The accelerating growth of make-on-demand chemical libraries provides unprecedented opportunities to identify starting points for drug discovery with virtual screening. However, these multi-billion-scale libraries are challenging to screen, even for the fastest structure-based docking methods. Here we explore a strategy that combines machine learning and molecular docking to enable rapid virtual screening of databases containing billions of compounds. In our workflow, a classification algorithm is trained to identify top-scoring compounds based on molecular docking of 1âmillion compounds to the target protein. The conformal prediction framework is then used to make selections from the multi-billion-scale library, reducing the number of compounds to be scored by docking. The CatBoost classifier showed an optimal balance between speed and accuracy and was used to adapt the workflow for screens of ultralarge libraries. Application to a library of 3.5âbillion compounds demonstrated that our protocol can reduce the computational cost of structure-based virtual screening by more than 1,000-fold. Experimental testing of predictions identified ligands of G protein-coupled receptors and demonstrated that our approach enables discovery of compounds with multi-target activity tailored for therapeutic effect.
Rapid traversal of vast chemical space using machine learning-guided docking screens.
利用机器学习引导的对接筛选快速遍历广阔的化学空间
阅读:5
作者:Luttens Andreas, Cabeza de Vaca Israel, Sparring Leonard, Brea José, MartÃnez Antón Leandro, Kahlous Nour Aldin, Radchenko Dmytro S, Moroz Yurii S, Loza MarÃa Isabel, Norinder Ulf, Carlsson Jens
| 期刊: | Nature Computational Science | 影响因子: | 18.300 |
| 时间: | 2025 | 起止号: | 2025 Apr;5(4):301-312 |
| doi: | 10.1038/s43588-025-00777-x | ||
特别声明
1、本文转载旨在传播信息,不代表本网站观点,亦不对其内容的真实性承担责任。
2、其他媒体、网站或个人若从本网站转载使用,必须保留本网站注明的“来源”,并自行承担包括版权在内的相关法律责任。
3、如作者不希望本文被转载,或需洽谈转载稿费等事宜,请及时与本网站联系。
4、此外,如需投稿,也可通过邮箱info@biocloudy.com与我们取得联系。
