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用于在计算机模拟中发现基因过表达/低表达最佳靶点的优化方法。

Optimization approaches for the in silico discovery of optimal targets for gene over/underexpression.

作者信息

Gonçalves Emanuel, Pereira Rui, Rocha Isabel, Rocha Miguel

机构信息

Department of Informatics/CCTC, University of Minho, Braga, Portugal.

出版信息

J Comput Biol. 2012 Feb;19(2):102-14. doi: 10.1089/cmb.2011.0265.

Abstract

Metabolic engineering (ME) efforts have been recently boosted by the increase in the number of annotated genomes and by the development of several genome-scale metabolic models for microbes of interest in industrial biotechnology. Based on these efforts, strain optimization methods have been proposed to reach the best set of genetic changes to apply to selected host microbes, in order to create strains that are able to overproduce metabolites of industrial interest. Previous work in strain optimization has been mostly based in finding sets of gene (or reaction) deletions that lead to desired phenotypes in computational simulations. In this work, we focus on enlarging the set of possible genetic changes, considering gene over and underexpression. A gene is considered under (over) expressed if its expression value is constrained to be significantly lower (higher) than the one in the wild-type strain, used as a reference. A method is proposed to propagate relative gene expression values to flux constraints over related reactions, making use of the available transcriptional/translational information. The algorithms chosen for the optimization tasks are metaheuristics such as Evolutionary Algorithms (EA) and Simulated Annealing (SA), based on previous successful work on gene knockout optimization. These methods were modified appropriately to accommodate the novel optimization tasks and were applied to study the optimization of succinic and lactic acid production using Escherichia coli as the host. The results are compared with previous ones obtained in gene knockout optimization, thus showing the usefulness of the approach. The methods proposed in this work were implemented in a novel plug-in for OptFlux, an open-source software framework for ME. Supplementary Material is available at www.liebertonline.com/cmb.

摘要

代谢工程(ME)的研究工作最近因注释基因组数量的增加以及针对工业生物技术中感兴趣的微生物开发的多个基因组规模代谢模型而得到推动。基于这些研究成果,人们提出了菌株优化方法,以找到适用于选定宿主微生物的最佳基因改变组合,从而创造出能够过量生产具有工业价值代谢物的菌株。以往的菌株优化工作大多基于在计算模拟中寻找能导致所需表型的基因(或反应)缺失组合。在这项工作中,我们专注于扩大可能的基因改变范围,考虑基因的过表达和低表达。如果一个基因的表达值被限制为显著低于(高于)用作参考的野生型菌株中的表达值,则该基因被认为是低表达(过表达)。我们提出了一种方法,利用可用的转录/翻译信息,将相对基因表达值传播到相关反应的通量约束中。针对优化任务选择的算法是元启发式算法,如进化算法(EA)和模拟退火算法(SA),这是基于先前在基因敲除优化方面的成功工作。这些方法经过适当修改以适应新的优化任务,并应用于研究以大肠杆菌为宿主生产琥珀酸和乳酸的优化问题。将结果与先前在基因敲除优化中获得的结果进行比较,从而证明了该方法的有效性。这项工作中提出的方法在OptFlux的一个新型插件中得以实现。OptFlux是一个用于代谢工程的开源软件框架。补充材料可在www.liebertonline.com/cmb上获取。

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