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Deep-learning-based prediction framework for protein-peptide interactions with structure generation pipeline

Jingxuan Ge, Dejun Jiang, Huiyong Sun, Yu Kang, Peichen Pan, Yafeng Deng, Chang‐Yu Hsieh, Tingjun Hou

2024Cell Reports Physical Science16 citationsDOIOpen Access PDF

Abstract

Peptides play a crucial role in regulating various cellular processes through protein-peptide interactions (PpIs), offering promising avenues for therapeutic development. However, the reliable prediction of PpIs faces challenges in generating high-quality protein-peptide structures for large-scale modeling. Despite recent advancements in deep learning (DL) techniques, many predicted structures lack the necessary accuracy for efficient peptide screening. To address this, we propose a template-based PpI structure modeling pipeline, optimizing the accuracy-speed trade-off. In addition, we present a DL-based PpI prediction framework, called the Interaction Transformer Net (ITN), to detect PpIs at the residue level. The ITN model trained on the structures generated by our pipeline achieves state-of-the-art (SOTA) predictions on peptide-SH3 systems (average AUC = 0.88) and is comparable with the SOTA sequence-based prediction methods for peptide-MHC I (average AUC = 0.92), implying that ITN is a powerful tool for PpI prediction and may help advance vaccine design and peptide drug development.

Topics & Concepts

Pipeline (software)Protein structure predictionArtificial intelligenceDeep learningComputer scienceMachine learningChemistryProtein structureBiochemistryProgramming languageProtein Structure and DynamicsComputational Drug Discovery MethodsRNA and protein synthesis mechanisms
Deep-learning-based prediction framework for protein-peptide interactions with structure generation pipeline | Litcius