4.7 Article

GNU MCSim: Bayesian statistical inference for SBML-coded systems biology models

Journal

BIOINFORMATICS
Volume 25, Issue 11, Pages 1453-1454

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/btp162

Keywords

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Funding

  1. European Commission Sixth Framework Program, Priority 6
  2. project 2-FUN [036976]
  3. French Ministry of Sustainable Development Program [BCRD 2004 DRC05]

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Statistical inference about the parameter values of complex models, such as the ones routinely developed in systems biology, is efficiently performed through Bayesian numerical techniques. In that framework, prior information and multiple levels of uncertainty can be seamlessly integrated. GNU MCSim was precisely developed to achieve those aims, in a general non-linear differential context. Starting with version 5.3.0, GNU MCSim reads in and simulates Systems Biology Markup Language models. Markov chain Monte Carlo simulations can be used to generate samples from the joint posterior distribution of the model parameters, given a dataset and prior distributions. Hierarchical statistical models can be used. Optimal design of experiments can also be investigated.

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