Wang Tianyi, Sun Jianqiang, Zhao Qi
School of Computer Science and Software Engineering, University of Science and Technology Liaoning, Anshan, 114051, China.
School of Automation and Electrical Engineering, Linyi University, Linyi, 276000, China.
Comput Biol Med. 2023 Feb;153:106464. doi: 10.1016/j.compbiomed.2022.106464. Epub 2022 Dec 20.
Human ether-a-go-go-related gene (hERG) channel blockade by small molecules is a big concern during drug development in the pharmaceutical industry. Failure or inhibition of hERG channel activity caused by drug molecules can lead to prolonging QT interval, which will result in serious cardiotoxicity. Thus, evaluating the hERG blocking activity of all these small molecular compounds is technically challenging, and the relevant procedures are expensive and time-consuming. In this study, we develop a novel deep learning predictive model named DMFGAM for predicting hERG blockers. In order to characterize the molecule more comprehensively, we first consider the fusion of multiple molecular fingerprint features to characterize its final molecular fingerprint features. Then, we use the multi-head attention mechanism to extract the molecular graph features. Both molecular fingerprint features and molecular graph features are fused as the final features of the compounds to make the feature expression of compounds more comprehensive. Finally, the molecules are classified into hERG blockers or hERG non-blockers through the fully connected neural network. We conduct 5-fold cross-validation experiment to evaluate the performance of DMFGAM, and verify the robustness of DMFGAM on external validation datasets. We believe DMFGAM can serve as a powerful tool to predict hERG channel blockers in the early stages of drug discovery and development.
在制药行业的药物开发过程中,小分子对人类醚 - 去极化相关基因(hERG)通道的阻断是一个重大问题。药物分子导致的hERG通道活性失败或抑制会导致QT间期延长,进而引发严重的心脏毒性。因此,评估所有这些小分子化合物的hERG阻断活性在技术上具有挑战性,且相关程序昂贵且耗时。在本研究中,我们开发了一种名为DMFGAM的新型深度学习预测模型来预测hERG阻断剂。为了更全面地表征分子,我们首先考虑融合多种分子指纹特征来表征其最终的分子指纹特征。然后,我们使用多头注意力机制来提取分子图特征。分子指纹特征和分子图特征都被融合作为化合物的最终特征,以使化合物的特征表达更全面。最后,通过全连接神经网络将分子分类为hERG阻断剂或hERG非阻断剂。我们进行了5折交叉验证实验来评估DMFGAM的性能,并在外部验证数据集上验证了DMFGAM的稳健性。我们相信DMFGAM可以作为一种强大的工具,在药物发现和开发的早期阶段预测hERG通道阻断剂。