Pérez González Maykel, Dias Luiz Carlos, Helguera Aliuska Morales, Rodríguez Yanisleidy Morales, de Oliveira Luciana Gonzaga, Gomez Luis Torres, Diaz Humberto Gonzalez
Unit of Service, Drug Design Department, Experimental Sugar Cane Station Villa Clara-Cienfuegos, Villa Clara, Ranchuelo 53100, Cuba.
Bioorg Med Chem. 2004 Aug 15;12(16):4467-75. doi: 10.1016/j.bmc.2004.05.035.
A new application of TOPological Sub-structural MOlecular DEsign (TOPS-MODE) was carried out in anti-inflammatory compounds using computer-aided molecular design. Two series of compounds, one containing anti-inflammatory and the other containing nonanti-inflammatory compounds were processed by a k-means cluster analysis in order to design the training and prediction sets. A linear classification function to discriminate the anti-inflammatory from the inactive compounds was developed. The model correctly and clearly classified 88% of active and 91% of inactive compounds in the training set. More specifically, the model showed a good global classification of 90%, that is, (399 cases out of 441). While in the prediction set, they showed an overall predictability of 88% and 84% for active and inactive compounds, being the global percentage of good classification of 85%. Furthermore this paper describes a fragment analysis in order to determine the contribution of several fragments towards anti-inflammatory property, also the present of halogens in the selected fragments were analyzed. It seems that the present TOPS-MODE based QSAR is the first alternate general 'in silico' technique to experimentation in anti-inflammatory discovery.
运用计算机辅助分子设计,对拓扑子结构分子设计(TOPS - MODE)在抗炎化合物中的新应用展开了研究。通过k均值聚类分析处理了两组化合物,一组包含抗炎化合物,另一组包含非抗炎化合物,以此来设计训练集和预测集。开发了一种线性分类函数,用于区分抗炎化合物和非活性化合物。该模型在训练集中正确且清晰地分类了88%的活性化合物和91%的非活性化合物。更具体地说,该模型的总体分类准确率为90%,即(441例中的399例)。而在预测集中,对于活性和非活性化合物,其总体预测准确率分别为88%和84%,总体良好分类百分比为85%。此外,本文还描述了片段分析,以确定几个片段对抗炎特性的贡献,同时分析了所选片段中卤素的存在情况。基于TOPS - MODE的定量构效关系似乎是抗炎药物发现实验中首个替代常规“计算机模拟”技术。