Wu Xi Research Center of Environmental Science and Engineering, Wuxi, Jiangsu Province 214153, China; School of Internet of Things Engineering, Jiangnan University, Wuxi, Jiangsu Province 214122, China.
School of Internet of Things Engineering, Jiangnan University, Wuxi, Jiangsu Province 214122, China.
J Theor Biol. 2018 Nov 14;457:180-189. doi: 10.1016/j.jtbi.2018.08.034. Epub 2018 Aug 28.
Molecular docking has emerged as an important tool in drug design and development. Currently, there is a relatively large and ever-increasing number of molecular docking programs. However, despite the great advances in the docking technique over the last decade, most methods cannot be used to dock highly flexible ligands successfully. In this study, based on the Autodock software, a new search algorithm, hybrid algorithm of Random Drift Particle Swarm Optimisation and local search (LRDPSO), that focuses on protein-ligand applications was presented. In our approach, we considered the ligand flexibility and strategies that aimed to improve binding affinity prediction in the context of a docking-based investigation. The experimental results revealed that our approach led to a substantially lower docking energy and higher docking precision in comparison to the LGA, PSO and QPSO algorithms. The LRDPSO algorithm was able to identify the correct binding mode of 83.6% of the complexes. In comparison, the accuracy of QPSO, PSO and LGA is 73.1%, 68.7% and 68.7%, respectively. For LRDPSO docking, satisfactory docking results can be obtained when relatively big ligands with many rotatable bonds are docked against protein binding pockets in which flexibility does play an important role. Thus, the novel LRDPSO algorithm predictions for highly flexible ligands are more reliable, and would increase the predictive power and widen the applications of this important computational tool.
分子对接已成为药物设计和开发的重要工具。目前,有相对较多且不断增加的分子对接程序。然而,尽管在过去十年中对接技术取得了很大进展,但大多数方法都不能成功对接高度灵活的配体。在这项研究中,基于 Autodock 软件,提出了一种新的搜索算法,即随机漂移粒子群优化和局部搜索(LRDPSO)混合算法,该算法专注于蛋白质-配体应用。在我们的方法中,我们考虑了配体的灵活性和旨在提高对接研究中结合亲和力预测的策略。实验结果表明,与 LGA、PSO 和 QPSO 算法相比,我们的方法导致更低的对接能和更高的对接精度。LRDPSO 算法能够识别 83.6%复合物的正确结合模式。相比之下,QPSO、PSO 和 LGA 的准确性分别为 73.1%、68.7%和 68.7%。对于 LRDPSO 对接,当具有许多旋转键的相对较大的配体对接在其中灵活性确实起重要作用的蛋白质结合口袋中时,可以获得令人满意的对接结果。因此,新型 LRDPSO 算法对高度灵活的配体的预测更可靠,并将提高该重要计算工具的预测能力和应用范围。