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Experimental data from Practical parameter identifiability for spatio-temporal models of cell invasion

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DataCite Commons2020-08-25 更新2024-07-28 收录
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https://rs.figshare.com/articles/Additional_results_and_discussion_from_Practical_parameter_identifiability_for_spatio-temporal_models_of_cell_invasion/11871111/2
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We examine the practical identifiability of parameters in a spatio-temporal reaction–diffusion model of a scratch assay. Experimental data involve fluorescent cell cycle labels, providing spatial information about cell position and temporal information about the cell cycle phase. Cell cycle labelling is incorporated into the reaction–diffusion model by treating the total population as two interacting subpopulations. Practical identifiability is examined using a Bayesian Markov chain Monte Carlo (MCMC) framework, confirming that the parameters are identifiable when we assume the diffusivities of the subpopulations are identical, but that the parameters are practically non-identifiable when we allow the diffusivities to be distinct. We also assess practical identifiability using a profile likelihood approach, providing similar results to MCMC with the advantage of being an order of magnitude faster to compute. Therefore, we suggest that the profile likelihood ought to be adopted as a screening tool to assess practical identifiability before MCMC computations are performed.
提供机构:
The Royal Society
创建时间:
2020-02-19
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