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Immune Response in the Study of Infectious Diseases (Co-Infection) in an Endemic Region.

机译:流行病地区的传染病(共感染)研究中的免疫应答。

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摘要

Diseases have been part of human life for generations and evolve within the population, sometimes dying out while other times becoming endemic or the cause of recurrent outbreaks. The long term influence of a disease stems from different dynamics within or between pathogen-host, that have been analyzed and studied by many researchers using mathematical models. Co-infection with different pathogens is common, yet little is known about how infection with one pathogen affects the host's immunological response to another. Moreover, no work has been found in the literature that considers the variability of the host immune health or that examines a disease at the population level and its corresponding interconnectedness with the host immune system.;Knowing that the spread of the disease in the population starts at the individual level, this thesis explores how variability in immune system response within an endemic environment affects an individual's vulnerability, and how prone it is to co-infections. Immunology-based models of Malaria and Tuberculosis (TB) are constructed by extending and modifying existing mathematical models in the literature. The two are then combined to give a single nine-variable model of co-infection with Malaria and TB. Because these models are difficult to gain any insight analytically due to the large number of parameters, a phenomenological model of co-infection is proposed with subsystems corresponding to the individual immunology-based model of a single infection. Within this phenomenological model, the variability of the host immune health is also incorporated through three different pathogen response curves using nonlinear bounded Michaelis-Menten functions that describe the level or state of immune system (healthy, moderate and severely compromised).;The immunology-based models of Malaria and TB give numerical results that agree with the biological observations. The Malaria-TB co-infection model gives reasonable results and these suggest that the order in which the two diseases are introduced have an impact on the behavior of both. The subsystems of the phenomenological models that correspond to a single infection (either of Malaria or TB) mimic much of the observed behavior of the immunology-based counterpart and can demonstrate different behavior depending on the chosen pathogen response curve. In addition, varying some of the parameters and initial conditions in the phenomenological model yields a range of topologically different mathematical behaviors, which suggests that this behavior may be able to be observed in the immunology-based models as well.;The phenomenological models clearly replicate the qualitative behavior of primary and secondary infection as well as co-infection. The mathematical solutions of the models correspond to the fundamental states described by immunologists: virgin state, immune state and tolerance state. The phenomenological model of co-infection also demonstrates a range of parameter values and initial conditions in which the introduction of a second disease causes both diseases to grow without bound even though those same parameters and initial conditions did not yield unbounded growth in the corresponding subsystems. This results applies to all three states of the host immune system. In terms of the immunology-based system, this would suggest the following: there may be parameter values and initial conditions in which a person can clear Malaria or TB (separately) from their system but in which the presence of both can result in the person dying of one of the diseases.;Finally, this thesis studies links between epidemiology (population level) and immunology in an effort to assess the impact of pathogen's spread within the population on the immune response of individuals. Models of Malaria and TB are proposed that incorporate the immune system of the host into a mathematical model of an epidemic at the population level.
机译:疾病已成为人类世代相传的一部分,并在人群中不断发展,有时会消亡,而在其他时候则成为地方病或反复发作​​的原因。疾病的长期影响源于病原体宿主内部或之间的不同动态,许多研究人员已使用数学模型进行了分析和研究。与不同病原体同时感染是很常见的,但对于一种病原体的感染如何影响宿主对另一种病原体的免疫反应知之甚少。此外,在文献中未发现考虑宿主免疫健康状况的变异性或在人群水平上检查疾病及其与宿主免疫系统的相互联系的工作。;知道该疾病开始在人群中传播在个体层面上,本文探讨了流行环境中免疫系统反应的可变性如何影响个体的脆弱性,以及其易受共感染的影响。通过扩展和修改文献中现有的数学模型,构建了基于免疫学的疟疾和结核病(TB)模型。然后将两者结合起来,得出与疟疾和结核病共感染的单个九变量模型。由于这些模型由于参数众多而难以在分析上获得任何见识,因此提出了共感染的现象学模型,其子系统对应于单个感染的基于单独免疫学的模型。在这种现象学模型中,宿主免疫健康的变异性还通过三种不同的病原体反应曲线并入了非线性有界Michaelis-Menten函数,这些函数描述了免疫系统的水平或状态(健康,中等和严重受损)。基于疟疾和结核病的模型得出的数值结果与生物学观察结果一致。疟疾-结核病合并感染模型给出了合理的结果,这表明两种疾病的引入顺序对两者的行为都有影响。对应于单个感染(疟疾或结核病)的现象学模型的子系统模仿了许多基于免疫学的对应物观察到的行为,并且可以根据所选的病原体反应曲线显示出不同的行为。此外,改变现象学模型中的某些参数和初始条件会产生一系列拓扑上不同的数学行为,这表明这种行为也可以在基于免疫学的模型中观察到。原发和继发感染以及共同感染的定性行为。模型的数学解对应于免疫学家描述的基本状态:原始状态,免疫状态和耐受状态。共同感染的现象学模型还证明了一系列参数值和初始条件,在这些参数值和初始条件中,即使相同的参数和初始条件未在相应子系统中产生无限增长,第二种疾病的引入也会导致两种疾病无限制地生长。该结果适用于宿主免疫系统的所有三种状态。就基于免疫学的系统而言,这将表明以下内容:可能存在参数值和初始条件,人们可以在这些参数值和初始条件下从系统中(单独)清除疟疾或结核病,但同时存在这两个参数会导致该人最后,本文研究了流行病学(种群水平)与免疫学之间的联系,以评估病原体在人群中的传播对个体免疫反应的影响。提出了疟疾和结核病模型,将宿主的免疫系统纳入人群水平的流行病数学模型。

著录项

  • 作者

    Soho, Edme L.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Applied mathematics.;Immunology.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 167 p.
  • 总页数 167
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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