Department of Bioinformatics, Institute of Biochemistry and Biophysics, University of Tehran, P.O. Box 13145-1384, Tehran, Iran.
Chem Biol Drug Des. 2012 Feb;79(2):166-76. doi: 10.1111/j.1747-0285.2011.01252.x. Epub 2011 Nov 24.
Defining the role of calcitonin gene-related peptide in migraine pathogenesis could lead to the application of calcitonin gene-related peptide antagonists as novel migraine therapeutics. In this work, quantitative structure-activity relationship modeling of biological activities of a large range of calcitonin gene-related peptide antagonists was performed using a panel of physicochemical descriptors. The computational studies evaluated different variable selection techniques and demonstrated shuffling stepwise multiple linear regression to be superior over genetic algorithm-multiple linear regression. The linear quantitative structure-activity relationship model revealed better statistical parameters of cross-validation in comparison with the non-linear support vector regression technique. Implementing only five peptide descriptors into this linear quantitative structure-activity relationship model resulted in an extremely robust and highly predictive model with calibration, leave-one-out and leave-20-out validation R(2) of 0.9194, 0.9103, and 0.9214, respectively. We performed docking of the most potent calcitonin gene-related peptide antagonists with the calcitonin gene-related peptide receptor and demonstrated that peptide antagonists act by blocking access to the peptide-binding cleft. We also demonstrated the direct contact of residues 28-37 of the calcitonin gene-related peptide antagonists with the receptor. These results are in agreement with the conclusions drawn from the quantitative structure-activity relationship model, indicating that both electrostatic and steric factors should be taken into account when designing novel calcitonin gene-related peptide antagonists.
确定降钙素基因相关肽在偏头痛发病机制中的作用可能会导致降钙素基因相关肽拮抗剂作为新型偏头痛治疗药物的应用。在这项工作中,使用一组物理化学描述符对大量降钙素基因相关肽拮抗剂的生物活性进行了定量构效关系建模。计算研究评估了不同的变量选择技术,并证明了随机逐步多元线性回归优于遗传算法-多元线性回归。线性定量构效关系模型与非线性支持向量回归技术相比,在交叉验证方面显示出更好的统计参数。将仅五个肽描述符实现到这个线性定量构效关系模型中,得到了一个非常稳健且高度可预测的模型,其校准、留一法和留二十法验证的 R(2)分别为 0.9194、0.9103 和 0.9214。我们对最有效的降钙素基因相关肽拮抗剂与降钙素基因相关肽受体进行了对接,证明肽拮抗剂通过阻止进入肽结合裂隙来发挥作用。我们还证明了降钙素基因相关肽拮抗剂的 28-37 位残基与受体的直接接触。这些结果与定量构效关系模型得出的结论一致,表明在设计新型降钙素基因相关肽拮抗剂时,应考虑静电和空间因素。