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Practical application of genomic selection in a doubled-haploid winter wheat breeding program

机译:基因组选择在双倍单倍体冬小麦养殖计划中的实际应用

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Crop improvement is a long-term, expensive institutional endeavor. Genomic selection (GS), which uses single nucleotide polymorphism (SNP) information to estimate genomic breeding values, has proven efficient to increasing genetic gain by accelerating the breeding process in animal breeding programs. As for crop improvement, with few exceptions, GS applicability remains in the evaluation of algorithm performance. In this study, we examined factors related to GS applicability in line development stage for grain yield using a hard red winter wheat (Triticum aestivum L.) doubledhaploid population. The performance of GS was evaluated in two consecutive years to predict grain yield. In general, the semi-parametric reproducing kernel Hilbert space prediction algorithm outperformed parametric genomic best linear unbiased prediction. For both parametric and semi-parametric algorithms, an upward bias in predictability was apparent in within-year cross-validation, suggesting the prerequisite of cross-year validation for a more reliable prediction. Adjusting the training population's phenotype for genotype by environment effect had a positive impact on GS model's predictive ability. Possibly due to marker redundancy, a selected subset of SNPs at an absolute pairwise correlation coefficient threshold value of 0.4 produced comparable results and reduced the computational burden of considering the full SNP set. Finally, in the context of an ongoing breeding and selection effort, the present study has provided a measure of confidence based on the deviation of line selection from GS results, supporting the implementation of GS in wheat variety development.
机译:作物改善是一个长期,昂贵的机构努力。使用单核苷酸多态性(SNP)信息来估计基因组育种值的基因组选择(GS)已被证明通过加速动物育种计划中的育种过程来增加遗传利益。至于作物改进,少数例外情况下,GS适用性仍然存在于算法性能的评估中。在这项研究中,我们使用硬红色冬小麦(Triticum aestivum L.)双层百倍群体的谷物产量在线发育阶段进行了与GS适用性相关的因素。 GS的性能连续两年进行评估,以预测粮食产量。通常,半参数再现内核Hilbert空间预测算法优于参数基因组最佳线性无偏析预测。对于参数和半参数算法来说,在历证内部的交叉验证中,可预测性的向上偏差显而易见,这表明跨年验证对于更可靠的预测的前提。通过环境效应调整培训人口的基因型表型对GS模型的预测能力产生了积极的影响。可能是由于标记冗余,以0.4的绝对成对相关系数阈值为0.4的SNP的所选子集产生了类似的结果,并降低了考虑完整SNP集的计算负担。最后,在持续的繁殖和选择努力的背景下,本研究提供了基于从GS结果的线路选择偏差的偏信量,支持GS在小麦品种发展中的实施。

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