Lill Markus A, Dobler Max, Vedani Angelo
Biographics Laboratory 3R, Friedensgasse 35, 4056 Basel, Switzerland.
ChemMedChem. 2006 Jan;1(1):73-81. doi: 10.1002/cmdc.200500024.
The inhibition of cytochrome P450 3A4 (CYP3A4) by small molecules is a major mechanism associated with undesired drug-drug interactions, which are responsible for a substantial number of late-stage failures in the pharmaceutical drug-development process. For a quantitative prediction of associated pharmacokinetic parameters, a computational model was developed that allows prediction of the inhibitory potential of 48 structurally diverse molecules. Based on the experimental structure of CYP3A4, possible binding modes were first sampled by using automated docking (Yeti software) taking protein flexibility into account. The results are consistent with both X-ray crystallographic data and data from metabolic studies. Next, an ensemble of energetically favorable orientations was composed into a 4D dataset for use as input for a multidimensional QSAR technique (Raptor software). A dual-shell binding-site model that allows an explicit induced fit was then generated by using hydrophobicity scoring and hydrogen-bond propensity. The simulation reached a cross-validated r2 value of 0.825 and a predictive r2 value of 0.659. On average, the predicted binding affinity of the training ligands deviates by a factor of 2.7 from the experiment; those of the test set deviate by a factor of 3.8 in Ki.
小分子对细胞色素P450 3A4(CYP3A4)的抑制作用是导致不良药物相互作用的主要机制,而这种相互作用是造成药物研发过程中大量后期失败案例的原因。为了定量预测相关的药代动力学参数,开发了一种计算模型,该模型能够预测48种结构各异的分子的抑制潜力。基于CYP3A4的实验结构,首先通过考虑蛋白质柔性的自动对接(Yeti软件)对可能的结合模式进行采样。结果与X射线晶体学数据以及代谢研究数据均一致。接下来,将一组能量有利的取向组合成一个四维数据集,用作多维定量构效关系技术(Raptor软件)的输入。然后通过疏水性评分和氢键倾向生成一个允许明确诱导契合的双壳结合位点模型。该模拟的交叉验证r2值为0.825,预测r2值为0.659。训练配体的预测结合亲和力平均与实验值相差2.7倍;测试集的预测结合亲和力在Ki方面相差3.8倍。