Literature DB >> 27155093

Identification of line-specific strategies for improving carotenoid production in synthetic maize through data-driven mathematical modeling.

Jorge Comas1,2,3, Rui Benfeitas4,5, Ester Vilaprinyo1,2, Albert Sorribas1,2, Francesc Solsona3, Gemma Farré6, Judit Berman6, Uxue Zorrilla6, Teresa Capell6, Gerhard Sandmann7, Changfu Zhu6, Paul Christou6,8, Rui Alves9,10.   

Abstract

Plant synthetic biology is still in its infancy. However, synthetic biology approaches have been used to manipulate and improve the nutritional and health value of staple food crops such as rice, potato and maize. With current technologies, production yields of the synthetic nutrients are a result of trial and error, and systematic rational strategies to optimize those yields are still lacking. Here, we present a workflow that combines gene expression and quantitative metabolomics with mathematical modeling to identify strategies for increasing production yields of nutritionally important carotenoids in the seed endosperm synthesized through alternative biosynthetic pathways in synthetic lines of white maize, which is normally devoid of carotenoids. Quantitative metabolomics and gene expression data are used to create and fit parameters of mathematical models that are specific to four independent maize lines. Sensitivity analysis and simulation of each model is used to predict which gene activities should be further engineered in order to increase production yields for carotenoid accumulation in each line. Some of these predictions (e.g. increasing Zmlycb/Gllycb will increase accumulated β-carotenes) are valid across the four maize lines and consistent with experimental observations in other systems. Other predictions are line specific. The workflow is adaptable to any other biological system for which appropriate quantitative information is available. Furthermore, we validate some of the predictions using experimental data from additional synthetic maize lines for which no models were developed.
© 2016 The Authors The Plant Journal © 2016 John Wiley & Sons Ltd.

Entities:  

Keywords:  Zea mays; computational biology; mathematical modeling; metabolomics; synthetic biology; systems biology

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Substances:

Year:  2016        PMID: 27155093     DOI: 10.1111/tpj.13210

Source DB:  PubMed          Journal:  Plant J        ISSN: 0960-7412            Impact factor:   6.417


  2 in total

1.  A mathematical model for strigolactone biosynthesis in plants.

Authors:  Abel Lucido; Oriol Basallo; Albert Sorribas; Alberto Marin-Sanguino; Ester Vilaprinyo; Rui Alves
Journal:  Front Plant Sci       Date:  2022-09-02       Impact factor: 6.627

2.  Regulation of the Na+/K+-ATPase Ena1 Expression by Calcineurin/Crz1 under High pH Stress: A Quantitative Study.

Authors:  Silvia Petrezsélyová; María López-Malo; David Canadell; Alicia Roque; Albert Serra-Cardona; M Carmen Marqués; Ester Vilaprinyó; Rui Alves; Lynne Yenush; Joaquín Ariño
Journal:  PLoS One       Date:  2016-06-30       Impact factor: 3.240

  2 in total

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