Collaborative Drug Discovery, 1633 Bayshore Highway, Suite 342, Burlingame, California 94010, USA.
Pharm Res. 2011 Aug;28(8):1859-69. doi: 10.1007/s11095-011-0413-x. Epub 2011 Mar 10.
The search for small molecules with activity against Mycobacterium tuberculosis (Mtb) increasingly uses high throughput screening and computational methods. Several public datasets from the Collaborative Drug Discovery Tuberculosis (CDD TB) database have been evaluated with cheminformatics approaches to validate their utility and suggest compounds for testing.
Previously reported Bayesian classification models were used to predict a set of 283 Novartis compounds tested against Mtb (containing aerobic and anaerobic hits) and to search FDA approved drugs. The Novartis compounds were also filtered with computational SMARTS alerts to identify potentially undesirable substructures.
Using the Novartis compounds as a test set for the Bayesian models demonstrated a >4.0-fold enrichment over random screening for finding aerobic hits not in the computational models (N = 34). A 10-fold enrichment was observed for finding Mtb active compounds in the FDA drugs database. 85.9% of the Novartis compounds failed the Abbott SMARTS alerts, a value substantially higher than for known TB drugs. Higher levels of failures of SMARTS filters from different groups also correlate with the number of Lipinski violations.
These computational approaches may assist in finding desirable leads for Tuberculosis drug discovery.
针对结核分枝杆菌(Mtb)的小分子活性的研究越来越多地采用高通量筛选和计算方法。利用化学信息学方法对来自合作药物发现结核病(CDD TB)数据库的几个公共数据集进行了评估,以验证其效用并提出可供测试的化合物。
使用先前报道的贝叶斯分类模型来预测一组 283 种经诺华公司测试的化合物对 Mtb 的活性(包含需氧和厌氧化合物),并搜索 FDA 批准的药物。还使用计算 SMARTS 警报对诺华公司的化合物进行过滤,以识别潜在的不良亚结构。
使用诺华公司的化合物作为贝叶斯模型的测试集,与随机筛选相比,发现不在计算模型中的需氧化合物的富集度超过 4.0 倍(N=34)。在 FDA 药物数据库中发现对 Mtb 有活性的化合物的富集度为 10 倍。85.9%的诺华公司化合物未能通过雅培 SMARTS 警报,这一数值明显高于已知的结核病药物。来自不同组的 SMARTS 过滤器的更高水平的故障也与 Lipinski 违反数量相关。
这些计算方法可能有助于发现结核病药物发现的理想先导化合物。