Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.

There is a growing demand for genome-scale metabolic reconstructions for plants, fueled by the need to understand the metabolic basis of crop yield and by progress in genome and transcriptome sequencing. Methods are also required to enable the interpretation of plant transcriptome data to study how...

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Main Authors: Samuel eSeaver, Louis eBradbury, Oceane eFrelin, Raphy eZarecki, Eytan eRuppin, Andrew D Hanson, Christopher Scott Henry
Format: Article
Language:English
Published: Frontiers Media S.A. 2015-03-01
Series:Frontiers in Plant Science
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fpls.2015.00142/full
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spelling doaj-41ec355595764f38bef7478f062065902020-11-24T23:40:46ZengFrontiers Media S.A.Frontiers in Plant Science1664-462X2015-03-01610.3389/fpls.2015.00142122642Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.Samuel eSeaver0Samuel eSeaver1Louis eBradbury2Louis eBradbury3Oceane eFrelin4Raphy eZarecki5Eytan eRuppin6Andrew D Hanson7Christopher Scott Henry8Christopher Scott Henry9Argonne National LaboratoryUniversity of ChicagoUniversity of FloridaYork College, City University of New YorkUniversity of FloridaTel Aviv UniversityTel Aviv UniversityUniversity of FloridaArgonne National LaboratoryUniversity of ChicagoThere is a growing demand for genome-scale metabolic reconstructions for plants, fueled by the need to understand the metabolic basis of crop yield and by progress in genome and transcriptome sequencing. Methods are also required to enable the interpretation of plant transcriptome data to study how cellular metabolic activity varies under different growth conditions or even within different organs, tissues, and developmental stages. Such methods depend extensively on the accuracy with which genes have been mapped to the biochemical reactions in the plant metabolic pathways. Errors in these mappings lead to metabolic reconstructions with an inflated number of reactions and possible generation of unreliable metabolic phenotype predictions. Here we introduce a new evidence-based genome-scale metabolic reconstruction of maize, with significant improvements in the quality of the gene-reaction associations included within our model. We also present a new approach for applying our model to predict active metabolic genes based on transcriptome data. This method includes a minimal set of reactions associated with low expression genes to enable activity of a maximum number of reactions associated with high expression genes. We apply this method to construct an organ-specific model for the maize leaf, and tissue specific models for maize embryo and endosperm cells. We validate our models using fluxomics data for the endosperm and embryo, demonstrating an improved capacity of our models to fit the available fluxomics data. All models are publicly available via the DOE Systems Biology Knowledgebase and PlantSEED, and our new method is generally applicable for analysis transcript profiles from any plant, paving the way for further in silico studies with a wide variety of plant genomes.http://journal.frontiersin.org/Journal/10.3389/fpls.2015.00142/fullEndospermMetabolismSystems BiologyZea maysFlux balance analysisMetabolic Networks
collection DOAJ
language English
format Article
sources DOAJ
author Samuel eSeaver
Samuel eSeaver
Louis eBradbury
Louis eBradbury
Oceane eFrelin
Raphy eZarecki
Eytan eRuppin
Andrew D Hanson
Christopher Scott Henry
Christopher Scott Henry
spellingShingle Samuel eSeaver
Samuel eSeaver
Louis eBradbury
Louis eBradbury
Oceane eFrelin
Raphy eZarecki
Eytan eRuppin
Andrew D Hanson
Christopher Scott Henry
Christopher Scott Henry
Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
Frontiers in Plant Science
Endosperm
Metabolism
Systems Biology
Zea mays
Flux balance analysis
Metabolic Networks
author_facet Samuel eSeaver
Samuel eSeaver
Louis eBradbury
Louis eBradbury
Oceane eFrelin
Raphy eZarecki
Eytan eRuppin
Andrew D Hanson
Christopher Scott Henry
Christopher Scott Henry
author_sort Samuel eSeaver
title Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
title_short Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
title_full Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
title_fullStr Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
title_full_unstemmed Improved Evidence-Based Genome-scale Metabolic Models for Maize Leaf, Embryo, and Endosperm.
title_sort improved evidence-based genome-scale metabolic models for maize leaf, embryo, and endosperm.
publisher Frontiers Media S.A.
series Frontiers in Plant Science
issn 1664-462X
publishDate 2015-03-01
description There is a growing demand for genome-scale metabolic reconstructions for plants, fueled by the need to understand the metabolic basis of crop yield and by progress in genome and transcriptome sequencing. Methods are also required to enable the interpretation of plant transcriptome data to study how cellular metabolic activity varies under different growth conditions or even within different organs, tissues, and developmental stages. Such methods depend extensively on the accuracy with which genes have been mapped to the biochemical reactions in the plant metabolic pathways. Errors in these mappings lead to metabolic reconstructions with an inflated number of reactions and possible generation of unreliable metabolic phenotype predictions. Here we introduce a new evidence-based genome-scale metabolic reconstruction of maize, with significant improvements in the quality of the gene-reaction associations included within our model. We also present a new approach for applying our model to predict active metabolic genes based on transcriptome data. This method includes a minimal set of reactions associated with low expression genes to enable activity of a maximum number of reactions associated with high expression genes. We apply this method to construct an organ-specific model for the maize leaf, and tissue specific models for maize embryo and endosperm cells. We validate our models using fluxomics data for the endosperm and embryo, demonstrating an improved capacity of our models to fit the available fluxomics data. All models are publicly available via the DOE Systems Biology Knowledgebase and PlantSEED, and our new method is generally applicable for analysis transcript profiles from any plant, paving the way for further in silico studies with a wide variety of plant genomes.
topic Endosperm
Metabolism
Systems Biology
Zea mays
Flux balance analysis
Metabolic Networks
url http://journal.frontiersin.org/Journal/10.3389/fpls.2015.00142/full
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