Unified All-Atom Molecule Generation with Neural Fields
Abstract
Generative models for structure-based drug design are often limited to a specific modality, restricting their broader applicability. To address this challenge, we introduce FuncBind, a framework based on computer vision to generate target-conditioned, all-atom molecules across atomic systems. FuncBind uses neural fields to represent molecules as continuous atomic densities and employs score-based generative models with modern architectures adapted from the computer vision literature. This modality-agnostic representation allows a single unified model to be trained on diverse atomic systems, from small to large molecules, and handle variable atom/residue counts, including non-canonical amino acids. FuncBind achieves competitive in silico performance in generating small molecules, macrocyclic peptides, and antibody complementarity-determining region loops, conditioned on target structures. FuncBind also generated in vitro novel antibody binders via de novo redesign of the complementarity-determining region H3 loop of two chosen co-crystal structures. As a final contribution, we introduce a new dataset and benchmark for structure-conditioned macrocyclic peptide generation.
Cite
Text
Kirchmeyer et al. "Unified All-Atom Molecule Generation with Neural Fields." Advances in Neural Information Processing Systems, 2025.Markdown
[Kirchmeyer et al. "Unified All-Atom Molecule Generation with Neural Fields." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/kirchmeyer2025neurips-unified/)BibTeX
@inproceedings{kirchmeyer2025neurips-unified,
title = {{Unified All-Atom Molecule Generation with Neural Fields}},
author = {Kirchmeyer, Matthieu and Pinheiro, Pedro O. and Willett, Emma and Martinkus, Karolis and Kleinhenz, Joseph and Makowski, Emily K. and Watkins, Andrew Martin and Gligorijevic, Vladimir and Bonneau, Richard and Saremi, Saeed},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/kirchmeyer2025neurips-unified/}
}