Rapid, accurate, and reproducible de novo prediction of resistance to antituberculars.

IF 3.1 2区 生物学 Q2 MICROBIOLOGY
mSphere Pub Date : 2025-09-22 DOI:10.1128/msphere.00571-25
Xibei Zhang, Shunzhou Wan, Agastya P Bhati, Philip W Fowler, Peter V Coveney
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引用次数: 0

Abstract

As one of the deadliest infectious diseases in the world, tuberculosis is responsible for millions of new cases and deaths reported annually. The rise of drug-resistant tuberculosis, particularly resistance to first-line treatments like rifampicin, presents a critical challenge for global health, which complicates the treatment strategies and calls for effective diagnostic and predictive tools. In this study, we apply an ensemble-based molecular dynamics computer simulation method, TIES_PM, to estimate the binding affinity through free energy calculations and predict rifampicin resistance in RNA polymerase. By analyzing 61 mutations, including those in the rifampicin resistance-determining region, TIES_PM produces reliable results in good agreement with clinical reference and identifies abnormal data points indicating alternative mechanisms of resistance. In the future, TIES_PM is capable of identifying and selecting leads with a lower risk of resistance evolution and, for smaller proteins, it may systematically predict antibiotic resistance by analyzing all possible codon permutations. Moreover, its flexibility allows for extending predictions to other first-line drugs and drug-resistant diseases. TIES_PM provides a rapid, accurate, low-cost, and scalable supplement to current diagnostic pipelines, particularly for drug resistance screening in both research and clinical domains.IMPORTANCEAntimicrobial resistance (AMR), a global threat, challenges early diagnosis and treatment of tuberculosis (TB). This study employs TIES_PM, a free-energy calculation method, to efficiently predict AMR by quantifying how mutations in bacterial RNA polymerase (RNAP) affect rifampicin (RIF) binding. On simulating 61 clinically observed mutations, the results align with WHO classifications and reveal ambiguous cases, suggesting alternative resistance mechanisms. Each mutation requires ~5 h, offering rapid, cost-effective predictions. An ensemble approach ensures statistical robustness. TIES_PM can be extended to smaller proteins for systematic codon permutation analysis, enabling comprehensive antibiotic resistance prediction, or adapted to identify low-resistance-risk drug leads. It also applies to other TB drugs and resistant pathogens, supporting personalized therapy and global AMR surveillance. This work provides novel tools to refine resistance mutation databases and phenotypic classification standards, enhancing early diagnosis while advancing translational research and infectious disease control.

快速、准确和可重复的抗结核药物耐药性从头预测。
作为世界上最致命的传染病之一,结核病每年造成数百万新发病例和死亡。耐药结核病的增加,特别是对利福平等一线治疗的耐药性的增加,对全球卫生构成了重大挑战,使治疗战略复杂化,需要有效的诊断和预测工具。在本研究中,我们采用基于集合的分子动力学计算机模拟方法TIES_PM,通过自由能计算估算结合亲和力,并预测RNA聚合酶对利福平的耐药性。通过分析61个突变,包括利福平耐药决定区突变,TIES_PM得出了与临床参考一致的可靠结果,并识别了提示其他耐药机制的异常数据点。在未来,TIES_PM能够识别和选择具有较低抗性进化风险的引线,并且对于较小的蛋白质,它可以通过分析所有可能的密码子排列来系统地预测抗生素耐药性。此外,它的灵活性允许将预测扩展到其他一线药物和耐药疾病。TIES_PM为目前的诊断管道提供了快速、准确、低成本和可扩展的补充,特别是在研究和临床领域的耐药性筛查。抗微生物药物耐药性(AMR)是一种全球性威胁,对结核病的早期诊断和治疗构成挑战。本研究采用自由能计算方法TIES_PM量化细菌RNA聚合酶(RNAP)突变对利福平(RIF)结合的影响,从而有效预测AMR。在模拟61个临床观察到的突变时,结果与世卫组织的分类一致,并揭示了不明确的病例,提示了其他耐药机制。每个突变大约需要5小时,提供快速、经济有效的预测。集成方法确保了统计稳健性。TIES_PM可以扩展到更小的蛋白质,用于系统的密码子排列分析,从而实现全面的抗生素耐药性预测,或者适应于识别低耐药风险的药物先导。它也适用于其他结核病药物和耐药病原体,支持个性化治疗和全球抗菌素耐药性监测。这项工作为完善耐药突变数据库和表型分类标准提供了新的工具,增强了早期诊断,同时推进了转化研究和传染病控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
mSphere
mSphere Immunology and Microbiology-Microbiology
CiteScore
8.50
自引率
2.10%
发文量
192
审稿时长
11 weeks
期刊介绍: mSphere™ is a multi-disciplinary open-access journal that will focus on rapid publication of fundamental contributions to our understanding of microbiology. Its scope will reflect the immense range of fields within the microbial sciences, creating new opportunities for researchers to share findings that are transforming our understanding of human health and disease, ecosystems, neuroscience, agriculture, energy production, climate change, evolution, biogeochemical cycling, and food and drug production. Submissions will be encouraged of all high-quality work that makes fundamental contributions to our understanding of microbiology. mSphere™ will provide streamlined decisions, while carrying on ASM''s tradition for rigorous peer review.
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