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1.
BMC Bioinformatics ; 13: 251, 2012 Sep 28.
Article in English | MEDLINE | ID: mdl-23020215

ABSTRACT

BACKGROUND: Signaling systems typically involve large, structured molecules each consisting of a large number of subunits called molecule domains. In modeling such systems these domains can be considered as the main players. In order to handle the resulting combinatorial complexity, rule-based modeling has been established as the tool of choice. In contrast to the detailed quantitative rule-based modeling, qualitative modeling approaches like logical modeling rely solely on the network structure and are particularly useful for analyzing structural and functional properties of signaling systems. RESULTS: We introduce the Process-Interaction-Model (PIM) concept. It defines a common representation (or basis) of rule-based models and site-specific logical models, and, furthermore, includes methods to derive models of both types from a given PIM. A PIM is based on directed graphs with nodes representing processes like post-translational modifications or binding processes and edges representing the interactions among processes. The applicability of the concept has been demonstrated by applying it to a model describing EGF insulin crosstalk. A prototypic implementation of the PIM concept has been integrated in the modeling software ProMoT. CONCLUSIONS: The PIM concept provides a common basis for two modeling formalisms tailored to the study of signaling systems: a quantitative (rule-based) and a qualitative (logical) modeling formalism. Every PIM is a compact specification of a rule-based model and facilitates the systematic set-up of a rule-based model, while at the same time facilitating the automatic generation of a site-specific logical model. Consequently, modifications can be made on the underlying basis and then be propagated into the different model specifications - ensuring consistency of all models, regardless of the modeling formalism. This facilitates the analysis of a system on different levels of detail as it guarantees the application of established simulation and analysis methods to consistent descriptions (rule-based and logical) of a particular signaling system.


Subject(s)
Models, Biological , Protein Structure, Tertiary/physiology , Signal Transduction/physiology , Cell Physiological Phenomena , Protein Processing, Post-Translational , Software
2.
Bioinformatics ; 25(5): 687-9, 2009 Mar 01.
Article in English | MEDLINE | ID: mdl-19147665

ABSTRACT

SUMMARY: The modeling tool PROMOT facilitates the efficient and comprehensible setup and editing of modular models coupled with customizable visual representations. Since its last major publication in 2003, PROMOT has gained new functionality in particular support of logical models, efficient editing, visual exploration, model validation and support for SBML. AVAILABILITY: PROMOT is an open source project and freely available at http://www.mpi-magdeburg.mpg.de/projects/promot/.


Subject(s)
Computational Biology/methods , Computer Graphics , Software , Systems Biology/methods , Databases, Factual , Logistic Models , Models, Biological , User-Computer Interface
3.
BMC Bioinformatics ; 7: 506, 2006 Nov 17.
Article in English | MEDLINE | ID: mdl-17109765

ABSTRACT

BACKGROUND: The analysis of biochemical networks using a logical (Boolean) description is an important approach in Systems Biology. Recently, new methods have been proposed to analyze large signaling and regulatory networks using this formalism. Even though there is a large number of tools to set up models describing biological networks using a biochemical (kinetic) formalism, however, they do not support logical models. RESULTS: Herein we present a flexible framework for setting up large logical models in a visual manner with the software tool ProMoT. An easily extendible library, ProMoT's inherent modularity and object-oriented concept as well as adaptive visualization techniques provide a versatile environment. Both the graphical and the textual description of the logical model can be exported to different formats. CONCLUSION: New features of ProMoT facilitate an efficient set-up of large Boolean models of biochemical interaction networks. The modeling environment is flexible; it can easily be adapted to specific requirements, and new extensions can be introduced. ProMoT is freely available from http://www.mpi-magdeburg.mpg.de/projects/promot/.


Subject(s)
Computational Biology/methods , Signal Transduction , Software , Animals , Biochemistry/methods , Computer Graphics , Humans , Internet , Lymphocyte Activation , Models, Biological , Models, Theoretical , Programming Languages , Systems Biology , User-Computer Interface
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