Published April 16, 2026 | Version v1
Journal article

SAKE-PP: A Spatial-Attention Equivariant Network for Accurate Ranking of Protein–Protein Interaction Models

  • 1. New York University
  • 2. Shenzhen University of Advanced Technology
  • 3. Chinese Academy of Sciences
  • 4. University of Chicago

Description

Accurate prioritization of near-native protein–protein interaction (PPI) models remains a major bottleneck in structural biology. Here, we present SAKE-PP, a physics-inspired, spatial-attention equivariant graph neural network that directly regresses interface RMSD (iRMSD) without native references. Trained with a hierarchical iRMSD-guided sampling strategy on PDBBind, SAKE-PP integrates force-field-like attention with Laplacian-eigenvector orientation to couple local interaction forces with global topology. On the 2024PDB benchmark of 176 heterodimers, SAKE-PP improves AF3-decoy selection by 13.75% (iRMSD) and 12.5% (DockQ) and consistently outperforms the AF3 ranking score in overlap, hit-rate, and correlation metrics. In zero-shot evaluation on 139 antibody–antigen complexes, SAKE-PP increases correlation by 0.4. By promoting geometrically near-native, energetically plausible interfaces to the top ranks, SAKE-PP reduces wasted MD trajectories and improves refinement reliability. Overall, SAKE-PP provides a robust, plug-and-play scoring function that streamlines PPI evaluation and accelerates downstream structure-guided drug-design workflows.

Additional details

Identifiers

DOI
10.1021/jacsau.6c00166
Other
oai:uchicago.tind.io:16968

Funding

Science and Technology Commission of Shanghai Municipality
25DX2800500
National Natural Science Foundation of China
22333006
National Natural Science Foundation of China
32341017
National Natural Science Foundation of China
32341018
National Natural Science Foundation of China
62376254
National Natural Science Foundation of China
92270001

UChicago Information

Division(s)
Pritzker School of Molecular Engineering