Agent-based modeling and bifurcation analysis reveal mechanisms of macrophage polarization and phenotype pattern distribution

(2019) Agent-based modeling and bifurcation analysis reveal mechanisms of macrophage polarization and phenotype pattern distribution. Scientific Reports. p. 14. ISSN 2045-2322

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Official URL: WOS:000483703800033

Abstract

Macrophages play a key role in tissue regeneration by polarizing to different destinies and generating various phenotypes. Recognizing the underlying mechanisms is critical in designing therapeutic procedures targeting macrophage fate determination. Here, to investigate the macrophage polarization, a nonlinear mathematical model is proposed in which the effect of 1L4, IFN gamma and LPS, as external stimuli, on STAT1, STAT6, and NF kappa B is studied using bifurcation analysis. The existence of saddle-node bifurcations in these internal key regulators allows different combinations of steady state levels which are attributable to different fates. Therefore, we propose dynamic bifurcation as a crucial built-in mechanism of macrophage polarization. Next, in order to investigate the polarization of a population of macrophages, bifurcation analysis is employed aligned with agent-based approach and a two-layer model is proposed in which the information from single cells is exploited to model the behavior in tissue level. Also, in this model, a partial differential equation describes the diffusion of secreted cytokines in the medium. Finally, the model was validated against a set of experimental data. Taken together, we have here developed a cell and tissue level model of macrophage polarization behavior which can be used for designing therapeutic interventions.

Item Type: Article
Keywords: tissue-repair plasticity stat6 pathways dynamics monocyte motifs injury gamma Science & Technology - Other Topics
Subjects: QW Microbiology and Immunology > QW 501-949 Immunology
Divisions: Other
Page Range: p. 14
Journal or Publication Title: Scientific Reports
Journal Index: ISI
Volume: 9
Identification Number: https://doi.org/10.1038/s41598-019-48865-z
ISSN: 2045-2322
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/11303

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