Model-assisted analysis for tuning anthocyanin composition in grape berries

Author:

Wang Yongjian12ORCID,Shang Boxing123,Génard Michel4ORCID,Hilbert-Masson Ghislaine5,Delrot Serge5ORCID,Gomès Eric5,Poni Stefano6,Keller Markus7ORCID,Renaud Christel5,Kong Junhua12,Chen Jinliang8ORCID,Liang Zhenchang123,Dai Zhanwu123ORCID

Affiliation:

1. State Key Laboratory of Plant Diversity and Specialty Crops and Beijing Key Laboratory of Grape Science and Enology, Institute of Botany, the Chinese Academy of Sciences , Beijing, 100093 , China

2. China National Botanical Garden , Beijing 100093 , China

3. University of Chinese Academy of Sciences , Beijing 100049 , China

4. INRAE, UR1115, Unité Plantes et Systèmes de Culture Horticoles , Avignon , France

5. EGFV, University of Bordeaux, Bordeaux-Sciences Agro, INRAE, ISVV , Villenave d’Ornon , France

6. Department of Sustainable Crop Production, Università Cattolica del Sacro Cuore , Via Emilia Parmense 84, 29122 Piacenza , Italy

7. Department of Viticulture and Enology, Irrigated Agriculture Research and Extension Center, Washington State University , Prosser, WA , USA

8. Center for Agricultural Water Research in China, China Agricultural University , Beijing, 100083 , China

Abstract

Abstract Anthocyanin composition is responsible for the red colour of grape berries and wines, and contributes to their organoleptic quality. However, anthocyanin biosynthesis is under genetic, developmental and environmental regulation, making its targeted fine-tuning challenging. We constructed a mechanistic model to simulate the dynamics of anthocyanin composition throughout grape ripening in Vitis vinifera, employing a consensus anthocyanin biosynthesis pathway. The model was calibrated and validated using six datasets from eight cultivars and 37 growth conditions. Tuning the transformation and degradation parameters allowed us to accurately simulate the accumulation process of each individual anthocyanin under different environmental conditions. The model parameters were robust across environments for each genotype. The coefficients of determination (R2) for the simulated versus observed values for the six datasets ranged from 0.92 to 0.99, while the relative root mean square errors (RRMSEs) were between 16.8 and 42.1 %. The leave-one-out cross-validation for three datasets showed R2 values of 0.99, 0.96 and 0.91, and RRMSE values of 28.8, 32.9 and 26.4 %, respectively, suggesting a high prediction quality of the model. Model analysis showed that the anthocyanin profiles of diverse genotypes are relatively stable in response to parameter perturbations. Virtual experiments further suggested that targeted anthocyanin profiles may be reached by manipulating a minimum of three parameters, in a genotype-dependent manner. This model presents a promising methodology for characterizing the temporal progression of anthocyanin composition, while also offering a logical foundation for bioengineering endeavours focused on precisely adjusting the anthocyanin composition of grapes.

Publisher

Oxford University Press (OUP)

Subject

Plant Science

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