Keller Beat, Ariza-Suarez Daniel, de la Hoz Juan, Aparicio Johan Steven, Portilla-Benavides Ana Elisabeth, Buendia Hector Fabio, Mayor Victor Manuel, Studer Bruno, Raatz Bodo
Bean Program, Agrobiodiversity Area, International Center for Tropical Agriculture (CIAT), Cali, Colombia.
Molecular Plant Breeding, Institute of Agricultural Sciences, ETH Zurich, Zurich, Switzerland.
Front Plant Sci. 2020 Jul 7;11:1001. doi: 10.3389/fpls.2020.01001. eCollection 2020.
In plant and animal breeding, genomic prediction models are established to select new lines based on genomic data, without the need for laborious phenotyping. Prediction models can be trained on recent or historic phenotypic data and increasingly available genotypic data. This enables the adoption of genomic selection also in under-used legume crops such as common bean. Beans are an important staple food in the tropics and mainly grown by smallholders under limiting environmental conditions such as drought or low soil fertility. Therefore, genotype-by-environment interactions (G × E) are an important consideration when developing new bean varieties. However, G × E are often not considered in genomic prediction models nor are these models implemented in current bean breeding programs. Here we show the prediction abilities of four agronomic traits in common bean under various environmental stresses based on twelve field trials. The dataset includes 481 elite breeding lines characterized by 5,820 SNP markers. Prediction abilities over all twelve trials ranged between 0.6 and 0.8 for yield and days to maturity, respectively, predicting new lines into new seasons. In all four evaluated traits, the prediction abilities reached about 50-80% of the maximum accuracies given by phenotypic correlations and heritability. Predictions under drought and low phosphorus stress were up to 10 and 20% improved when G × E were included in the model, respectively. Our results demonstrate the potential of genomic selection to increase the genetic gain in common bean breeding. Prediction abilities improved when more phenotypic data was available and G × E could be accounted for. Furthermore, the developed models allowed us to predict genotypic performance under different environmental stresses. This will be a key factor in the development of common bean varieties adapted to future challenging conditions.
在植物和动物育种中,基因组预测模型的建立是为了基于基因组数据选择新的品系,而无需进行费力的表型分析。预测模型可以根据近期或历史表型数据以及日益可得的基因型数据进行训练。这使得基因组选择也能够应用于诸如菜豆等未充分利用的豆科作物。菜豆是热带地区重要的主食作物,主要由小农户在干旱或土壤肥力低等有限的环境条件下种植。因此,在培育新的菜豆品种时,基因型与环境互作(G×E)是一个重要的考虑因素。然而,基因组预测模型中通常不考虑G×E,当前的菜豆育种项目中也未实施这些模型。在此,我们基于12次田间试验展示了菜豆在各种环境胁迫下4个农艺性状的预测能力。该数据集包括481个优良育种系,由5820个单核苷酸多态性(SNP)标记表征。在所有12次试验中,产量和成熟天数的预测能力分别在0.6至0.8之间,能够将新的品系预测到新的季节。在所有4个评估性状中,预测能力达到了表型相关性和遗传力所给出的最大准确度的约50 - 80%。当模型中纳入G×E时,干旱和低磷胁迫下的预测分别提高了10%和20%。我们的结果证明了基因组选择在提高菜豆育种中遗传增益方面的潜力。当有更多表型数据可用且能够考虑G×E时,预测能力得到了提高。此外,所开发的模型使我们能够预测不同环境胁迫下的基因型表现。这将是培育适应未来挑战性条件的菜豆品种的关键因素。