|国家预印本平台
首页|Learning Protein-Ligand Binding in Hyperbolic Space

Learning Protein-Ligand Binding in Hyperbolic Space

Learning Protein-Ligand Binding in Hyperbolic Space

来源:Arxiv_logoArxiv
英文摘要

Protein-ligand binding prediction is central to virtual screening and affinity ranking, two fundamental tasks in drug discovery. While recent retrieval-based methods embed ligands and protein pockets into Euclidean space for similarity-based search, the geometry of Euclidean embeddings often fails to capture the hierarchical structure and fine-grained affinity variations intrinsic to molecular interactions. In this work, we propose HypSeek, a hyperbolic representation learning framework that embeds ligands, protein pockets, and sequences into Lorentz-model hyperbolic space. By leveraging the exponential geometry and negative curvature of hyperbolic space, HypSeek enables expressive, affinity-sensitive embeddings that can effectively model both global activity and subtle functional differences-particularly in challenging cases such as activity cliffs, where structurally similar ligands exhibit large affinity gaps. Our mode unifies virtual screening and affinity ranking in a single framework, introducing a protein-guided three-tower architecture to enhance representational structure. HypSeek improves early enrichment in virtual screening on DUD-E from 42.63 to 51.44 (+20.7%) and affinity ranking correlation on JACS from 0.5774 to 0.7239 (+25.4%), demonstrating the benefits of hyperbolic geometry across both tasks and highlighting its potential as a powerful inductive bias for protein-ligand modeling.

Jianhui Wang、Wenyu Zhu、Bowen Gao、Xin Hong、Ya-Qin Zhang、Wei-Ying Ma、Yanyan Lan

生物科学研究方法、生物科学研究技术分子生物学药学

Jianhui Wang,Wenyu Zhu,Bowen Gao,Xin Hong,Ya-Qin Zhang,Wei-Ying Ma,Yanyan Lan.Learning Protein-Ligand Binding in Hyperbolic Space[EB/OL].(2025-08-21)[2025-09-02].https://arxiv.org/abs/2508.15480.点此复制

评论