e-ISSN 2231-8542
ISSN 1511-3701
Nur Aqila Syafiqa Abdul Nuri, Noor Illi Mohamad Puad, Muhammad Yusuf Abduh and Azlin Suhaida Azmi
Pertanika Journal of Tropical Agricultural Science, Volume 31, Issue 1, January 2023
DOI: https://doi.org/10.47836/pjst.31.1.07
Keywords: FBA, General Algebraic Modeling System (GAMS) software, metabolic flux distribution, rice, starch
Published on: 3 January 2023
The demand for starch-rich crops remains high due to their wide applications, and one of them is rice (Oryza sativa). However, large-scale rice production faces challenges such as unstable productivity, climate changes and excessive use of agrochemicals. Plant cell culture technology is proposed to increase rice yield and produce a drought-resistance variety of rice to sustain its demand. However, the amount of starch in rice cultures is expected to be smaller compared to the planted ones. The main aim of this study is to apply Flux Balance Analysis (FBA) to optimize starch production in rice cultures. This study reconstructed the stoichiometric metabolic model for rice culture based on the published articles. It consists of 160 reactions and 148 metabolites representing rice’s main carbon metabolism towards starch production. The model was then formulated in GAMS v31.1.0, and the objective function was set to the maximization of biomass and starch. The selected constraints (sugar uptake rates and cell growth rates) from previous studies were utilized. The simulated starch production rate values were achieved at the highest glucose uptake rates with the value of 0.0544 mol/g CDW.h. The internal metabolic flux distributions demonstrated that the incoming carbon fixes were directed towards the glycolysis pathway, TCA cycle, PPP cycle, and starch biosynthesis reactions. The study results serve as a starting point to further understanding the starch production mechanism in plants known to be complex.
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ISSN 1511-3701
e-ISSN 2231-8542