Fortune telling: metabolic markers of plant performance - Archive ouverte HAL Access content directly
Journal Articles Metabolomics Year : 2016

Fortune telling: metabolic markers of plant performance

(1) , (1) , (1) , (2) , (3) , (4) , (5) , (6) , (1) , (1)


Background: In the last decade, metabolomics has emerged as a powerful diagnostic and predictive tool in many branches of science. Researchers in microbes, animal, food, medical and plant science have generated a large number of targeted or non-targeted metabolic profiles by using a vast array of analytical methods (GC–MS, LC–MS, 1H-NMR….). Comprehensive analysis of such profiles using adapted statistical methods and modeling has opened up the possibility of using single or combinations of metabolites as markers. Metabolic markers have been proposed as proxy, diagnostic or predictors of key traits in a range of model species and accurate predictions of disease outbreak frequency, developmental stages, food sensory evaluation and crop yield have been obtained. Aim of review : (i) To provide a definition of plant performance and metabolic markers, (ii) to highlight recent key applications involving metabolic markers as tools for monitoring or predicting plant performance, and (iii) to propose a workable and cost-efficient pipeline to generate and use metabolic markers with a special focus on plant breeding. Key message: Using examples in other models and domains, the review proposes that metabolic markers are tending to complement and possibly replace traditional molecular markers in plant science as efficient estimators of performance.
Fichier principal
Vignette du fichier
Fernandez-Metabol-2016-OA_1.pdf (856.2 Ko) Télécharger le fichier
Origin : Publisher files allowed on an open archive

Dates and versions

hal-02637624 , version 1 (27-05-2020)


Attribution - CC BY 4.0



Olivier Fernandez, Maria Urrutia, Stéphane Bernillon, Catherine Giauffret, Francois F. Tardieu, et al.. Fortune telling: metabolic markers of plant performance. Metabolomics, 2016, 12 (10), ⟨10.1007/s11306-016-1099-1⟩. ⟨hal-02637624⟩
59 View
34 Download



Gmail Facebook Twitter LinkedIn More