Reconstruction and analysis of a genome-scale metabolic model for <it>Scheffersomyces stipitis</it>

<p>Abstract</p> <p>Background</p> <p>Fermentation of xylose, the major component in hemicellulose, is essential for economic conversion of lignocellulosic biomass to fuels and chemicals. The yeast <it>Scheffersomyces stipitis </it>(formerly known as <it&g...

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Bibliographic Details
Main Authors: Balagurunathan Balaji, Jonnalagadda Sudhakar, Tan Lily, Srinivasan Rajagopalan
Format: Article
Language:English
Published: BMC 2012-02-01
Series:Microbial Cell Factories
Subjects:
Online Access:http://www.microbialcellfactories.com/content/11/1/27
Description
Summary:<p>Abstract</p> <p>Background</p> <p>Fermentation of xylose, the major component in hemicellulose, is essential for economic conversion of lignocellulosic biomass to fuels and chemicals. The yeast <it>Scheffersomyces stipitis </it>(formerly known as <it>Pichia stipitis</it>) has the highest known native capacity for xylose fermentation and possesses several genes for lignocellulose bioconversion in its genome. Understanding the metabolism of this yeast at a global scale, by reconstructing the genome scale metabolic model, is essential for manipulating its metabolic capabilities and for successful transfer of its capabilities to other industrial microbes.</p> <p>Results</p> <p>We present a genome-scale metabolic model for <it>Scheffersomyces stipitis</it>, a native xylose utilizing yeast. The model was reconstructed based on genome sequence annotation, detailed experimental investigation and known yeast physiology. Macromolecular composition of <it>Scheffersomyces stipitis </it>biomass was estimated experimentally and its ability to grow on different carbon, nitrogen, sulphur and phosphorus sources was determined by phenotype microarrays. The compartmentalized model, developed based on an iterative procedure, accounted for 814 genes, 1371 reactions, and 971 metabolites. In silico computed growth rates were compared with high-throughput phenotyping data and the model could predict the qualitative outcomes in 74% of substrates investigated. Model simulations were used to identify the biosynthetic requirements for anaerobic growth of <it>Scheffersomyces stipitis </it>on glucose and the results were validated with published literature. The bottlenecks in <it>Scheffersomyces stipitis </it>metabolic network for xylose uptake and nucleotide cofactor recycling were identified by in silico flux variability analysis. The scope of the model in enhancing the mechanistic understanding of microbial metabolism is demonstrated by identifying a mechanism for mitochondrial respiration and oxidative phosphorylation.</p> <p>Conclusion</p> <p>The genome-scale metabolic model developed for <it>Scheffersomyces stipitis </it>successfully predicted substrate utilization and anaerobic growth requirements. Useful insights were drawn on xylose metabolism, cofactor recycling and mechanism of mitochondrial respiration from model simulations. These insights can be applied for efficient xylose utilization and cofactor recycling in other industrial microorganisms. The developed model forms a basis for rational analysis and design of <it>Scheffersomyces stipitis </it>metabolic network for the production of fuels and chemicals from lignocellulosic biomass.</p>
ISSN:1475-2859