Leong Max K
Department of Chemistry, National Dong Hwa University, Shoufeng, Hualien 97401, Taiwan. leong@ mail.ndhu.edu.tw
Chem Res Toxicol. 2007 Feb;20(2):217-26. doi: 10.1021/tx060230c. Epub 2007 Jan 30.
A novel approach by using a panel of plausible pharmacophore hypothesis candidates to constitute the pharmacophore ensemble (PhE) and subject them to regression by support vector machine (SVM) has been developed for predicting the liability of human ether-a-go-go-related gene (hERG). This PhE/SVM scheme takes into account the protein conformational flexibility while interacting with structurally diverse ligands, which is crucial yet often neglected by most of the analogue-based modeling methods. Thirty-nine molecules were carefully selected and cross-examined from the literature data for this study, of which 26 and 13 molecules were deliberately treated as the training set and the test set to generate the model and to validate the generated model, respectively. The final PhE/SVM model gave rise to an r(2) value of 0.97 for observed vs predicted pIC(50) values for the training set, a q(2) value of 0.89 by the 10-fold cross-validation and an r(2) value of 0.94 for the test set. Thus, this PhE/SVM model provides a fast and accurate tool for predicting liability of hERG and can be utilized to guide medicinal chemistry to avoid molecules with an inhibition potential of this potassium channel.
一种新方法已被开发出来,该方法使用一组合理的药效团假设候选物来构成药效团集合(PhE),并通过支持向量机(SVM)对其进行回归分析,以预测人醚 - 去极化相关基因(hERG)的潜在风险。这种PhE/SVM方案在与结构多样的配体相互作用时考虑了蛋白质构象的灵活性,这一点至关重要,但在大多数基于类似物的建模方法中常常被忽视。本研究从文献数据中精心挑选并交叉检验了39个分子,其中26个和13个分子分别被特意用作训练集和测试集,以生成模型并验证所生成的模型。最终的PhE/SVM模型对于训练集的观察到的与预测的pIC50值,r(2)值为0.97,通过10倍交叉验证的q(2)值为0.89,对于测试集r(2)值为0.94。因此,这种PhE/SVM模型为预测hERG的潜在风险提供了一种快速且准确的工具,可用于指导药物化学避免具有抑制该钾通道潜力的分子。