病原细菌与非病原细菌代谢网络拓扑结构的比较研究,用于潜在药物靶标鉴定。

Deepak Perumal, Chu Sing Lim, Meena K Sakharkar
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引用次数: 0

摘要

代谢网络为整合基因、蛋白质、代谢物、药物、药物靶点等所有生物信息提供了统一的平台,可以在系统水平上全面研究代谢与疾病的关系。近年来,基于计算机技术的药物靶标鉴定在药物发现领域取得了显著的成就。本文着重描述了如何利用生物信息学工具进行微生物药物靶标鉴定。具体来说,它强调了代谢“瓶颈”和“负载点”分析的使用,以了解铜绿假单胞菌代谢网络的局部和全局特性,并允许我们识别潜在的药物靶点。我们还根据负载点值和最短路径的数量列出了前10个阻塞点酶。选择一株非致病性恶臭假单胞菌KT2440和一株相关致病性铜绿假单胞菌PA01进行网络分析。对这两种微生物代谢网络的比较研究突出了它们各自途径之间的相似性和差异。代谢网络的系统分析将帮助我们识别新的药物靶点,从而更深入地了解疾病的机制,从而为药物发现提供更好的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Comparative Study of Metabolic Network Topology between a Pathogenic and a Non-Pathogenic Bacterium for Potential Drug Target Identification.

A Comparative Study of Metabolic Network Topology between a Pathogenic and a Non-Pathogenic Bacterium for Potential Drug Target Identification.

A Comparative Study of Metabolic Network Topology between a Pathogenic and a Non-Pathogenic Bacterium for Potential Drug Target Identification.

Metabolic network provides a unified platform to integrate all the biological information on genes, proteins, metabolites, drugs and drug targets for a comprehensive system level study of the relationship between metabolism and disease. In recent times, drug-target identification by in silico methods has emerged causing a phenomenal achievement in the field of drug discovery. This paper focuses on describing how microbial drug target identification can be carried out using bioinformatic tools. Specifically, it highlights the use of metabolic 'choke point' and 'load point' analyses to understand the local and global properties of metabolic networks in Pseudomonas aeruginosa and allow us to identify potential drug targets. We also list out top 10 choke point enzymes based on the load point values and the number of shortest paths. A non-pathogenic bacterial strain Pseudomonas putida KT2440 and a related pathogenic bacteria P.aeruginosa PA01 was selected for the network anlaysis. A comparative study of the metabolic networks of these two microbes highlights the analogies and differences between their respective pathways. System analysis of metabolic networks will help us in identifying new drug targets which in turn will generate more in-depth understanding of the mechanism of diseases and thus provide better guidance for drug discovery.

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