Powell Owen M, Voss-Fels Kai P, Jordan David R, Hammer Graeme, Cooper Mark
Queensland Alliance for Agriculture and Food Innovation, Centre for Crop Science, The University of Queensland, St Lucia, QLD, Australia.
ARC Centre of Excellence for Plant Success in Nature and Agriculture, The University of Queensland, St Lucia, QLD, Australia.
Front Plant Sci. 2021 Jun 4;12:663565. doi: 10.3389/fpls.2021.663565. eCollection 2021.
Genomic prediction of complex traits across environments, breeding cycles, and populations remains a challenge for plant breeding. A potential explanation for this is that underlying non-additive genetic (GxG) and genotype-by-environment (GxE) interactions generate allele substitution effects that are non-stationary across different contexts. Such non-stationary effects of alleles are either ignored or assumed to be implicitly captured by most gene-to-phenotype (G2P) maps used in genomic prediction. The implicit capture of non-stationary effects of alleles requires the G2P map to be re-estimated across different contexts. We discuss the development and application of hierarchical G2P maps that explicitly capture non-stationary effects of alleles and have successfully increased short-term prediction accuracy in plant breeding. These hierarchical G2P maps achieve increases in prediction accuracy by allowing intermediate processes such as other traits and environmental factors and their interactions to contribute to complex trait variation. However, long-term prediction remains a challenge. The plant breeding community should undertake complementary simulation and empirical experiments to interrogate various hierarchical G2P maps that connect GxG and GxE interactions simultaneously. The existing genetic correlation framework can be used to assess the magnitude of non-stationary effects of alleles and the predictive ability of these hierarchical G2P maps in long-term, multi-context genomic predictions of complex traits in plant breeding.
跨环境、育种周期和群体对复杂性状进行基因组预测仍然是植物育种面临的一项挑战。对此的一个潜在解释是,潜在的非加性遗传(GxG)和基因型与环境互作(GxE)会产生等位基因替代效应,这些效应在不同背景下是不稳定的。等位基因的这种非稳定效应要么被忽视,要么被大多数用于基因组预测的基因到表型(G2P)图谱假定为被隐含捕获。要隐含捕获等位基因的非稳定效应,就需要在不同背景下重新估计G2P图谱。我们讨论了分层G2P图谱的开发与应用,这些图谱明确捕获了等位基因的非稳定效应,并已成功提高了植物育种中的短期预测准确性。这些分层G2P图谱通过允许诸如其他性状和环境因素及其互作等中间过程对复杂性状变异做出贡献,从而提高了预测准确性。然而,长期预测仍然是一项挑战。植物育种界应开展补充性的模拟和实证实验,以探究同时连接GxG和GxE互作的各种分层G2P图谱。现有的遗传相关框架可用于评估等位基因非稳定效应的大小以及这些分层G2P图谱在植物育种复杂性状长期多背景基因组预测中的预测能力。