Assessing durum wheat ear and leaf metabolomes in the field through hyperspectral data.
Omar Vergara-DíazThomas VatterShawn Carlisle KefauverToshihiro ObataAlisdair Robert FernieJosé Luis ArausPublished in: The Plant journal : for cell and molecular biology (2020)
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-R2 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.
Keyphrases
- high throughput
- climate change
- essential oil
- electronic health record
- healthcare
- ms ms
- multidrug resistant
- type diabetes
- photodynamic therapy
- emergency department
- genome wide
- patient safety
- big data
- blood pressure
- risk assessment
- metabolic syndrome
- human health
- cell wall
- adipose tissue
- drug delivery
- drug release
- artificial intelligence
- binding protein
- data analysis
- drug induced
- african american