Group Ligands Docking to Protein Pockets
Guan, Jiaqi, Li, Jiahan, Zhou, Xiangxin, Peng, Xingang, Wang, Sheng, Luo, Yunan, Peng, Jian, Ma, Jianzhu
–arXiv.org Artificial Intelligence
Molecular docking is a key task in computational biology that has attracted increasing interest from the machine learning community. While existing methods have achieved success, they generally treat each protein-ligand pair in isolation. Inspired by the biochemical observation that ligands binding to the same target protein tend to adopt similar poses, we propose \textsc{GroupBind}, a novel molecular docking framework that simultaneously considers multiple ligands docking to a protein. This is achieved by introducing an interaction layer for the group of ligands and a triangle attention module for embedding protein-ligand and group-ligand pairs. By integrating our approach with diffusion-based docking model, we set a new S performance on the PDBBind blind docking benchmark, demonstrating the effectiveness of our proposed molecular docking paradigm.
arXiv.org Artificial Intelligence
Jan-24-2025
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