利用基于agent的模型分析免疫应答的动态通信网络。

Q1 Mathematics
Virginia A Folcik, Gordon Broderick, Shunmugam Mohan, Brian Block, Chirantan Ekbote, John Doolittle, Marc Khoury, Luke Davis, Clay B Marsh
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引用次数: 69

摘要

背景:免疫系统的行为就像一个复杂的、动态的网络,相互作用的元素包括白细胞、细胞因子和趋化因子。虽然免疫系统分布广泛,但白细胞必须有效地沟通以应对病理挑战。基本免疫模拟器2010包含代表白细胞和组织细胞的试剂,代表细胞因子、趋化因子和病原体的信号,以及代表器官组织、淋巴组织和血液的虚拟空间。在响应虚拟组织的感染时,药剂在隔室中动态地相互作用。代理人的行为是由科学文献中导出的逻辑规则强加的。该模型捕获了代理对代理的接触历史,并从中确定了网络拓扑和导致病毒清除成功与失败的相互作用。这个模型整合了现有的知识,使我们能够从一个新的角度来研究免疫反应,以利用复杂的动力学,最终设计治疗干预措施。结果:从相同的初始条件开始,在增量时间点上分析agent-agent相互作用的演变,揭示了与成功和失败结果相关的免疫通信的新特征。由于移除了受感染的因子,模拟中以病毒消除(获胜)结束的因子与持续感染(失败)结束的因子之间的接触较少。然而,早期的细胞相互作用先于感染的成功清除。具体来说,在模拟早期,更多的树突状药物与TCell和BCell药物相互作用,以及更多的BCell药物与TCell药物相互作用与免疫胜利结果相关。树突状因子极大地影响了结果,证实了它们是免疫网络的枢纽因子。此外,意外的高频率的树突状因子-自身相互作用发生在淋巴细胞室,在损失结果的后期。结论:一个基于agent的模型捕获了复杂系统动力学的几个关键方面,用于研究病毒感染免疫反应的紧急特性。在反应早期发生的白细胞制剂之间的特定相互作用模式显着改善了结果。晚期更多的相互作用与持续的炎症和感染相关。这些模拟实验强调了免疫反应中通常被忽视的方面的重要性,并以超过当前实验室技术能力的分辨率水平提供了对这些过程的洞察。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using an agent-based model to analyze the dynamic communication network of the immune response.

Using an agent-based model to analyze the dynamic communication network of the immune response.

Using an agent-based model to analyze the dynamic communication network of the immune response.

Using an agent-based model to analyze the dynamic communication network of the immune response.

Background: The immune system behaves like a complex, dynamic network with interacting elements including leukocytes, cytokines, and chemokines. While the immune system is broadly distributed, leukocytes must communicate effectively to respond to a pathological challenge. The Basic Immune Simulator 2010 contains agents representing leukocytes and tissue cells, signals representing cytokines, chemokines, and pathogens, and virtual spaces representing organ tissue, lymphoid tissue, and blood. Agents interact dynamically in the compartments in response to infection of the virtual tissue. Agent behavior is imposed by logical rules derived from the scientific literature. The model captured the agent-to-agent contact history, and from this the network topology and the interactions resulting in successful versus failed viral clearance were identified. This model served to integrate existing knowledge and allowed us to examine the immune response from a novel perspective directed at exploiting complex dynamics, ultimately for the design of therapeutic interventions.

Results: Analyzing the evolution of agent-agent interactions at incremental time points from identical initial conditions revealed novel features of immune communication associated with successful and failed outcomes. There were fewer contacts between agents for simulations ending in viral elimination (win) versus persistent infection (loss), due to the removal of infected agents. However, early cellular interactions preceded successful clearance of infection. Specifically, more Dendritic Agent interactions with TCell and BCell Agents, and more BCell Agent interactions with TCell Agents early in the simulation were associated with the immune win outcome. The Dendritic Agents greatly influenced the outcome, confirming them as hub agents of the immune network. In addition, unexpectedly high frequencies of Dendritic Agent-self interactions occurred in the lymphoid compartment late in the loss outcomes.

Conclusions: An agent-based model capturing several key aspects of complex system dynamics was used to study the emergent properties of the immune response to viral infection. Specific patterns of interactions between leukocyte agents occurring early in the response significantly improved outcome. More interactions at later stages correlated with persistent inflammation and infection. These simulation experiments highlight the importance of commonly overlooked aspects of the immune response and provide insight into these processes at a resolution level exceeding the capabilities of current laboratory technologies.

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来源期刊
Theoretical Biology and Medical Modelling
Theoretical Biology and Medical Modelling MATHEMATICAL & COMPUTATIONAL BIOLOGY-
自引率
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0
审稿时长
6-12 weeks
期刊介绍: Theoretical Biology and Medical Modelling is an open access peer-reviewed journal adopting a broad definition of "biology" and focusing on theoretical ideas and models associated with developments in biology and medicine. Mathematicians, biologists and clinicians of various specialisms, philosophers and historians of science are all contributing to the emergence of novel concepts in an age of systems biology, bioinformatics and computer modelling. This is the field in which Theoretical Biology and Medical Modelling operates. We welcome submissions that are technically sound and offering either improved understanding in biology and medicine or progress in theory or method.
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