Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Generation of 3D Molecules in Pockets via Language Model

About

Generative models for molecules based on sequential line notation (e.g. SMILES) or graph representation have attracted an increasing interest in the field of structure-based drug design, but they struggle to capture important 3D spatial interactions and often produce undesirable molecular structures. To address these challenges, we introduce Lingo3DMol, a pocket-based 3D molecule generation method that combines language models and geometric deep learning technology. A new molecular representation, fragment-based SMILES with local and global coordinates, was developed to assist the model in learning molecular topologies and atomic spatial positions. Additionally, we trained a separate noncovalent interaction predictor to provide essential binding pattern information for the generative model. Lingo3DMol can efficiently traverse drug-like chemical spaces, preventing the formation of unusual structures. The Directory of Useful Decoys-Enhanced (DUD-E) dataset was used for evaluation. Lingo3DMol outperformed state-of-the-art methods in terms of drug-likeness, synthetic accessibility, pocket binding mode, and molecule generation speed.

Wei Feng, Lvwei Wang, Zaiyun Lin, Yanhao Zhu, Han Wang, Jianqiang Dong, Rong Bai, Huting Wang, Jielong Zhou, Wei Peng, Bo Huang, Wenbiao Zhou (1) __INSTITUTION_12__ Beijing StoneWise Technology Co Ltd __INSTITUTION_13__ Innovation Center for Pathogen Research Guangzhou Laboratory)• 2023

Related benchmarks

TaskDatasetResultRank
Molecule GenerationPocket dataset
Time (s)1.48e+3
12
Showing 1 of 1 rows

Other info

Follow for update