Department of Molecular and Cellular Pharmacology, School of Pharmaceutical Sciences, Peking University Health Science Center, Beijing, China.
Institute for Molecular Medicine Finland (FIMM), HiLIFE, University of Helsinki, Helsinki, Finland.
J Cell Mol Med. 2023 Jan;27(2):266-276. doi: 10.1111/jcmm.17652. Epub 2022 Dec 27.
Na 1.5 sodium channels contribute to the generation of the rapid upstroke of the myocardial action potential and thereby play a central role in the excitability of myocardial cells. At present, the patch clamp method is the gold standard for ion channel inhibitor screening. However, this method has disadvantages such as high technical difficulty, high cost and low speed. In this study, novel machine learning models to screen chemical blockers were developed to overcome the above shortage. The data from the ChEMBL Database were employed to establish the machine learning models. Firstly, six molecular fingerprints together with five machine learning algorithms were used to develop 30 classification models to predict effective inhibitors. A validation and a test set were used to evaluate the performance of the models. Subsequently, the privileged substructures tightly associated with the inhibition of the Na 1.5 ion channel were extracted using the bioalerts Python package. In the validation set, the RF-Graph model performed best. Similarly, RF-Graph produced the best result in the test set in which the Prediction Accuracy (Q) was 0.9309 and Matthew's correlation coefficient was 0.8627, further indicating the model had high classification ability. The results of the privileged substructures indicated Sulfa structures and fragments with large Steric hindrance tend to block Na 1.5. In the unsupervised learning task of identifying sulfa drugs, MACCS and Graph fingerprints had good results. In summary, effective machine learning models have been constructed which help to screen potential inhibitors of the Na 1.5 ion channel and key privileged substructures with high affinity were also extracted.
钠通道 1.5 型(Na1.5)在心肌动作电位的快速上升中起作用,因此在心肌细胞的兴奋性中起核心作用。目前,膜片钳方法是筛选离子通道抑制剂的金标准。然而,这种方法存在技术难度高、成本高和速度慢等缺点。在这项研究中,开发了新的机器学习模型来筛选化学阻滞剂,以克服上述不足。该研究使用 ChEMBL 数据库中的数据来建立机器学习模型。首先,使用六种分子指纹和五种机器学习算法来开发 30 种分类模型,以预测有效的抑制剂。采用验证集和测试集来评估模型的性能。随后,使用 bioalerts Python 包提取与 Na1.5离子通道抑制紧密相关的特权亚结构。在验证集中,RF-Graph 模型表现最好。同样,在测试集中,RF-Graph 也产生了最佳结果,预测准确率(Q)为 0.9309,马修斯相关系数为 0.8627,进一步表明该模型具有较高的分类能力。特权亚结构的结果表明,磺胺结构和具有大空间位阻的片段倾向于阻断 Na1.5。在识别磺胺类药物的无监督学习任务中,MACCS 和 Graph 指纹具有较好的结果。总之,已经构建了有效的机器学习模型,有助于筛选 Na1.5离子通道的潜在抑制剂,并提取了具有高亲和力的关键特权亚结构。