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A Multi-Compartment Hybrid Computational Model Predicts Key Roles for Dendritic Cells in Tuberculosis Infection

机译:多室混合计算模型预测树突状细胞在结核感染中的关键作用

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Tuberculosis (TB) is a world-wide health problem with approximately 2 billion people infected with Mycobacterium tuberculosis (Mtb, the causative bacterium of TB). The pathologic hallmark of Mtb infection in humans and Non-Human Primates (NHPs) is the formation of spherical structures, primarily in lungs, called granulomas. Infection occurs after inhalation of bacteria into lungs, where resident antigen-presenting cells (APCs), take up bacteria and initiate the immune response to Mtb infection. APCs traffic from the site of infection (lung) to lung-draining lymph nodes (LNs) where they prime T cells to recognize Mtb . These T cells, circulating back through blood, migrate back to lungs to perform their immune effector functions. We have previously developed a hybrid agent-based model (ABM, labeled GranSim ) describing in silico immune cell, bacterial (Mtb) and molecular behaviors during tuberculosis infection and recently linked that model to operate across three physiological compartments: lung (infection site where granulomas form), lung draining lymph node (LN, site of generation of adaptive immunity) and blood (a measurable compartment). Granuloma formation and function is captured by a spatio-temporal model (i.e., ABM), while LN and blood compartments represent temporal dynamics of the whole body in response to infection and are captured with ordinary differential equations (ODEs). In order to have a more mechanistic representation of APC trafficking from the lung to the lymph node, and to better capture antigen presentation in a draining LN, this current study incorporates the role of dendritic cells (DCs) in a computational fashion into GranSim . Results : The model was calibrated using experimental data from the lungs and blood of NHPs. The addition of DCs allowed us to investigate in greater detail mechanisms of recruitment, trafficking and antigen presentation and their role in tuberculosis infection. Conclusion : The main conclusion of this study is that early events after Mtb infection are critical to establishing a timely and effective response. Manipulating CD8+ and CD4+ T cell proliferation rates, as well as DC migration early on during infection can determine the difference between bacterial clearance vs. uncontrolled bacterial growth and dissemination.
机译:结核病(TB)是一个全球性的健康问题,大约有20亿人感染了结核分枝杆菌(结核分枝杆菌)。人类和非人类灵长类动物(NHP)感染Mtb的病理特征是球形结构的形成,主要在肺中,称为肉芽肿。在将细菌吸入肺部后,即会发生感染,在肺中驻留的抗原呈递细胞(APC)吸收细菌并启动对Mtb感染的免疫反应。 APC从感染部位(肺)流向引流T细胞以识别Mtb的肺引流淋巴结(LN)。这些T细胞在血液中循环回去,然后迁移回肺部以发挥其免疫效应功能。我们之前已经开发了一种基于杂合剂的模型(ABM,标记为GranSim),用于描述结核感染期间的计算机免疫细胞,细菌(Mtb)和分子行为,并且最近将该模型链接为可在三个生理区室中运行:肺(肉芽肿的感染部位)形式),肺引流淋巴结(LN,产生适应性免疫的部位)和血液(可测量的隔室)。肉芽肿的形成和功能是由时空模型(即ABM)捕获的,而LN和血液隔室则代表了响应感染后整个身体的时间动态,并由常微分方程(ODE)捕获。为了更准确地表示APC从肺向淋巴结运输的机制,并更好地捕获引流LN中的抗原呈递,本项研究以计算方式将树突状细胞(DC)的作用纳入了GranSim中。结果:使用来自NHPs的肺和血液的实验数据对模型进行了校准。 DC的加入使我们能够更详细地研究募集,运输和抗原呈递的机制及其在结核感染中的作用。结论:这项研究的主要结论是,Mtb感染后的早期事件对于建立及时有效的反应至关重要。操纵CD8 +和CD4 + T细胞的增殖速率,以及在感染过程中尽早进行DC迁移,可以确定细菌清除率与不受控制的细菌生长和传播之间的差异。

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