Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time
The processes taking place inside the living cell are now understood to the point where predictive computational models can be used to gain detailed understanding of important biological phenomena. A key challenge is to extrapolate this detailed knowledge of the individual cell to be able to explain...
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Online Access: | https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180379 |
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doaj-4d3b6a683c6e42b38200cc3bb87078ab2020-11-25T03:06:49ZengThe Royal SocietyRoyal Society Open Science2054-57032018-01-015810.1098/rsos.180379180379Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous timeStefan EngblomDaniel B. WilsonRuth E. BakerThe processes taking place inside the living cell are now understood to the point where predictive computational models can be used to gain detailed understanding of important biological phenomena. A key challenge is to extrapolate this detailed knowledge of the individual cell to be able to explain at the population level how cells interact and respond with each other and their environment. In particular, the goal is to understand how organisms develop, maintain and repair functional tissues and organs. In this paper, we propose a novel computational framework for modelling populations of interacting cells. Our framework incorporates mechanistic, constitutive descriptions of biomechanical properties of the cell population, and uses a coarse-graining approach to derive individual rate laws that enable propagation of the population through time. Thanks to its multiscale nature, the resulting simulation algorithm is extremely scalable and highly efficient. As highlighted in our computational examples, the framework is also very flexible and may straightforwardly be coupled with continuous-time descriptions of biochemical signalling within, and between, individual cells.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180379continuous-time markov chaincomputational cell biologycell population modellingnotch signalling pathwayavascular tumour model |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Stefan Engblom Daniel B. Wilson Ruth E. Baker |
spellingShingle |
Stefan Engblom Daniel B. Wilson Ruth E. Baker Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time Royal Society Open Science continuous-time markov chain computational cell biology cell population modelling notch signalling pathway avascular tumour model |
author_facet |
Stefan Engblom Daniel B. Wilson Ruth E. Baker |
author_sort |
Stefan Engblom |
title |
Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
title_short |
Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
title_full |
Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
title_fullStr |
Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
title_full_unstemmed |
Scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
title_sort |
scalable population-level modelling of biological cells incorporating mechanics and kinetics in continuous time |
publisher |
The Royal Society |
series |
Royal Society Open Science |
issn |
2054-5703 |
publishDate |
2018-01-01 |
description |
The processes taking place inside the living cell are now understood to the point where predictive computational models can be used to gain detailed understanding of important biological phenomena. A key challenge is to extrapolate this detailed knowledge of the individual cell to be able to explain at the population level how cells interact and respond with each other and their environment. In particular, the goal is to understand how organisms develop, maintain and repair functional tissues and organs. In this paper, we propose a novel computational framework for modelling populations of interacting cells. Our framework incorporates mechanistic, constitutive descriptions of biomechanical properties of the cell population, and uses a coarse-graining approach to derive individual rate laws that enable propagation of the population through time. Thanks to its multiscale nature, the resulting simulation algorithm is extremely scalable and highly efficient. As highlighted in our computational examples, the framework is also very flexible and may straightforwardly be coupled with continuous-time descriptions of biochemical signalling within, and between, individual cells. |
topic |
continuous-time markov chain computational cell biology cell population modelling notch signalling pathway avascular tumour model |
url |
https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.180379 |
work_keys_str_mv |
AT stefanengblom scalablepopulationlevelmodellingofbiologicalcellsincorporatingmechanicsandkineticsincontinuoustime AT danielbwilson scalablepopulationlevelmodellingofbiologicalcellsincorporatingmechanicsandkineticsincontinuoustime AT ruthebaker scalablepopulationlevelmodellingofbiologicalcellsincorporatingmechanicsandkineticsincontinuoustime |
_version_ |
1724672182119825408 |