Khan Arshiya, Bhrdwaj Anushka, Sharma Khushboo, Arugonda Ravali, Kaur Navpreet, Chaudhary Rinku, Shaheen Uzma, Panwar Umesh, Natchimuthu V, Kumar Abhishek, Dey Taniya, Panicker Aravind, Prajapati Leena, Shainy Nhattuketty Krishnan, Sahila Muhammed Marunnan, Junior Francisco Jaime Bezerra Mendonça, Hussain Tajamul, Alrokayan Salman, Nayarisseri Anuraj
In silico Research Laboratory, Eminent Biosciences, 91, Sector-A, Mahalakshmi Nagar, Indore - 452010, Madhya Pradesh, India.
Bioinformatics Research Laboratory, LeGene Biosciences Pvt Ltd, 91, Sector-A, Mahalakshmi Nagar, Indore - 452010, Madhya Pradesh, India.
Med Chem. 2025 Jun 3. doi: 10.2174/0115734064370188250527043536.
The advent of Severe Acute Respiratory Syndrome coronavirus 2 (SARS-CoV-2), the etiological agent of the Coronavirus Disease 2019 (COVID-19) pandemic, has impacted physical and mental health worldwide. The lack of effective antiviral drugs necessitates a robust therapeutic approach to develop anti-SARS-CoV-2 drugs. Various investigations have recognized ACE2 as the primary receptor of SARS-CoV-2, and this amalgamation of ACE2 with the spike protein of the coronavirus is paramount for viral entry into the host cells and inducing infection. Consequently, restricting the virus's accessibility to ACE2 offers an alternative therapeutic approach to averting this illness.
The study aimed to identify potent inhibitors with enhanced affinity for the ACE2 protein and validate their stability and efficacy against established inhibitors via molecular docking, machine learning, and MD simulations.
202 ACE2 inhibitors (PDB ID and 6LZG), comprising repurposed antiviral compounds and specific ACE2 inhibitors, were selected for molecular docking. The two most effective compounds obtained from docking were further analyzed using machine learning to identify potential compounds with enhanced ACE2-binding affinity. To refine the dataset, molecular decoys were generated through the Database of Useful Decoys: Enhanced (DUD-E) server, and Singular Value Decomposition (SVD) was applied for data preprocessing. The Tree-based Pipeline Optimization Tool (TPOT) was then utilized to optimize the machine learning pipeline. The most promising ML-predicted compounds were re-evaluated through docking and subjected to Molecular Dynamics (MD) simulations to evaluate their structural stability and interactions with ACE2. Finally, these compounds were evaluated against the top two pre-established inhibitors using various computational tools.
The two best pre-established inhibitors were identified as Birinapant and Elbasvir, while the best machine-learning-predicted compounds were PubChem ID: 23658468 and PubChem ID: 117637105. Pharmacophore studies were conducted on the most effective machine-learning-predicted compounds, followed by a comparative ADME/T analysis between the best ML-screened and pre-established inhibitors. The results indicated that the top ML compound (PubChem ID: 23658468) demonstrated favorable BBB permeability and a high HIA index, highlighting its potential for therapeutic applications. The ML-screened ligand demonstrated structural stability with an RMSD (0.24 nm) and greater global stability (Rg: 2.08 nm) than Birinapant. Hydrogen bonding interactions further validated their strong binding affinity. MM/PBSA analysis confirmed the ML-screened compound's stronger binding affinity, with a binding free energy of - 132.90 kcal/mol, indicating enhanced stability in complex formation.
The results emphasize the efficacy of integrating molecular docking, machine learning, and molecular dynamics simulations in facilitating the rapid identification of novel inhibitors. PubChem ID: 23658468 demonstrates robust binding affinity to ACE2 and favorable pharmacokinetic properties, establishing it as a promising candidate for further investigation.
2019冠状病毒病(COVID-19)大流行的病原体严重急性呼吸综合征冠状病毒2(SARS-CoV-2)的出现,对全球身心健康产生了影响。由于缺乏有效的抗病毒药物,因此需要一种强有力的治疗方法来开发抗SARS-CoV-2药物。各种研究已将血管紧张素转换酶2(ACE2)识别为SARS-CoV-2的主要受体,并且ACE2与冠状病毒刺突蛋白的这种结合对于病毒进入宿主细胞并引发感染至关重要。因此,限制病毒与ACE2的接触提供了一种预防这种疾病的替代治疗方法。
本研究旨在鉴定对ACE2蛋白具有更高亲和力的强效抑制剂,并通过分子对接、机器学习和分子动力学模拟验证其相对于已确立的抑制剂的稳定性和有效性。
选择202种ACE2抑制剂(PDB ID为6LZG),包括重新利用的抗病毒化合物和特定的ACE2抑制剂,进行分子对接。对接得到的两种最有效的化合物通过机器学习进一步分析,以鉴定具有增强的ACE2结合亲和力的潜在化合物。为了优化数据集,通过有用诱饵数据库增强版(DUD-E)服务器生成分子诱饵,并应用奇异值分解(SVD)进行数据预处理。然后利用基于树的管道优化工具(TPOT)优化机器学习管道。通过对接对最有前景的机器学习预测化合物进行重新评估,并进行分子动力学(MD)模拟,以评估其结构稳定性以及与ACE2的相互作用。最后,使用各种计算工具针对两种预先确立的顶级抑制剂对这些化合物进行评估。
两种最佳的预先确立的抑制剂被鉴定为比瑞那潘和艾尔巴韦,而最佳的机器学习预测化合物为PubChem ID:23658468和PubChem ID:117637105。对最有效的机器学习预测化合物进行了药效团研究,随后对最佳机器学习筛选的抑制剂和预先确立的抑制剂进行了比较ADME/T分析。结果表明,顶级机器学习化合物(PubChem ID:23658468)表现出良好的血脑屏障通透性和高HIA指数,突出了其治疗应用潜力。机器学习筛选的配体表现出结构稳定性,其均方根偏差(RMSD,0.24 nm)和比瑞那潘更高的全局稳定性(Rg:2.08 nm)。氢键相互作用进一步验证了它们的强结合亲和力。MM/PBSA分析证实了机器学习筛选化合物具有更强的结合亲和力,结合自由能为-132.90 kcal/mol,表明在复合物形成中稳定性增强。
结果强调了整合分子对接、机器学习和分子动力学模拟在促进快速鉴定新型抑制剂方面的有效性。PubChem ID:23658468对ACE2表现出强大的结合亲和力和良好的药代动力学性质,使其成为进一步研究的有希望的候选者。