Banerjee Ushashi, Sankar Santhosh, Singh Amit, Chandra Nagasuma
Department of Biochemistry, Indian Institute of Science, Bangalore, India.
Center for Infectious Disease Research, Indian Institute of Science, Bangalore, India.
Front Chem. 2020 Dec 14;8:593497. doi: 10.3389/fchem.2020.593497. eCollection 2020.
Tuberculosis is one of the deadliest infectious diseases worldwide and the prevalence of latent tuberculosis acts as a huge roadblock in the global effort to eradicate tuberculosis. Most of the currently available anti-tubercular drugs act against the actively replicating form of (), and are not effective against the non-replicating dormant form present in latent tuberculosis. With about 30% of the global population harboring latent tuberculosis and the requirement for prolonged treatment duration with the available drugs in such cases, the rate of adherence and successful completion of therapy is low. This necessitates the discovery of new drugs effective against latent tuberculosis. In this work, we have employed a combination of bioinformatics and chemoinformatics approaches to identify potential targets and lead candidates against latent tuberculosis. Our pipeline adopts transcriptome-integrated metabolic flux analysis combined with an analysis of a transcriptome-integrated protein-protein interaction network to identify perturbations in dormant which leads to a shortlist of 6 potential drug targets. We perform a further selection of the candidate targets and identify potential leads for 3 targets using a range of bioinformatics methods including structural modeling, binding site association and ligand fingerprint similarities. Put together, we identify potential new strategies for targeting latent tuberculosis, new candidate drug targets as well as important lead clues for drug design.
结核病是全球最致命的传染病之一,潜伏性结核病的流行成为全球根除结核病努力中的巨大障碍。目前大多数抗结核药物作用于()的活跃复制形式,对潜伏性结核病中存在的非复制性休眠形式无效。全球约30%的人口携带潜伏性结核病,且在此类情况下使用现有药物治疗疗程长,治疗的依从率和成功完成率较低。这就需要发现对潜伏性结核病有效的新药。在这项工作中,我们采用生物信息学和化学信息学方法相结合来识别针对潜伏性结核病的潜在靶点和先导候选物。我们的流程采用转录组整合代谢通量分析并结合转录组整合蛋白质 - 蛋白质相互作用网络分析,以识别休眠()中的扰动,从而筛选出6个潜在药物靶点。我们使用包括结构建模、结合位点关联和配体指纹相似性等一系列生物信息学方法对候选靶点进行进一步筛选,并确定3个靶点的潜在先导物。综合起来,我们确定了针对潜伏性结核病的潜在新策略、新的候选药物靶点以及药物设计的重要先导线索。