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抗菌药物靶点的进化速度。

The evolutionary rate of antibacterial drug targets.

机构信息

Institute of Biochemistry and Biophysics, Polish Academy of Sciences, Pawinskiego 5A, Warsaw, Poland.

出版信息

BMC Bioinformatics. 2013 Feb 1;14:36. doi: 10.1186/1471-2105-14-36.

Abstract

BACKGROUND

One of the major issues in the fight against infectious diseases is the notable increase in multiple drug resistance in pathogenic species. For that reason, newly acquired high-throughput data on virulent microbial agents attract the attention of many researchers seeking potential new drug targets. Many approaches have been used to evaluate proteins from infectious pathogens, including, but not limited to, similarity analysis, reverse docking, statistical 3D structure analysis, machine learning, topological properties of interaction networks or a combination of the aforementioned methods. From a biological perspective, most essential proteins (knockout lethal for bacteria) or highly conserved proteins (broad spectrum activity) are potential drug targets. Ribosomal proteins comprise such an example. Many of them are well-known drug targets in bacteria. It is intuitive that we should learn from nature how to design good drugs. Firstly, known antibiotics are mainly originating from natural products of microorganisms targeting other microorganisms. Secondly, paleontological data suggests that antibiotics have been used by microorganisms for million years. Thus, we have hypothesized that good drug targets are evolutionary constrained and are subject of evolutionary selection. This means that mutations in such proteins are deleterious and removed by selection, which makes them less susceptible to random development of resistance. Analysis of the speed of evolution seems to be good approach to test this hypothesis.

RESULTS

In this study we show that pN/pS ratio of genes coding for known drug targets is significantly lower than the genome average and also lower than that for essential genes identified by experimental methods. Similar results are observed in the case of dN/dS analysis. Both analyzes suggest that drug targets tend to evolve slowly and that the rate of evolution is a better predictor of drugability than essentiality.

CONCLUSIONS

Evolutionary rate can be used to score and find potential drug targets. The results presented here may become a useful addition to a repertoire of drug target prediction methods. As a proof of concept, we analyzed GO enrichment among the slowest evolving genes. These may become the starting point in the search for antibiotics with a novel mechanism.

摘要

背景

在与传染病作斗争的过程中,一个主要问题是病原体的多种药物耐药性显著增加。因此,新获得的关于有毒微生物制剂的高通量数据引起了许多研究人员的关注,他们正在寻找潜在的新药物靶点。已经使用了许多方法来评估传染病原体中的蛋白质,包括但不限于相似性分析、反向对接、统计 3D 结构分析、机器学习、相互作用网络的拓扑特性或上述方法的组合。从生物学角度来看,大多数必需蛋白质(对细菌的敲除致死)或高度保守的蛋白质(广谱活性)都是潜在的药物靶点。核糖体蛋白就是这样一个例子。其中许多是细菌中众所周知的药物靶点。从自然中学习如何设计好药物是直观的。首先,已知的抗生素主要来自针对其他微生物的微生物天然产物。其次,古生物学数据表明,抗生素已经被微生物使用了上百万年。因此,我们假设好的药物靶点受到进化的限制,并受到进化选择的影响。这意味着这些蛋白质中的突变是有害的,并被选择去除,这使得它们不太容易随机产生耐药性。分析进化速度似乎是检验这一假设的好方法。

结果

在这项研究中,我们表明,已知药物靶点编码基因的 pN/pS 比值明显低于基因组平均值,也低于通过实验方法确定的必需基因的比值。在 dN/dS 分析中也观察到类似的结果。这两种分析都表明,药物靶点往往进化缓慢,进化速度是药物靶点可预测性的一个更好指标,而不是必需性。

结论

进化速度可用于评分和寻找潜在的药物靶点。这里呈现的结果可能成为药物靶点预测方法的有用补充。作为概念验证,我们分析了进化最慢的基因中 GO 富集情况。这些可能成为寻找具有新机制的抗生素的起点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ff1d/3598507/bedc974da557/1471-2105-14-36-1.jpg

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