2016
DOI: 10.1371/journal.pone.0168984
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Simulating Heterogeneous Tumor Cell Populations

Abstract: Certain tumor phenomena, like metabolic heterogeneity and local stable regions of chronic hypoxia, signify a tumor’s resistance to therapy. Although recent research has shed light on the intracellular mechanisms of cancer metabolic reprogramming, little is known about how tumors become metabolically heterogeneous or chronically hypoxic, namely the initial conditions and spatiotemporal dynamics that drive these cell population conditions. To study these aspects, we developed a minimal, spatially-resolved simula… Show more

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Cited by 4 publications
(3 citation statements)
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“…Most of the latest studies focus either on space-time aspects via reaction-diffusion equations [34] or on purely biological aspects at the cellular level [35]. These algorithms are generally compared with each other [36] or challenged against theoretical models [37] or empirical information [38], but they are rarely confronted with real data. In the present work, we proposed a method based on fully-described reaction-diffusion equations driven by a cellular-based stochastic approach [16].…”
Section: Discussionmentioning
confidence: 99%
“…Most of the latest studies focus either on space-time aspects via reaction-diffusion equations [34] or on purely biological aspects at the cellular level [35]. These algorithms are generally compared with each other [36] or challenged against theoretical models [37] or empirical information [38], but they are rarely confronted with real data. In the present work, we proposed a method based on fully-described reaction-diffusion equations driven by a cellular-based stochastic approach [16].…”
Section: Discussionmentioning
confidence: 99%
“…Therefore, it could be possible that there are multiple types of heterogeneity acting in even this very simple experiment. Previously, heterogeneity in cell populations has been introduced in both discrete and continuum models of cell motility (Simpson et al, 2014;Jin et al, 2016b;Sundstrom et al, 2016;Matsiaka et al, 2017). Previous work has also attempted to estimate parameters in heterogeneous models that describe glioblastoma progression (Rutter et al, 2018).…”
Section: Introductionmentioning
confidence: 99%
“…Among stochastic techniques it is worth mentioning the version of the two-phenotype stochastic model of concurrent haematopoiesis [5] extended for the case of several phenotypes [6] and the multi-phenotype model of bone marrow featured by cellular automaton-style considerations [7], the latter being the closest to the presented approach. Another stochastic cellular automaton model by Sundstrom et al [8] studied tumorigenesis with multiple phenotypes by taking into account 2D and 3D spatial effects and limitations, but not cell differentiation. The work by Lu et al [9] analysed the mitosis in two-phenotype systems on the basis of the algorithm by Gillespie [10], also without cell differentiation.…”
Section: Introductionmentioning
confidence: 99%