CryoNet.Refine: A One-Step Diffusion Model for Rapid Refinement of Structural Models with Cryo-EM Density mAP Restraints
Abstract
High-resolution structure determination by cryo-electron microscopy (cryo-EM) requires the accurate fitting of an atomic model into an experimental density map. Traditional refinement pipelines like Phenix.real_space_refine and Rosetta are computationally expensive, demand extensive manual tuning, and present a significant bottleneck for researchers. We present CryoNet. Refine, an end-to-end, deep learning framework that automates and accelerates molecular structure refinement. Our approach utilizes a one-step diffusion model that integrates a density-aware loss function with robust stereochemical restraints, enabling it to rapidly optimize a structure against the experimental data. CryoNet. Refine stands as a unified and versatile solution capable of refining not only protein complexes but also nucleic acids (DNA/RNA) and their assemblies. In benchmarks against Phenix.real_space_refine, CryoNet. Refine consistently yields substantial improvements in both model–map correlation and overall model geometric quality. By offering a scalable, automated, and powerful alternative, CryoNet. Refine is poised to become an essential tool for next-generation cryo-EM structure refinement. Web server: https://cryonet.ai/refine; Source code: https://github.com/kuixu/cryonet.refine.
Cite
Text
Huang et al. "CryoNet.Refine: A One-Step Diffusion Model for Rapid Refinement of Structural Models with Cryo-EM Density mAP Restraints." International Conference on Learning Representations, 2026.Markdown
[Huang et al. "CryoNet.Refine: A One-Step Diffusion Model for Rapid Refinement of Structural Models with Cryo-EM Density mAP Restraints." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/huang2026iclr-cryonet/)BibTeX
@inproceedings{huang2026iclr-cryonet,
title = {{CryoNet.Refine: A One-Step Diffusion Model for Rapid Refinement of Structural Models with Cryo-EM Density mAP Restraints}},
author = {Huang, Fuyao and Yu, Xiaozhu and Xu, Kui and Zhang, Qiangfeng Cliff},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/huang2026iclr-cryonet/}
}