分别提高了40%和9%。这些结果强调了使用GS模型进行多环境试验分析的重要性,GS模型结合了加性和显性效应,用于玉米单杂交种干旱条件下GY的基因组预测。

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