Queensland Alliance for Agriculture and Food Innovation, The University of Queensland, St Lucia, Brisbane, QLD, 4072, Australia.
Corteva Agriscience, Research and Development, Johnston, IA, 50131, USA.
Theor Appl Genet. 2021 Jun;134(6):1625-1644. doi: 10.1007/s00122-021-03812-3. Epub 2021 Mar 18.
Climate change and Genotype-by-Environment-by-Management interactions together challenge our strategies for crop improvement. Research to advance prediction methods for breeding and agronomy is opening new opportunities to tackle these challenges and overcome on-farm crop productivity yield-gaps through design of responsive crop improvement strategies. Genotype-by-Environment-by-Management (G × E × M) interactions underpin many aspects of crop productivity. An important question for crop improvement is "How can breeders and agronomists effectively explore the diverse opportunities within the high dimensionality of the complex G × E × M factorial to achieve sustainable improvements in crop productivity?" Whenever G × E × M interactions make important contributions to attainment of crop productivity, we should consider how to design crop improvement strategies that can explore the potential space of G × E × M possibilities, reveal the interesting Genotype-Management (G-M) technology opportunities for the Target Population of Environments (TPE), and enable the practical exploitation of the associated improved levels of crop productivity under on-farm conditions. Climate change adds additional layers of complexity and uncertainty to this challenge, by introducing directional changes in the environmental dimension of the G × E × M factorial. These directional changes have the potential to create further conditional changes in the contributions of the genetic and management dimensions to future crop productivity. Therefore, in the presence of G × E × M interactions and climate change, the challenge for both breeders and agronomists is to co-design new G-M technologies for a non-stationary TPE. Understanding these conditional changes in crop productivity through the relevant sciences for each dimension, Genotype, Environment, and Management, creates opportunities to predict novel G-M technology combinations suitable to achieve sustainable crop productivity and global food security targets for the likely climate change scenarios. Here we consider critical foundations required for any prediction framework that aims to move us from the current unprepared state of describing G × E × M outcomes to a future responsive state equipped to predict the crop productivity consequences of G-M technology combinations for the range of environmental conditions expected for a complex, non-stationary TPE under the influences of climate change.
气候变化和基因型-环境-管理互作共同挑战了我们的作物改良策略。为推进育种和农学预测方法的研究,为应对这些挑战和克服田间作物生产力的产量差距,通过设计响应型作物改良策略,为我们提供了新的机会。基因型-环境-管理(G×E×M)互作是作物生产力的许多方面的基础。对于作物改良的一个重要问题是:“育种家和农学家如何有效地在复杂的 G×E×M 因子的高维度中探索多样化的机会,从而实现作物生产力的可持续提高?” 只要 G×E×M 互作对实现作物生产力有重要贡献,我们就应该考虑如何设计作物改良策略,以探索 G×E×M 可能性的潜在空间,揭示目标环境群体(TPE)的有趣基因型-管理(G-M)技术机会,并使相关改进的作物生产力水平在田间条件下得到实际利用。气候变化通过在 G×E×M 因子的环境维度中引入定向变化,为这一挑战增加了更多的复杂性和不确定性。这些定向变化有可能进一步改变遗传和管理维度对未来作物生产力的贡献。因此,在存在 G×E×M 互作和气候变化的情况下,对育种家和农学家来说,挑战是为非稳定的 TPE 共同设计新的 G-M 技术。通过相关科学(每个维度的基因型、环境和管理)了解作物生产力的这些条件变化,为预测适合实现可持续作物生产力和全球粮食安全目标的新型 G-M 技术组合创造了机会,以应对可能的气候变化情景。在这里,我们考虑了任何旨在将我们从当前描述 G×E×M 结果的未准备状态转变为未来具有响应能力的状态的预测框架所需的关键基础,该状态有能力预测在气候变化影响下,复杂、非稳定的 TPE 下预期的各种环境条件下,G-M 技术组合对作物生产力的影响。