| Literature DB >> 30021928 |
Aidan C Daly1, David Gavaghan2, Jonathan Cooper3, Simon Tavener4.
Abstract
As systems approaches to the development of biological models become more mature, attention is increasingly focusing on the problem of inferring parameter values within those models from experimental data. However, particularly for nonlinear models, it is not obvious, either from inspection of the model or from the experimental data, that the inverse problem of parameter fitting will have a unique solution, or even a non-unique solution that constrains the parameters to lie within a plausible physiological range. Where parameters cannot be constrained they are termed 'unidentifiable'. We focus on gaining insight into the causes of unidentifiability using inference-based methods, and compare a recently developed measure-theoretic approach to inverse sensitivity analysis to the popular Markov chain Monte Carlo and approximate Bayesian computation techniques for Bayesian inference. All three approaches map the uncertainty in quantities of interest in the output space to the probability of sets of parameters in the input space. The geometry of these sets demonstrates how unidentifiability can be caused by parameter compensation and provides an intuitive approach to inference-based experimental design.Keywords: Markov chain Monte Carlo; approximate Bayesian computation; experimental design; identifiability; inverse sensitivity
Mesh:
Year: 2018 PMID: 30021928 PMCID: PMC6073654 DOI: 10.1098/rsif.2018.0318
Source DB: PubMed Journal: J R Soc Interface ISSN: 1742-5662 Impact factor: 4.118