MuCoS: Efficient Drug-Target Prediction through Multi-Context-Aware Sampling
This work addresses drug-target interaction prediction for biomedical research, offering incremental improvements in efficiency and accuracy over prior methods.
The paper tackled the problem of drug-target prediction by addressing limitations of traditional methods in handling unseen relationships and negative triplets, resulting in MuCoS, which improved performance by up to 18% on Hits@10 and 13% on MRR over existing models on the KEGG50k dataset.
Drug-target interactions are critical for understanding biological processes and advancing drug discovery. However, traditional methods such as ComplEx-SE, TransE, and DistMult struggle with unseen relationships and negative triplets, which limits their effectiveness in drug-target prediction. To address these challenges, we propose Multi-Context-Aware Sampling (MuCoS), an efficient and positively accurate method for drug-target prediction. MuCoS reduces computational complexity by prioritizing neighbors of higher density to capture informative structural patterns. These optimized neighborhood representations are integrated with BERT, enabling contextualized embeddings for accurate prediction of missing relationships or tail entities. MuCoS avoids the need for negative triplet sampling, reducing computation while improving performance over unseen entities and relations. Experiments on the KEGG50k biomedical dataset show that MuCoS improved over existing models by 13\% on MRR, 7\% on Hits@1, 4\% on Hits@3, and 18\% on Hits@10 for the general relationship, and by 6\% on MRR, 1\% on Hits@1, 3\% on Hits@3, and 12\% on Hits@10 for prediction of drug-target relationship.