Generating Realistic In Silico Gene Networks for Performance Assessment of Reverse Engineering Methods
pmid: 19183003
Generating Realistic In Silico Gene Networks for Performance Assessment of Reverse Engineering Methods
Reverse engineering methods are typically first tested on simulated data from in silico networks, for systematic and efficient performance assessment, before an application to real biological networks. In this paper, we present a method for generating biologically plausible in silico networks, which allow realistic performance assessment of network inference algorithms. Instead of using random graph models, which are known to only partly capture the structural properties of biological networks, we generate network structures by extracting modules from known biological interaction networks. Using the yeast transcriptional regulatory network as a test case, we show that extracted modules have a biologically plausible connectivity because they preserve functional and structural properties of the original network. Our method was selected to generate the "gold standard" networks for the gene network reverse engineering challenge of the third DREAM conference (Dialogue on Reverse Engineering Assessment and Methods 2008, Cambridge, MA).
- École Polytechnique Fédérale de Lausanne EPFL Switzerland
- University of Zurich Switzerland
Models, Genetic, Gene Expression Profiling, Computational Biology, Saccharomyces cerevisiae, Computational Mathematics, SX00 SystemsX.ch, 1311 Genetics, Computational Theory and Mathematics, SX15 WingX, Modelling and Simulation, 1312 Molecular Biology, Genetics, 570 Life sciences; biology, Computer Simulation, Gene Regulatory Networks, 2605 Computational Mathematics, Molecular Biology, Algorithms, Software, 2611 Modeling and Simulation, 1703 Computational Theory and Mathematics
Models, Genetic, Gene Expression Profiling, Computational Biology, Saccharomyces cerevisiae, Computational Mathematics, SX00 SystemsX.ch, 1311 Genetics, Computational Theory and Mathematics, SX15 WingX, Modelling and Simulation, 1312 Molecular Biology, Genetics, 570 Life sciences; biology, Computer Simulation, Gene Regulatory Networks, 2605 Computational Mathematics, Molecular Biology, Algorithms, Software, 2611 Modeling and Simulation, 1703 Computational Theory and Mathematics
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