Laboratory of Molecular Design and Drug Discovery, School of Science, China Pharmaceutical University, 639 Longmian Avenue, Nanjing 211198, China.
State Key Laboratory of Natural Medicines, China Pharmaceutical University, 24 Tongjiaxiang, Nanjing 210009, China.
ACS Comb Sci. 2020 Dec 14;22(12):873-886. doi: 10.1021/acscombsci.0c00169. Epub 2020 Nov 4.
Rheumatoid arthritis (RA) is a chronic autoimmune disease, which is compared to "immortal cancer" in industry. Currently, SYK, BTK, and JAK are the three major targets of protein tyrosine kinase for this disease. According to existing research, marketed and research drugs for RA are mostly based on single target, which limits their efficacy. Therefore, designing multitarget or dual-target inhibitors provide new insights for the treatment of RA regarding of the specific association between SYK, BTK, and JAK from two signal transduction pathways. In this study, machine learning (XGBoost, SVM) and deep learning (DNN) models were combined for the first time to build a powerful integrated model for SYK, BTK, and JAK. The predictive power of the integrated model was proved to be superior to that of a single classifier. In order to accurately assess the generalization ability of the integrated model, comprehensive similarity analysis was performed on the training and the test set, and the prediction accuracy of the integrated model was specifically analyzed under different similarity thresholds. External validation was conducted using single-target and dual-target inhibitors, respectively. Results showed that our model not only obtained a high recall rate (97%) in single-target prediction, but also achieved a favorable yield (54.4%) in dual-target prediction. Furthermore, by clustering dual-target inhibitors, the prediction performance of model in various classes were proved, evaluating the applicability domain of the model in the dual-target drug screening. In summary, the integrated model proposed is promising to screen dual-target inhibitors of SYK/JAK or BTK/JAK as RA drugs, which is beneficial for the clinical treatment of rheumatoid arthritis.
类风湿关节炎(RA)是一种慢性自身免疫性疾病,在工业界被比作“不死癌症”。目前,SYK、BTK 和 JAK 是该疾病的三种主要蛋白酪氨酸激酶靶点。根据现有研究,RA 的上市药物和研究药物大多基于单一靶点,这限制了它们的疗效。因此,设计多靶点或双靶点抑制剂为 RA 的治疗提供了新的思路,因为 SYK、BTK 和 JAK 从两条信号转导通路具有特定的关联。在这项研究中,首次将机器学习(XGBoost、SVM)和深度学习(DNN)模型结合起来,为 SYK、BTK 和 JAK 构建了一个强大的集成模型。该集成模型的预测能力被证明优于单个分类器。为了准确评估集成模型的泛化能力,对训练集和测试集进行了全面的相似性分析,并在不同的相似性阈值下具体分析了集成模型的预测准确性。分别使用单靶点和双靶点抑制剂进行外部验证。结果表明,我们的模型不仅在单靶点预测中获得了高召回率(97%),而且在双靶点预测中也获得了良好的收益率(54.4%)。此外,通过对双靶点抑制剂进行聚类,证明了模型在各个类别的预测性能,评估了模型在双靶点药物筛选中的适用域。总之,所提出的集成模型有望筛选 SYK/JAK 或 BTK/JAK 的双靶点抑制剂作为 RA 药物,这有利于类风湿关节炎的临床治疗。