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HIV逆转录酶抑制剂替博(TIBO)衍生物的预测性定量构效关系建模

Predictive QSAR modeling of HIV reverse transcriptase inhibitor TIBO derivatives.

作者信息

Mandal Asim Sattwa, Roy Kunal

机构信息

Drug Theoretics and Cheminformatics Lab, Division of Medicinal and Pharmaceutical Chemistry, Department of Pharmaceutical Technology, Jadavpur University, Raja S.C. Mullick Road, Kolkata 700 032, West Bengal, India.

出版信息

Eur J Med Chem. 2009 Apr;44(4):1509-24. doi: 10.1016/j.ejmech.2008.07.020. Epub 2008 Jul 24.

Abstract

Comparative quantitative structure-activity relationship (QSAR) studies have been carried out on tetrahydroimidazo[4,5,1-jk][1,4]benzodiazepine (TIBO) derivatives as reverse transcriptase inhibitors (n=70) using topological, structural, physicochemical, electronic and spatial descriptors. The data set was divided into training and test sets using a cluster-based method. Linear models were developed using multiple regression (with stepwise regression, factor analysis and genetic function approximation (GFA) as variable selection tools) and partial least squares (PLS) and combination of factor analysis and partial least squares (FA-PLS). Genetic function approximation (spline) and artificial neural networks (ANN) were used for the development of non-linear models. Using topological and structural descriptors, the best equation was obtained from GFA (spline) based on internal validation (Q(2)=0.737), but the model with the best external validation characteristics was obtained with FA-PLS (R(pred)(2)=0.707). When structural, physicochemical, electronic and spatial descriptors were used, the best Q(2) (0.740) value was obtained from GFA (spline) whereas PLS provided the best R(pred)(2) (0.784) value. When all descriptors were used in combination, the best R(pred)(2) (0.760) value and the best Q(2) (0.800) value were obtained from ANN and GFA (spline), respectively. The majority of the models satisfied the criteria of external validation recommended by Golbraikh and Tropsha (2002) and the criteria of modified r(2) (r(m)(2)) values of the test set for external validation as suggested by Roy and Roy (2008). In order to further validate selected models, an external set of 10 TIBO derivatives, which fall within the applicability domain of the models and are not shared with the compounds of the present data set, was taken from a different source, and reverse transcriptase inhibitory activity of these compounds was predicted. Acceptable values of squared correlation coefficients between the observed and predicted values of the external set compounds were obtained from the selected models suggesting true predictive potential of the models.

摘要

已使用拓扑、结构、物理化学、电子和空间描述符,对作为逆转录酶抑制剂的四氢咪唑并[4,5,1-jk][1,4]苯二氮䓬(TIBO)衍生物(n = 70)进行了比较定量构效关系(QSAR)研究。使用基于聚类的方法将数据集分为训练集和测试集。使用多元回归(以逐步回归、因子分析和遗传函数逼近(GFA)作为变量选择工具)、偏最小二乘法(PLS)以及因子分析与偏最小二乘法的组合(FA-PLS)建立线性模型。使用遗传函数逼近(样条)和人工神经网络(ANN)建立非线性模型。使用拓扑和结构描述符时,基于内部验证(Q(2)=0.737)从GFA(样条)获得最佳方程,但具有最佳外部验证特征的模型是通过FA-PLS获得的(R(pred)(2)=0.707)。当使用结构、物理化学、电子和空间描述符时,GFA(样条)获得最佳Q(2)(0.740)值,而PLS提供最佳R(pred)(2)(0.784)值。当组合使用所有描述符时,分别从ANN和GFA(样条)获得最佳R(pred)(2)(0.760)值和最佳Q(2)(0.800)值。大多数模型满足Golbraikh和Tropsha(2002)推荐的外部验证标准以及Roy和Roy(2008)建议的测试集外部验证的修正r(2)(r(m)(2))值标准。为了进一步验证所选模型,从不同来源选取了一组10种TIBO衍生物作为外部集,这些衍生物属于模型的适用范围且未包含在本数据集的化合物中,并预测了这些化合物的逆转录酶抑制活性。从所选模型获得了外部集化合物观测值与预测值之间平方相关系数的可接受值,表明模型具有真正的预测潜力。

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