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优化训练集以进行玉米早期单交种的基因组预测。

Optimization of training sets for genomic prediction of early-stage single crosses in maize.

机构信息

Department of Agronomy and Plant Genetics, University of Minnesota, St. Paul, MN, 55108, USA.

Department of Agronomy and Horticulture, University of Nebraska, Lincoln, NE, 68583, USA.

出版信息

Theor Appl Genet. 2021 Feb;134(2):687-699. doi: 10.1007/s00122-020-03722-w. Epub 2021 Jan 4.

Abstract

Training population optimization algorithms are useful for efficiently training genomic prediction models for single-cross performance, especially if the population is extended beyond only realized crosses to all possible single crosses. Genomic prediction of single-cross performance could allow effective evaluation of all possible single crosses between all inbreds developed in a hybrid breeding program. The objectives of the present study were to investigate the effect of different levels of relatedness on genomic predictive ability of single crosses, evaluate the usefulness of deterministic formula to forecast prediction accuracy in advance, and determine the potential for TRS optimization based on prediction error variance (PEVmean) and coefficient of determination (CDmean) criteria. We used 481 single crosses made by crossing 89 random recombinant inbred lines (RILs) belonging to the Iowa stiff stalk synthetic group with 103 random RILs belonging to the non-stiff stalk synthetic heterotic group. As expected, predictive ability was enhanced by ensuring close relationships between TRSs and target sets, even when TRS sizes were smaller. We found that designing a TRS based on PEVmean or CDmean criteria is useful for increasing the efficiency of genomic prediction of maize single crosses. We went further and extended the sampling space from that of all observed single crosses to all possible single crosses, providing a much larger genetic space within which to design a training population. Using all possible single crosses increased the advantage of the PEVmean and CDmean methods based on expected prediction accuracy. This finding suggests that it may be worthwhile using an optimization algorithm to select a training population from all possible single crosses to maximize efficiency in training accurate models for hybrid genomic prediction.

摘要

优化训练群体算法对于高效训练单交性能的基因组预测模型非常有用,特别是如果群体不仅扩展到实际杂交,还扩展到所有可能的单交。单交性能的基因组预测可以允许有效评估杂种育成计划中所有自交系之间的所有可能的单交。本研究的目的是研究不同亲缘关系水平对单交基因组预测能力的影响,评估确定性公式在提前预测准确性方面的有用性,并根据预测误差方差(PEVmean)和决定系数(CDmean)标准确定 TRS 优化的潜力。我们使用 481 个单交,由 89 个随机重组自交系(RIL)与 103 个非硬秆杂种群的随机 RIL 杂交而成。正如预期的那样,即使 TRS 规模较小,通过确保 TRS 与目标集之间的密切关系,预测能力也得到了提高。我们发现,基于 PEVmean 或 CDmean 标准设计 TRS 有助于提高玉米单交的基因组预测效率。我们更进一步,将采样空间从所有观察到的单交扩展到所有可能的单交,在设计训练群体时提供了更大的遗传空间。使用所有可能的单交增加了基于预期预测准确性的 PEVmean 和 CDmean 方法的优势。这一发现表明,使用优化算法从所有可能的单交中选择一个训练群体,以最大化杂交基因组预测模型的准确性训练效率,可能是值得的。

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