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Genomic Selection Accuracy using Multifamily Prediction Models in a Wheat Breeding Program

机译:小麦育种计划中使用多族预测模型进行基因组选择的准确性

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Genomic selection (GS) uses genome-wide molecular marker data to predict the genetic value of selection candidates in breeding programs. In plant breeding, the ability to produce large numbers of progeny per cross allows GS to be conducted within each family. However, this approach requires phenotypes of lines from each cross before conducting GS. This will prolong the selection cycle and may result in lower gains per year than approaches that estimate marker-effects with multiple families from previous selection cycles. In this study, phenotypic selection (PS), conventional marker-assisted selection (MAS), and GS prediction accuracy were compared for 13 agronomic traits in a population of 374 winter wheat (Triticum aestivum L.) advanced-cycle breeding lines. A cross-validation approach that trained and validated prediction accuracy across years was used to evaluate effects of model selection, training population size, and marker density in the presence of genotype × environment interactions (G×E). The average prediction accuracies using GS were 28% greater than with MAS and were 95% as accurate as PS. For net merit, the average accuracy across six selection indices for GS was 14% greater than for PS. These results provide empirical evidence that multifamily GS could increase genetic gain per unit time and cost in plant breeding.
机译:基因组选择(GS)使用全基因组分子标记数据来预测育种程序中候选候选物的遗传价值。在植物育种中,每个杂交产生大量后代的能力允许在每个家族中进行GS。但是,这种方法在进行GS之前需要每个交叉的表型。与估计先前选择周期中多个家族的标记效应的方法相比,这将延长选择周期,并可能导致每年的收益降低。在这项研究中,比较了374个冬小麦(Triticum aestivum L.)先进循环育种系群体中13个农艺性状的表型选择(PS),常规标记辅助选择(MAS)和GS预测准确性。在基因型×环境相互作用(G×E)存在的情况下,使用交叉验证方法来训练和验证多年来的预测准确性,以评估模型选择,训练种群大小和标记物密度的效果。使用GS的平均预测准确度比使用MAS的平均预测准确度高28%,准确度达到PS的95%。对于净值,GS的六个选择指数的平均准确度比PS高14%。这些结果提供了经验证据,表明多家族GS可以增加植物育种单位时间的遗传增益和成本。

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