Bayesian analysis of non-linear differential equation models with application to a gut microbial ecosystem |
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Authors: | Lawson Daniel J Holtrop Grietje Flint Harry |
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Affiliation: | Biomathematics and Statistics Scotland James Clerk Maxwell Building, Edinburgh, EH9 3JZ, Scotland, UK. dan.lawson@bristol.ac.uk |
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Abstract: | Process models specified by non-linear dynamic differential equations contain many parameters, which often must be inferred from a limited amount of data. We discuss a hierarchical Bayesian approach combining data from multiple related experiments in a meaningful way, which permits more powerful inference than treating each experiment as independent. The approach is illustrated with a simulation study and example data from experiments replicating the aspects of the human gut microbial ecosystem. A predictive model is obtained that contains prediction uncertainty caused by uncertainty in the parameters, and we extend the model to capture situations of interest that cannot easily be studied experimentally. |
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Keywords: | Bacteria Convergence Ecology Hierarchical model Process model |
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