Wang Nianrui, Zhao Shumin, Li Ziwei, Sun Jianqiang, Yi Ming
School of Mathematics and Physics, China University of Geosciences, Wuhan, 430074, China.
School of Information Science and Engineering, Linyi University, Linyi, 276000, China.
Interdiscip Sci. 2025 May 23. doi: 10.1007/s12539-025-00714-6.
During the development of new drugs, it is essential to assess their effectiveness and examine the potential mechanisms behind side effects. This process typically involves combining the analysis of drugs under development with relevant existing drugs to more precisely evaluate the effects of drugs and targets. The use of deep learning methods to analyze this problem is currently a research hotspot, but several limitations remain: (i) how to deepen the analysis from the molecular level to the atomic level and analyze the key substructures that affect interactions on the basis of pharmaceutical mechanisms; (ii) how to integrate biomedical analysis with deep learning methods to make it medically sound and enhance interpretability.
To address the limitations of existing research, based on Deep Graph Convolutional Network (Deep-GCN) and Bilinear Attention Network (BAN), we have constructed an interpretable deep learning framework, WDGBANDTI, to analyze and predict drug‒target interactions at the substructure level and enhance the prediction capability of the model with respect to unidentified target pairings by adding modules.
For different application scenarios, we validated the model via several commonly used and highly covered datasets. We also selected several state-of-the-art computer methods as comparison objects, and our model demonstrates advantages in accuracy, sensitivity, specificity, and other deep learning features. More importantly, the model can identify the substructures that play a role in drug‒target interactions through BAN, highlighting its excellent interpretability.
In conclusion, we believe that our work will contribute to advancements in drug development and side effect experiments and provide meaningful guidance for drug design.
在新药研发过程中,评估其有效性并探究副作用背后的潜在机制至关重要。这一过程通常涉及将正在研发的药物分析与相关现有药物相结合,以更精确地评估药物效果和靶点。目前,使用深度学习方法分析此问题是一个研究热点,但仍存在一些局限性:(i)如何从分子水平深入到原子水平进行分析,并基于药物机制分析影响相互作用的关键子结构;(ii)如何将生物医学分析与深度学习方法相结合,使其在医学上合理并增强可解释性。
为解决现有研究的局限性,基于深度图卷积网络(Deep-GCN)和双线性注意力网络(BAN),我们构建了一个可解释的深度学习框架WDGBANDTI,用于在子结构水平分析和预测药物-靶点相互作用,并通过添加模块增强模型对未识别靶点配对的预测能力。
针对不同应用场景,我们通过几个常用且覆盖度高的数据集对模型进行了验证。我们还选择了几种最先进的计算机方法作为比较对象,我们的模型在准确性、敏感性、特异性和其他深度学习特征方面表现出优势。更重要的是,该模型可以通过BAN识别在药物-靶点相互作用中起作用的子结构,突出了其出色的可解释性。
总之,我们相信我们的工作将有助于药物研发和副作用实验的进展,并为药物设计提供有意义的指导。