Nguyen Van Hieu, Morantte Rose Imee Zhella, Lopena Vitaliano, Verdeprado Holden, Murori Rosemary, Ndayiragije Alexis, Katiyar Sanjay Kumar, Islam Md Rafiqul, Juma Roselyne Uside, Flandez-Galvez Hayde, Glaszmann Jean-Christophe, Cobb Joshua N, Bartholomé Jérôme
CIRAD, UMR AGAP Institut, 34398, Montpellier, France.
UMR AGAP Institut, Univ Montpellier, CIRAD, INRAE, Institut Agro, Montpellier, France.
Rice (N Y). 2023 Feb 8;16(1):7. doi: 10.1186/s12284-023-00623-6.
Assessing the performance of elite lines in target environments is essential for breeding programs to select the most relevant genotypes. One of the main complexities in this task resides in accounting for the genotype by environment interactions. Genomic prediction models that integrate information from multi-environment trials and environmental covariates can be efficient tools in this context. The objective of this study was to assess the predictive ability of different genomic prediction models to optimize the use of multi-environment information. We used 111 elite breeding lines representing the diversity of the international rice research institute breeding program for irrigated ecosystems. The lines were evaluated for three traits (days to flowering, plant height, and grain yield) in 15 environments in Asia and Africa and genotyped with 882 SNP markers. We evaluated the efficiency of genomic prediction to predict untested environments using seven multi-environment models and three cross-validation scenarios.
The elite lines were found to belong to the indica group and more specifically the indica-1B subgroup which gathered improved material originating from the Green Revolution. Phenotypic correlations between environments were high for days to flowering and plant height (33% and 54% of pairwise correlation greater than 0.5) but low for grain yield (lower than 0.2 in most cases). Clustering analyses based on environmental covariates separated Asia's and Africa's environments into different clusters or subclusters. The predictive abilities ranged from 0.06 to 0.79 for days to flowering, 0.25-0.88 for plant height, and - 0.29-0.62 for grain yield. We found that models integrating genotype-by-environment interaction effects did not perform significantly better than models integrating only main effects (genotypes and environment or environmental covariates). The different cross-validation scenarios showed that, in most cases, the use of all available environments gave better results than a subset.
Multi-environment genomic prediction models with main effects were sufficient for accurate phenotypic prediction of elite lines in targeted environments. These results will help refine the testing strategy to update the genomic prediction models to improve predictive ability.
评估优良品系在目标环境中的表现对于育种计划选择最相关的基因型至关重要。这项任务的主要复杂之处之一在于考虑基因型与环境的相互作用。整合多环境试验信息和环境协变量的基因组预测模型在这种情况下可能是有效的工具。本研究的目的是评估不同基因组预测模型的预测能力,以优化多环境信息的利用。我们使用了111个优良育种品系,这些品系代表了国际水稻研究所灌溉生态系统育种计划的多样性。这些品系在亚洲和非洲的15个环境中针对三个性状(抽穗天数、株高和籽粒产量)进行了评估,并用882个单核苷酸多态性(SNP)标记进行了基因分型。我们使用七个多环境模型和三种交叉验证方案评估了基因组预测在预测未测试环境方面的效率。
发现这些优良品系属于籼稻组,更具体地说是籼稻-1B亚组,该亚组汇集了源自绿色革命的改良材料。抽穗天数和株高在不同环境之间的表型相关性较高(成对相关性大于0.5的分别为33%和54%),但籽粒产量的相关性较低(大多数情况下低于0.2)。基于环境协变量的聚类分析将亚洲和非洲的环境分为不同的聚类或子聚类。抽穗天数的预测能力范围为0.06至0.79,株高为0.25至0.88,籽粒产量为-0.29至0.62。我们发现,整合基因型与环境相互作用效应的模型并不比仅整合主效应(基因型和环境或环境协变量)的模型表现得显著更好。不同的交叉验证方案表明,在大多数情况下,使用所有可用环境比使用子集能得到更好的结果。
具有主效应的多环境基因组预测模型足以对目标环境中的优良品系进行准确的表型预测。这些结果将有助于完善测试策略,以更新基因组预测模型,提高预测能力。