Bešker Neva, Gervasio Francesco L
Spanish National Cancer Research Centre, Madrid, Spain.
Methods Mol Biol. 2012;819:501-13. doi: 10.1007/978-1-61779-465-0_29.
Large-scale conformational transitions represent both a challenge and an opportunity for computational drug design. Exploring the conformational space of a druggable target with sufficient detail is computationally demanding. However, if it were possible to fully account for target flexibility, one could exploit this knowledge to rationally design more potent and more selective drug candidates. Here, we discuss how molecular dynamics together with free energy algorithms based on Metadynamics and Path Collective Variables can be used to study both large-scale conformational transitions and ligand binding to flexible targets. We show real-life examples of how these methods have been applied in the case of cyclin-dependent kinases, a family of flexible targets that shows promise in cancer therapy.
大规模构象转变对计算药物设计而言既是挑战也是机遇。要足够详细地探索可成药靶点的构象空间,计算量很大。然而,如果能够充分考虑靶点的灵活性,就可以利用这些知识合理设计出更有效、更具选择性的候选药物。在此,我们讨论如何将分子动力学与基于元动力学和路径集体变量的自由能算法结合起来,用于研究大规模构象转变以及配体与柔性靶点的结合。我们展示了这些方法在细胞周期蛋白依赖性激酶(一类在癌症治疗中有应用前景的柔性靶点)案例中的实际应用示例。