Xu Shizhong, Zhu Dan, Zhang Qifa
Department of Botany and Plant Sciences, University of California, Riverside, CA 92521; and.
National Key Laboratory of Crop Genetic Improvement and National Centre of Plant Gene Research (Wuhan), Huazhong Agricultural University, Wuhan 430070, China.
Proc Natl Acad Sci U S A. 2014 Aug 26;111(34):12456-61. doi: 10.1073/pnas.1413750111. Epub 2014 Aug 11.
Genomic selection is an upgrading form of marker-assisted selection for quantitative traits, and it differs from the traditional marker-assisted selection in that markers in the entire genome are used to predict genetic values and the QTL detection step is skipped. Genomic selection holds the promise to be more efficient than the traditional marker-assisted selection for traits controlled by polygenes. Genomic selection for pure breed improvement is based on marker information and thus leads to cost-saving due to early selection before phenotypes are measured. When applied to hybrid breeding, genomic selection is anticipated to be even more efficient because genotypes of hybrids are predetermined by their inbred parents. Hybrid breeding has been an important tool to increase crop productivity. Here we proposed and applied an advanced method to predict hybrid performance, in which a subset of all potential hybrids is used as a training sample to predict trait values of all potential hybrids. The method is called genomic best linear unbiased prediction. The technology applied to hybrids is called genomic hybrid breeding. We used 278 randomly selected hybrids derived from 210 recombinant inbred lines of rice as a training sample and predicted all 21,945 potential hybrids. The average yield of top 100 selection shows a 16% increase compared with the average yield of all potential hybrids. The new strategy of marker-guided prediction of hybrid yields serves as a proof of concept for a new technology that may potentially revolutionize hybrid breeding.
基因组选择是数量性状标记辅助选择的一种升级形式,它与传统的标记辅助选择不同之处在于,利用整个基因组中的标记来预测遗传值,并且跳过了QTL检测步骤。对于由多基因控制的性状,基因组选择有望比传统的标记辅助选择更有效。用于纯种改良的基因组选择基于标记信息,因此由于在测量表型之前进行早期选择而节省成本。当应用于杂交育种时,基因组选择预计会更有效,因为杂种的基因型由其近交亲本预先确定。杂交育种一直是提高作物产量的重要工具。在此,我们提出并应用了一种先进的方法来预测杂种表现,其中将所有潜在杂种的一个子集用作训练样本,以预测所有潜在杂种的性状值。该方法称为基因组最佳线性无偏预测。应用于杂种的这项技术称为基因组杂交育种。我们使用从210个水稻重组自交系衍生而来的278个随机选择的杂种作为训练样本,并预测了所有21945个潜在杂种。前100个选择的平均产量比所有潜在杂种的平均产量提高了16%。标记引导的杂种产量预测新策略为一项可能会彻底改变杂交育种的新技术提供了概念验证。