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Large Scale Agent-Based Modeling of the Humoral and Cellular Immune Response

机译:基于大规模代理的体液和细胞免疫反应建模

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The Immune System is, together with Central Nervous System, one of the most important and complex unit of our organism. Despite great advances in recent years that shed light on its understanding and in the unraveling of key mechanisms behind its functions, there are still many areas of the Immune System that remain object of active research. The development of in-silico models, bridged with proper biological considerations, have recently improved the understanding of important complex systems [1,2]. In this paper, after introducing major role players and principal functions of the mammalian Immune System, we present two computational approaches to its modeling; i.e., two in-silico Immune Systems. (i) A large-scale model, with a complexity of representation of 10~6 - 10~8 cells (e.g., APC, T, B and Plasma cells) and molecules (e.g., immunocomplexes), is here presented, and its evolution in time is shown to be mimicking an important region of a real immune response. (ii) Additionally, a viral infection model, stochastic and light-weight, is here presented as well: its seamless design from biological considerations, its modularity and its fast simulation times are strength points when compared to (i). Finally we report, with the intent of moving towards the virtual lymph note, a cost-benefits comparison among Immune System models presented in this paper.
机译:免疫系统与中枢神经系统一起,是我们生物体中最重要和最复杂的单位之一。尽管近年来,近年来阐明了其理解和解开其职能背后的关键机制,但仍有许多免疫系统领域仍然存在积极研究。硅基模型的发展,桥接适当的生物考虑,最近改善了对重要复杂系统的理解[1,2]。在本文中,在引入哺乳动物免疫系统的主要作用扮演者和主要功能后,我们向其建模提供了两种计算方法;即,两种硅片免疫系统。 (i)大规模模型,其具有10〜6-10〜8个细胞(例如,APC,T,B和血浆细胞)和分子(例如免疫复合物)的复杂性,并呈现出来,及其进化随着时间的推移,旨在模仿真实免疫反应的重要地区。 (ii)此外,这里还提供了病毒感染模型,随机和轻量级:与生物考虑的无缝设计,其模块化和其快速模拟时间是(I)相比的强度点。最后,我们报告,随着朝向虚拟淋巴张音符的意图,本文提出的免疫系统模型中的成本优势比较。

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