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A network-based method for target selection in metabolic networks

机译:基于网络的代谢网络目标选择方法

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摘要

Motivation: The lack of new antimicrobials, combined with increasing microbial resistance to old ones, poses a serious threat to public health. With hundreds of genomes sequenced, systems biology promises to help in solving this problem by uncovering new drug targets. Results: Here, we propose an approach that is based on the mapping of the interactions between biochemical agents, such as proteins and metabolites, onto complex networks. We report that nodes and links in complex biochemical networks can be grouped into a small number of classes, based on their role in connecting different functional modules. Specifically, for metabolic networks, in which nodes represent metabolites and links represent enzymes, we demonstrate that some enzyme classes are more likely to be essential, some are more likely to be species-specific and some are likely to be both essential and specific. Our network-based enzyme classification scheme is thus a promising tool for the identification of drug targets.
机译:动机:缺乏新的抗菌剂,加上微生物对旧抗菌剂的抵抗力增强,对公共卫生构成了严重威胁。通过对数百个基因组进行测序,系统生物学有望通过发现新的药物靶点来帮助解决这一问题。结果:在这里,我们提出了一种基于将生化试剂(例如蛋白质和代谢物)之间的相互作用映射到复杂网络上的方法。我们报告说,根据复杂生化网络中的节点和链接在连接不同功能模块中的作用,可以将它们分为少数几类。具体而言,对于其中节点代表代谢物且链接代表酶的代谢网络,我们证明了某些酶类别更可能是必需的,某些酶类别更可能是物种特异性的,而某些酶可能既是必需的又是特定的。因此,我们基于网络的酶分类方案是用于鉴定药物靶标的有前途的工具。

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