Bioinformatics and Mathematical Modeling, Center of Plant Systems Biology and Biotechnology, Plovdiv, 4000, Bulgaria.
Systems Biology and Mathematical Modeling, Max Planck Institute of Molecular Plant Physiology, Potsdam, 14476, Germany.
New Phytol. 2023 Oct;240(1):426-438. doi: 10.1111/nph.19154. Epub 2023 Jul 28.
Plants can rapidly mitigate the effects of suboptimal growth environments by phenotypic plasticity of fitness-traits. While genetic variation for phenotypic plasticity offers the means for breeding climate-resilient crop lines, accurate genomic prediction models for plasticity of fitness-related traits are still lacking. Here, we employed condition- and accession-specific metabolic models for 67 Arabidopsis thaliana accessions to dissect and predict plasticity of rosette growth to changes in nitrogen availability. We showed that specific reactions in photorespiration, linking carbon and nitrogen metabolism, as well as key pathways of central carbon metabolism exhibited substantial genetic variation for flux plasticity. We also demonstrated that, in comparison with a genomic prediction model for fresh weight (FW), genomic prediction of growth plasticity improves the predictability of FW under low nitrogen by 58.9% and by additional 15.4% when further integrating data on plasticity of metabolic fluxes. Therefore, the combination of metabolic and statistical modeling provides a stepping stone in understanding the molecular mechanisms and improving the predictability of plasticity for fitness-related traits.
植物可以通过适应特征的表型可塑性快速减轻生长环境不佳的影响。虽然适应特征的表型可塑性的遗传变异为培育具有气候适应能力的作物品系提供了手段,但与适应能力相关的适应特征可塑性的精确基因组预测模型仍然缺乏。在这里,我们使用 67 个拟南芥品系的条件和品系特异性代谢模型,来剖析和预测对氮可用性变化的冠层生长的可塑性。我们表明,光合作用和氮代谢之间的碳固定和氮同化相关的特定反应,以及中心碳代谢的关键途径,表现出对通量可塑性的显著遗传变异。我们还表明,与鲜重 (FW) 的基因组预测模型相比,生长可塑性的基因组预测可将低氮条件下 FW 的预测性提高 58.9%,当进一步整合代谢通量可塑性数据时,可额外提高 15.4%。因此,代谢和统计建模的结合为理解与适应能力相关的特征可塑性的分子机制和提高其可预测性提供了一个切入点。