Modern Research Center for Traditional Chinese Medicine, The Key Laboratory of Chemical Biology and Molecular Engineering of Ministry of Education, Shanxi University, No. 92, Wucheng Road, Taiyuan, 030006, Shanxi, P.R. China.
Key Laboratory of Effective Substances Research and Utilization in TCM of Shanxi Province, No. 92, Wucheng Road, Taiyuan, 030006, Shanxi, P.R. China.
Curr Comput Aided Drug Des. 2024;20(5):598-615. doi: 10.2174/1573409919666230720141115.
Traditional Chinese medicine (TCM) Xiao Jianzhong Tang (XJZ) has a favorable efficacy in the treatment of chronic atrophic gastritis (CAG). However, its pharmacological mechanism has not been fully explained.
The purpose of this study was to find the potential mechanism of XJZ in the treatment of CAG using pharmacocoinformatics approaches.
Network pharmacology was used to screen out the key compounds and key targets, MODELLER and GNNRefine were used to repair and refine proteins, Autodock vina was employed to perform molecular docking, Δ XGB was used to score the docking results, and Gromacs was used to perform molecular dynamics simulations (MD).
Kaempferol, licochalcone A, and naringenin, were obtained as key compounds, while AKT1, MAPK1, MAPK14, RELA, STAT1, and STAT3 were acquired as key targets. Among docking results, 12 complexes scored greater than five. They were run for 50ns MD. The free binding energy of AKT1-licochalcone A and MAPK1-licochalcone A was less than -15 kcal/mol and AKT1-naringenin and STAT3-licochalcone A was less than -9 kcal/mol. These complexes were crucial in XJZ treating CAG.
Our findings suggest that licochalcone A could act on AKT1, MAPK1, and STAT3, and naringenin could act on AKT1 to play the potential therapeutic effect on CAG. The work also provides a powerful approach to interpreting the complex mechanism of TCM through the amalgamation of network pharmacology, deep learning-based protein refinement, molecular docking, machine learning-based binding affinity estimation, MD simulations, and MM-PBSA-based estimation of binding free energy.
中药消健中汤(XJZ)在治疗慢性萎缩性胃炎(CAG)方面具有良好的疗效。然而,其药理机制尚未得到充分解释。
本研究旨在采用计算药理学方法寻找 XJZ 治疗 CAG 的潜在机制。
采用网络药理学筛选关键化合物和关键靶点,用 MODELLER 和 GNNRefine 对蛋白质进行修复和细化,用 Autodock vina 进行分子对接,用ΔXGB 对对接结果进行评分,用 Gromacs 进行分子动力学模拟(MD)。
得到了关键化合物如山柰酚、甘草素 A 和柚皮苷,以及关键靶点如 AKT1、MAPK1、MAPK14、RELA、STAT1 和 STAT3。在对接结果中,有 12 个复合物的得分大于 5。对这些复合物进行了 50ns MD 模拟。AKT1-甘草素 A 和 MAPK1-甘草素 A 的自由结合能小于-15kcal/mol,AKT1-柚皮苷和 STAT3-甘草素 A 的自由结合能小于-9kcal/mol。这些复合物在 XJZ 治疗 CAG 中起着至关重要的作用。
我们的研究结果表明,甘草素 A 可以作用于 AKT1、MAPK1 和 STAT3,柚皮苷可以作用于 AKT1,从而发挥其对 CAG 的潜在治疗作用。该工作还为通过网络药理学、基于深度学习的蛋白质细化、分子对接、基于机器学习的结合亲和力估计、MD 模拟和 MM-PBSA 结合自由能估计相结合,解释中药复杂机制提供了一种强大的方法。