Jarquin Diego, Howard Reka, Liang Zhikai, Gupta Shashi K, Schnable James C, Crossa Jose
Department of Agronomy and Horticulture, University of Nebraska-Lincoln, Lincoln, NE, United States.
Department of Statistics, University of Nebraska-Lincoln, Lincoln, NE, United States.
Front Genet. 2020 Jan 24;10:1294. doi: 10.3389/fgene.2019.01294. eCollection 2019.
Genomic selection (GS) is an emerging methodology that helps select superior lines among experimental cultivars in plant breeding programs. It offers the opportunity to increase the productivity of cultivars by delivering increased genetic gains and reducing the breeding cycles. This methodology requires inexpensive and sufficiently dense marker information to be successful, and with whole genome sequencing, it has become an important tool in many crops. The recent assembly of the pearl millet genome has made it possible to employ GS models to improve the selection procedure in pearl millet breeding programs. Here, three GS models were implemented and compared using grain yield and dense molecular marker information of pearl millet obtained from two different genotyping platforms (C [conventional GBS RAD-seq] and T [tunable GBS tGBS]). The models were evaluated using three different cross-validation (CV) schemes mimicking real situations that breeders face in breeding programs: CV2 resembles an incomplete field trial, CV1 predicts the performance of untested hybrids, and CV0 predicts the performance of hybrids in unobserved environments. We found that () adding phenotypic information of parental inbreds to the calibration sets improved predictive ability, () accounting for genotype-by-environment interaction also increased the performance of the models, and () superior strategies should consider the use of the molecular markers derived from the T platform (tGBS).
基因组选择(GS)是一种新兴的方法,有助于在植物育种计划的实验品种中选择优良品系。它通过提高遗传增益和缩短育种周期,提供了提高品种生产力的机会。这种方法要取得成功需要廉价且足够密集的标记信息,随着全基因组测序的发展,它已成为许多作物中的重要工具。珍珠粟基因组的最新组装使得采用GS模型来改进珍珠粟育种计划中的选择程序成为可能。在此,利用从两个不同基因分型平台(C [传统简化基因组测序RAD-seq] 和T [可调式简化基因组测序tGBS])获得的珍珠粟籽粒产量和密集分子标记信息,实施并比较了三种GS模型。使用三种不同的交叉验证(CV)方案对模型进行评估,这些方案模拟了育种人员在育种计划中面临的实际情况:CV2类似于不完整的田间试验,CV1预测未测试杂交种的表现,CV0预测在未观察环境中杂交种的表现。我们发现,(1)在校准集中添加亲本自交系的表型信息可提高预测能力,(2)考虑基因型与环境的相互作用也可提高模型的性能,(3)更优策略应考虑使用源自T平台(tGBS)的分子标记。