College of Chemistry and Chemical Engineering, Lanzhou University, 730000 Gansu, China.
Ping An Healthcare Technology, 100027 Beijing, China.
Brief Bioinform. 2023 May 19;24(3). doi: 10.1093/bib/bbad145.
Rapid and accurate prediction of drug-target affinity can accelerate and improve the drug discovery process. Recent studies show that deep learning models may have the potential to provide fast and accurate drug-target affinity prediction. However, the existing deep learning models still have their own disadvantages that make it difficult to complete the task satisfactorily. Complex-based models rely heavily on the time-consuming docking process, and complex-free models lacks interpretability. In this study, we introduced a novel knowledge-distillation insights drug-target affinity prediction model with feature fusion inputs to make fast, accurate and explainable predictions. We benchmarked the model on public affinity prediction and virtual screening dataset. The results show that it outperformed previous state-of-the-art models and achieved comparable performance to previous complex-based models. Finally, we study the interpretability of this model through visualization and find it can provide meaningful explanations for pairwise interaction. We believe this model can further improve the drug-target affinity prediction for its higher accuracy and reliable interpretability.
快速准确地预测药物-靶标亲和力可以加速和改善药物发现过程。最近的研究表明,深度学习模型可能具有提供快速准确的药物-靶标亲和力预测的潜力。然而,现有的深度学习模型仍然存在自身的缺点,使得它们难以令人满意地完成任务。基于复合物的模型严重依赖耗时的对接过程,而无复合物的模型缺乏可解释性。在这项研究中,我们引入了一种新颖的基于知识蒸馏的药物-靶标亲和力预测模型,该模型具有特征融合输入,可以实现快速、准确和可解释的预测。我们在公共亲和力预测和虚拟筛选数据集上对该模型进行了基准测试。结果表明,它优于以前的最先进模型,并达到了与以前基于复合物的模型相当的性能。最后,我们通过可视化研究了该模型的可解释性,发现它可以为成对相互作用提供有意义的解释。我们相信,该模型凭借其更高的准确性和可靠的可解释性,可以进一步提高药物-靶标亲和力预测。