Qian Yongtao, Ni Wanxing, Xianyu Xingxing, Tao Liang, Wang Qin
Department of Pharmacology, Zhongshan School of Medicine, Sun Yat-sen University, Guangzhou 510080, China.
Pharmaceutics. 2023 Feb 16;15(2):675. doi: 10.3390/pharmaceutics15020675.
Drug-targeted therapies are promising approaches to treating tumors, and research on receptor-ligand interactions for discovering high-affinity targeted drugs has been accelerating drug development. This study presents a mechanism-driven deep learning-based computational model to learn double drug sequences, protein sequences, and drug graphs to project drug-target affinities (DTAs), which was termed the DoubleSG-DTA. We deployed lightweight graph isomorphism networks to aggregate drug graph representations and discriminate between molecular structures, and stacked multilayer squeeze-and-excitation networks to selectively enhance spatial features of drug and protein sequences. What is more, cross-multi-head attentions were constructed to further model the non-covalent molecular docking behavior. The multiple cross-validation experimental evaluations on various datasets indicated that DoubleSG-DTA consistently outperformed all previously reported works. To showcase the value of DoubleSG-DTA, we applied it to generate promising hit compounds of Non-Small Cell Lung Cancer harboring EGFRT790M mutation from natural products, which were consistent with reported laboratory studies. Afterward, we further investigated the interpretability of the graph-based "black box" model and highlighted the active structures that contributed the most. DoubleSG-DTA thus provides a powerful and interpretable framework that extrapolates for potential chemicals to modulate the systemic response to disease.
药物靶向治疗是治疗肿瘤的一种很有前景的方法,针对受体 - 配体相互作用以发现高亲和力靶向药物的研究一直在加速药物开发。本研究提出了一种基于机制驱动的深度学习计算模型,用于学习双药序列、蛋白质序列和药物图谱,以预测药物 - 靶点亲和力(DTA),该模型被称为DoubleSG - DTA。我们部署了轻量级图同构网络来聚合药物图谱表示并区分分子结构,并堆叠多层挤压与激励网络以选择性地增强药物和蛋白质序列的空间特征。此外,构建了交叉多头注意力机制以进一步模拟非共价分子对接行为。在各种数据集上进行的多次交叉验证实验评估表明,DoubleSG - DTA始终优于所有先前报道的工作。为了展示DoubleSG - DTA的价值,我们将其应用于从天然产物中生成携带EGFRT790M突变的非小细胞肺癌的有前景的命中化合物,这些化合物与已报道的实验室研究结果一致。之后,我们进一步研究了基于图的“黑箱”模型的可解释性,并突出了贡献最大的活性结构。因此,DoubleSG - DTA提供了一个强大且可解释的框架,可用于推断潜在化学物质以调节对疾病的全身反应。