State Key Laboratory of Chemical Resource Engineering, Department of Pharmaceutical Engineering, Beijing University of Chemical Technology, PO Box 53, 15 BeiSanHuan East Road, Beijing 100029, People's Republic of China.
Mol Divers. 2011 Aug;15(3):655-63. doi: 10.1007/s11030-010-9288-8. Epub 2010 Nov 12.
Self-Organizing Map (SOM) models were built to distinguish inhibitors of HMG-CoA reductase from its non-binding decoys. The molecules were represented by five global molecular descriptors and seven 2D property autocorrelation descriptors. Based on these molecular descriptors, 35 HMG-CoA reductase ligands and 1480 decoys were projected into a self-organizing network. In the map, the ligands and the decoys were well separated, where no neuron was occupied by a ligand and a decoy at the same time. Afterward, the discriminating power of the selected molecular descriptors was further validated by extending the datasets to 135 inhibitors. Finally, the SOM approach was subsequently used to identify active compounds in a virtual screening experiment by an external test set which included 32 HMG-CoA reductase inhibitors and 1103 decoys. In this study, 84.4% of the inhibitors (true positives) are retrieved with 15% contamination by non-hits (false positives). The SOM models obtained in this article exhibited powerful ability in virtual screening to find novel inhibitors for HMG-CoA reductase.
自组织映射(SOM)模型被构建用于区分 HMG-CoA 还原酶抑制剂与其非结合诱饵。分子由五个全局分子描述符和七个二维性质自相关描述符表示。基于这些分子描述符,将 35 个 HMG-CoA 还原酶配体和 1480 个诱饵投射到自组织网络中。在图谱中,配体和诱饵被很好地分离,没有神经元同时被配体和诱饵占据。之后,通过将数据集扩展到 135 个抑制剂,进一步验证了所选分子描述符的区分能力。最后,SOM 方法随后用于通过外部测试集(其中包括 32 个 HMG-CoA 还原酶抑制剂和 1103 个诱饵)识别虚拟筛选实验中的活性化合物。在这项研究中,84.4%的抑制剂(真阳性)被检索到,假阳性(非命中)的污染率为 15%。本文获得的 SOM 模型在虚拟筛选中表现出强大的能力,可用于寻找 HMG-CoA 还原酶的新型抑制剂。