Melandri Giovanni, Thorp Kelly R, Broeckling Corey, Thompson Alison L, Hinze Lori, Pauli Duke
School of Plant Sciences, University of Arizona, Tucson, AZ, United States.
United States Department of Agriculture-Agricultural Research Service, Arid Land Agricultural Research Center, Maricopa, AZ, United States.
Front Plant Sci. 2021 Oct 22;12:751868. doi: 10.3389/fpls.2021.751868. eCollection 2021.
The study of phenotypes that reveal mechanisms of adaptation to drought and heat stress is crucial for the development of climate resilient crops in the face of climate uncertainty. The leaf metabolome effectively summarizes stress-driven perturbations of the plant physiological status and represents an intermediate phenotype that bridges the plant genome and phenome. The objective of this study was to analyze the effect of water deficit and heat stress on the leaf metabolome of 22 genetically diverse accessions of upland cotton grown in the Arizona low desert over two consecutive years. Results revealed that membrane lipid remodeling was the main leaf mechanism of adaptation to drought. The magnitude of metabolic adaptations to drought, which had an impact on fiber traits, was found to be quantitatively and qualitatively associated with different stress severity levels during the two years of the field trial. Leaf-level hyperspectral reflectance data were also used to predict the leaf metabolite profiles of the cotton accessions. Multivariate statistical models using hyperspectral data accurately estimated ( > 0.7 in ∼34% of the metabolites) and predicted ( > 0.5 in 15-25% of the metabolites) many leaf metabolites. Predicted values of metabolites could efficiently discriminate stressed and non-stressed samples and reveal which regions of the reflectance spectrum were the most informative for predictions. Combined together, these findings suggest that hyperspectral sensors can be used for the rapid, non-destructive estimation of leaf metabolites, which can summarize the plant physiological status.
在气候不确定性的背景下,研究揭示作物适应干旱和热胁迫机制的表型对于培育适应气候变化的作物至关重要。叶片代谢组有效地概括了胁迫驱动的植物生理状态扰动,并代表了连接植物基因组和表型组的中间表型。本研究的目的是分析水分亏缺和热胁迫对连续两年生长在亚利桑那州低沙漠地区的22个遗传多样性陆地棉品种叶片代谢组的影响。结果表明,膜脂重塑是叶片适应干旱的主要机制。在田间试验的两年中,发现对干旱的代谢适应程度对纤维性状有影响,且在数量和质量上与不同胁迫严重程度相关。叶片水平的高光谱反射率数据也被用于预测棉花品种的叶片代谢物谱。使用高光谱数据的多变量统计模型准确估计了许多叶片代谢物(约34%的代谢物 > 0.7)并进行了预测(15 - 25%的代谢物 > 0.5)。代谢物的预测值能够有效地区分胁迫和非胁迫样本,并揭示反射光谱的哪些区域对预测最具信息价值。综合这些发现表明,高光谱传感器可用于快速、无损地估计叶片代谢物,而叶片代谢物能够概括植物的生理状态。