From drugs to targets: Reverse engineering the virtual screening process on a proteomic scale

Gustavo Schottlender, Juan Manuel Prieto, Miranda C. Palumbo, Florencia A Castello, F. Serral, E. Sosa, A. Turjanski, M. Marti, D. A. Fernández Do Porto
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引用次数: 1

Abstract

Phenotypic screening is a powerful technique that allowed the discovery of antimicrobials to fight infectious diseases considered deadly less than a century ago. In high throughput phenotypic screening assays, thousands of compounds are tested for their capacity to inhibit microbial growth in-vitro. After an active compound is found, identifying the molecular target is the next step. Knowing the specific target is key for understanding its mechanism of action, and essential for future drug development. Moreover, this knowledge allows drug developers to design new generations of drugs with increased efficacy and reduced side effects. However, target identification for a known active compound is usually a very difficult task. In the present work, we present a powerful reverse virtual screening strategy, that can help researchers working in the drug discovery field, to predict a set of putative targets for a compound known to exhibit antimicrobial effects. The strategy combines chemical similarity methods, with target prioritization based on essentiality data, and molecular-docking. These steps can be tailored according to the researchers’ needs and pathogen’s available information. Our results show that using only the chemical similarity approach, this method is capable of retrieving potential targets for half of tested compounds. The results show that even for a low chemical similarity threshold whenever domains are retrieved, the correct domain is among those retrieved in more than 80% of the queries. Prioritizing targets by an essentiality criteria allows us to further reduce, up to 3–4 times, the number of putative targets. Lastly, docking is able to identify the correct domain ranked in the top two in about two thirds of cases. Bias docking improves predictive capacity only slightly in this scenario. We expect to integrate the presented strategy in the context of Target Pathogen database to make it available for the wide community of researchers working in antimicrobials discovery.
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从药物到靶点:蛋白质组学规模的虚拟筛选过程逆向工程
表型筛查是一项强大的技术,它发现了对抗不到一个世纪前被认为是致命的传染病的抗菌药物。在高通量表型筛选试验中,测试了数千种化合物在体外抑制微生物生长的能力。在发现活性化合物后,识别分子靶标是下一步。了解具体的靶点是了解其作用机制的关键,也是未来药物开发的关键。此外,这些知识使药物开发人员能够设计出新一代的药物,提高疗效,减少副作用。然而,已知活性化合物的靶标识别通常是一项非常困难的任务。在目前的工作中,我们提出了一种强大的反向虚拟筛选策略,可以帮助药物发现领域的研究人员预测一种已知具有抗菌作用的化合物的一组假定靶点。该策略结合了化学相似性方法、基于重要性数据的目标优先级以及分子对接。这些步骤可以根据研究人员的需求和病原体的可用信息进行定制。我们的结果表明,仅使用化学相似性方法,该方法就能够检索一半测试化合物的潜在靶标。结果表明,即使在任何时候检索域的化学相似性阈值较低的情况下,在80%以上的查询中,正确的域也是检索到的。通过重要性标准对目标进行优先排序,我们可以将假定目标的数量进一步减少3-4倍。最后,在大约三分之二的情况下,对接能够识别排名前两位的正确域。在这种情况下,偏置对接仅略微提高了预测能力。我们希望将所提出的策略整合到目标病原体数据库的背景下,使其可供从事抗菌药物发现的广大研究人员使用。
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