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通过高光谱数据评估田间硬粒小麦穗和叶片的代谢组。

Assessing durum wheat ear and leaf metabolomes in the field through hyperspectral data.

机构信息

Integrative Crop Ecophysiology Group, Plant Physiology Section, Faculty of Biology, University of Barcelona, Diagonal 643, 08028, Barcelona, Spain.

Max Planck Institute of Molecular Plant Physiology, Am Mühlenberg 1, 14476, Potsdam, Germany.

出版信息

Plant J. 2020 May;102(3):615-630. doi: 10.1111/tpj.14636. Epub 2020 Jan 10.

Abstract

Hyperspectral techniques are currently used to retrieve information concerning plant biophysical traits, predominantly targeting pigments, water, and nitrogen-protein contents, structural elements, and the leaf area index. Even so, hyperspectral data could be more extensively exploited to overcome the breeding challenges being faced under global climate change by advancing high-throughput field phenotyping. In this study, we explore the potential of field spectroscopy to predict the metabolite profiles in flag leaves and ear bracts in durum wheat. The full-range reflectance spectra (visible (VIS)-near-infrared (NIR)-short wave infrared (SWIR)) of flag leaves, ears and canopies were recorded in a collection of contrasting genotypes grown in four environments under different water regimes. GC-MS metabolite profiles were analyzed in the flag leaves, ear bracts, glumes, and lemmas. The results from regression models exceeded 50% of the explained variation (adj-R in the validation sets) for at least 15 metabolites in each plant organ, whereas their errors were considerably low. The best regressions were obtained for malate (82%), glycerate and serine (63%) in leaves; myo-inositol (81%) in lemmas; glycolate (80%) in glumes; sucrose in leaves and glumes (68%); γ-aminobutyric acid (GABA) in leaves and glumes (61% and 71%, respectively); proline and glucose in lemmas (74% and 71%, respectively) and glumes (72% and 69%, respectively). The selection of wavebands in the models and the performance of the models based on canopy and VIS organ spectra and yield prediction are discussed. We feel that this technique will likely to be of interest due to its broad applicability in ecophysiology research, plant breeding programmes, and the agri-food industry.

摘要

高光谱技术目前用于获取有关植物生物物理特征的信息,主要针对色素、水、氮蛋白含量、结构元素和叶面积指数。即便如此,高光谱数据可以通过推进高通量田间表型分析来更广泛地利用,以克服全球气候变化带来的育种挑战。在这项研究中,我们探索了田间光谱在预测硬粒小麦旗叶和耳苞代谢物图谱方面的潜力。在不同水分条件下,在四个环境中种植的不同基因型的全反射光谱(可见(VIS)-近红外(NIR)-短波红外(SWIR))被记录在旗叶、耳朵和冠层中。在旗叶、耳苞、颖片和外稃中分析了 GC-MS 代谢物图谱。回归模型的结果在至少 15 种每个植物器官的代谢物中超过了 50%的解释变化(验证集的 adj-R),而它们的误差相当低。对于叶片中的苹果酸(82%)、甘油酸和丝氨酸(63%);外稃中的肌醇(81%);颖片中的乙二醇酸(80%);叶片和颖片中的蔗糖(68%);γ-氨基丁酸(GABA)在叶片和颖片中(分别为 61%和 71%);外稃中的脯氨酸和葡萄糖(分别为 74%和 71%)和颖片中(分别为 72%和 69%),得到了最好的回归。还讨论了模型中波段的选择以及基于冠层和 VIS 器官光谱和产量预测的模型性能。我们认为,由于该技术在生态生理学研究、植物育种计划和农业食品工业中的广泛适用性,它可能会引起人们的兴趣。

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