Can biochemical traits bridge the gap between genomics and plant performance? A study in rice under drought

Author:

Melandri Giovanni12ORCID,Monteverde Eliana23ORCID,Riewe David45ORCID,AbdElgawad Hamada67ORCID,McCouch Susan R2ORCID,Bouwmeester Harro18ORCID

Affiliation:

1. Laboratory of Plant Physiology, Wageningen University and Research , Wageningen, the Netherlands

2. School of Integrative Plant Sciences, Plant Breeding and Genetics Section, Cornell University , Ithaca, New York, USA

3. Departamento de Biología Vegetal, Facultad de Agronomía, Laboratorio de Evolución y Domesticación de las Plantas, Universidad de La República , Montevideo, Uruguay

4. Julius Kühn-Institute (JKI), Federal Research Centre for Cultivated Plants, Institute for Ecological Chemistry, Plant Analysis and Stored Product Protection , Berlin, Germany

5. Department of Molecular Genetics, Leibniz Institute of Plant Genetics and Crop Plant Research (IPK) , Seeland, Germany

6. Laboratory for Integrated Molecular Plant Physiology Research, University of Antwerp , Antwerp, Belgium

7. Department of Botany, Faculty of Science, Beni-Suef University , Beni Suef, Egypt

8. Plant Hormone Biology group, Swammerdam Institute for Life Sciences, University of Amsterdam , Amsterdam, the Netherlands

Abstract

Abstract The possibility of introducing metabolic/biochemical phenotyping to complement genomics-based predictions in breeding pipelines has been considered for years. Here we examine to what extent and under what environmental conditions metabolic/biochemical traits can effectively contribute to understanding and predicting plant performance. In this study, multivariable statistical models based on flag leaf central metabolism and oxidative stress status were used to predict grain yield (GY) performance for 271 indica rice (Oryza sativa) accessions grown in the field under well-watered and reproductive stage drought conditions. The resulting models displayed significantly higher predictability than multivariable models based on genomic data for the prediction of GY under drought (Q2 = 0.54–0.56 versus 0.35) and for stress-induced GY loss (Q2 = 0.59–0.64 versus 0.03–0.06). Models based on the combined datasets showed predictabilities similar to metabolic/biochemical-based models alone. In contrast to genetic markers, models with enzyme activities and metabolite values also quantitatively integrated the effect of physiological differences such as plant height on GY. The models highlighted antioxidant enzymes of the ascorbate–glutathione cycle and a lipid oxidation stress marker as important predictors of rice GY stability under drought at the reproductive stage, and these stress-related variables were more predictive than leaf central metabolites. These findings provide evidence that metabolic/biochemical traits can integrate dynamic cellular and physiological responses to the environment and can help bridge the gap between the genome and the phenome of crops as predictors of GY performance under drought.

Funder

Growing Rice like Wheat’ research programme financially supported by an anonymous private donor

Wageningen University Fund

The Department of Plant Biology at Facultad de Agronomía, Universidad de la República

Eliana Monteverde while performing this research

Transnational Access capacities of the European Plant Phenotyping Network (EPPN

FP7 Research Infrastructures Programme of the European Union

Rapid Mobilization of Alleles for Rice Cultivar Improvement in Sub-Saharan Africa’ project at Cornell University

Publisher

Oxford University Press (OUP)

Subject

Plant Science,Genetics,Physiology

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