Using Numerical Plant Models and Phenotypic Correlation Space to Design Achievable Ideotypes
Overview
Authors
Affiliations
Numerical plant models can predict the outcome of plant traits modifications resulting from genetic variations, on plant performance, by simulating physiological processes and their interaction with the environment. Optimization methods complement those models to design ideotypes, that is, ideal values of a set of plant traits, resulting in optimal adaptation for given combinations of environment and management, mainly through the maximization of performance criteria (e.g. yield and light interception). As use of simulation models gains momentum in plant breeding, numerical experiments must be carefully engineered to provide accurate and attainable results, rooting them in biological reality. Here, we propose a multi-objective optimization formulation that includes a metric of performance, returned by the numerical model, and a metric of feasibility, accounting for correlations between traits based on field observations. We applied this approach to two contrasting models: a process-based crop model of sunflower and a functional-structural plant model of apple trees. In both cases, the method successfully characterized key plant traits and identified a continuum of optimal solutions, ranging from the most feasible to the most efficient. The present study thus provides successful proof of concept for this enhanced modelling approach, which identified paths for desirable trait modification, including direction and intensity.
Wolff B, Julier B, Louarn G Front Plant Sci. 2024; 15:1356506.
PMID: 39416476 PMC: 11482038. DOI: 10.3389/fpls.2024.1356506.
Zhang P, Huang J, Ma Y, Wang X, Kang M, Song Y Plant Phenomics. 2023; 5:0091.
PMID: 37780969 PMC: 10538623. DOI: 10.34133/plantphenomics.0091.
Zhang X, Yang W, Tahir M, Chen X, Saudreau M, Zhang D Front Plant Sci. 2023; 14:1117051.
PMID: 37123856 PMC: 10146243. DOI: 10.3389/fpls.2023.1117051.
Tegegne A, Zeru M Sci Rep. 2022; 12(1):13729.
PMID: 35962025 PMC: 9374750. DOI: 10.1038/s41598-022-17905-6.
Functional-Structural Plant Models Mission in Advancing Crop Science: Opportunities and Prospects.
Soualiou S, Wang Z, Sun W, de Reffye P, Collins B, Louarn G Front Plant Sci. 2022; 12:747142.
PMID: 35003151 PMC: 8733959. DOI: 10.3389/fpls.2021.747142.