Abstract

Parameter inference and model selection are very important for mathematical modeling in systems biology. Bayesian statistics can be used to conduct both parameter inference and model selection. Especially, the framework named approximate Bayesian computation is often used for parameter inference and model selection in systems biology. However, Monte Carlo methods needs to be used to compute Bayesian posterior distributions. In addition, the posterior distributions of parameters are sometimes almost uniform or very similar to their prior distributions. In such cases, it is difficult to choose one specific value of parameter with high credibility as the representative value of the distribution. To overcome the problems, we introduced one of the population Monte Carlo algorithms, population annealing. Although population annealing is usually used in statistical mechanics, we showed that population annealing can be used to compute Bayesian posterior distributions in the approximate Bayesian computation framework. To deal with un-identifiability of the representative values of parameters, we proposed to run the simulations with the parameter ensemble sampled from the posterior distribution, named “posterior parameter ensemble”. We showed that population annealing is an efficient and convenient algorithm to generate posterior parameter ensemble. We also showed that the simulations with the posterior parameter ensemble can, not only reproduce the data used for parameter inference, but also capture and predict the data which was not used for parameter inference. Lastly, we introduced the marginal likelihood in the approximate Bayesian computation framework for Bayesian model selection. We showed that population annealing enables us to compute the marginal likelihood in the approximate Bayesian computation framework and conduct model selection depending on the Bayes factor.

Highlights

  • Mathematical modeling is a very useful and powerful approach in systems biology [1,2]

  • Population annealing is usually used in statistical mechanics [28,31], we showed that population annealing can be used to compute Bayesian posterior distributions for parameter inference and model selection in the approximate Bayesian computation (ABC) framework

  • We showed that population annealing can be used to compute the Bayesian posterior distributions

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Summary

Introduction

Mathematical modeling is a very useful and powerful approach in systems biology [1,2]. Mathematical models used in systems biology are often represented by ordinary or partial differential equations. These differential equations contain a number of parameters which represent the rates of biochemical reactions or amounts of components (proteins, mRNAs etc). We may have a number of competing and potential mathematical models to explain the observed experimental data. Concrete values of parameters in mathematical models are often not wellknown in previous experimental literatures. In such cases, we need to conduct model selection and parameter inference by some sort of systematic procedures

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