Caballero Julio, Garriga Miguel, Fernández Michael
Molecular Modeling Group, Center for Biotechnological Studies, Faculty of Agronomy, University of Matanzas, 44740, Matanzas, Cuba.
J Comput Aided Mol Des. 2005 Nov;19(11):771-89. doi: 10.1007/s10822-005-9025-z. Epub 2005 Dec 23.
Selective inhibition of the intermediate-conductance Ca(2+)-activated K(+ )channel (IK (Ca)) by some clotrimazole analogs has been successfully modeled using topological charge indexes (TCI) and genetic neural networks (GNNs). A neural network monitoring scheme evidenced a highly non-linear dependence between the IK (Ca) blocking activity and TCI descriptors. Suitable subsets of descriptors were selected by means of genetic algorithm. Bayesian regularization was implemented in the network training function with the aim of assuring good generalization qualities to the predictors. GNNs were able to yield a reliable predictor that explained about 97% data variance with good predictive ability. On the contrary, the best multivariate linear equation with descriptors selected by linear genetic search, only explained about 60%. In spite of when using the descriptors from the linear equations to train neural networks yielded higher fitted models, such networks were very unstable and had relative low predictive ability. However, the best GNN BRANN 2 had a Q ( 2 ) of LOO of cross-validation equal to 0.901 and at the same time exhibited outstanding stability when calculating 80 randomly constructed training/test sets partitions. Our model suggested that structural fragments of size three and seven have relevant influence on the inhibitory potency of the studied IK (Ca) channel blockers. Furthermore, inhibitors were well distributed regarding its activity levels in a Kohonen self-organizing map (KSOM) built using the inputs of the best neural network predictor.
一些克霉唑类似物对中间电导钙激活钾通道(IK(Ca))的选择性抑制作用已通过拓扑电荷指数(TCI)和遗传神经网络(GNN)成功建模。神经网络监测方案证明了IK(Ca)阻断活性与TCI描述符之间存在高度非线性依赖关系。通过遗传算法选择了合适的描述符子集。在网络训练函数中实施了贝叶斯正则化,以确保预测器具有良好的泛化能力。GNN能够产生一个可靠的预测器,该预测器能够解释约97%的数据方差,具有良好的预测能力。相反,通过线性遗传搜索选择描述符得到的最佳多元线性方程仅能解释约60%的数据方差。尽管使用线性方程中的描述符训练神经网络能得到更高的拟合模型,但这些网络非常不稳定,预测能力相对较低。然而,最佳的GNN BRANN 2在留一法交叉验证中的Q(2)值等于0.901,并且在计算80个随机构建的训练/测试集划分时表现出出色的稳定性。我们的模型表明,大小为三或七的结构片段对所研究的IK(Ca)通道阻滞剂的抑制效力有相关影响。此外,在使用最佳神经网络预测器的输入构建的Kohonen自组织映射(KSOM)中,抑制剂的活性水平分布良好。