Structure-Aware Contrastive Learning with Fine-Grained Binding Representations for Drug Discovery
By: Jing Lan , Hexiao Ding , Hongzhao Chen and more
Potential Business Impact:
Finds new medicines faster by looking at how they fit.
Accurate identification of drug-target interactions (DTI) remains a central challenge in computational pharmacology, where sequence-based methods offer scalability. This work introduces a sequence-based drug-target interaction framework that integrates structural priors into protein representations while maintaining high-throughput screening capability. Evaluated across multiple benchmarks, the model achieves state-of-the-art performance on Human and BioSNAP datasets and remains competitive on BindingDB. In virtual screening tasks, it surpasses prior methods on LIT-PCBA, yielding substantial gains in AUROC and BEDROC. Ablation studies confirm the critical role of learned aggregation, bilinear attention, and contrastive alignment in enhancing predictive robustness. Embedding visualizations reveal improved spatial correspondence with known binding pockets and highlight interpretable attention patterns over ligand-residue contacts. These results validate the framework's utility for scalable and structure-aware DTI prediction.
Similar Papers
S$^2$Drug: Bridging Protein Sequence and 3D Structure in Contrastive Representation Learning for Virtual Screening
Machine Learning (CS)
Finds new medicines faster using protein clues.
Contrastive Multi-Task Learning with Solvent-Aware Augmentation for Drug Discovery
Biomolecules
Predicts drug-protein bonds more accurately in liquids
Learning to Align Molecules and Proteins: A Geometry-Aware Approach to Binding Affinity
Machine Learning (CS)
Finds new medicines faster by predicting how they'll work.