Interdisciplinary Graduate Program in Quantitative Biosciences,Georgia Institute of Technology, Atlanta, Georgia, USA.
School of Biological Sciences, Georgia Institute of Technology, Atlanta, Georgia, USA.
mSystems. 2024 Oct 22;9(10):e0017124. doi: 10.1128/msystems.00171-24. Epub 2024 Sep 4.
Infections caused by multidrug resistant (MDR) pathogenic bacteria are a global health threat. Bacteriophages ("phage") are increasingly used as alternative or last-resort therapeutics to treat patients infected by MDR bacteria. However, the therapeutic outcomes of phage therapy may be limited by the emergence of phage resistance during treatment and/or by physical constraints that impede phage-bacteria interactions . In this work, we evaluate the role of lung spatial structure on the efficacy of phage therapy for infections. To do so, we developed a spatially structured metapopulation network model based on the geometry of the bronchial tree, including host innate immune responses and the emergence of phage-resistant bacterial mutants. We model the ecological interactions between bacteria, phage, and the host innate immune system at the airway (node) level. The model predicts the synergistic elimination of a infection due to the combined effects of phage and neutrophils, given the sufficient innate immune activity and efficient phage-induced lysis. The metapopulation model simulations also predict that MDR bacteria are cleared faster at distal nodes of the bronchial tree. Notably, image analysis of lung tissue time series from wild-type and lymphocyte-depleted mice revealed a concordant, statistically significant pattern: infection intensity cleared in the bottom before the top of the lungs. Overall, the combined use of simulations and image analysis of experiments further supports the use of phage therapy for treating acute lung infections caused by while highlighting potential limits to therapy in a spatially structured environment given impaired innate immune responses and/or inefficient phage-induced lysis.
Phage therapy is increasingly employed as a compassionate treatment for severe infections caused by multidrug-resistant (MDR) bacteria. However, the mixed outcomes observed in larger clinical studies highlight a gap in understanding when phage therapy succeeds or fails. Previous research from our team, using experiments and single-compartment mathematical models, demonstrated the synergistic clearance of acute pneumonia by phage and neutrophils despite the emergence of phage-resistant bacteria. In fact, the lung environment is highly structured, prompting the question of whether immunophage synergy explains the curative treatment of when incorporating realistic physical connectivity. To address this, we developed a metapopulation network model mimicking the lung branching structure to assess phage therapy efficacy for MDR pneumonia. The model predicts the synergistic elimination of by phage and neutrophils but emphasizes potential challenges in spatially structured environments, suggesting that higher innate immune levels may be required for successful bacterial clearance. Model simulations reveal a spatial pattern in pathogen clearance where are cleared faster at distal nodes of the bronchial tree than in primary nodes. Interestingly, image analysis of infected mice reveals a concordant and statistically significant pattern: infection intensity clears in the bottom before the top of the lungs. The combined use of modeling and image analysis supports the application of phage therapy for acute pneumonia while emphasizing potential challenges to curative success in spatially structured environments, including impaired innate immune responses and reduced phage efficacy.
由多药耐药(MDR)病原细菌引起的感染是全球健康威胁。噬菌体(“噬菌体”)越来越多地被用作治疗多药耐药细菌感染患者的替代或最后手段的疗法。然而,噬菌体治疗的治疗效果可能受到治疗过程中噬菌体耐药性的出现以及阻碍噬菌体-细菌相互作用的物理限制的限制。在这项工作中,我们评估了肺部空间结构对噬菌体治疗感染的疗效的作用。为此,我们基于支气管树的几何形状开发了一个具有空间结构的复发性网络模型,包括宿主先天免疫反应和噬菌体抗性细菌突变体的出现。我们在气道(节点)水平上模拟了细菌、噬菌体和宿主先天免疫系统之间的生态相互作用。该模型预测,由于噬菌体和中性粒细胞的协同作用,在足够的先天免疫活性和有效的噬菌体诱导裂解的情况下,可协同消除感染。复发性网络模型模拟还预测,MDR 细菌在支气管树的远端节点更快清除。值得注意的是,对野生型和淋巴细胞耗竭型小鼠的肺部组织时间序列的图像分析显示出一致的、具有统计学意义的模式:感染强度先从肺部底部清除,然后再从顶部清除。总体而言,模拟的结合和对实验的图像分析进一步支持了噬菌体治疗用于治疗由引起的急性肺部感染,同时强调了在先天免疫反应受损和/或噬菌体诱导裂解效率降低的情况下,在具有空间结构的环境中治疗的潜在局限性。
噬菌体治疗越来越多地被用作治疗多药耐药(MDR)细菌引起的严重感染的同情治疗方法。然而,更大规模临床研究中观察到的混合结果突出表明,当噬菌体治疗成功或失败时,存在理解上的差距。我们团队的先前研究使用实验和单室数学模型表明,尽管出现了噬菌体抗性细菌,但噬菌体和中性粒细胞的协同清除可迅速清除急性肺炎。事实上,肺部环境高度结构化,促使人们提出这样一个问题,即考虑到实际的物理连通性,免疫噬菌体协同作用是否可以解释对的治疗效果。为了解决这个问题,我们开发了一个复发性网络模型,模拟肺部分支结构,以评估噬菌体治疗 MDR 肺炎的疗效。该模型预测噬菌体和中性粒细胞可协同消除,但强调在具有空间结构的环境中可能存在潜在挑战,这表明更高的先天免疫水平可能是成功清除细菌所必需的。模型模拟显示出病原体清除的空间模式,即在支气管树的远端节点比在主要节点更快清除。有趣的是,对感染小鼠的图像分析显示出一致且具有统计学意义的模式:在肺部顶部之前,感染强度先从底部清除。模型和图像分析的结合支持将噬菌体治疗用于急性肺炎,但强调了在具有空间结构的环境中治愈成功的潜在挑战,包括先天免疫反应受损和噬菌体功效降低。