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针对结核分枝杆菌二氢叶酸还原酶的虚拟筛选:使用结构相互作用指纹进行化合物优先级排序的建议工作流程。

Virtual screening against Mycobacterium tuberculosis dihydrofolate reductase: suggested workflow for compound prioritization using structure interaction fingerprints.

作者信息

Kumar Ashutosh, Siddiqi Mohammad Imran

机构信息

Molecular and Structural Biology Division, Central Drug Research Institute, Lucknow 226001, India.

出版信息

J Mol Graph Model. 2008 Nov;27(4):476-88. doi: 10.1016/j.jmgm.2008.08.005. Epub 2008 Aug 28.

Abstract

In this study, we suggest a new workflow for the identification and prioritization of potential compounds targeted against Mycobacterium tuberculosis dihydrofolate reductase, an important folate cycle enzyme and a validated target for the development of anti-tubercular agents. First, we have performed an integrated pharmacophore and structure-based virtual screening using Maybridge small molecule database, subsequently interaction patterns from known actives to the receptor were applied for scoring and ranking the virtual screening hits using structure interaction fingerprint (SIFt)-based similarity approach. In addition, agglomerative hierarchical clustering of the structure interaction fingerprints permits the easy separation of active from inactive binding modes. Using this approach we screened 59275 Maybridge compounds and 20 compounds were prioritized as promising virtual screening hits. Though using a receptor interaction scoring approach, the results were not biased toward the chemical classes of the known actives and the proposed compounds were structurally diverse with low molecular weights and structural complexities. Our results suggest that structure-based virtual screening coupled with the SIFt should be a valuable tool for prioritization of virtual screening hits.

摘要

在本研究中,我们提出了一种新的工作流程,用于鉴定和优先排序针对结核分枝杆菌二氢叶酸还原酶的潜在化合物,该酶是叶酸循环中的一种重要酶,也是抗结核药物开发的一个经过验证的靶点。首先,我们使用Maybridge小分子数据库进行了综合药效团和基于结构的虚拟筛选,随后应用从已知活性物质到受体的相互作用模式,采用基于结构相互作用指纹(SIFt)的相似性方法对虚拟筛选命中物进行评分和排名。此外,结构相互作用指纹的凝聚层次聚类允许轻松区分活性结合模式和非活性结合模式。使用这种方法,我们筛选了59275种Maybridge化合物,并将20种化合物列为有前景的虚拟筛选命中物。尽管使用了受体相互作用评分方法,但结果并不偏向于已知活性物质的化学类别,并且所提出的化合物在结构上具有多样性,分子量低且结构复杂性低。我们的结果表明,基于结构的虚拟筛选与SIFt相结合应该是一种用于优先排序虚拟筛选命中物的有价值工具。

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