Pérez-Castillo Yunierkis, Cruz-Monteagudo Maykel, Lazar Cosmin, Taminau Jonatan, Froeyen Mathy, Cabrera-Pérez Miguel Angel, Nowé Ann
Computational Modeling Lab (CoMo), Department of Computer Sciences, Faculty of Sciences, Vrije Universiteit Brussel, Pleinlaan 2, 1050 , Brussel, Belgium,
Mol Divers. 2014 Aug;18(3):637-54. doi: 10.1007/s11030-014-9513-y. Epub 2014 Mar 27.
Antibiotic resistance has increased over the past two decades. New approaches for the discovery of novel antibacterials are required and innovative strategies will be necessary to identify novel and effective candidates. Related to this problem, the exploration of bacterial targets that remain unexploited by the current antibiotics in clinical use is required. One of such targets is the β-ketoacyl-acyl carrier protein synthase III (FabH). Here, we report a ligand-based modeling methodology for the virtual-screening of large collections of chemical compounds in the search of potential FabH inhibitors. QSAR models are developed for a diverse dataset of 296 FabH inhibitors using an in-house modeling framework. All models showed high fitting, robustness, and generalization capabilities. We further investigated the performance of the developed models in a virtual screening scenario. To carry out this investigation, we implemented a desirability-based algorithm for decoys selection that was shown effective in the selection of high quality decoys sets. Once the QSAR models were validated in the context of a virtual screening experiment their limitations arise. For this reason, we explored the potential of ensemble modeling to overcome the limitations associated to the use of single classifiers. Through a detailed evaluation of the virtual screening performance of ensemble models it was evidenced, for the first time to our knowledge, the benefits of this approach in a virtual screening scenario. From all the obtained results, we could arrive to a significant main conclusion: at least for FabH inhibitors, virtual screening performance is not guaranteed by predictive QSAR models.
在过去二十年中,抗生素耐药性有所增加。需要发现新型抗菌药物的新方法,并且需要创新策略来识别新型且有效的候选药物。与此问题相关,需要探索目前临床使用的抗生素尚未利用的细菌靶点。其中一个这样的靶点是β-酮酰基-酰基载体蛋白合成酶III(FabH)。在此,我们报告一种基于配体的建模方法,用于对大量化合物进行虚拟筛选,以寻找潜在的FabH抑制剂。使用内部建模框架为296种FabH抑制剂的多样化数据集开发了定量构效关系(QSAR)模型。所有模型均显示出高拟合度、稳健性和泛化能力。我们进一步在虚拟筛选场景中研究了所开发模型的性能。为了进行这项研究,我们实施了一种基于合意性的诱饵选择算法,该算法在选择高质量诱饵集方面显示出有效性。一旦在虚拟筛选实验的背景下验证了QSAR模型,其局限性就会显现出来。因此,我们探索了集成建模的潜力,以克服与使用单一分类器相关的局限性。通过对集成模型虚拟筛选性能的详细评估,据我们所知首次证明了这种方法在虚拟筛选场景中的益处。从所有获得的结果中,我们可以得出一个重要的主要结论:至少对于FabH抑制剂而言,预测性QSAR模型并不能保证虚拟筛选性能。