Department of Computational Biology, Joint Carnegie Mellon University-University of Pittsburgh, PA 15260, United States.
Mol Pharm. 2012 Oct 1;9(10):2912-23. doi: 10.1021/mp300237z. Epub 2012 Aug 31.
In this manuscript, we have reported a novel 2D fingerprint-based artificial neural network QSAR (FANN-QSAR) method in order to effectively predict biological activities of structurally diverse chemical ligands. Three different types of fingerprints, namely, ECFP6, FP2 and MACCS, were used in FANN-QSAR algorithm development, and FANN-QSAR models were compared to known 3D and 2D QSAR methods using five data sets previously reported. In addition, the derived models were used to predict GPCR cannabinoid ligand binding affinities using our manually curated cannabinoid ligand database containing 1699 structurally diverse compounds with reported cannabinoid receptor subtype CB(2) activities. To demonstrate its useful applications, the established FANN-QSAR algorithm was used as a virtual screening tool to search a large NCI compound database for lead cannabinoid compounds, and we have discovered several compounds with good CB(2) binding affinities ranging from 6.70 nM to 3.75 μM. To the best of our knowledge, this is the first report for a fingerprint-based neural network approach validated with a successful virtual screening application in identifying lead compounds. The studies proved that the FANN-QSAR method is a useful approach to predict bioactivities or properties of ligands and to find novel lead compounds for drug discovery research.
在本文中,我们报告了一种基于 2D 指纹的新型人工神经网络定量构效关系(FANN-QSAR)方法,以便有效地预测结构多样的化学配体的生物活性。在 FANN-QSAR 算法的开发中使用了三种不同类型的指纹,即 ECFP6、FP2 和 MACCS,并使用先前报道的五个数据集将 FANN-QSAR 模型与已知的 3D 和 2D QSAR 方法进行了比较。此外,还使用我们手动整理的大麻素配体数据库(包含 1699 种具有报道的大麻素受体亚型 CB(2) 活性的结构多样的化合物)来预测 GPCR 大麻素配体结合亲和力,以证明其有用的应用。所建立的 FANN-QSAR 算法被用作虚拟筛选工具,从大型 NCI 化合物数据库中搜索具有良好 CB(2) 结合亲和力的先导大麻素化合物,我们发现了几种具有良好 CB(2) 结合亲和力的化合物,范围从 6.70 nM 到 3.75 μM。据我们所知,这是首次报告基于指纹的神经网络方法成功应用于虚拟筛选以识别先导化合物的验证。这些研究证明了 FANN-QSAR 方法是一种预测配体生物活性或性质以及发现新型药物发现研究先导化合物的有用方法。