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CCR5拮抗剂预测性药效团模型的生成:以哌啶和哌嗪类化合物作为新型HIV-1进入抑制剂的研究

Generation of predictive pharmacophore models for CCR5 antagonists: study with piperidine- and piperazine-based compounds as a new class of HIV-1 entry inhibitors.

作者信息

Debnath Asim Kumar

机构信息

Laboratory of Molecular Modeling & Drug Design, Lindsley F. Kimball Research Institute of The New York Blood Center, 310 E. 67th Street, New York, NY 10021, USA.

出版信息

J Med Chem. 2003 Oct 9;46(21):4501-15. doi: 10.1021/jm030265z.

Abstract

Predictive pharmacophore models were developed for a large series of piperidine- and piperazine-based CCR5 antagonists as anti-HIV-1 agents reported by Schering-Plough Research Institute in recent years. The pharmacophore models were generated using a training set consisting of 25 carefully selected antagonists based on well documented criteria. The activity spread, expressed in K(i), of training set molecules was from 0.1 to 1300 nM. The most predictive pharmacophore model (hypothesis 1), consisting of five features, namely, two hydrogen bond acceptors and three hydrophobic, had a correlation (r) of 0.920 and a root mean square of 0.879, and the cost difference between null cost and fixed cost was 44.46 bits. The model was cross-validated by randomizing the data using the CatScramble technique. The results confirmed that the pharmacophore models generated from the test set were not due to chance correlation. The best model (hypothesis 1) was validated using test set molecules (total of 78) and performed well in classifying active and inactive molecules correctly. The model was further validated by mapping onto it a diverse set of six CCR5 antagonists identified by five different pharmaceutical companies. The best model correctly predicted these compounds as being highly active. These multiple validation approaches provide confidence in the utility of the predictive pharmacophore model developed in this study as a 3D query tool in virtual screening to retrieve new chemical entities as potent CCR5 antagonists. The model can also be used in predicting biological activities of compounds prior to undertaking their costly synthesis.

摘要

先灵葆雅研究所近年来报道了一系列基于哌啶和哌嗪的CCR5拮抗剂作为抗HIV-1药物,针对这些药物开发了预测性药效团模型。药效团模型是使用一个训练集生成的,该训练集由25个根据充分记录的标准精心挑选的拮抗剂组成。训练集分子的活性范围(以K(i)表示)为0.1至1300 nM。最具预测性的药效团模型(假设1)由五个特征组成,即两个氢键受体和三个疏水基团,其相关性(r)为0.920,均方根为0.879,零成本和固定成本之间的成本差异为44.46比特。该模型通过使用CatScramble技术对数据进行随机化处理来进行交叉验证。结果证实,从测试集生成的药效团模型并非偶然相关。使用测试集分子(共78个)对最佳模型(假设1)进行了验证,该模型在正确分类活性和非活性分子方面表现良好。通过将五家不同制药公司鉴定的六种不同的CCR5拮抗剂映射到该模型上,进一步对其进行了验证。最佳模型正确地预测这些化合物具有高活性。这些多种验证方法为本文开发的预测性药效团模型作为虚拟筛选中的三维查询工具以检索作为强效CCR5拮抗剂的新化学实体的实用性提供了信心。该模型还可用于在进行成本高昂的化合物合成之前预测其生物活性。

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