Apo2Mol: 3D Molecule Generation via Dynamic Pocket-Aware Diffusion Models
By: Xinzhe Zheng , Shiyu Jiang , Gustavo Seabra and more
Potential Business Impact:
Designs medicines that fit changing body parts.
Deep generative models are rapidly advancing structure-based drug design, offering substantial promise for generating small molecule ligands that bind to specific protein targets. However, most current approaches assume a rigid protein binding pocket, neglecting the intrinsic flexibility of proteins and the conformational rearrangements induced by ligand binding, limiting their applicability in practical drug discovery. Here, we propose Apo2Mol, a diffusion-based generative framework for 3D molecule design that explicitly accounts for conformational flexibility in protein binding pockets. To support this, we curate a dataset of over 24,000 experimentally resolved apo-holo structure pairs from the Protein Data Bank, enabling the characterization of protein structure changes associated with ligand binding. Apo2Mol employs a full-atom hierarchical graph-based diffusion model that simultaneously generates 3D ligand molecules and their corresponding holo pocket conformations from input apo states. Empirical studies demonstrate that Apo2Mol can achieve state-of-the-art performance in generating high-affinity ligands and accurately capture realistic protein pocket conformational changes.
Similar Papers
Peptide2Mol: A Diffusion Model for Generating Small Molecules as Peptide Mimics for Targeted Protein Binding
Machine Learning (CS)
Creates better medicines by copying nature.
Integrating Protein Dynamics into Structure-Based Drug Design via Full-Atom Stochastic Flows
Biomolecules
Finds new medicines by watching how proteins change.
A 3D pocket-aware and affinity-guided diffusion model for lead optimization
Machine Learning (CS)
Creates better medicines by improving how they stick.