Bayesian decomposition analysis of bacterial phylogenomic profiles.

Ghislain Bidaut, Karsten Suhre, Jean-Michel Claverie, Michael F Ochs
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引用次数: 3

Abstract

Background: The past two decades have seen the appearance of new infectious diseases and the reemergence of old diseases previously thought to be under control. At the same time, the effectiveness of the existing antibacterials is rapidly decreasing due to the spread of multidrug-resistant pathogens.

Aim: The aim of this study was to the identify candidate molecular targets (e.g. enzymes) within essential metabolic pathways specific to a significant subset of bacterial pathogens as the first step in the rational design of new antibacterial drugs.

Methods: We constructed a dataset of phylogenomic profiles (vectors that encode the similarity, measured by BLAST scores, of a gene across many species) for a series of 31 pathogenic bacteria of interest with 1073 genes taken from the reference organisms Escherichia coli and Mycobacterium tuberculosis. We applied Bayesian Decomposition, a matrix decomposition algorithm, to identify functional metabolic units comprising overlapping sets of genes in this dataset.

Results: Although no information on phylogeny was provided to the system, Bayesian Decomposition retrieved the known bacteria phylogenic relationships on the basis of the proteins necessary for survival. In addition, a set of genes required by all bacteria was identified, as well as components and enzymes specific to subsets of bacteria.

Conclusion: The use of phylogenomic profiles and Bayesian Decomposition provide important insights for the design of new antibacterial therapeutics.

细菌系统基因组图谱的贝叶斯分解分析。
背景:过去二十年出现了新的传染病,以前认为已得到控制的旧疾病又重新出现。与此同时,由于多重耐药病原体的传播,现有抗菌药物的有效性正在迅速下降。目的:本研究的目的是在细菌病原体的重要代谢途径中确定候选分子靶点(例如酶),作为合理设计新型抗菌药物的第一步。方法:我们构建了一个系统基因组图谱数据集(通过BLAST评分来编码许多物种中基因相似性的载体),该数据集来自31种感兴趣的致病菌,其中1073个基因来自大肠杆菌和结核分枝杆菌。我们应用贝叶斯分解(一种矩阵分解算法)来识别该数据集中包含重叠基因集的功能代谢单元。结果:虽然没有提供系统发育信息,但贝叶斯分解在生存所需蛋白质的基础上检索了已知细菌的系统发育关系。此外,还鉴定了所有细菌所需的一组基因,以及细菌亚群特有的成分和酶。结论:系统基因组图谱和贝叶斯分解的应用为新型抗菌药物的设计提供了重要的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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