A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.

Despite numerous technology advances, bioreactors are still mostly utilized as functional black-boxes where trial and error eventually leads to the desirable cellular outcome. Investigators have applied various computational approaches to understand the impact the internal dynamics of such devices h...

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Main Authors: Himanshu Kaul, Zhanfeng Cui, Yiannis Ventikos
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3612085?pdf=render
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spelling doaj-382346d887ee4aecb37c25060de2fc612020-11-24T21:52:13ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0183e5967110.1371/journal.pone.0059671A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.Himanshu KaulZhanfeng CuiYiannis VentikosDespite numerous technology advances, bioreactors are still mostly utilized as functional black-boxes where trial and error eventually leads to the desirable cellular outcome. Investigators have applied various computational approaches to understand the impact the internal dynamics of such devices has on overall cell growth, but such models cannot provide a comprehensive perspective regarding the system dynamics, due to limitations inherent to the underlying approaches. In this study, a novel multi-paradigm modeling platform capable of simulating the dynamic bidirectional relationship between cells and their microenvironment is presented. Designing the modeling platform entailed combining and coupling fully an agent-based modeling platform with a transport phenomena computational modeling framework. To demonstrate capability, the platform was used to study the impact of bioreactor parameters on the overall cell population behavior and vice versa. In order to achieve this, virtual bioreactors were constructed and seeded. The virtual cells, guided by a set of rules involving the simulated mass transport inside the bioreactor, as well as cell-related probabilistic parameters, were capable of displaying an array of behaviors such as proliferation, migration, chemotaxis and apoptosis. In this way the platform was shown to capture not only the impact of bioreactor transport processes on cellular behavior but also the influence that cellular activity wields on that very same local mass transport, thereby influencing overall cell growth. The platform was validated by simulating cellular chemotaxis in a virtual direct visualization chamber and comparing the simulation with its experimental analogue. The results presented in this paper are in agreement with published models of similar flavor. The modeling platform can be used as a concept selection tool to optimize bioreactor design specifications.http://europepmc.org/articles/PMC3612085?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Himanshu Kaul
Zhanfeng Cui
Yiannis Ventikos
spellingShingle Himanshu Kaul
Zhanfeng Cui
Yiannis Ventikos
A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
PLoS ONE
author_facet Himanshu Kaul
Zhanfeng Cui
Yiannis Ventikos
author_sort Himanshu Kaul
title A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
title_short A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
title_full A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
title_fullStr A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
title_full_unstemmed A multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
title_sort multi-paradigm modeling framework to simulate dynamic reciprocity in a bioreactor.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description Despite numerous technology advances, bioreactors are still mostly utilized as functional black-boxes where trial and error eventually leads to the desirable cellular outcome. Investigators have applied various computational approaches to understand the impact the internal dynamics of such devices has on overall cell growth, but such models cannot provide a comprehensive perspective regarding the system dynamics, due to limitations inherent to the underlying approaches. In this study, a novel multi-paradigm modeling platform capable of simulating the dynamic bidirectional relationship between cells and their microenvironment is presented. Designing the modeling platform entailed combining and coupling fully an agent-based modeling platform with a transport phenomena computational modeling framework. To demonstrate capability, the platform was used to study the impact of bioreactor parameters on the overall cell population behavior and vice versa. In order to achieve this, virtual bioreactors were constructed and seeded. The virtual cells, guided by a set of rules involving the simulated mass transport inside the bioreactor, as well as cell-related probabilistic parameters, were capable of displaying an array of behaviors such as proliferation, migration, chemotaxis and apoptosis. In this way the platform was shown to capture not only the impact of bioreactor transport processes on cellular behavior but also the influence that cellular activity wields on that very same local mass transport, thereby influencing overall cell growth. The platform was validated by simulating cellular chemotaxis in a virtual direct visualization chamber and comparing the simulation with its experimental analogue. The results presented in this paper are in agreement with published models of similar flavor. The modeling platform can be used as a concept selection tool to optimize bioreactor design specifications.
url http://europepmc.org/articles/PMC3612085?pdf=render
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