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首页> 外文期刊>Computational and Structural Biotechnology Journal >GENOME-BASED {MODELING} {AND} {DESIGN} {OF} {METABOLIC} {INTERACTIONS} {IN} {MICROBIAL} {COMMUNITIES}
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GENOME-BASED {MODELING} {AND} {DESIGN} {OF} {METABOLIC} {INTERACTIONS} {IN} {MICROBIAL} {COMMUNITIES}

机译:基于基因组的{建模} {和} {设计} {OF} {代谢} {交互作用} {输入} {微生物} {社区}

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Biotechnology research is traditionally focused on individual microbial strains that are perceived to have the necessary metabolic functions, or the capability to have these functions introduced, to achieve a particular task. For many important applications, the development of such omnipotent microbes is an extremely challenging if not impossible task. By contrast, nature employs a radically different strategy based on synergistic combinations of different microbial species that collectively achieve the desired task. These natural communities have evolved to exploit the native metabolic capabilities of each species and are highly adaptive to changes in their environments. However, microbial communities have proven difficult to study due to a lack of suitable experimental and computational tools. With the advent of genome sequencing, omics technologies, bioinformatics and genome-scale modeling, researchers now have unprecedented capabilities to analyze and engineer the metabolism of microbial communities. The goal of this review is to summarize recent applications of genome-scale metabolic modeling to microbial communities. A brief introduction to lumped community models is used to motivate the need for genome-level descriptions of individual species and their metabolic interactions. The review of genome-scale models begins with static modeling approaches, which are appropriate for communities where the extracellular environment can be assumed to be time invariant or slowly varying. Dynamic extensions of the static modeling approach are described, and then applications of genome-scale models for design of synthetic microbial communities are reviewed. The review concludes with a summary of metagenomic tools for analyzing community metabolism and an outlook for future research.
机译:传统上,生物技术研究集中在被认为具有必要的代谢功能或引入这些功能以实现特定任务的能力的单个微生物菌株上。对于许多重要的应用程序而言,开发这种万能微生物是一项极具挑战性的任务,即使不是不可能的任务。相比之下,自然界则基于完全实现所需任务的不同微生物物种的协同组合,采用了截然不同的策略。这些自然社区已经进化为利用每种物种的天然代谢能力,并且高度适应其环境的变化。然而,由于缺乏合适的实验和计算工具,微生物群落已被证明难以研究。随着基因组测序,组学技术,生物信息学和基因组规模建模的出现,研究人员现在具有分析和改造微生物群落代谢的空前能力。这篇综述的目的是总结基因组规模代谢模型在微生物群落中的最新应用。对集总社区模型的简要介绍用于激发对单个物种及其代谢相互作用进行基因组级描述的需求。对基因组规模模型的审查始于静态建模方法,该方法适用于可以认为细胞外环境为时不变或缓慢变化的社区。描述了静态建模方法的动态扩展,然后综述了基因组规模模型在合成微生物群落设计中的应用。审查总结了用于分析社区代谢的宏基因组学工具的总结以及对未来研究的展望。

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