Robust optimal design of experiments for model discrimination using an interactive software tool.

Mathematical modeling of biochemical processes significantly contributes to a better understanding of biological functionality and underlying dynamic mechanisms. To support time consuming and costly lab experiments, kinetic reaction equations can be formulated as a set of ordinary differential equat...

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Main Authors: Johannes Stegmaier, Dominik Skanda, Dirk Lebiedz
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3563641?pdf=render
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spelling doaj-7dd6a4208e4a4255841d10936b5da7122020-11-25T01:17:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0182e5572310.1371/journal.pone.0055723Robust optimal design of experiments for model discrimination using an interactive software tool.Johannes StegmaierDominik SkandaDirk LebiedzMathematical modeling of biochemical processes significantly contributes to a better understanding of biological functionality and underlying dynamic mechanisms. To support time consuming and costly lab experiments, kinetic reaction equations can be formulated as a set of ordinary differential equations, which in turn allows to simulate and compare hypothetical models in silico. To identify new experimental designs that are able to discriminate between investigated models, the approach used in this work solves a semi-infinite constrained nonlinear optimization problem using derivative based numerical algorithms. The method takes into account parameter variabilities such that new experimental designs are robust against parameter changes while maintaining the optimal potential to discriminate between hypothetical models. In this contribution we present a newly developed software tool that offers a convenient graphical user interface for model discrimination. We demonstrate the beneficial operation of the discrimination approach and the usefulness of the software tool by analyzing a realistic benchmark experiment from literature. New robust optimal designs that allow to discriminate between the investigated model hypotheses of the benchmark experiment are successfully calculated and yield promising results. The involved robustification approach provides maximally discriminating experiments for the worst parameter configurations, which can be used to estimate the meaningfulness of upcoming experiments. A major benefit of the graphical user interface is the ability to interactively investigate the model behavior and the clear arrangement of numerous variables. In addition to a brief theoretical overview of the discrimination method and the functionality of the software tool, the importance of robustness of experimental designs against parameter variability is demonstrated on a biochemical benchmark problem. The software is licensed under the GNU General Public License and freely available at http://sourceforge.net/projects/mdtgui/.http://europepmc.org/articles/PMC3563641?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Johannes Stegmaier
Dominik Skanda
Dirk Lebiedz
spellingShingle Johannes Stegmaier
Dominik Skanda
Dirk Lebiedz
Robust optimal design of experiments for model discrimination using an interactive software tool.
PLoS ONE
author_facet Johannes Stegmaier
Dominik Skanda
Dirk Lebiedz
author_sort Johannes Stegmaier
title Robust optimal design of experiments for model discrimination using an interactive software tool.
title_short Robust optimal design of experiments for model discrimination using an interactive software tool.
title_full Robust optimal design of experiments for model discrimination using an interactive software tool.
title_fullStr Robust optimal design of experiments for model discrimination using an interactive software tool.
title_full_unstemmed Robust optimal design of experiments for model discrimination using an interactive software tool.
title_sort robust optimal design of experiments for model discrimination using an interactive software tool.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description Mathematical modeling of biochemical processes significantly contributes to a better understanding of biological functionality and underlying dynamic mechanisms. To support time consuming and costly lab experiments, kinetic reaction equations can be formulated as a set of ordinary differential equations, which in turn allows to simulate and compare hypothetical models in silico. To identify new experimental designs that are able to discriminate between investigated models, the approach used in this work solves a semi-infinite constrained nonlinear optimization problem using derivative based numerical algorithms. The method takes into account parameter variabilities such that new experimental designs are robust against parameter changes while maintaining the optimal potential to discriminate between hypothetical models. In this contribution we present a newly developed software tool that offers a convenient graphical user interface for model discrimination. We demonstrate the beneficial operation of the discrimination approach and the usefulness of the software tool by analyzing a realistic benchmark experiment from literature. New robust optimal designs that allow to discriminate between the investigated model hypotheses of the benchmark experiment are successfully calculated and yield promising results. The involved robustification approach provides maximally discriminating experiments for the worst parameter configurations, which can be used to estimate the meaningfulness of upcoming experiments. A major benefit of the graphical user interface is the ability to interactively investigate the model behavior and the clear arrangement of numerous variables. In addition to a brief theoretical overview of the discrimination method and the functionality of the software tool, the importance of robustness of experimental designs against parameter variability is demonstrated on a biochemical benchmark problem. The software is licensed under the GNU General Public License and freely available at http://sourceforge.net/projects/mdtgui/.
url http://europepmc.org/articles/PMC3563641?pdf=render
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AT dirklebiedz robustoptimaldesignofexperimentsformodeldiscriminationusinganinteractivesoftwaretool
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