• DocumentCode
    272280
  • Title

    Exploiting intrinsic fluctuations to identify model parameters

  • Author

    Zimmer, Christoph ; Sahle, Sven ; Pahle, Jürgen

  • Author_Institution
    BIOMS, Heidelberg Univ., Heidelberg, Germany
  • Volume
    9
  • Issue
    2
  • fYear
    2015
  • fDate
    4 2015
  • Firstpage
    64
  • Lastpage
    73
  • Abstract
    Parameterisation of kinetic models plays a central role in computational systems biology. Besides the lack of experimental data of high enough quality, some of the biggest challenges here are identification issues. Model parameters can be structurally non-identifiable because of functional relationships. Noise in measured data is usually considered to be a nuisance for parameter estimation. However, it turns out that intrinsic fluctuations in particle numbers can make parameters identifiable that were previously non-identifiable. The authors present a method to identify model parameters that are structurally non-identifiable in a deterministic framework. The method takes time course recordings of biochemical systems in steady state or transient state as input. Often a functional relationship between parameters presents itself by a one-dimensional manifold in parameter space containing parameter sets of optimal goodness. Although the system´s behaviour cannot be distinguished on this manifold in a deterministic framework it might be distinguishable in a stochastic modelling framework. Their method exploits this by using an objective function that includes a measure for fluctuations in particle numbers. They show on three example models, immigration-death, gene expression and Epo-EpoReceptor interaction, that this resolves the non-identifiability even in the case of measurement noise with known amplitude. The method is applied to partially observed recordings of biochemical systems with measurement noise. It is simple to implement and it is usually very fast to compute. This optimisation can be realised in a classical or Bayesian fashion.
  • Keywords
    biochemistry; fluctuations; measurement errors; parameter estimation; physiological models; stochastic processes; Epo-EpoReceptor interaction; biochemical system; deterministic framework; gene expression; immigration-death model; measurement noise; model parameter identification; objective function; steady state; stochastic fluctuations; stochastic modelling framework; transient state;
  • fLanguage
    English
  • Journal_Title
    Systems Biology, IET
  • Publisher
    iet
  • ISSN
    1751-8849
  • Type

    jour

  • DOI
    10.1049/iet-syb.2014.0010
  • Filename
    7062124