BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration.
Collective dynamics in multicellular systems such as biological organs and tissues plays a key role in biological development, regeneration, and pathological conditions. Collective tissue dynamics-understood as population behaviour arising from the interplay of the constituting discrete cells-can be...
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doaj-f1e9b8806d994749a25deb4de8c2e8af2021-07-10T04:31:39ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-06-01176e100906610.1371/journal.pcbi.1009066BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration.Andreas DeutschJosué Manik Nava-SedeñoSimon SygaHaralampos HatzikirouCollective dynamics in multicellular systems such as biological organs and tissues plays a key role in biological development, regeneration, and pathological conditions. Collective tissue dynamics-understood as population behaviour arising from the interplay of the constituting discrete cells-can be studied with on- and off-lattice agent-based models. However, classical on-lattice agent-based models, also known as cellular automata, fail to replicate key aspects of collective migration, which is a central instance of collective behaviour in multicellular systems. To overcome drawbacks of classical on-lattice models, we introduce an on-lattice, agent-based modelling class for collective cell migration, which we call biological lattice-gas cellular automaton (BIO-LGCA). The BIO-LGCA is characterised by synchronous time updates, and the explicit consideration of individual cell velocities. While rules in classical cellular automata are typically chosen ad hoc, rules for cell-cell and cell-environment interactions in the BIO-LGCA can also be derived from experimental cell migration data or biophysical laws for individual cell migration. We introduce elementary BIO-LGCA models of fundamental cell interactions, which may be combined in a modular fashion to model complex multicellular phenomena. We exemplify the mathematical mean-field analysis of specific BIO-LGCA models, which allows to explain collective behaviour. The first example predicts the formation of clusters in adhesively interacting cells. The second example is based on a novel BIO-LGCA combining adhesive interactions and alignment. For this model, our analysis clarifies the nature of the recently discovered invasion plasticity of breast cancer cells in heterogeneous environments.https://doi.org/10.1371/journal.pcbi.1009066 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Andreas Deutsch Josué Manik Nava-Sedeño Simon Syga Haralampos Hatzikirou |
spellingShingle |
Andreas Deutsch Josué Manik Nava-Sedeño Simon Syga Haralampos Hatzikirou BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. PLoS Computational Biology |
author_facet |
Andreas Deutsch Josué Manik Nava-Sedeño Simon Syga Haralampos Hatzikirou |
author_sort |
Andreas Deutsch |
title |
BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. |
title_short |
BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. |
title_full |
BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. |
title_fullStr |
BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. |
title_full_unstemmed |
BIO-LGCA: A cellular automaton modelling class for analysing collective cell migration. |
title_sort |
bio-lgca: a cellular automaton modelling class for analysing collective cell migration. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Computational Biology |
issn |
1553-734X 1553-7358 |
publishDate |
2021-06-01 |
description |
Collective dynamics in multicellular systems such as biological organs and tissues plays a key role in biological development, regeneration, and pathological conditions. Collective tissue dynamics-understood as population behaviour arising from the interplay of the constituting discrete cells-can be studied with on- and off-lattice agent-based models. However, classical on-lattice agent-based models, also known as cellular automata, fail to replicate key aspects of collective migration, which is a central instance of collective behaviour in multicellular systems. To overcome drawbacks of classical on-lattice models, we introduce an on-lattice, agent-based modelling class for collective cell migration, which we call biological lattice-gas cellular automaton (BIO-LGCA). The BIO-LGCA is characterised by synchronous time updates, and the explicit consideration of individual cell velocities. While rules in classical cellular automata are typically chosen ad hoc, rules for cell-cell and cell-environment interactions in the BIO-LGCA can also be derived from experimental cell migration data or biophysical laws for individual cell migration. We introduce elementary BIO-LGCA models of fundamental cell interactions, which may be combined in a modular fashion to model complex multicellular phenomena. We exemplify the mathematical mean-field analysis of specific BIO-LGCA models, which allows to explain collective behaviour. The first example predicts the formation of clusters in adhesively interacting cells. The second example is based on a novel BIO-LGCA combining adhesive interactions and alignment. For this model, our analysis clarifies the nature of the recently discovered invasion plasticity of breast cancer cells in heterogeneous environments. |
url |
https://doi.org/10.1371/journal.pcbi.1009066 |
work_keys_str_mv |
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