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A systems chemical biology approach to identify targets of antibacterial agents: A case study of Chelerythrine and Rhein

机译:一种系统化学生物学方法来鉴定抗菌剂的靶标:以白屈菜红碱和大黄酸为例

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Mycobacterium tuberculosis (MTB) and Staphylococcus aureus (STA) are very common and complicated diseases that infect both humans and animals. The emergence of multidrug-resistant bacterium represents an urgent need to identify new drug targets and therapeutic drugs. In this study, we propose a systems chemical biology method to identify targets of anti-bacterial agents. This method integrates gene expression profiles of MTB upon chemical treatment and prior knowledge of protein-protein interactions (PPI) to predict antibacterial targets. We first validate the method by examining the targets of two approved anti-MTB drugs. Then, we predict the targets for Chelerythrine and Rhein, an anti-MTB natural product extracted from Chelidonium majus and a natural anti-bacterial agent for STA respectively. The identified targets are further evaluated visually by molecular docking and molecular dynamics simulation. The results show that our method is applicable for predicting the potential targets of anti-bacterial agents and has stable performance among multiple datasets across different species. Our strategy is expected to be used in target identification for other antibacterial.
机译:结核分枝杆菌(MTB)和金黄色葡萄球菌(STA)是感染人类和动物的非常常见和复杂的疾病。耐多药细菌的出现代表了鉴定新药物靶标和治疗药物的迫切需要。在这项研究中,我们提出了一种系统化学生物学方法来鉴定抗细菌剂的目标。该方法整合了经过化学处理的MTB的基因表达谱和蛋白质-蛋白质相互作用(PPI)的先验知识,以预测抗菌目标。我们首先通过检查两种已批准的抗MTB药物的目标来验证该方法。然后,我们预测了Chelerythrine和Rhein的靶标,它们分别是从Chelidonium majus提取的抗MTB天然产物和STA的天然抗菌剂。通过分子对接和分子动力学模拟,进一步目视评估鉴定出的目标。结果表明,我们的方法适用于预测抗菌剂的潜在目标,并且在不同物种的多个数据集中具有稳定的性能。我们的策略有望用于其他抗菌素的目标识别。

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