Institute of Medicinal Plant Development, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing 100193, China.
Eur J Pharmacol. 2024 Nov 5;982:176825. doi: 10.1016/j.ejphar.2024.176825. Epub 2024 Aug 17.
Human neutrophil elastase (HNE) is an important contributor to lung diseases such as acute lung injury (ALI) or acute respiratory distress syndrome. Therefore, this study aimed to identify natural HNE inhibitors with anti-inflammatory activity through machine learning algorithms, in vitro assays, molecular dynamic simulation, and an in vivo ALI assay.
Based on the optimized Discovery Studio two-dimensional molecular descriptors, combined with different molecular fingerprints, six machine learning models were established using the Naïve Bayesian (NB) method to identify HNE inhibitors. Subsequently, the optimal model was utilized to screen 6925 drug-like compounds obtained from the Traditional Chinese Medicine Systems Pharmacy Database and Analysis Platform (TCMSP), followed by ADMET analysis. Finally, 10 compounds with reported anti-inflammatory activity were selected to determine their inhibitory activities against HNE in vitro, and the compounds with the best activity were selected for a 100 ns molecular dynamics simulation and its anti-inflammatory effect was evaluated using Poly (I:C)-induced ALI model.
The evaluation of the in vitro HNE inhibition efficiency of the 10 selected compounds showed that the flavonoid tricetin had the strongest inhibitory effect on HNE. The molecular dynamics simulation indicated that the binding of tricetin to HNE was relatively stable throughout the simulation. Importantly, in vivo experiments indicated that tricetin treatment substantially improved the Poly (I:C)-induced ALI.
The proposed NB model was proved valuable for exploring novel HNE inhibitors, and natural tricetin was screened out as a novel HNE inhibitor, which was confirmed by in vitro and in vivo assays for its inhibitory activities.
人中性粒细胞弹性蛋白酶(HNE)是急性肺损伤(ALI)或急性呼吸窘迫综合征等肺部疾病的重要贡献者。因此,本研究旨在通过机器学习算法、体外测定、分子动力学模拟和体内 ALI 测定来鉴定具有抗炎活性的天然 HNE 抑制剂。
基于优化的 Discovery Studio 二维分子描述符,结合不同的分子指纹,使用 Naive Bayesian(NB)方法建立了 6 个机器学习模型,以鉴定 HNE 抑制剂。随后,利用最佳模型筛选来自中药系统药理学数据库和分析平台(TCMSP)的 6925 种药物样化合物,并进行 ADMET 分析。最后,选择 10 种具有抗炎活性的报道化合物,以确定它们在体外对 HNE 的抑制活性,选择活性最佳的化合物进行 100ns 分子动力学模拟,并通过 Poly(I:C)诱导的 ALI 模型评估其抗炎作用。
对 10 种选定化合物体外 HNE 抑制效率的评价表明,黄酮类化合物tricetin 对 HNE 的抑制作用最强。分子动力学模拟表明,tricetin 与 HNE 的结合在整个模拟过程中相对稳定。重要的是,体内实验表明,tricetin 治疗可显著改善 Poly(I:C)诱导的 ALI。
所提出的 NB 模型被证明对探索新型 HNE 抑制剂具有价值,天然 tricetin 被筛选为新型 HNE 抑制剂,其体外和体内测定均证实了其抑制活性。