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arxiv:2601.19149

GPCR-Filter: a deep learning framework for efficient and precise GPCR modulator discovery

Published on Jan 27
· Submitted by
Ethan Ning
on Jan 28
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Abstract

GPCR-Filter is a deep learning framework that combines protein language models and graph neural networks to identify GPCR modulators with high accuracy and generalization across unseen receptors and ligands.

AI-generated summary

G protein-coupled receptors (GPCRs) govern diverse physiological processes and are central to modern pharmacology. Yet discovering GPCR modulators remains challenging because receptor activation often arises from complex allosteric effects rather than direct binding affinity, and conventional assays are slow, costly, and not optimized for capturing these dynamics. Here we present GPCR-Filter, a deep learning framework specifically developed for GPCR modulator discovery. We assembled a high-quality dataset of over 90,000 experimentally validated GPCR-ligand pairs, providing a robust foundation for training and evaluation. GPCR-Filter integrates the ESM-3 protein language model for high-fidelity GPCR sequence representations with graph neural networks that encode ligand structures, coupled through an attention-based fusion mechanism that learns receptor-ligand functional relationships. Across multiple evaluation settings, GPCR-Filter consistently outperforms state-of-the-art compound-protein interaction models and exhibits strong generalization to unseen receptors and ligands. Notably, the model successfully identified micromolar-level agonists of the 5-HT1A receptor with distinct chemical frameworks. These results establish GPCR-Filter as a scalable and effective computational approach for GPCR modulator discovery, advancing AI-assisted drug development for complex signaling systems.

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GPCR-Filter is a compound–protein interaction model that couples ESM-3 GPCR sequence embeddings with ligand graph representations through attention-based feature interaction, trained on 90k+ curated GPCR–ligand pairs. It shows stronger OOD generalization to unseen receptors and ligands than prior baselines and recovers micromolar 5-HT₁A agonists with diverse scaffolds.

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