Engineering microbial chemical factories using metabolic models

Debolina Sarkar, Costas D. Maranas
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引用次数: 5

Abstract

Living organisms in analogy with chemical factories use simple molecules such as sugars to produce a variety of compounds which are necessary for sustaining life and some of which are also commercially valuable. The metabolisms of simple (such as bacteria) and higher organisms (such as plants) alike can be exploited to convert low value inputs into high value outputs. Unlike conventional chemical factories, microbial production chassis are not necessarily tuned for a single product overproduction. Despite the same end goal, metabolic and industrial engineers rely on different techniques for achieving productivity goals. Metabolic engineers cannot affect reaction rates by manipulating pressure and temperature, instead they have at their disposal a range of enzymes and transcriptional and translational processes to optimize accordingly. In this review, we first highlight how various analytical approaches used in metabolic engineering and synthetic biology are related to concepts developed in systems and control engineering. Specifically, how algorithmic concepts derived in operations research can help explain the structure and organization of metabolic networks. Finally, we consider the future directions and challenges faced by the field of metabolic network modeling and the possible contributions of concepts drawn from the classical fields of chemical and control engineering. The aim of the review is to offer a current perspective of metabolic engineering and all that it entails without requiring specialized knowledge of bioinformatics or systems biology.

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利用代谢模型工程微生物化工厂
生物就像化工厂一样,利用糖等简单分子来生产维持生命所必需的各种化合物,其中一些还具有商业价值。可以利用简单生物(如细菌)和高等生物(如植物)的新陈代谢将低价值投入转化为高价值产出。与传统的化学工厂不同,微生物生产底盘不一定针对单一产品的过度生产进行调整。尽管有相同的最终目标,代谢工程师和工业工程师依靠不同的技术来实现生产力目标。代谢工程师不能通过控制压力和温度来影响反应速率,相反,他们有一系列的酶和转录和翻译过程来相应地优化。在这篇综述中,我们首先强调了代谢工程和合成生物学中使用的各种分析方法是如何与系统和控制工程中发展的概念相关联的。具体来说,运筹学中衍生的算法概念如何帮助解释代谢网络的结构和组织。最后,我们考虑了代谢网络建模领域的未来方向和面临的挑战,以及从化学和控制工程经典领域汲取的概念可能做出的贡献。回顾的目的是提供代谢工程的当前视角和所有它需要不需要生物信息学或系统生物学的专业知识。
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