Nguyen Bui Quoc Huy, Le Nguyen Thien Han, Nguyen Thi Yen Nhi, Nguyen Hoang Khue Tu, Yen Chia-Hung, Nguyen Minh Hien
The University of Danang - VN-UK Institute for Research and Executive Education, 41 Le Duan Street, Hai Chau 1 ward, Hai Chau District, Danang city, Vietnam.
University of Health Sciences, Vietnam National University Ho Chi Minh City, YA1 Administrative Building, Hai Thuong Lan Ong Street, Dong Hoa Ward, Di An City, Binh Duong Province, 75308, Vietnam.
Sci Rep. 2024 Dec 28;14(1):31222. doi: 10.1038/s41598-024-82559-5.
Oxidative stress, characterized by the damaging accumulation of free radicals, is associated with various diseases, including cardiovascular, neurodegenerative, and metabolic disorders. The transcription factor Nrf2 is pivotal in cellular defense against oxidative stress by regulating genes that detoxify free radicals, thus maintaining redox homeostasis and preventing cellular aging. Keap1 plays a regulatory role through its interaction with Nrf2, ensuring Nrf2 degradation under homeostatic conditions and facilitating its stabilization and nuclear translocation during oxidative stress. In the initial stage of our study, we conducted in vitro assays on HaCaT cells, a human keratinocyte cell line, to measure the expression levels of Nrf2 to reveal the activity of promising medicinal plants, which were then selected for further evaluation. Subsequently, this study leverages in silico techniques, integrating machine learning with molecular docking and dynamics, to screen natural compounds that potentially activate Nrf2. Data from the ChEMBL database were categorized into active and inactive compounds and used for training different machine-learning models to predict potential Nrf2 activators. The best-performing model was used to select compounds for further evaluation via molecular docking and dynamics, assessing their interactions with Keap1/Nrf2. The LC-MS/MS-based chemical profiles also validated the presence of these chemical compounds. This approach underscores the synergy between in vitro bioassays and in silico approaches in identifying Nrf2 activators, offering a cost-effective strategy for drug development.
氧化应激以自由基的有害积累为特征,与包括心血管疾病、神经退行性疾病和代谢紊乱在内的各种疾病相关。转录因子Nrf2通过调节使自由基解毒的基因,在细胞抵御氧化应激中起关键作用,从而维持氧化还原稳态并防止细胞衰老。Keap1通过与Nrf2相互作用发挥调节作用,在稳态条件下确保Nrf2降解,并在氧化应激期间促进其稳定和核转位。在我们研究的初始阶段,我们对人角质形成细胞系HaCaT细胞进行了体外试验,以测量Nrf2的表达水平,以揭示有前景的药用植物的活性,然后选择这些植物进行进一步评估。随后,本研究利用计算机技术,将机器学习与分子对接和动力学相结合,筛选可能激活Nrf2的天然化合物。来自ChEMBL数据库的数据被分类为活性和非活性化合物,并用于训练不同的机器学习模型以预测潜在的Nrf2激活剂。性能最佳的模型用于通过分子对接和动力学选择化合物进行进一步评估,评估它们与Keap1/Nrf2的相互作用。基于LC-MS/MS的化学图谱也验证了这些化合物的存在。这种方法强调了体外生物测定和计算机方法在鉴定Nrf2激活剂方面的协同作用,为药物开发提供了一种经济有效的策略。