A comprehensive computational study to explore promising natural bioactive compounds targeting glycosyltransferase MurG in Escherichia coli for potential drug development

大肠杆菌 对接(动物) 肽聚糖 虚拟筛选 生物 生物化学 糖基转移酶 药品 体内 药物设计 药物发现 计算生物学 化学 药理学 基因 医学 遗传学 护理部
作者
Amneh Shtaiwi,Shafi Ullah Khan,Meriem Khedraoui,Mohd Alaraj,Abdelouahid Samadi,Samir Chtita
出处
期刊:Scientific Reports [Nature Portfolio]
卷期号:14 (1): 7098-7098 被引量:11
标识
DOI:10.1038/s41598-024-57702-x
摘要

Abstract Peptidoglycan is a carbohydrate with a cross-linked structure that protects the cytoplasmic membrane of bacterial cells from damage. The mechanism of peptidoglycan biosynthesis involves the main synthesizing enzyme glycosyltransferase MurG, which is known as a potential target for antibiotic therapy. Many MurG inhibitors have been recognized as MurG targets, but high toxicity and drug-resistant Escherichia coli strains remain the most important problems for further development. In addition, the discovery of selective MurG inhibitors has been limited to the synthesis of peptidoglycan-mimicking compounds. The present study employed drug discovery, such as virtual screening using molecular docking, drug likeness ADMET proprieties predictions, and molecular dynamics (MD) simulation, to identify potential natural products (NPs) for Escherichia coli . We conducted a screening of 30,926 NPs from the NPASS database. Subsequently, 20 of these compounds successfully passed the potency, pharmacokinetic, ADMET screening assays, and their validation was further confirmed through molecular docking. The best three hits and the standard were chosen for further MD simulations up to 400 ns and energy calculations to investigate the stability of the NPs-MurG complexes. The analyses of MD simulations and total binding energies suggested the higher stability of NPC272174. The potential compounds can be further explored in vivo and in vitro for promising novel antibacterial drug discovery.
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