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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...

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Autores principales: Folcik, Virginia A, Broderick, Gordon, Mohan, Shunmugam, Block, Brian, Ekbote, Chirantan, Doolittle, John, Khoury, Marc, Davis, Luke, Marsh, Clay B
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3032717/
https://www.ncbi.nlm.nih.gov/pubmed/21247471
http://dx.doi.org/10.1186/1742-4682-8-1
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author Folcik, Virginia A
Broderick, Gordon
Mohan, Shunmugam
Block, Brian
Ekbote, Chirantan
Doolittle, John
Khoury, Marc
Davis, Luke
Marsh, Clay B
author_facet Folcik, Virginia A
Broderick, Gordon
Mohan, Shunmugam
Block, Brian
Ekbote, Chirantan
Doolittle, John
Khoury, Marc
Davis, Luke
Marsh, Clay B
author_sort Folcik, Virginia A
collection PubMed
description 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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spelling pubmed-30327172011-02-03 Using an agent-based model to analyze the dynamic communication network of the immune response Folcik, Virginia A Broderick, Gordon Mohan, Shunmugam Block, Brian Ekbote, Chirantan Doolittle, John Khoury, Marc Davis, Luke Marsh, Clay B Theor Biol Med Model Software 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. BioMed Central 2011-01-19 /pmc/articles/PMC3032717/ /pubmed/21247471 http://dx.doi.org/10.1186/1742-4682-8-1 Text en Copyright ©2011 Folcik et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Software
Folcik, Virginia A
Broderick, Gordon
Mohan, Shunmugam
Block, Brian
Ekbote, Chirantan
Doolittle, John
Khoury, Marc
Davis, Luke
Marsh, Clay B
Using an agent-based model to analyze the dynamic communication network of the immune response
title Using an agent-based model to analyze the dynamic communication network of the immune response
title_full Using an agent-based model to analyze the dynamic communication network of the immune response
title_fullStr Using an agent-based model to analyze the dynamic communication network of the immune response
title_full_unstemmed Using an agent-based model to analyze the dynamic communication network of the immune response
title_short Using an agent-based model to analyze the dynamic communication network of the immune response
title_sort using an agent-based model to analyze the dynamic communication network of the immune response
topic Software
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3032717/
https://www.ncbi.nlm.nih.gov/pubmed/21247471
http://dx.doi.org/10.1186/1742-4682-8-1
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