Stochastic stage-structured modeling of the adaptive immune system.

Dennis L Chao, Miles P Davenport, Stephanie Forrest, Alan S Perelson
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Abstract

We have constructed a computer model of the cytotoxic T lymphocyte (CTL) response to antigen and the maintenance of immunological memory. Because immune responses often begin with small numbers of cells and there is great variation among individual immune systems, we have chosen to implement a stochastic model that captures the life cycle of T cells more faithfully than deterministic models. Past models of the immune response have been differential equation based, which do not capture stochastic effects, or agent-based, which are computationally expensive. We use a stochastic stage-structured approach that has many of the advantages of agent-based modeling but is much more efficient. Our model can provide insights into the effect infections have on the CTL repertoire and the response to subsequent infections.

适应性免疫系统的随机阶段结构模型。
我们建立了细胞毒性T淋巴细胞(CTL)对抗原反应和免疫记忆维持的计算机模型。由于免疫反应通常从少量细胞开始,并且个体免疫系统之间存在很大差异,因此我们选择实现一个随机模型,该模型比确定性模型更忠实地捕获T细胞的生命周期。过去的免疫反应模型是基于微分方程的,它不能捕捉随机效应,或者是基于agent的,这在计算上很昂贵。我们使用随机阶段结构方法,该方法具有基于智能体的建模的许多优点,但效率更高。我们的模型可以深入了解感染对CTL库的影响以及对后续感染的反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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