Ivanenkov Yan A, Zhavoronkov Alex, Yamidanov Renat S, Osterman Ilya A, Sergiev Petr V, Aladinskiy Vladimir A, Aladinskaya Anastasia V, Terentiev Victor A, Veselov Mark S, Ayginin Andrey A, Kartsev Victor G, Skvortsov Dmitry A, Chemeris Alexey V, Baimiev Alexey Kh, Sofronova Alina A, Malyshev Alexander S, Filkov Gleb I, Bezrukov Dmitry S, Zagribelnyy Bogdan A, Putin Evgeny O, Puchinina Maria M, Dontsova Olga A
Institute of Biochemistry and Genetics Russian Academy of Science (IBG RAS) Ufa Scientific Centre, Ufa, Russia.
Moscow Institute of Physics and Technology (State University), Dolgoprudny, Russia.
Front Pharmacol. 2019 Aug 27;10:913. doi: 10.3389/fphar.2019.00913. eCollection 2019.
Many pharmaceutical companies are avoiding the development of novel antibacterials due to a range of rational reasons and the high risk of failure. However, there is an urgent need for novel antibiotics especially against resistant bacterial strains. Available models suffer from many drawbacks and, therefore, are not applicable for scoring novel molecules with high structural diversity by their antibacterial potency. Considering this, the overall aim of this study was to develop an efficient model able to find compounds that have plenty of chances to exhibit antibacterial activity. Based on a proprietary screening campaign, we have accumulated a representative dataset of more than 140,000 molecules with antibacterial activity against assessed in the same assay and under the same conditions. This intriguing set has no analogue in the scientific literature. We applied six techniques to mine these data. For external validation, we used 5,000 compounds with low similarity towards training samples. The antibacterial activity of the selected molecules against was assessed using a comprehensive biological study. Kohonen-based nonlinear mapping was used for the first time and provided the best predictive power (av. 75.5%). Several compounds showed an outstanding antibacterial potency and were identified as translation machinery inhibitors and . For the best compounds, MIC and CC values were determined to allow us to estimate a selectivity index (SI). Many active compounds have a robust IP position.
由于一系列合理原因以及高失败风险,许多制药公司都在回避新型抗菌药物的研发。然而,对抗耐药菌株的新型抗生素有着迫切需求。现有的模型存在诸多缺陷,因此不适用于根据抗菌效力对具有高度结构多样性的新型分子进行评分。考虑到这一点,本研究的总体目标是开发一种高效模型,能够找到有很大机会展现抗菌活性的化合物。基于一项专有的筛选活动,我们积累了一个包含超过140,000个分子的代表性数据集,这些分子在相同的测定方法和相同条件下针对[未提及具体对象]进行了抗菌活性评估。这个引人关注的数据集在科学文献中没有类似物。我们应用了六种技术来挖掘这些数据。为了进行外部验证,我们使用了5000种与训练样本相似度低的化合物。通过全面的生物学研究评估了所选分子对[未提及具体对象]的抗菌活性。基于Kohonen的非线性映射首次被使用,并提供了最佳预测能力(平均75.5%)。几种化合物表现出出色的抗菌效力,并被鉴定为翻译机制抑制剂[未提及具体抑制剂名称]和[未提及具体抑制剂名称]。对于最佳化合物,测定了MIC和CC值以估算选择性指数(SI)。许多活性化合物拥有稳固的知识产权地位。