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非甾体芳香酶抑制剂的分子建模评估。

Molecular modeling evaluation of non-steroidal aromatase inhibitors.

机构信息

Department of Pharmaceutical Chemistry, University Institute of Pharmaceutical Sciences and Centre of Advanced Study in Pharmaceutical Sciences, Panjab University, Chandigarh, India.

出版信息

Chem Biol Drug Des. 2012 May;79(5):674-82. doi: 10.1111/j.1747-0285.2011.01277.x. Epub 2012 Feb 23.

Abstract

A recent discovery of aromatase crystal structure triggered the efforts to design novel aromatase inhibitors for breast cancer therapy. While correlating docking scores with inhibitory potencies of known ligands, feeble robustness of scoring functions toward prediction was observed. This prompted us to develop new prediction models using stepwise regression analysis based on consensus of different docking and their scoring methods (GOLD, LIGANDFIT, and GLIDE). Quantitative structure-activity relationships were developed between the aromatase inhibitory activity (pIC(50) ) of flavonoid derivatives (n=39) and docking scores and docking descriptors. QSAR models have been validated internally [using leave-one-out cross-validated r(2)(cv) (LOO-Q2))] and externally to ensure the predictive capacity of the models. Model 2 [M2] developed using consensus of docking scores of scoring functions viz. ASP, potential of mean force and DOCK Score (r(2)(cv)=0.850, r(2) = 0.870, r(2)(pred) = 0.633, RMSE = 0.363 μm, r(2)(m(test)) =0.831, r(2)(m(overall)) =0.832) was found to be better in predicting aromatase inhibitory potency (pIC(50) ) compared to the Model 1 [M1] based on docking descriptors (r(2)(cv)= 0.848, r(2) = 0.825, r(2)(pred) =0.788, RMSE=0.421μm, r(2)(m(test)) =0.808, r(2)(m(overall)) =0.821). It has been observed that the natural flavonoids and their derivatives were less potent compared to these scaffolds with imidazolylmethyl substitution owing to the interaction of nitrogen atom of the imidazole ring toward the heme (Fe(3+) ) of the aromatase. Results confirm the potential of our methodology for the design of new potent non-steroidal aromatase inhibitors.

摘要

最近发现的芳香酶晶体结构促使人们努力设计新型芳香酶抑制剂用于乳腺癌治疗。在将对接评分与已知配体的抑制效力相关联时,发现评分函数的稳健性较弱。这促使我们使用基于不同对接及其评分方法(GOLD、LIGANDFIT 和 GLIDE)共识的逐步回归分析来开发新的预测模型。建立了黄酮衍生物(n=39)的芳香酶抑制活性(pIC(50))与对接评分和对接描述符之间的定量构效关系。QSAR 模型已通过内部验证(使用交叉验证相关系数 r(2)(cv)(LOO-Q2))和外部验证来确保模型的预测能力。使用共识对接评分的评分函数(ASP、平均力势和 DOCK 评分)建立的模型 2 [M2](r(2)(cv)=0.850,r(2)=0.870,r(2)(pred)=0.633,RMSE=0.363μm,r(2)(m(test))=0.831,r(2)(m(overall))=0.832)比基于对接描述符的模型 1 [M1](r(2)(cv)=0.848,r(2)=0.825,r(2)(pred)=0.788,RMSE=0.421μm,r(2)(m(test))=0.808,r(2)(m(overall))=0.821)更能预测芳香酶抑制效力(pIC(50))。观察到天然黄酮类化合物及其衍生物的效力低于具有咪唑基甲基取代的这些支架,这是由于咪唑环的氮原子与芳香酶的血红素(Fe(3+))相互作用所致。结果证实了我们的方法在设计新型非甾体芳香酶抑制剂方面的潜力。

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