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Accelerating computational Bayesian inference for stochastic biochemical reaction network models using multilevel Monte Carlo sampling

David J. Warne, Ruth E. Baker, Matthew J. Simpson
doi: https://doi.org/10.1101/064170
David J. Warne
1School of Mathematical Sciences, Queensland University of Technology, Brisbane, Queensland 4001, Australia
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Ruth E. Baker
2Mathematical Institute, University of Oxford, Oxford, OX2 6GG, United Kingdom
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Matthew J. Simpson
1School of Mathematical Sciences, Queensland University of Technology, Brisbane, Queensland 4001, Australia
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  • For correspondence: matthew.simpson@qut.edu.au
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Abstract

Investigating the behavior of stochastic models of biochemical reactionnetworks generally relies upon numerical stochastic simulation methods to generate many realizations of the model. For many practical applications, such numerical simulation can be computationally expensive. The statistical inference of reaction rate parameters based on observed data is, however, a significantly greater computational challenge; often relying upon likelihood-free methods such as approximate Bayesian computation, that requirethe generation of millions of individual stochastic realizations. In this study, we investigate a new approach to computational inference, based on multilevel Monte Carlo sampling: we approximate the posterior cumulative distribution function through a combination of model samples taken over a range of acceptance thresholds. We demonstrate this approach using a variety of discrete-state, continuous-time Markov models of biochemical reactionnetworks. Results show that a computational gain over standard rejection schemes of up to an order of magnitude is achievable without significant loss in estimator accuracy.

Author Summary We develop a new method to infer the reaction rate parameters for stochastic models of biochemical reaction networks. Standard computational approaches, based on numerical simulations, are often used to estimate parameters. These computational approaches, however, are extremely expensive, potentially requiring millions of simulations. To alleviate this issue, we apply a different method of sampling allowing us to find an optimal trade-off between performance and accuracy. Our approach is approximately one order of magnitude faster than standard methods, without significant loss in accuracy.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY 4.0 International license.
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Posted July 15, 2016.
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Accelerating computational Bayesian inference for stochastic biochemical reaction network models using multilevel Monte Carlo sampling
David J. Warne, Ruth E. Baker, Matthew J. Simpson
bioRxiv 064170; doi: https://doi.org/10.1101/064170
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Accelerating computational Bayesian inference for stochastic biochemical reaction network models using multilevel Monte Carlo sampling
David J. Warne, Ruth E. Baker, Matthew J. Simpson
bioRxiv 064170; doi: https://doi.org/10.1101/064170

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