Score: 0

Multi-Scale Protein Structure Modelling with Geometric Graph U-Nets

Published: December 7, 2025 | arXiv ID: 2512.06752v1

By: Chang Liu , Vivian Li , Linus Leong and more

Potential Business Impact:

Helps understand how proteins fold and work.

Business Areas:
Semantic Web Internet Services

Geometric Graph Neural Networks (GNNs) and Transformers have become state-of-the-art for learning from 3D protein structures. However, their reliance on message passing prevents them from capturing the hierarchical interactions that govern protein function, such as global domains and long-range allosteric regulation. In this work, we argue that the network architecture itself should mirror this biological hierarchy. We introduce Geometric Graph U-Nets, a new class of models that learn multi-scale representations by recursively coarsening and refining the protein graph. We prove that this hierarchical design can theoretically more expressive than standard Geometric GNNs. Empirically, on the task of protein fold classification, Geometric U-Nets substantially outperform invariant and equivariant baselines, demonstrating their ability to learn the global structural patterns that define protein folds. Our work provides a principled foundation for designing geometric deep learning architectures that can learn the multi-scale structure of biomolecules.

Country of Origin
🇬🇧 United Kingdom

Page Count
14 pages

Category
Computer Science:
Machine Learning (CS)