4.7 Article

Assessing Drought and Heat Stress-Induced Changes in the Cotton Leaf Metabolome and Their Relationship With Hyperspectral Reflectance

期刊

FRONTIERS IN PLANT SCIENCE
卷 12, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fpls.2021.751868

关键词

cotton; drought; heat; leaf metabolome; hyperspectral reflectance; partial least squares regression

资金

  1. Cotton Incorporated Core Projects [18-384, 20-720]
  2. University of Arizona
  3. United States Department of Agriculture-Agricultural Research Service (USDA-ARS) [2020-13660-008-00-D, 2020-21000-013-00D, 3091-21000-041-00D]

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Studying the leaf metabolome of cotton plants under water deficit and heat stress revealed membrane lipid remodeling as the main mechanism of adaptation to drought, impacting fiber traits. Hyperspectral reflectance data accurately estimated and predicted various leaf metabolites, offering a rapid and non-destructive method for summarizing the plant physiological status.
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 (R-2 > 0.7 in similar to 34% of the metabolites) and predicted (Q(2) > 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.

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