Modeling and Estimation of Dynamic EGFR Pathway by Data Assimilation Approach Using Time Series Proteomic Data

  • Tasaki Shinya
    Medical Proteomics Laboratory, Institute of Medical Science, the University of Tokyo Department of Medical Genome Science, Graduate School of Frontier Sciences, the University of Tokyo
  • Nagasaki Masao
    Human Genome Center, Institute of Medical Science, the University of Tokyo
  • Oyama Masaaki
    Medical Proteomics Laboratory, Institute of Medical Science, the University of Tokyo
  • Hata Hiroko
    Medical Proteomics Laboratory, Institute of Medical Science, the University of Tokyo
  • Ueno Kazuko
    Human Genome Center, Institute of Medical Science, the University of Tokyo
  • Yoshida Ryo
    Human Genome Center, Institute of Medical Science, the University of Tokyo
  • Higuchi Tomoyuki
    Institute of Statistical Mathematics
  • Sugano Sumio
    Department of Medical Genome Science, Graduate School of Frontier Sciences, the University of Tokyo
  • Miyano Satoru
    Human Genome Center, Institute of Medical Science, the University of Tokyo

Abstract

Cell Illustrator is a model building tool based on the Hybrid Functional Petri net with extension (HFPNe). By using Cell Illustrator, we have succeeded in modeling biological pathways, e.g., metabolic pathways, gene regulatory networks, microRNA regulatory networks, cell signaling networks, and cell-cell interactions. The recent development of tandem mass spectrometry coupled with liquid chromatography (LC/MS/MS) technology has enabled researchers to quantify the dynamic profile of a wide range of proteins within the cell. The proteomic data obtained by using LC/MS/MS has been considerably useful for introducing dynamics to the HFPNe model. Here, we report the first introduction of the time-series proteomic data to our HFPNe model. We constructed an epidermal growth factor receptor signal transduction pathway model (EFGR model) by using the biological data available in the literature. Then, the kinetic parameters were determined in the data assimilation (DA) framework with some manual tuning so as to fit the proteomic data published by Blagoev et al.(Nat. Biotechnol., 22: 1139-1145, 2004). This in silico model was further refined by adding or removing some regulation loops using biological background knowledge. The DA framework was used to select the most plausible model from among the refined models. By using the proteomic data, we semi-automatically constructed a well-tuned EGFR HFPNe model by using the Cell Illustrator coupled with the DA framework.

Journal

  • Genome Informatics

    Genome Informatics 17 (2), 226-238, 2006

    Japanese Society for Bioinformatics

Details 詳細情報について

  • CRID
    1390282679467167488
  • NII Article ID
    130003997452
  • DOI
    10.11234/gi1990.17.2_226
  • ISSN
    2185842X
    09199454
  • PubMed
    17503395
  • Text Lang
    en
  • Data Source
    • JaLC
    • PubMed
    • CiNii Articles
  • Abstract License Flag
    Disallowed

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