Department of Microbiology and Immunology, University of Michigan Medical School, Ann Arbor, Michigan, United States of America.
Department of Chemical Engineering, University of Michigan, Ann Arbor, Michigan, United States of America.
PLoS One. 2018 May 10;13(5):e0196322. doi: 10.1371/journal.pone.0196322. eCollection 2018.
Drug resistant tuberculosis is increasing world-wide. Resistance against isoniazid (INH), rifampicin (RIF), or both (multi-drug resistant TB, MDR-TB) is of particular concern, since INH and RIF form part of the standard regimen for TB disease. While it is known that suboptimal treatment can lead to resistance, it remains unclear how host immune responses and antibiotic dynamics within granulomas (sites of infection) affect emergence and selection of drug-resistant bacteria. We take a systems pharmacology approach to explore resistance dynamics within granulomas. We integrate spatio-temporal host immunity, INH and RIF dynamics, and bacterial dynamics (including fitness costs and compensatory mutations) in a computational framework. We simulate resistance emergence in the absence of treatment, as well as resistance selection during INH and/or RIF treatment. There are four main findings. First, in the absence of treatment, the percentage of granulomas containing resistant bacteria mirrors the non-monotonic bacterial dynamics within granulomas. Second, drug-resistant bacteria are less frequently found in non-replicating states in caseum, compared to drug-sensitive bacteria. Third, due to a steeper dose response curve and faster plasma clearance of INH compared to RIF, INH-resistant bacteria have a stronger influence on treatment outcomes than RIF-resistant bacteria. Finally, under combination therapy with INH and RIF, few MDR bacteria are able to significantly affect treatment outcomes. Overall, our approach allows drug-specific prediction of drug resistance emergence and selection in the complex granuloma context. Since our predictions are based on pre-clinical data, our approach can be implemented relatively early in the treatment development process, thereby enabling pro-active rather than reactive responses to emerging drug resistance for new drugs. Furthermore, this quantitative and drug-specific approach can help identify drug-specific properties that influence resistance and use this information to design treatment regimens that minimize resistance selection and expand the useful life-span of new antibiotics.
耐药性结核病在全球范围内呈上升趋势。异烟肼(INH)、利福平(RIF)或两者(耐多药结核病,MDR-TB)的耐药性尤其令人担忧,因为 INH 和 RIF 是结核病标准治疗方案的一部分。虽然已知治疗不当会导致耐药性,但仍不清楚宿主免疫反应和肉芽肿内抗生素动态(感染部位)如何影响耐药细菌的出现和选择。我们采用系统药理学方法来探索肉芽肿内的耐药动态。我们在计算框架中整合了时空宿主免疫、INH 和 RIF 动力学以及细菌动力学(包括适应性成本和补偿性突变)。我们模拟了在没有治疗的情况下耐药性的出现,以及在 INH 和/或 RIF 治疗期间耐药性的选择。主要有四个发现。首先,在没有治疗的情况下,含有耐药细菌的肉芽肿百分比反映了肉芽肿内非单调细菌动力学。其次,与敏感细菌相比,耐药细菌在干酪样物质中处于非复制状态的频率较低。第三,由于 INH 的剂量反应曲线较陡且血浆清除速度快于 RIF,与 RIF 耐药细菌相比,INH 耐药细菌对治疗结果的影响更强。最后,在 INH 和 RIF 联合治疗下,很少有 MDR 细菌能够显著影响治疗结果。总的来说,我们的方法允许在复杂的肉芽肿环境中针对特定药物预测耐药性的出现和选择。由于我们的预测基于临床前数据,因此可以在治疗开发过程的早期实施,从而使新药物能够对新出现的耐药性做出积极而不是被动的反应。此外,这种定量且针对特定药物的方法可以帮助确定影响耐药性的特定药物特性,并利用这些信息来设计治疗方案,最大限度地减少耐药性选择并延长新抗生素的有效寿命。