Institute of Bioorganic Chemistry and Petrochemistry, National Academy of Science of Ukraine, Kyiv, Ukraine.
Drug Discovery Program, MaRS Centre, Ontario Institute for Cancer Research, Toronto, ON, Canada.
Chem Biol Drug Des. 2018 Jul;92(1):1272-1278. doi: 10.1111/cbdd.13188. Epub 2018 May 6.
The problem of designing new antitubercular drugs against multiple drug-resistant tuberculosis (MDR-TB) was addressed using advanced machine learning methods. As there are only few published measurements against MDR-TB, we collected a large literature data set and developed models against the non-resistant H37Rv strain. The predictive accuracy of these models had a coefficient of determination q = .7-.8 (regression models) and balanced accuracies of about 80% (classification models) with cross-validation and independent test sets. The models were applied to screen a virtual chemical library, which was designed to have MDR-TB activity. The seven most promising compounds were identified, synthesized and tested. All of them showed activity against the H37Rv strain, and three molecules demonstrated activity against the MDR-TB strain. The docking analysis indicated that the discovered molecules could bind enoyl reductase, InhA, which is required in mycobacterial cell wall development. The models are freely available online (http://ochem.eu/article/103868) and can be used to predict potential anti-TB activity of new chemicals.
使用先进的机器学习方法解决了针对耐多药结核病(MDR-TB)的新型抗结核药物设计问题。由于针对 MDR-TB 的发表数据很少,我们收集了大量文献数据集,并针对非耐药 H37Rv 株开发了模型。这些模型的预测准确性在交叉验证和独立测试集中具有决定系数 q 为.7-.8(回归模型)和平衡准确性约为 80%(分类模型)。这些模型被应用于筛选一个虚拟的化学库,该库旨在具有 MDR-TB 活性。确定了七种最有希望的化合物,对它们进行了合成和测试。它们都显示出对 H37Rv 株的活性,并且有三个分子对 MDR-TB 株显示出活性。对接分析表明,发现的分子可以结合烯酰还原酶,InhA,这是分枝杆菌细胞壁发育所必需的。这些模型可在网上免费获得(http://ochem.eu/article/103868),并可用于预测新化学物质的潜在抗结核活性。