Department of Chemistry, Faculty of Science, Yazd University, Yazd 89195, Iran.
Molecules. 2011 Feb 25;16(3):1928-55. doi: 10.3390/molecules16031928.
The CXCR2 receptors play a pivotal role in inflammatory disorders and CXCR2 receptor antagonists can in principle be used in the treatment of inflammatory and related diseases. In this study, quantitative relationships between the structures of 130 antagonists of the CXCR2 receptors and their activities were investigated by the partial least squares (PLS) method. The genetic algorithm (GA) has been proposed for improvement of the performance of the PLS modeling by choosing the most relevant descriptors. The results of the factor analysis show that eight latent variables are able to describe about 86.77% of the variance in the experimental activity of the molecules in the training set. Power prediction of the QSAR models developed with SMLR, PLS and GA-PLS methods were evaluated using cross-validation, and validation through an external prediction set. The results showed satisfactory goodness-of-fit, robustness and perfect external predictive performance. A comparison between the different developed methods indicates that GA-PLS can be chosen as supreme model due to its better prediction ability than the other two methods. The applicability domain was used to define the area of reliable predictions. Furthermore, the in silico screening technique was applied to the proposed QSAR model and the structure and potency of new compounds were predicted. The developed models were found to be useful for the estimation of pIC₅₀ of CXCR2 receptors for which no experimental data is available.
趋化因子受体 2 (CXCR2) 受体在炎症性疾病中起着至关重要的作用,CXCR2 受体拮抗剂原则上可用于治疗炎症性疾病和相关疾病。在这项研究中,通过偏最小二乘 (PLS) 方法研究了 130 种 CXCR2 受体拮抗剂的结构与其活性之间的定量关系。遗传算法 (GA) 已被提议用于通过选择最相关的描述符来改进 PLS 建模的性能。因子分析的结果表明,八个潜在变量能够描述训练集中分子实验活性的约 86.77%的方差。使用交叉验证和外部预测集对 SMLR、PLS 和 GA-PLS 方法开发的 QSAR 模型的预测能力进行了评估。结果表明,拟合度、稳健性和完美的外部预测性能均令人满意。不同开发方法的比较表明,由于其预测能力优于其他两种方法,GA-PLS 可以作为最优模型。应用域用于定义可靠预测的区域。此外,还将基于计算的筛选技术应用于所提出的 QSAR 模型,对新化合物的结构和效力进行了预测。发现所开发的模型可用于估计尚无实验数据的 CXCR2 受体的 pIC₅₀。