Rutkoski Jessica, Poland Jesse, Mondal Suchismita, Autrique Enrique, Pérez Lorena González, Crossa José, Reynolds Matthew, Singh Ravi
International Programs, College of Agriculture and Life Sciences, Cornell University, Ithaca, New York 14853 Plant Breeding and Genetics Section, School of Integrated Plant Sciences, Cornell University, Ithaca, New York 14853 Global Wheat Program, International Maize and Wheat Improvement Center (CIMMYT), Ciudad de Mexico, 06600, Mexico
Department of Plant Pathology, Kansas State University, Manhattan, Kansas 66506.
G3 (Bethesda). 2016 Sep 8;6(9):2799-808. doi: 10.1534/g3.116.032888.
Genomic selection can be applied prior to phenotyping, enabling shorter breeding cycles and greater rates of genetic gain relative to phenotypic selection. Traits measured using high-throughput phenotyping based on proximal or remote sensing could be useful for improving pedigree and genomic prediction model accuracies for traits not yet possible to phenotype directly. We tested if using aerial measurements of canopy temperature, and green and red normalized difference vegetation index as secondary traits in pedigree and genomic best linear unbiased prediction models could increase accuracy for grain yield in wheat, Triticum aestivum L., using 557 lines in five environments. Secondary traits on training and test sets, and grain yield on the training set were modeled as multivariate, and compared to univariate models with grain yield on the training set only. Cross validation accuracies were estimated within and across-environment, with and without replication, and with and without correcting for days to heading. We observed that, within environment, with unreplicated secondary trait data, and without correcting for days to heading, secondary traits increased accuracies for grain yield by 56% in pedigree, and 70% in genomic prediction models, on average. Secondary traits increased accuracy slightly more when replicated, and considerably less when models corrected for days to heading. In across-environment prediction, trends were similar but less consistent. These results show that secondary traits measured in high-throughput could be used in pedigree and genomic prediction to improve accuracy. This approach could improve selection in wheat during early stages if validated in early-generation breeding plots.
基因组选择可在进行表型鉴定之前应用,相较于表型选择,能实现更短的育种周期并提高遗传增益率。利用基于近距离或遥感的高通量表型分析所测量的性状,可能有助于提高系谱和基因组预测模型对于目前尚无法直接进行表型鉴定的性状的准确性。我们利用五个环境中的557个品系,测试了在系谱和基因组最佳线性无偏预测模型中,将冠层温度的航空测量值以及绿色和红色归一化植被指数作为次要性状是否能提高普通小麦(Triticum aestivum L.)的籽粒产量预测准确性。将训练集和测试集的次要性状以及训练集的籽粒产量建模为多变量模型,并与仅将训练集的籽粒产量作为单变量的模型进行比较。在有重复和无重复、校正和未校正抽穗天数的情况下,估计了环境内和跨环境的交叉验证准确性。我们观察到,在环境内,对于无重复的次要性状数据且未校正抽穗天数时,次要性状使系谱预测模型中籽粒产量的准确性平均提高了56%,在基因组预测模型中提高了70%。当有重复时,次要性状提高的准确性略多,而当模型校正抽穗天数时,提高的幅度则小得多。在跨环境预测中,趋势相似但一致性较差。这些结果表明,高通量测量的次要性状可用于系谱和基因组预测以提高准确性。如果在早期育种小区中得到验证,这种方法可在小麦早期阶段改进选择。