Computational Approaches To Identify A Hidden Pharmacological Potential In Large Chemical Libraries

D. Druzhilovskiy, L. Stolbov, P. Savosina, P. Pogodin, D. Filimonov, A. Veselovsky, K. Stefanisko, N. Tarasova, M. Nicklaus, V. Poroikov
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引用次数: 4

Abstract

To improve the discovery of more effective and less toxic pharmaceutical agents, large virtual repositories of synthesizable molecules have been generated to increase the explored chemical-pharmacological space diversity. Such libraries include billions of structural formulae of drug-like molecules associated with data on synthetic schemes, required building blocks, estimated physical-chemical parameters, etc. Clearly, such repositories are “Big Data”. Thus, to identify the most promising compounds with the required pharmacological properties (hits) among billions of available opportunities, special computational methods are necessary. We have proposed using a combined computational approach, which combines structural similarity assessment, machine learning, and molecular modeling. Our approach has been validated in a project aimed at finding new pharmaceutical agents against HIV/AIDS and associated comorbidities from the Synthetically Accessible Virtual Inventory (SAVI), a 1.75 billion compound database. Potential inhibitors of HIV-1 protease and reverse transcriptase and agonists of toll-like receptors and STING, affecting innate immunity, were computationally identified. The activity of the three synthesized compounds has been confirmed in a cell-based assay. These compounds belong to the chemical classes, in which the agonistic effect on TLR 7/8 had not been previously shown. Synthesis and biological testing of several dozens of compounds with predicted antiretroviral activity are currently taking place at the NCI/NIH. We also carried out virtual screening among one billion substances to find compounds potentially possessing anti-SARS-CoV-2 activity. The selected hits' information has been accepted by the European Initiative “JEDI Grand Challenge against COVID-19” for synthesis and further biological evaluation. The possibilities and limitations of the approach are discussed.
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在大型化学文库中识别隐藏药理学潜力的计算方法
为了更好地发现更有效和更低毒性的药物制剂,已经产生了可合成分子的大型虚拟存储库,以增加探索的化学-药理学空间的多样性。这些文库包括数十亿个药物类分子的结构式,以及与合成方案相关的数据、所需的构建块、估计的物理化学参数等。显然,这样的存储库就是“大数据”。因此,要在数十亿个可用的机会中识别具有所需药理特性(hit)的最有希望的化合物,需要特殊的计算方法。我们建议使用结合了结构相似性评估、机器学习和分子建模的组合计算方法。我们的方法已经在一个项目中得到验证,该项目旨在从一个17.5亿美元的化合物数据库——综合可访问虚拟库存(SAVI)中寻找对抗艾滋病毒/艾滋病和相关合并症的新药。通过计算确定了影响先天免疫的HIV-1蛋白酶和逆转录酶的潜在抑制剂以及toll样受体和STING的激动剂。这三种合成化合物的活性已在基于细胞的测定中得到证实。这些化合物属于化学类,其中对tlr7 /8的激动作用以前未被证明。NCI/NIH目前正在对几十种预测具有抗逆转录病毒活性的化合物进行合成和生物学测试。我们还对10亿种物质进行了虚拟筛选,以发现可能具有抗sars - cov -2活性的化合物。选定的命中信息已被欧洲倡议“抗击COVID-19 JEDI大挑战”接受,用于合成和进一步的生物学评估。讨论了该方法的可能性和局限性。
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