Agriculture Victoria, Centre for AgriBioscience, AgriBio, Bundoora, VIC, Australia.
School of Life and Environmental Sciences, Plant Breeding Institute, Sydney Institute of Agriculture, The University of Sydney, Narrabri, NSW, Australia.
Theor Appl Genet. 2019 Nov;132(11):3143-3154. doi: 10.1007/s00122-019-03413-1. Epub 2019 Aug 21.
A multi-environment genomic prediction model incorporating environmental covariates increased the prediction accuracy of wheat grain protein content. The advantage of the haplotype-based model was dependent upon the trait of interest. The inclusion of environment covariates (EC) in genomic prediction models has the potential to precisely model environmental effects and genotype-by-environment interactions. Together with EC, a haplotype-based genomic prediction approach, which is capable of accommodating the interaction between local epistasis and environment, may increase the prediction accuracy. The main objectives of our study were to evaluate the potential of EC to portray the relationship between environments and the relevance of local epistasis modelled by haplotype-based approaches in multi-environment prediction. The results showed that among five traits: grain yield (GY), plant height, protein content, screenings percentage (SP) and thousand kernel weight, protein content exhibited a 2.1% increase in prediction accuracy when EC was used to model the environmental relationship compared to treatment of the environment as a regular random effect without a variance-covariance structure. The approach used a Gaussian kernel to characterise the relationship among environments that displayed no advantage in contrast to the use of a genomic relationship matrix. The prediction accuracies of haplotype-based approaches for SP were consistently higher than the genotype-based model when the numbers of single-nucleotide polymorphisms (SNP) in a haplotype were from three to ten. In contrast, for GY, haplotype-based models outperformed genotype-based methods when two to four SNPs were used to construct the haplotype.
多环境基因组预测模型纳入环境协变量提高了小麦籽粒蛋白质含量的预测准确性。基于单倍型的模型的优势取决于感兴趣的性状。在基因组预测模型中纳入环境协变量 (EC) 具有精确模拟环境效应和基因型-环境互作的潜力。与 EC 一起,基于单倍型的基因组预测方法能够适应局部上位性与环境之间的相互作用,可能会提高预测准确性。我们研究的主要目的是评估 EC 描绘环境之间关系的潜力,以及基于单倍型的方法模拟局部上位性在多环境预测中的相关性。结果表明,在五个性状中:籽粒产量(GY)、株高、蛋白质含量、筛选率(SP)和千粒重,与将环境作为常规随机效应处理而不具有方差协方差结构相比,当 EC 用于模拟环境关系时,蛋白质含量的预测准确性提高了 2.1%。该方法使用高斯核来描述环境之间的关系,与使用基因组关系矩阵相比,没有优势。当单倍型中的单核苷酸多态性(SNP)数量从三个到十个时,基于单倍型的方法对 SP 的预测准确性始终高于基于基因型的模型。相比之下,对于 GY,当使用两个到四个 SNP 构建单倍型时,基于单倍型的模型优于基于基因型的方法。