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Fuzzy Continuous Petri Net-Based Approach for Modeling Helper T Cell Differentiation

机译:基于辅助T细胞分化的模糊连续培养基础净方法

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Helper T(Th) cells regulate immune response by producing various kinds of cytokines in response to antigen stimulation. The regulatory functions of Th cells are promoted by their differentiation into two distinct subsets, Th1 and Th2 cells. Th1 cells are involved in inducing cellular immune response by activating cytotoxic T cells. Th2 cells trigger B cells to produce antibodies, protective proteins used by the immune system to identify and neutralize foreign substances. Because cellular and humoral immune responses have quite different roles in protecting the host from foreign substances, Th cell differentiation is a crucial event in the immune response. The destiny of a naive Th cell is mainly controlled by cytokines such as IL-4, IL-12, and IFN-γ.To understand the mechanism of Th cell differentiation, many mathematical models have been proposed. One of the most difficult problems in mathematical modeling is to find appropriate kinetic parameters needed to complete a model. However, it is relatively easy to get qualitative or linguistic knowledge of a model dynamics. To incorporate such knowledge into a model, we propose a novel approach, fuzzy continuous Petri nets extending traditional continuous Petri net by adding new types of places and transitions called fuzzy places and fuzzy transitions. This extension makes it possible to perform fuzzy inference with fuzzy places and fuzzy transitions acting as kinetic parameters and fuzzy inference systems between input and output places, respectively.
机译:辅助T(Th)细胞通过响应于抗原刺激产生各种细胞因子来调节免疫应答。通过分化成两个不同的子集,TH1和TH2细胞,将细胞的调节功能促进。通过激活细胞毒性T细胞涉及诱导细胞免疫应答的Th1细胞。 Th2细胞触发B细胞产生抗体,免疫系统使用的保护蛋白鉴定和中和异物。由于细胞和体液免疫应答具有相当不同的作用在保护宿主免受异物中,但细胞分化是免疫应答中的至关重要事件。幼稚细胞的命运主要由细胞因子控制,例如IL-4,IL-12和IFN-γ。要了解Th细胞分化的机制,已经提出了许多数学模型。数学建模中最困难的问题之一是找到完成模型所需的适当动力学参数。但是,获得模型动态的定性或语言知识相对容易。为了将这些知识纳入模型中,我们提出了一种新颖的方法,模糊连续培养网通过添加新型的地点和转型,称为模糊地点和模糊过渡的过渡,延伸了传统的连续培养网。该扩展可以分别对模糊的地方进行模糊推断,并分别在输入和输出位之间作用为动力学参数和模糊推理系统的模糊推断。

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