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arxiv:2511.15906

Unified all-atom molecule generation with neural fields

Published on Nov 19
· Submitted by Matthieu Kirchmeyer on Nov 26
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Abstract

FuncBind, a framework using neural fields and score-based generative models from computer vision, generates diverse atomic structures across modalities, achieving competitive performance in structure-conditioned molecular design.

AI-generated summary

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. The code is available at https://github.com/prescient-design/funcbind.

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FuncBind is an unified vision-based approach to all-atom structure conditioned molecule generation, accepted at NeurIPS2025.
Modeling molecules as atomic density fields, we trained a diffusion model on small molecules, antibody CDRs and cyclic peptides with non-canonicals

Highlights:
• Scalable vision-based denoiser
• Competitive in-silico performance with a single model
• Variable number of atoms and/or residues
• New dataset and benchmark for macrocyclic peptide generation with non-canonicals.
• Validated wet-lab antibody CDR H3 designs

📄 Arxiv: https://arxiv.org/abs/2511.15906
💻 Code, weights, datasets (Apache 2.0): https://github.com/prescient-design/funcbind/

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