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首页> 外文期刊>Frontiers in Microbiology >Strategic Priming with Multiple Antigens can Yield Memory Cell Phenotypes Optimized for Infection with Mycobacterium tuberculosis: A Computational Study
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Strategic Priming with Multiple Antigens can Yield Memory Cell Phenotypes Optimized for Infection with Mycobacterium tuberculosis: A Computational Study

机译:具有多种抗原的战略灌注可以产生用于感染的记忆细胞表型,用于感染<斜斜肌结核分枝杆菌和斜体>:计算研究

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Lack of an effective vaccine results in 9 million new cases of tuberculosis (TB) every year and 1.8 million deaths worldwide. Although many infants are vaccinated at birth with BCG (an attenuated M. bovis ), this does not prevent infection or development of TB after childhood. Immune responses necessary for prevention of infection or disease are still unknown, making development of effective vaccines against TB challenging. Several new vaccines are ready for human clinical trials, but these trials are difficult and expensive; especially challenging is determining the appropriate cellular response necessary for protection. The magnitude of an immune response is likely key to generating a successful vaccine. Characteristics such as numbers of central memory (CM) and effector memory (EM) T cells responsive to a diverse set of epitopes are also correlated with protection. Promising vaccines against TB contain mycobacterial subunit antigens (Ag) present during both active and latent infection. We hypothesize that protection against different key immunodominant antigens could require a vaccine that produces different levels of EM and CM for each Ag-specific memory population. We created a computational model to explore EM and CM values, and their ratio, within what we term Memory Design Space. Our model captures events involved in T cell priming within lymph nodes and tracks their circulation through blood to peripheral tissues. We used the model to test whether multiple Ag-specific memory cell populations could be generated with distinct locations within Memory Design Space at a specific time point post vaccination. Boosting can further shift memory populations to memory cell ratios unreachable by initial priming events. By strategically varying antigen load, properties of cellular interactions within the LN, and delivery parameters (e.g., number of boosts) of multi-subunit vaccines, we can generate multiple Ag-specific memory populations that cover a wide range of Memory Design Space. Given a set of desired characteristics for Ag-specific memory populations, we can use our model as a tool to predict vaccine formulations that will generate those populations.
机译:缺乏有效的疫苗,每年患有900万结核病(TB)和全世界180万人死亡。虽然许多婴儿在出生时接种了BCG(衰减的M. Bovis),但这并不预防儿童后结核病感染或发育。预防感染或疾病所需的免疫应答仍然是未知的,使得有效疫苗的开发,免受TB挑战性的影响。几种新疫苗已准备好进行人体临床试验,但这些试验难以昂贵;特别具有挑战性正在确定保护所需的适当细胞响应。免疫反应的大小可能是产生成功疫苗的关键。诸如中央存储器(CM)和响应于各种表位的效应存储器(EM)T细胞的特性也与保护也相关。对TB的承诺疫苗含有在活性和潜在感染期间存在的分枝杆菌亚基抗原(AG)。我们假设对不同关键的免疫抗原的保护可能需要产生不同水平的疫苗和每个AG特异性记忆群。我们创建了一个计算模型来探索EM和CM值,以及它们在我们术语记忆设计空间内的比率。我们的模型捕获淋巴结内T细胞灌注中涉及的事件,并通过血液向外周组织进行循环。我们使用模型来测试是否可以在特定时间点接种疫苗接种的特定时间点在存储器设计空间内的不同位置生成多个专用内存单元填充。升压可以进一步将内存群体移至通过初始引发事件无法访问的存储器单元比。通过战略性地改变抗原载荷,LN内的蜂窝间相互作用的性质,以及多亚基疫苗的递送参数(例如,升压数量),我们可以生成多种特定的内存群,涵盖各种内存设计空间。给定针对专用内存群体的一组所需特征,我们可以使用我们的模型作为预测将产生这些人群的疫苗配方的工具。

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