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已知药物生物靶点的基于配体的稳健建模。

Robust ligand-based modeling of the biological targets of known drugs.

作者信息

Cleves Ann E, Jain Ajay N

机构信息

UCSF Cancer Research Institute and Department of Biopharmaceutical Sciences, University of California, San Francisco, California 94143, USA.

出版信息

J Med Chem. 2006 May 18;49(10):2921-38. doi: 10.1021/jm051139t.

Abstract

Systematic annotation of the primary targets of roughly 1000 known therapeutics reveals that over 700 of these modulate approximately 85 biological targets. We report the results of three analyses. In the first analysis, drug/drug similarities and target/target similarities were computed on the basis of three-dimensional ligand structures. Drug pairs sharing a target had significantly higher similarity than drug pairs sharing no target. Also, target pairs with no overlap in annotated drug specificity shared lower similarity than target pairs with increasing overlap. Two-way agglomerative clusterings of drugs and targets were consistent with known pharmacology and suggestive that side effects and drug-drug interactions might be revealed by modeling many targets. In the second analysis, we constructed and tested ligand-based models of 22 diverse targets in virtual screens using a background of screening molecules. Greater than 100-fold enrichment of cognate versus random molecules was observed in 20/22 cases. In the third analysis, selectivity of the models was tested using a background of drug molecules, with selectivity of greater than 80-fold observed in 17/22 cases. Predicted activities derived from crossing drugs against modeled targets identified a number of known side effects, drug specificities, and drug-drug interactions that have a rational basis in molecular structure.

摘要

对大约1000种已知治疗药物的主要靶点进行系统注释发现,其中700多种药物调节约85个生物学靶点。我们报告了三项分析的结果。在第一项分析中,基于三维配体结构计算药物/药物相似性和靶点/靶点相似性。共享一个靶点的药物对的相似性显著高于不共享靶点的药物对。此外,在注释的药物特异性上没有重叠的靶点对的相似性低于重叠度增加的靶点对。药物和靶点的双向凝聚聚类与已知药理学一致,并表明通过对多个靶点进行建模可能揭示副作用和药物相互作用。在第二项分析中,我们在虚拟筛选中使用筛选分子背景构建并测试了22个不同靶点的基于配体的模型。在22个案例中的20个案例中观察到同源分子相对于随机分子的富集超过100倍。在第三项分析中,使用药物分子背景测试模型的选择性,在22个案例中的17个案例中观察到选择性超过80倍。通过将药物与建模靶点交叉得到的预测活性确定了许多基于分子结构具有合理依据的已知副作用、药物特异性和药物相互作用。

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