Яндекс Метрика
Биология и ИИ

ParetoDrug

Chinese University of Hong Kong (CUHK),Zhejiang Lab,Zhejiang University (ZJU),Huawei Noah's Ark Lab
Поиск лекарств

ParetoDrug представляет собой продвинутую генеративную ИИ-систему для дизайна таргетных лекарств с высокой точностью связывания. Модель эффективно балансирует между множеством химических параметров, создавая оптимальные молекулы-кандидаты для борьбы с конкретными заболеваниями.

Target-aware drug discovery has greatly accelerated the drug discovery process to design smallmolecule ligands with high binding affinity to disease-related protein targets. Conditioned on targeted proteins, previous works utilize various kinds of deep generative models and have shown great potential in generating molecules with strong protein-ligand binding interactions. However, beyond binding affinity, effective drug molecules must manifest other essential properties such as high druglikeness, which are not explicitly addressed by current target-aware generative methods. In this article, aiming to bridge the gap of multi-objective target-aware molecule generation in the field of deep learning-based drug discovery, we propose ParetoDrug, a Pareto Monte Carlo Tree Search (MCTS) generation algorithm. ParetoDrug searches molecules on the Pareto Front in chemical space using MCTS to enable synchronous optimization of multiple properties. Specifically, ParetoDrug utilizes pretrained atom-by-atom autoregressive generative models for the exploration guidance to desired molecules during MCTS searching. Besides, when selecting the next atom symbol, a scheme named ParetoPUCT is proposed to balance exploration and exploitation. Benchmark experiments and case studies demonstrate that ParetoDrug is highly effective in traversing the large and complex chemical space to discover novel compounds with satisfactory binding affinities and drug-like properties for various multi-objective target-aware drug discovery tasks.

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