Siddiqui Arif Jamal, Jamal Arshad, Zafar Mubashir, Jahan Sadaf
Department of Biology, College of Science, University of Ha'il, Ha'il, Saudi Arabia.
Department of Family and Community Medicine, College of Medicine, University of Ha'il, Ha'il, Saudi Arabia.
Front Pharmacol. 2024 Mar 19;15:1342392. doi: 10.3389/fphar.2024.1342392. eCollection 2024.
The cytosolic Ser/Thr kinase TBK1 is of utmost importance in facilitating signals that facilitate tumor migration and growth. TBK1-related signaling plays important role in tumor progression, and there is need to work on new methods and workflows to identify new molecules for potential treatments for TBK1-affecting oncologies such as breast cancer. Here, we propose the machine learning assisted computational drug discovery approach to identify TBK1 inhibitors. Through our computational ML-integrated approach, we identified four novel inhibitors that could be used as new hit molecules for TBK1 inhibition. All these four molecules displayed solvent based free energy values of -48.78, -47.56, -46.78 and -45.47 Kcal/mol and glide docking score of -10.4, -9.84, -10.03, -10.06 Kcal/mol respectively. The molecules displayed highly stable RMSD plots, hydrogen bond patterns and MMPBSA score close to or higher than BX795 molecule. In future, all these compounds can be further refined or validated by as well as activity. Also, we have found two novel groups that have the potential to be utilized in a fragment-based design strategy for the discovery and development of novel inhibitors targeting TBK1. Our method for identifying small molecule inhibitors can be used to make fundamental advances in drug design methods for the TBK1 protein which will further help to reduce breast cancer incidence.
胞质溶胶丝氨酸/苏氨酸激酶TBK1在促进肿瘤迁移和生长的信号传导中至关重要。TBK1相关信号传导在肿瘤进展中起重要作用,因此需要研究新的方法和流程,以识别新分子,用于治疗受TBK1影响的肿瘤,如乳腺癌。在此,我们提出机器学习辅助的计算药物发现方法来识别TBK1抑制剂。通过我们的计算机器学习集成方法,我们鉴定出四种新型抑制剂,可作为抑制TBK1的新的先导分子。这四种分子的基于溶剂的自由能值分别为-48.78、-47.56、-46.78和-45.47千卡/摩尔,Glide对接分数分别为-10.4、-9.84、-10.03、-10.06千卡/摩尔。这些分子显示出高度稳定的均方根偏差图、氢键模式,并且分子力学/泊松-玻尔兹曼表面面积计算值接近或高于BX795分子。未来,所有这些化合物都可以通过进一步的实验以及活性进行优化或验证。此外,我们发现了两个新的基团,它们有可能用于基于片段的设计策略,以发现和开发针对TBK1的新型抑制剂。我们识别小分子抑制剂的方法可用于推动TBK1蛋白药物设计方法的根本进步,这将进一步有助于降低乳腺癌的发病率。