Department of Pharmaceutical and Biological Chemistry, School of Pharmacy, University College London, London, UK.
Department of Exercise Physiology, College of Sport Sciences and Physical Activity, King Saud University, Riyadh 11451, Saudi Arabia.
Comput Biol Chem. 2024 Jun;110:108034. doi: 10.1016/j.compbiolchem.2024.108034. Epub 2024 Feb 20.
Tuberculosis (TB) is one of the life-threatening infectious diseases with prehistoric origins and occurs in almost all habitable parts of the world. TB mainly affects the lungs, and its etiological agent is Mycobacterium tuberculosis (Mtb). In 2022, more than 10 million people were infected worldwide, and 1.3 million were children. The current study considered the in-silico and machine learning (ML) approaches to explore the potential anti-TB molecules from the SelleckChem database against Enoyl-Acyl Carrier Protein Reductase (InhA). Initially, the entire database of ∼ 119000 molecules was sorted out through drug-likeness. Further, the molecular docking study was conducted to reduce the chemical space. The standard TB drug molecule's binding energy was considered a threshold, and molecules found with lower affinity were removed for further analyses. Finally, the molecules were checked for the pharmacokinetic and toxicity studies, and compounds found to have acceptable pharmacokinetic parameters and were non-toxic were considered as final promising molecules for InhA. The above approach further evaluated five molecules for ML-based toxicity and synthetic accessibility assessment. Not a single molecule was found toxic and each of them was revealed as easy to synthesise. The complex between InhA and proposed and standard molecules was considered for molecular dynamics simulation. Several statistical parameters showed the stability between InhA and the proposed molecule. The high binding affinity was also found for each of the molecules towards InhA using the MM-GBSA approach. Hence, the above approaches and findings exposed the potentiality of the proposed molecules against InhA.
结核病(TB)是一种具有史前起源的危及生命的传染病之一,几乎存在于世界上所有可居住的地方。结核病主要影响肺部,其病原体是结核分枝杆菌(Mtb)。2022 年,全球有超过 1000 万人感染,其中 130 万是儿童。本研究考虑了计算和机器学习(ML)方法,以从 SelleckChem 数据库中探索针对烯酰基辅酶 A 还原酶(InhA)的潜在抗结核分子。最初,通过药物相似性对整个约 119000 种分子的数据库进行了分类。此外,还进行了分子对接研究以缩小化学空间。标准 TB 药物分子的结合能被认为是一个阈值,亲和力较低的分子被去除以进行进一步分析。最后,对分子进行了药代动力学和毒性研究,发现具有可接受药代动力学参数且无毒的化合物被认为是 InhA 的最终有前途的分子。上述方法进一步对基于 ML 的毒性和合成可及性评估的五种分子进行了评估。没有发现一种分子有毒,而且它们都被证明易于合成。考虑了 InhA 与所提出的和标准分子之间的复合物进行分子动力学模拟。几个统计参数表明了 InhA 和所提出的分子之间的稳定性。使用 MM-GBSA 方法还发现了每个分子对 InhA 的高结合亲和力。因此,上述方法和发现揭示了所提出的分子对 InhA 的潜力。