靶向细菌RNA聚合酶:利用模拟和机器学习设计耐药病原体抑制剂。

IF 2.9 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Biochemistry Biochemistry Pub Date : 2025-03-18 Epub Date: 2025-02-27 DOI:10.1021/acs.biochem.4c00751
Eshani C Goonetilleke, Xuhui Huang
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引用次数: 0

摘要

抗菌素耐药性的增加对治疗细菌感染提出了重大挑战,强调了创新药物发现方法和新型抑制剂的必要性。细菌RNA聚合酶(RNAP)由于其在转录中的重要作用而成为抗生素开发的重要靶点。RNAP是一种分子马达,其功能在很大程度上依赖于多种构象状态之间的动态转换。虽然生化和结构实验方法提供了对静态rnap -药物相互作用的重要见解,但它们在分子水平上捕捉动力学方面存在不足。通过将实验数据与先进的计算技术(如马尔可夫状态模型(mms)、广义主方程(GME)模型和其他由分子动力学(MD)模拟构建的机器学习模型)相结合,研究人员可以阐明为抗生素化合物短暂打开的新型隐口袋,并获得对rnap -药物相互作用的更细致和全面的理解。这种综合方法不仅加深了我们的基础知识,而且使更有针对性和有效的抗生素设计策略成为可能。在这个观点中,我们强调了实验和计算方法之间的协同作用如何有潜力为创新药物设计和联合治疗开辟新的途径,这可能有助于扭转正在进行的对抗抗生素耐药细菌的战斗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Targeting Bacterial RNA Polymerase: Harnessing Simulations and Machine Learning to Design Inhibitors for Drug-Resistant Pathogens.

The increase in antimicrobial resistance presents a major challenge in treating bacterial infections, underscoring the need for innovative drug discovery approaches and novel inhibitors. Bacterial RNA polymerase (RNAP) has emerged as a crucial target for antibiotic development due to its essential role in transcription. RNAP is a molecular motor, and its function relies heavily on the dynamic shifts between multiple conformational states. While biochemical and structural experimental methods offer crucial insights into static RNAP-drug interactions, they fall short in capturing the dynamics at a molecular level. By integrating experimental data with advanced computational techniques like Markov State Models (MSMs), Generalized Master Equation (GME) Models and other machine-learning models constructed from molecular dynamics (MD) simulations, researchers can elucidate novel cryptic pockets that open transiently for antibiotic compounds and gain a more nuanced and comprehensive understanding of RNAP-drug interactions. This integrated approach not only deepens our fundamental knowledge but also enables more targeted and efficient antibiotic design strategies. In this Perspective, we highlight how this synergy between experimental and computational methods has the potential to open new pathways for innovative drug design and combination therapies that may help turn the tide in the ongoing battle against antibiotic-resistant bacteria.

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来源期刊
Biochemistry Biochemistry
Biochemistry Biochemistry 生物-生化与分子生物学
CiteScore
5.50
自引率
3.40%
发文量
336
审稿时长
1-2 weeks
期刊介绍: Biochemistry provides an international forum for publishing exceptional, rigorous, high-impact research across all of biological chemistry. This broad scope includes studies on the chemical, physical, mechanistic, and/or structural basis of biological or cell function, and encompasses the fields of chemical biology, synthetic biology, disease biology, cell biology, nucleic acid biology, neuroscience, structural biology, and biophysics. In addition to traditional Research Articles, Biochemistry also publishes Communications, Viewpoints, and Perspectives, as well as From the Bench articles that report new methods of particular interest to the biological chemistry community.
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