Castillo-Garit Juan A, Marrero-Ponce Yovani, Torrens Francisco, Rotondo Richard
Applied Chemistry Research Center, Central University of Las Villas, Santa Clara, 54830 Villa Clara, Cuba.
J Mol Graph Model. 2007 Jul;26(1):32-47. doi: 10.1016/j.jmgm.2006.09.007. Epub 2006 Sep 26.
Non-stochastic and stochastic 2D bilinear indices have been generalized to codify chemical structure information for chiral drugs, making use of a trigonometric 3D-chirality correction factor. In order to evaluate the effectiveness of this novel approach in drug design we have modeled the angiotensin-converting enzyme inhibitory activity of perindoprilate's sigma-stereoisomers combinatorial library. Two linear discriminant analysis models, using non-stochastic and stochastic linear indices, were obtained. The models had shown an accuracy of 95.65% for the training set and 100% for the external prediction set. Next the prediction of the sigma-receptor antagonists of chiral 3-(3-hydroxyphenyl)piperidines by multiple linear regression analysis was carried out. Two statistically significant QSAR models were obtained when non-stochastic (R(2)=0.953 and s=0.238) and stochastic (R(2)=0.961 and s=0.219) 3D-chiral bilinear indices were used. These models showed adequate predictive power (assessed by the leave-one-out cross-validation experiment) yielding values of q(2)=0.935 (s(cv)=0.259) and q(2)=0.946 (s(cv)=0.235), respectively. Finally, the prediction of the corticosteroid-binding globulin binding affinity of steroids set was performed. The obtained results are rather similar to most of the 3D-QSAR approaches reported so far. The validation of this method was achieved by comparison with previous reports applied to the same data set. The non-stochastic and stochastic 3D-chiral linear indices appear to provide a very interesting alternative to other more common 3D-QSAR descriptors.
非随机和随机二维双线性指标已被推广,利用三角三维手性校正因子来编码手性药物的化学结构信息。为了评估这种新方法在药物设计中的有效性,我们对手性培哚普利酯的σ-立体异构体组合库的血管紧张素转换酶抑制活性进行了建模。获得了两个使用非随机和随机线性指标的线性判别分析模型。这些模型对训练集的准确率为95.65%,对外部预测集的准确率为100%。接下来,通过多元线性回归分析对手性3-(3-羟基苯基)哌啶的σ-受体拮抗剂进行了预测。当使用非随机(R(2)=0.953,s=0.238)和随机(R(2)=0.961,s=0.219)三维手性双线性指标时,获得了两个具有统计学意义的QSAR模型。这些模型显示出足够的预测能力(通过留一法交叉验证实验评估),q(2)值分别为0.935(s(cv)=0.259)和0.946(s(cv)=0.235)。最后,对类固醇组的皮质类固醇结合球蛋白结合亲和力进行了预测。所得结果与迄今为止报道的大多数三维定量构效关系方法相当相似。通过与应用于同一数据集的先前报告进行比较,实现了该方法的验证。非随机和随机三维手性线性指标似乎为其他更常见的三维定量构效关系描述符提供了一个非常有趣的替代方案。