Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

HBGSA: Hydrogen Bond Graph with Self-Attention for Drug-Target Binding Affinity Prediction

About

Accurate prediction of drug-target binding affinity accelerates drug discovery by prioritizing compounds for experimental validation. Current methods face three limitations: sequence-based approaches discard spatial geometric constraints, structure-based methods fail to exploit hydrogen bond features, and conventional loss functions neglect prediction-target correlation, a key factor for identifying high-affinity compounds in virtual screening. We developed HBGSA (Hydrogen Bond Graph with Self-Attention), a 3.06M-parameter model that encodes hydrogen bond spatial features. HBGSA uses graph neural networks to model hydrogen bond spatial topology with self-attention enhancement and Pearson correlation loss. Experimental results on PDBbind Core Set and CSAR-HiQ dataset demonstrate that HBGSA outperforms baseline methods with strong generalization capability. Ablation studies confirm the effectiveness of hydrogen bond modeling and Pearson correlation loss.

Junxiao Kong, Chupei Tang, Di Wang, Jixiu Zhai, Yi He, Moyu Tang, Tianchi Lu• 2026

Related benchmarks

TaskDatasetResultRank
Drug target binding affinity predictionPDBbind Core Set v2016
RMSE1.099
23
Binding affinity predictionCSAR-HiQ
RMSE1.603
15
Showing 2 of 2 rows

Other info

Follow for update