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分批补料培养中酿酒酵母代谢与乙醇生产的基因组规模分析。

Genome-scale analysis of Saccharomyces cerevisiae metabolism and ethanol production in fed-batch culture.

作者信息

Hjersted Jared L, Henson Michael A, Mahadevan Radhakrishnan

机构信息

Department of Chemical Engineering, University of Massachusetts, 159 Goessmann Laboratory, 686 North Pleasant Street, Amherst, MA 01003-3110, USA.

出版信息

Biotechnol Bioeng. 2007 Aug 1;97(5):1190-204. doi: 10.1002/bit.21332.

Abstract

A dynamic flux balance model based on a genome-scale metabolic network reconstruction is developed for in silico analysis of Saccharomyces cerevisiae metabolism and ethanol production in fed-batch culture. Metabolic engineering strategies previously identified for their enhanced steady-state biomass and/or ethanol yields are evaluated for fed-batch performance in glucose and glucose/xylose media. Dynamic analysis is shown to provide a single quantitative measure of fed-batch ethanol productivity that explicitly handles the possible tradeoff between the biomass and ethanol yields. Productivity optimization conducted to rank achievable fed-batch performance demonstrates that the genetic manipulation strategy and the fed-batch operating policy should be considered simultaneously. A library of candidate gene insertions is assembled and directly screened for their achievable ethanol productivity in fed-batch culture. A number of novel gene insertions with ethanol productivities identical to the best metabolic engineering strategies reported in previous studies are identified, thereby providing additional targets for experimental evaluation. The top performing gene insertions were substrate dependent, with the highest ranked insertions for glucose media yielding suboptimal performance in glucose/xylose media. The analysis results suggest that enhancements in biomass yield are most beneficial for the enhancement of fed-batch ethanol productivity by recombinant xylose utilizing yeast strains. We conclude that steady-state flux balance analysis is not sufficient to predict fed-batch performance and that the media, genetic manipulations, and fed-batch operating policy should be considered simultaneously to achieve optimal metabolite productivity.

摘要

开发了一种基于基因组规模代谢网络重建的动态通量平衡模型,用于在计算机上分析酿酒酵母在补料分批培养中的代谢和乙醇生产。对先前确定的可提高稳态生物量和/或乙醇产量的代谢工程策略进行评估,以考察其在葡萄糖和葡萄糖/木糖培养基中的补料分批培养性能。动态分析表明,它能提供补料分批乙醇生产率的单一量化指标,明确处理生物量和乙醇产量之间可能的权衡。通过进行生产率优化来对可实现的补料分批性能进行排名,结果表明应同时考虑基因操作策略和补料分批操作策略。构建了一个候选基因插入文库,并直接筛选其在补料分批培养中可实现的乙醇生产率。鉴定出了一些乙醇生产率与先前研究报道的最佳代谢工程策略相同的新型基因插入,从而为实验评估提供了额外的靶点。表现最佳的基因插入依赖于底物,在葡萄糖培养基中排名最高的插入在葡萄糖/木糖培养基中表现欠佳。分析结果表明,提高生物量产量对利用重组木糖的酵母菌株提高补料分批乙醇生产率最为有利。我们得出结论,稳态通量平衡分析不足以预测补料分批性能,要实现最佳代谢产物生产率,应同时考虑培养基、基因操作和补料分批操作策略。

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