Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>

<p>Abstract</p> <p>Background</p> <p>The robustness of <it>Saccharomyces cerevisiae </it>in facilitating industrial-scale production of ethanol extends its utilization as a platform to synthesize other metabolites. Metabolic engineering strategies, typically...

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Main Authors: Leonard Effendi, Xiao Yi, Varman Arul M, Tang Yinjie J
Format: Article
Language:English
Published: BMC 2011-06-01
Series:Microbial Cell Factories
Online Access:http://www.microbialcellfactories.com/content/10/1/45
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spelling doaj-92db0f705f5547a5b2a62db93c28a8492020-11-24T21:17:07ZengBMCMicrobial Cell Factories1475-28592011-06-011014510.1186/1475-2859-10-45Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>Leonard EffendiXiao YiVarman Arul MTang Yinjie J<p>Abstract</p> <p>Background</p> <p>The robustness of <it>Saccharomyces cerevisiae </it>in facilitating industrial-scale production of ethanol extends its utilization as a platform to synthesize other metabolites. Metabolic engineering strategies, typically via pathway overexpression and deletion, continue to play a key role for optimizing the conversion efficiency of substrates into the desired products. However, chemical production titer or yield remains difficult to predict based on reaction stoichiometry and mass balance. We sampled a large space of data of chemical production from <it>S. cerevisiae</it>, and developed a statistics-based model to calculate production yield using input variables that represent the number of enzymatic steps in the key biosynthetic pathway of interest, metabolic modifications, cultivation modes, nutrition and oxygen availability.</p> <p>Results</p> <p>Based on the production data of about 40 chemicals produced from <it>S. cerevisiae</it>, metabolic engineering methods, nutrient supplementation, and fermentation conditions described therein, we generated mathematical models with numerical and categorical variables to predict production yield. Statistically, the models showed that: 1. Chemical production from central metabolic precursors decreased exponentially with increasing number of enzymatic steps for biosynthesis (>30% loss of yield per enzymatic step, P-value = 0); 2. Categorical variables of gene overexpression and knockout improved product yield by 2~4 folds (P-value < 0.1); 3. Addition of notable amount of intermediate precursors or nutrients improved product yield by over five folds (P-value < 0.05); 4. Performing the cultivation in a well-controlled bioreactor enhanced the yield of product by three folds (P-value < 0.05); 5. Contribution of oxygen to product yield was not statistically significant. Yield calculations for various chemicals using the linear model were in fairly good agreement with the experimental values. The model generally underestimated the ethanol production as compared to other chemicals, which supported the notion that the metabolism of <it>Saccharomyces cerevisiae </it>has historically evolved for robust alcohol fermentation.</p> <p>Conclusions</p> <p>We generated simple mathematical models for first-order approximation of chemical production yield from <it>S. cerevisiae</it>. These linear models provide empirical insights to the effects of strain engineering and cultivation conditions toward biosynthetic efficiency. These models may not only provide guidelines for metabolic engineers to synthesize desired products, but also be useful to compare the biosynthesis performance among different research papers.</p> http://www.microbialcellfactories.com/content/10/1/45
collection DOAJ
language English
format Article
sources DOAJ
author Leonard Effendi
Xiao Yi
Varman Arul M
Tang Yinjie J
spellingShingle Leonard Effendi
Xiao Yi
Varman Arul M
Tang Yinjie J
Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
Microbial Cell Factories
author_facet Leonard Effendi
Xiao Yi
Varman Arul M
Tang Yinjie J
author_sort Leonard Effendi
title Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
title_short Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
title_full Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
title_fullStr Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
title_full_unstemmed Statistics-based model for prediction of chemical biosynthesis yield from <it>Saccharomyces cerevisiae</it>
title_sort statistics-based model for prediction of chemical biosynthesis yield from <it>saccharomyces cerevisiae</it>
publisher BMC
series Microbial Cell Factories
issn 1475-2859
publishDate 2011-06-01
description <p>Abstract</p> <p>Background</p> <p>The robustness of <it>Saccharomyces cerevisiae </it>in facilitating industrial-scale production of ethanol extends its utilization as a platform to synthesize other metabolites. Metabolic engineering strategies, typically via pathway overexpression and deletion, continue to play a key role for optimizing the conversion efficiency of substrates into the desired products. However, chemical production titer or yield remains difficult to predict based on reaction stoichiometry and mass balance. We sampled a large space of data of chemical production from <it>S. cerevisiae</it>, and developed a statistics-based model to calculate production yield using input variables that represent the number of enzymatic steps in the key biosynthetic pathway of interest, metabolic modifications, cultivation modes, nutrition and oxygen availability.</p> <p>Results</p> <p>Based on the production data of about 40 chemicals produced from <it>S. cerevisiae</it>, metabolic engineering methods, nutrient supplementation, and fermentation conditions described therein, we generated mathematical models with numerical and categorical variables to predict production yield. Statistically, the models showed that: 1. Chemical production from central metabolic precursors decreased exponentially with increasing number of enzymatic steps for biosynthesis (>30% loss of yield per enzymatic step, P-value = 0); 2. Categorical variables of gene overexpression and knockout improved product yield by 2~4 folds (P-value < 0.1); 3. Addition of notable amount of intermediate precursors or nutrients improved product yield by over five folds (P-value < 0.05); 4. Performing the cultivation in a well-controlled bioreactor enhanced the yield of product by three folds (P-value < 0.05); 5. Contribution of oxygen to product yield was not statistically significant. Yield calculations for various chemicals using the linear model were in fairly good agreement with the experimental values. The model generally underestimated the ethanol production as compared to other chemicals, which supported the notion that the metabolism of <it>Saccharomyces cerevisiae </it>has historically evolved for robust alcohol fermentation.</p> <p>Conclusions</p> <p>We generated simple mathematical models for first-order approximation of chemical production yield from <it>S. cerevisiae</it>. These linear models provide empirical insights to the effects of strain engineering and cultivation conditions toward biosynthetic efficiency. These models may not only provide guidelines for metabolic engineers to synthesize desired products, but also be useful to compare the biosynthesis performance among different research papers.</p>
url http://www.microbialcellfactories.com/content/10/1/45
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