Modeling the effects of strigolactone levels on maize root system architecture

Front Plant Sci. 2024 Jan 11:14:1329556. doi: 10.3389/fpls.2023.1329556. eCollection 2023.

Abstract

Maize is the most in-demand staple crop globally. Its production relies strongly on the use of fertilizers for the supply of nitrogen, phosphorus, and potassium, which the plant absorbs through its roots, together with water. The architecture of maize roots is determinant in modulating how the plant interacts with the microbiome and extracts nutrients and water from the soil. As such, attempts to use synthetic biology and modulate that architecture to make the plant more resilient to drought and parasitic plants are underway. These attempts often try to modulate the biosynthesis of hormones that determine root architecture and growth. Experiments are laborious and time-consuming, creating the need for simulation platforms that can integrate metabolic models and 3D root growth models and predict the effects of synthetic biology interventions on both, hormone levels and root system architectures. Here, we present an example of such a platform that is built using Mathematica. First, we develop a root model, and use it to simulate the growth of many unique 3D maize root system architectures (RSAs). Then, we couple this model to a metabolic model that simulates the biosynthesis of strigolactones, hormones that modulate root growth and development. The coupling allows us to simulate the effect of changing strigolactone levels on the architecture of the roots. We then integrate the two models in a simulation platform, where we also add the functionality to analyze the effect of strigolactone levels on root phenotype. Finally, using in silico experiments, we show that our models can reproduce both the phenotype of wild type maize, and the effect that varying strigolactone levels have on changing the architecture of maize roots.

Keywords: maize; mathematical model; multiscale modeling; root system architecture; rsa; strigolactones.

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. PROSTRIG, an ERANET project from FACEJPI (PCI2019-103382, MICIUN), partially funded this project. AL received funding from the European Union’s H2020 research and innovation programme under Marie Skłodowska-Curie grant agreement No. 801586 and Ayudas al Personal Investigador en Formación (IREP) from IRBLleida and Diputación de Lleida. OB received a Ph. D. fellowship from AGAUR (2022FI_B 00395).