Department of Pharmacy, Honghui Hospital, Xi' an Jiaotong University, Xi' an, 710054, China.
Department of Pharmacy, The First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, 710061, China.
J Transl Med. 2023 Aug 28;21(1):579. doi: 10.1186/s12967-023-04443-6.
Janus kinase 1 (JAK1) plays a critical role in most cytokine-mediated inflammatory, autoimmune responses and various cancers via the JAK/STAT signaling pathway. Inhibition of JAK1 is therefore an attractive therapeutic strategy for several diseases. Recently, high-performance machine learning techniques have been increasingly applied in virtual screening to develop new kinase inhibitors. Our study aimed to develop a novel layered virtual screening method based on machine learning (ML) and pharmacophore models to identify the potential JAK1 inhibitors.
Firstly, we constructed a high-quality dataset comprising 3834 JAK1 inhibitors and 12,230 decoys, followed by establishing a series of classification models based on a combination of three molecular descriptors and six ML algorithms. To further screen potential compounds, we constructed several pharmacophore models based on Hiphop and receptor-ligand algorithms. We then used molecular docking to filter the recognized compounds. Finally, the binding stability and enzyme inhibition activity of the identified compounds were assessed by molecular dynamics (MD) simulations and in vitro enzyme activity tests.
The best performance ML model DNN-ECFP4 and two pharmacophore models Hiphop3 and 6TPF 08 were utilized to screen the ZINC database. A total of 13 potentially active compounds were screened and the MD results demonstrated that all of the above molecules could bind with JAK1 stably in dynamic conditions. Among the shortlisted compounds, the four purchasable compounds demonstrated significant kinase inhibition activity, with Z-10 being the most active (IC = 194.9 nM).
The current study provides an efficient and accurate integrated model. The hit compounds were promising candidates for the further development of novel JAK1 inhibitors.
Janus 激酶 1(JAK1)通过 JAK/STAT 信号通路在大多数细胞因子介导的炎症、自身免疫反应和各种癌症中发挥关键作用。因此,抑制 JAK1 是几种疾病的一种有吸引力的治疗策略。最近,高性能机器学习技术已越来越多地应用于虚拟筛选,以开发新的激酶抑制剂。我们的研究旨在开发一种基于机器学习(ML)和药效团模型的新型分层虚拟筛选方法,以鉴定潜在的 JAK1 抑制剂。
首先,我们构建了一个包含 3834 个 JAK1 抑制剂和 12230 个诱饵的高质量数据集,然后基于三种分子描述符和六种 ML 算法的组合建立了一系列分类模型。为了进一步筛选潜在的化合物,我们基于 Hiphop 和受体配体算法构建了几个药效团模型。然后,我们使用分子对接来筛选识别出的化合物。最后,通过分子动力学(MD)模拟和体外酶活性测试评估鉴定化合物的结合稳定性和酶抑制活性。
最佳性能的 ML 模型 DNN-ECFP4 和两个药效团模型 Hiphop3 和 6TPF08 用于筛选 ZINC 数据库。共筛选出 13 种潜在活性化合物,MD 结果表明,上述所有分子在动态条件下均可与 JAK1 稳定结合。在所筛选的化合物中,四种可购买的化合物表现出显著的激酶抑制活性,其中 Z-10 最为活跃(IC=194.9nM)。
本研究提供了一种高效准确的集成模型。命中化合物是进一步开发新型 JAK1 抑制剂的有前途的候选物。