Department of Medicinal Chemistry, School of Pharmacy, China Pharmaceutical University, Nanjing 210009, China.
Shanghai Institute for Advanced Immunochemical Studies and School of Life Science and Technology, ShanghaiTech University, Shanghai 201210, China.
J Chem Inf Model. 2024 Apr 22;64(8):3047-3058. doi: 10.1021/acs.jcim.3c01900. Epub 2024 Mar 23.
Covalent drugs exhibit advantages in that noncovalent drugs cannot match, and covalent docking is an important method for screening covalent lead compounds. However, it is difficult for covalent docking to screen covalent compounds on a large scale because covalent docking requires determination of the covalent reaction type of the compound. Here, we propose to use deep learning of a lateral interactions spiking neural network to construct a covalent lead compound screening model to quickly screen covalent lead compounds. We used the 3CL protease (3CL Pro) of SARS-CoV-2 as the screen target and constructed two classification models based on LISNN to predict the covalent binding and inhibitory activity of compounds. The two classification models were trained on the covalent complex data set targeting cysteine (Cys) and the compound inhibitory activity data set targeting 3CL Pro, respected, with good prediction accuracy (ACC > 0.9). We then screened the screening compound library with 6 covalent binding screening models and 12 inhibitory activity screening models. We tested the inhibitory activity of the 32 compounds, and the best compound inhibited SARS-CoV-2 3CL Pro with an IC value of 369.5 nM. Further assay implied that dithiothreitol can affect the inhibitory activity of the compound to 3CL Pro, indicating that the compound may covalently bind 3CL Pro. The selectivity test showed that the compound had good target selectivity to 3CL Pro over cathepsin L. These correlation assays can prove the rationality of the covalent lead compound screening model. Finally, covalent docking was performed to demonstrate the binding conformation of the compound with 3CL Pro. The source code can be obtained from the GitHub repository (https://github.com/guzh970630/Screen_Covalent_Compound_by_LISNN).
共价药物在非共价药物无法匹配的方面表现出优势,而共价对接是筛选共价先导化合物的重要方法。然而,由于共价对接需要确定化合物的共价反应类型,因此很难大规模筛选共价化合物。在这里,我们建议使用侧向相互作用尖峰神经网络的深度学习来构建共价先导化合物筛选模型,以快速筛选共价先导化合物。我们使用 SARS-CoV-2 的 3CL 蛋白酶(3CL Pro)作为筛选靶标,并构建了两个基于 LISNN 的分类模型,用于预测化合物的共价结合和抑制活性。这两个分类模型分别基于针对半胱氨酸(Cys)的共价复合物数据集和针对 3CL Pro 的化合物抑制活性数据集进行训练,具有良好的预测准确性(ACC>0.9)。然后,我们使用 6 个共价结合筛选模型和 12 个抑制活性筛选模型对筛选化合物库进行了筛选。我们测试了 32 种化合物的抑制活性,最佳化合物对 SARS-CoV-2 3CL Pro 的抑制常数(IC 值)为 369.5 nM。进一步的实验表明,二硫苏糖醇(DTT)可以影响化合物对 3CL Pro 的抑制活性,表明该化合物可能与 3CL Pro 发生共价结合。选择性测试表明,该化合物对 3CL Pro 具有良好的靶标选择性,而对组织蛋白酶 L 没有选择性。这些相关性实验可以证明共价先导化合物筛选模型的合理性。最后,进行了共价对接以证明化合物与 3CL Pro 的结合构象。源代码可从 GitHub 存储库(https://github.com/guzh970630/Screen_Covalent_Compound_by_LISNN)获得。