INRAE, CNRS, AgroParisTech, GQE-Le Moulon, Université Paris-Saclay, 91190, Gif-Sur-Yvette, France.
Laboratoire Reproduction Et Développement Des Plantes, CNRS, ENS de Lyon-46, Allée d'Italie, 69364, Lyon, France.
Theor Appl Genet. 2024 Jul 3;137(7):175. doi: 10.1007/s00122-024-04679-w.
Transcriptomics and proteomics information collected on a platform can predict additive and non-additive effects for platform traits and additive effects for field traits. The effects of climate change in the form of drought, heat stress, and irregular seasonal changes threaten global crop production. The ability of multi-omics data, such as transcripts and proteins, to reflect a plant's response to such climatic factors can be capitalized in prediction models to maximize crop improvement. Implementing multi-omics characterization in field evaluations is challenging due to high costs. It is, however, possible to do it on reference genotypes in controlled conditions. Using omics measured on a platform, we tested different multi-omics-based prediction approaches, using a high dimensional linear mixed model (MegaLMM) to predict genotypes for platform traits and agronomic field traits in a panel of 244 maize hybrids. We considered two prediction scenarios: in the first one, new hybrids are predicted (CV-NH), and in the second one, partially observed hybrids are predicted (CV-POH). For both scenarios, all hybrids were characterized for omics on the platform. We observed that omics can predict both additive and non-additive genetic effects for the platform traits, resulting in much higher predictive abilities than GBLUP. It highlights their efficiency in capturing regulatory processes in relation to growth conditions. For the field traits, we observed that the additive components of omics only slightly improved predictive abilities for predicting new hybrids (CV-NH, model MegaGAO) and for predicting partially observed hybrids (CV-POH, model GAOxW-BLUP) in comparison to GBLUP. We conclude that measuring the omics in the fields would be of considerable interest in predicting productivity if the costs of omics drop significantly.
基于平台收集的转录组学和蛋白质组学信息可以预测平台性状的加性和非加性效应,以及田间性状的加性效应。以干旱、热应激和季节变化不规则为形式的气候变化威胁着全球作物生产。转录本和蛋白质等多组学数据反映植物对这些气候因素的反应的能力可以在预测模型中得到利用,以最大限度地提高作物改良。由于成本高,在田间评估中实施多组学特征分析具有挑战性。然而,在受控条件下对参考基因型进行操作是可行的。我们使用平台上测量的组学数据,测试了不同的基于多组学的预测方法,使用高维线性混合模型(MegaLMM)来预测 244 个玉米杂交种品系的平台性状和农艺田间性状。我们考虑了两种预测情景:在第一种情景中,预测新的杂交种(CV-NH),在第二种情景中,预测部分观察到的杂交种(CV-POH)。对于这两种情况,所有的杂交种都在平台上进行了组学特征分析。我们观察到,组学可以预测平台性状的加性和非加性遗传效应,从而比 GBLUP 具有更高的预测能力。这突出了它们在与生长条件相关的调控过程中捕捉的效率。对于田间性状,我们观察到,与 GBLUP 相比,组学的加性成分仅略微提高了预测新杂交种(CV-NH,模型 MegaGAO)和预测部分观察到的杂交种(CV-POH,模型 GAOxW-BLUP)的能力。我们得出结论,如果组学成本显著降低,那么在田间测量组学将对预测生产力具有相当大的兴趣。