2008
DOI: 10.1002/bit.21633
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Identification of age‐structured models: Cell cycle phase transitions

Abstract: A methodology is developed that determines age-specific transition rates between cell cycle phases during balanced growth by utilizing age-structured population balance equations. Age-distributed models are the simplest way to account for varied behavior of individual cells. However, this simplicity is offset by difficulties in making observations of age distributions, so age-distributed models are difficult to fit to experimental data. Herein, the proposed methodology is implemented to identify an age-structu… Show more

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Cited by 30 publications
(29 citation statements)
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References 45 publications
(41 reference statements)
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“…Other authors [84] have used comparable modelling to investigate the cell cycle in cell populations, but the novelty of our contribution in this section is that we have used recent image data on individual cells that enable us to assess the variability of cell cycle phase durations in populations of cells.…”
Section: Identification Of Model Parametersmentioning
confidence: 99%
“…Other authors [84] have used comparable modelling to investigate the cell cycle in cell populations, but the novelty of our contribution in this section is that we have used recent image data on individual cells that enable us to assess the variability of cell cycle phase durations in populations of cells.…”
Section: Identification Of Model Parametersmentioning
confidence: 99%
“…Population balance equation (PBE) models, which have been applied to microbial and animal cell systems (Fredrickson et al, 1967; Mantzaris and Daoutidis, 2004; Ramkrishna et al, 1968; Sherer et al, 2008; Nielsen et al, 1998), are an appealing modeling framework for stem cell ensembles (Jing et al, 2011; Kehoe et al, 2010). A general cell PBE, which is essentially a cell mass or number balance, can be written as:…”
Section: Mathematical and Computational Modeling For Stem Cell Popmentioning
confidence: 99%
“…In the first one, the functional dependency of the parameter on the internal coordinate is assumed to be known and can be described by an analytic funtion with a few parameters, e.g. a gaussian distribution characterized by mean and variance (Sherer et al, 2008). If the shape of the function is not known a priori, it can be parametrized with a suitable approximation, e.g.…”
Section: Translation Of the Inverse Problem To A Finite Dimensionmentioning
confidence: 99%