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HGT-PepPI: A Heterogeneous Graph-Based Framework Leveraging Pragmatic Analysis for Peptide-Protein Interaction Prediction

  • Ke Yan
  • , Tianyi Liu
  • , Xinxin Zhan
  • , Shutao Chen
  • , Meijing Li
  • , Tianqi Hu
  • , Bin Liu
  • Beijing Institute of Technology
  • Capital Medical University
  • Beijing Key Laboratory of Lightweight Intelligent System

Research output: Contribution to journalArticlepeer-review

Abstract

Peptide-Protein Interactions (PepPIs) are essential to a wide range of biological processes, including gene regulation, cellular homeostasis, and metabolic modulation. Researchers have developed several computational deep learning predictors based on the sequence information to predict the PepPIs. However, the generalization performance of most computational methods is constrained by the limited protein-peptide complexes in the RCSB Protein Data Bank database. Moreover, it is challenging to utilize the complex context of proteins and peptides to predict PepPIs. In this study, we propose HGT-PepPI, a heterogeneous graph-based framework designed for PepPIs prediction. The peptide and protein sequences are initialized as heterogeneous nodes with semantic representations using the ProtT5 model. The three multirelational edges are constructed by integrating sequence semantic information, evolutionary conservation profiles, and experimentally validated interactions between proteins and peptides, respectively. By constructing a graph that inherently integrates multiple types of biological information, our method achieves superior generalization by learning transferable patterns of interaction semantics. Moreover, the proposed method employs the message-passing operations to capture the local sequence characteristics and global complex contextual dependencies, thereby enabling a comprehensive modeling of interaction semantics. Experimental results demonstrate that HGT-PepPI outperforms the existing state-of-the-art approaches in both predictive performance and robustness. In addition, we designed an alanine scanning mutagenesis experiment and a binding affinity experiment, which successfully verified the model's ability to identify key residues and guide peptide drug design. The data and source code of HGT-PepPI can be publicly accessible via http://bliulab.net/HGT-PepPI.

Original languageEnglish
Pages (from-to)4232-4244
Number of pages13
JournalJournal of Chemical Information and Modeling
Volume66
Issue number7
DOIs
Publication statusPublished - 13 Apr 2026
Externally publishedYes

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