Prediction uncertainty assessment of a systems biology model requires a sample of the full probability distribution of its parameters

Multi-parameter models in systems biology are typically ‘sloppy’: some parameters or combinations of parameters may be hard to estimate from data, whereas others are not. One might expect that parameter uncertainty automatically leads to uncertain predictions, but this is not the case. We illustrate this by showing that the prediction uncertainty of each of six sloppy models varies enormously among different predictions. Statistical approximations of parameter uncertainty may lead to dramatic errors in prediction uncertainty estimation. We argue that prediction uncertainty assessment must therefore be performed on a per-prediction basis using a full computational uncertainty analysis. In practice this is feasible by providing a model with a sample or ensemble representing the distribution of its parameters. Within a Bayesian framework, such a sample may be generated by a Markov Chain Monte Carlo (MCMC) algorithm that infers the parameter distribution based on experimental data. Matlab code for generating the sample (with the Differential Evolution Markov Chain sampler) and the subsequent uncertainty analysis using such a sample, is supplied as Supplemental Information.

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Bibliographic Details
Main Authors: van Mourik, S., ter Braak, C.J.F., Stigter, J.D., Molenaar, J.
Format: Article/Letter to editor biblioteca
Language:English
Subjects:cdc2, cyclin, experimental-design, identifiability analysis, kinase, oscillations, profile likelihood, proteins, regulatory networks, sloppy models,
Online Access:https://research.wur.nl/en/publications/prediction-uncertainty-assessment-of-a-systems-biology-model-requ
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