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Interpretable bilinear attention network with domain adaptation improves drug-target prediction

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Predicting drug-target interaction is key for drug discovery. Recent deep learning-based methods show promising performance but two challenges remain: (i) how to explicitly model and learn local interactions between drugs and targets for better prediction and interpretation; (ii) how to generalize prediction performance on novel drug-target pairs from different distribution. In this work, we propose DrugBAN, a deep bilinear attention network (BAN) framework with domain adaptation to explicitly learn pair-wise local interactions between drugs and targets, and adapt on out-of-distribution data. DrugBAN works on drug molecular graphs and target protein sequences to perform prediction, with conditional domain adversarial learning to align learned interaction representations across different distributions for better generalization on novel drug-target pairs. Experiments on three benchmark datasets under both in-domain and cross-domain settings show that DrugBAN achieves the best overall performance against five state-of-the-art baselines. Moreover, visualizing the learned bilinear attention map provides interpretable insights from prediction results.

Peizhen Bai, Filip Miljkovi\'c, Bino John, Haiping Lu• 2022

Related benchmarks

TaskDatasetResultRank
Drug-Target Interaction PredictionBIOSNAP
Accuracy0.834
28
Multiplex interaction predictionMetaConserve (transductive)
AUROC73.7
20
Multiplex interaction predictionMetaConserve zero-shot
AUROC0.692
20
Drug-Target InteractionBindingDB
AUROC96
16
Drug-Target Interaction PredictionHuman
AUROC0.982
15
Drug-Target InteractionBIOSNAP
AUROC0.903
8
Drug-Target InteractionHuman
AUROC98.2
8
Drug-Target Interaction PredictionBindingDB
AUROC0.96
7
Drug-Target Interaction PredictionBindingDB (random)
AUROC94.89
6
Drug-Target Interaction PredictionBindingDB (dev)
AUROC94.15
2
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