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Effectiveness of Genomic Prediction of Maize Hybrid Performance in Different Breeding Populations and Environments

机译:不同育种种群和环境下玉米杂交表现基因组预测的有效性

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摘要

Genomic prediction is expected to considerably increase genetic gains by increasing selection intensity and accelerating the breeding cycle. In this study, marker effects estimated in 255 diverse maize (Zea mays L.) hybrids were used to predict grain yield, anthesis date, and anthesis-silking interval within the diversity panel and testcross progenies of 30 F2-derived lines from each of five populations. Although up to 25% of the genetic variance could be explained by cross validation within the diversity panel, the prediction of testcross performance of F2-derived lines using marker effects estimated in the diversity panel was on average zero. Hybrids in the diversity panel could be grouped into eight breeding populations differing in mean performance. When performance was predicted separately for each breeding population on the basis of marker effects estimated in the other populations, predictive ability was low (i.e., 0.12 for grain yield). These results suggest that prediction resulted mostly from differences in mean performance of the breeding populations and less from the relationship between the training and validation sets or linkage disequilibrium with causal variants underlying the predicted traits. Potential uses for genomic prediction in maize hybrid breeding are discussed emphasizing the need of (1) a clear definition of the breeding scenario in which genomic prediction should be applied (i.e., prediction among or within populations), (2) a detailed analysis of the population structure before performing cross validation, and (3) larger training sets with strong genetic relationship to the validation set.
机译:通过提高选择强度和加速繁殖周期,基因组预测有望显着增加遗传增益。在这项研究中,使用估计的255个不同玉米(Zea mays L.)杂交种的标记效应,来预测5个品种中的30个F2衍生品系的多样性面板和测试杂交后代中的谷物产量,花期和花期间隔。人口。尽管可以通过多样性面板内的交叉验证来解释高达25%的遗传变异,但是使用多样性面板中估计的标记效应对F2衍生品系的testcross性能的预测平均为零。多样性面板中的杂种可以分为平均性能不同的八个育种种群。当根据其他种群估计的标记效应分别预测每个育种种群的表现时,预测能力很低(即谷物产量为0.12)。这些结果表明,预测主要来自育种种群平均性能的差异,而较少来自训练和验证集或连锁不平衡与具有预测特征的因果变异之间的关系。讨论了玉米杂交育种中基因组预测的潜在用途,着重强调了以下方面的需求:(1)明确定义应应用基因组预测的育种场景(即种群之间或种群内的预测),(2)对基因组预测的详细分析进行交叉验证之前的总体结构,以及(3)与验证集具有强遗传关系的较大训练集。

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