Functional-Group-Based Diffusion for Pocket-Specific Molecule Generation and Elaboration

Neural Information Processing Systems 

In recent years, AI-assisted drug design methods have been proposed to generate molecules given the pockets' structures of target proteins. Most of them are {\em atom-level-based} methods, which consider atoms as basic components and generate atom positions and types. In this way, however, it is hard to generate realistic fragments with complicated structures. To solve this, we propose \textsc{D3FG}, a {\em functional-group-based} diffusion model for pocket-specific molecule generation and elaboration. And the two kinds of components can together form complicated fragments that enhance ligand-protein interactions.