Literature DB >> 21404262

Evaluating factors that influence microbial synthesis yields by linear regression with numerical and ordinal variables.

Peter F Colletti1, Yogesh Goyal, Arul M Varman, Xueyang Feng, Bing Wu, Yinjie J Tang.   

Abstract

In the production of chemicals via microbial fermentation, achieving a high yield is one of the most important objectives. We developed a statistical model to analyze influential factors that determine product yield by compiling data obtained from engineered Escherichia coli developed within last 10 years. Using both numerical and ordinal variables (e.g., enzymatic steps, cultivation conditions, and genetic modifications) as input parameters, our model revealed that cultivation modes, nutrient supplementation, and oxygen conditions were the three significant factors for improving product yield. Generally, the model showed that product yield decreases as the number of enzymatic steps in the biosynthesis pathway increases (7-9% loss of yield per enzymatic step). Moreover, overexpression of enzymes or removal of competitive pathways (e.g., knockout) does not necessarily result in an amplification of product yield (P-value>0.1), possibly because of limited capacity in the biosynthesis pathway to accommodate an increase in flux. The model not only provides general guidelines for metabolic engineering and fermentation processes, but also allows a priori estimation and comparison of product yields under designed cultivation conditions.
Copyright © 2010 Wiley Periodicals, Inc.

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Year:  2010        PMID: 21404262     DOI: 10.1002/bit.22996

Source DB:  PubMed          Journal:  Biotechnol Bioeng        ISSN: 0006-3592            Impact factor:   4.530


  9 in total

1.  Metabolic engineering of Synechocystis sp. strain PCC 6803 for isobutanol production.

Authors:  Arul M Varman; Yi Xiao; Himadri B Pakrasi; Yinjie J Tang
Journal:  Appl Environ Microbiol       Date:  2012-11-26       Impact factor: 4.792

Review 2.  Bridging the gap between fluxomics and industrial biotechnology.

Authors:  Xueyang Feng; Lawrence Page; Jacob Rubens; Lauren Chircus; Peter Colletti; Himadri B Pakrasi; Yinjie J Tang
Journal:  J Biomed Biotechnol       Date:  2011-01-02

3.  Statistics-based model for prediction of chemical biosynthesis yield from Saccharomyces cerevisiae.

Authors:  Arul M Varman; Yi Xiao; Effendi Leonard; Yinjie J Tang
Journal:  Microb Cell Fact       Date:  2011-06-21       Impact factor: 5.328

4.  An ancient Chinese wisdom for metabolic engineering: Yin-Yang.

Authors:  Stephen G Wu; Lian He; Qingzhao Wang; Yinjie J Tang
Journal:  Microb Cell Fact       Date:  2015-03-20       Impact factor: 5.328

5.  Machine learning applied to enzyme turnover numbers reveals protein structural correlates and improves metabolic models.

Authors:  David Heckmann; Colton J Lloyd; Nathan Mih; Yuanchi Ha; Daniel C Zielinski; Zachary B Haiman; Abdelmoneim Amer Desouki; Martin J Lercher; Bernhard O Palsson
Journal:  Nat Commun       Date:  2018-12-07       Impact factor: 14.919

6.  Bridging the gap between systems biology and synthetic biology.

Authors:  Di Liu; Allison Hoynes-O'Connor; Fuzhong Zhang
Journal:  Front Microbiol       Date:  2013-07-25       Impact factor: 5.640

Review 7.  Elucidation of intrinsic biosynthesis yields using 13C-based metabolism analysis.

Authors:  Arul M Varman; Lian He; Le You; Whitney Hollinshead; Yinjie J Tang
Journal:  Microb Cell Fact       Date:  2014-03-19       Impact factor: 5.328

Review 8.  Biofuel production: an odyssey from metabolic engineering to fermentation scale-up.

Authors:  Whitney Hollinshead; Lian He; Yinjie J Tang
Journal:  Front Microbiol       Date:  2014-07-09       Impact factor: 5.640

9.  Machine learning framework for assessment of microbial factory performance.

Authors:  Tolutola Oyetunde; Di Liu; Hector Garcia Martin; Yinjie J Tang
Journal:  PLoS One       Date:  2019-01-15       Impact factor: 3.240

  9 in total

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