Ishfaq Muhammad, Rahman Ziaur, Aamir Muhammad, Ali Ihsan, Guan Yurong, Hu Zhihua
College of Computer Science, Huanggang Normal University, Huanggang, 438000, China.
University of Agriculture Peshawar, Peshawar, 25130, Khyber Pakhtunkhwa, Pakistan.
Mol Divers. 2023 Feb;27(1):371-387. doi: 10.1007/s11030-022-10433-5. Epub 2022 Apr 29.
Mycoplasma pneumoniae (MP) is one of the most common pathogens that causes acute respiratory tract infections. Children experiencing MP infection often suffer severe complications, lung injury, and even death. Previous studies have demonstrated that Toll-like receptor 2 (TLR2) is a potential therapeutic target for treating the MP-induced inflammatory response. However, the screening of natural compounds has received more attention for the treatment of bacterial infections to reduce the likelihood of bacterial resistance. Herein, we screened compounds by combining molecular docking and machine learning approaches to find potential lead compounds for treating MP infection. First, all compounds were docked with the TLR2 receptor protein to screen for potential candidates. To predict drug bioactivity, a machine learning model (random forest) was trained for TLR2 inhibitors to obtain the predictive model. The model achieved significant squared correlation coefficient (R) values for the training set (0.85) and validation set (0.84) of compounds. The developed machine learning model was then used to predict the pIC50 values of the top 50 candidates from the Traditional Chinese compounds and Discovery Diversity sets of compounds. As a result, these compounds are capable of inhibiting the inflammatory response induced by MP. However, prior to bringing these compounds to market, it is necessary to verify these results with additional biological testing, including preclinical and clinical studies. Moreover, the present study provides a theoretical basis for the use of natural compounds as potential candidates to treat pneumonia caused by MP.
肺炎支原体(MP)是引起急性呼吸道感染最常见的病原体之一。感染MP的儿童常遭受严重并发症、肺损伤甚至死亡。先前的研究表明,Toll样受体2(TLR2)是治疗MP诱导的炎症反应的潜在治疗靶点。然而,天然化合物的筛选在治疗细菌感染以降低细菌耐药可能性方面受到了更多关注。在此,我们通过结合分子对接和机器学习方法筛选化合物,以寻找治疗MP感染的潜在先导化合物。首先,将所有化合物与TLR2受体蛋白进行对接,以筛选潜在候选物。为了预测药物生物活性,针对TLR2抑制剂训练了一个机器学习模型(随机森林)以获得预测模型。该模型在化合物训练集(0.85)和验证集(0.84)上获得了显著的平方相关系数(R)值。然后,使用开发的机器学习模型预测来自中药化合物集和发现多样性化合物集的前50种候选物的半数抑制浓度负对数(pIC50)值。结果,这些化合物能够抑制MP诱导的炎症反应。然而,在将这些化合物推向市场之前,有必要通过包括临床前和临床研究在内的额外生物学测试来验证这些结果。此外,本研究为使用天然化合物作为治疗MP引起的肺炎的潜在候选物提供了理论依据。