计算机科学
人工智能
相互作用模型
排名(信息检索)
数学
理论计算机科学
人际互动
校准
算法
特征(语言学)
等变映射
数据挖掘
钥匙(锁)
领域(数学)
代表(政治)
作者
Yuzhi Xu,Wei Xia,Chao Zhang,Xinxin Liu,Cheng‐Wei Ju,Xuhang Dai,Pujun Xie,Yuanqing Wang,Guangyong Chen,J Zhang
出处
期刊:JACS Au
[American Chemical Society]
日期:2026-04-16
卷期号:6 (5): 2846-2856
标识
DOI:10.1021/jacsau.6c00166
摘要
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.
科研通智能强力驱动
Strongly Powered by AbleSci AI