OpenDock: a pytorch-based open-source framework for protein–ligand docking and modelling

Qiuyue Hu, Zechen Wang, Jintao Meng, Weifeng Li, Jingjing Guo, Yuguang Mu, Sheng Wang, Liangzhen Zheng, Yanjie Wei

研究成果: Review article同行評審

摘要

Motivation: Molecular docking is an invaluable computational tool with broad applications in computer-aided drug design and enzyme engineering. However, current molecular docking tools are typically implemented in languages such as Cþþ for calculation speed, which lack flexibility and user-friendliness for further development. Moreover, validating the effectiveness of external scoring functions for molecular docking and screening within these frameworks is challenging, and implementing more efficient sampling strategies is not straightforward. Results: To address these limitations, we have developed an open-source molecular docking framework, OpenDock, based on Python and PyTorch. This framework supports the integration of multiple scoring functions; some can be utilized during molecular docking and pose optimization, while others can be used for post-processing scoring. In terms of sampling, the current version of this framework supports simulated annealing and Monte Carlo optimization. Additionally, it can be extended to include methods such as genetic algorithms and particle swarm optimization for sampling docking poses and protein side chain orientations. Distance constraints are also implemented to enable covalent docking, restricted docking or distance map constraints guided pose sampling. Overall, this framework serves as a valuable tool in drug design and enzyme engineering, offering significant flexibility for most protein–ligand modelling tasks. Availability and implementation: OpenDock is publicly available at: https://github.com/guyuehuo/opendock.

原文English
文章編號btae628
期刊Bioinformatics
40
發行號11
DOIs
出版狀態Published - 1 11月 2024

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