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Modeling adhesion in stochastic and mean-field models of cell migration

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Modeling adhesion in stochastic and mean-field models of cell migration. / Noureen, Shahzeb Raja; Mort, Richard L.; Yates, Christian A.
In: Physical Review E, Vol. 111, No. 1, 014419, 31.01.2025.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Noureen SR, Mort RL, Yates CA. Modeling adhesion in stochastic and mean-field models of cell migration. Physical Review E. 2025 Jan 31;111(1):014419. Epub 2025 Jan 21. doi: 10.1103/physreve.111.014419

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Noureen, Shahzeb Raja ; Mort, Richard L. ; Yates, Christian A. / Modeling adhesion in stochastic and mean-field models of cell migration. In: Physical Review E. 2025 ; Vol. 111, No. 1.

Bibtex

@article{202f39587483471c8f1c5f600bb431b8,
title = "Modeling adhesion in stochastic and mean-field models of cell migration",
abstract = "Adhesion between cells plays an important role in many biological processes such as tissue morphogenesis and homeostasis, wound healing, and cancer cell metastasis. From a mathematical perspective, adhesion between multiple cell types has been previously analyzed using discrete and continuum models, including the cellular Potts models and partial differential equations (PDEs). While these models can represent certain biological situations well, cellular Potts models can be computationally expensive, and continuum models capture only the macroscopic behavior of a population of cells, ignoring stochasticity and the discrete nature of cell dynamics. Cellular automaton models allow us to address these problems and can be used for a wide variety of biological systems. In this paper we consider a cellular automaton approach and develop an on-lattice agent-based model (ABM) for cell migration and adhesion in a population composed of two cell types. By deriving and comparing the corresponding PDEs to the ABM, we demonstrate that cell aggregation and cell sorting are not possible in the PDE model. Therefore, we propose a set of discrete mean equations which better capture the behavior of the ABM in one and two dimensions. ",
author = "Noureen, {Shahzeb Raja} and Mort, {Richard L.} and Yates, {Christian A.}",
year = "2025",
month = jan,
day = "31",
doi = "10.1103/physreve.111.014419",
language = "English",
volume = "111",
journal = "Physical Review E",
issn = "2470-0045",
publisher = "American Physical Society",
number = "1",

}

RIS

TY - JOUR

T1 - Modeling adhesion in stochastic and mean-field models of cell migration

AU - Noureen, Shahzeb Raja

AU - Mort, Richard L.

AU - Yates, Christian A.

PY - 2025/1/31

Y1 - 2025/1/31

N2 - Adhesion between cells plays an important role in many biological processes such as tissue morphogenesis and homeostasis, wound healing, and cancer cell metastasis. From a mathematical perspective, adhesion between multiple cell types has been previously analyzed using discrete and continuum models, including the cellular Potts models and partial differential equations (PDEs). While these models can represent certain biological situations well, cellular Potts models can be computationally expensive, and continuum models capture only the macroscopic behavior of a population of cells, ignoring stochasticity and the discrete nature of cell dynamics. Cellular automaton models allow us to address these problems and can be used for a wide variety of biological systems. In this paper we consider a cellular automaton approach and develop an on-lattice agent-based model (ABM) for cell migration and adhesion in a population composed of two cell types. By deriving and comparing the corresponding PDEs to the ABM, we demonstrate that cell aggregation and cell sorting are not possible in the PDE model. Therefore, we propose a set of discrete mean equations which better capture the behavior of the ABM in one and two dimensions.

AB - Adhesion between cells plays an important role in many biological processes such as tissue morphogenesis and homeostasis, wound healing, and cancer cell metastasis. From a mathematical perspective, adhesion between multiple cell types has been previously analyzed using discrete and continuum models, including the cellular Potts models and partial differential equations (PDEs). While these models can represent certain biological situations well, cellular Potts models can be computationally expensive, and continuum models capture only the macroscopic behavior of a population of cells, ignoring stochasticity and the discrete nature of cell dynamics. Cellular automaton models allow us to address these problems and can be used for a wide variety of biological systems. In this paper we consider a cellular automaton approach and develop an on-lattice agent-based model (ABM) for cell migration and adhesion in a population composed of two cell types. By deriving and comparing the corresponding PDEs to the ABM, we demonstrate that cell aggregation and cell sorting are not possible in the PDE model. Therefore, we propose a set of discrete mean equations which better capture the behavior of the ABM in one and two dimensions.

U2 - 10.1103/physreve.111.014419

DO - 10.1103/physreve.111.014419

M3 - Journal article

VL - 111

JO - Physical Review E

JF - Physical Review E

SN - 2470-0045

IS - 1

M1 - 014419

ER -