Modelling biological processes using workflow and Petri Net models

Modelling biological processes using workflow and Petri Net models

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Article ID: iaor2004523
Country: United States
Volume: 18
Issue: 6
Start Page Number: 825
End Page Number: 837
Publication Date: Jun 2002
Journal: Bioinformatics
Authors: , ,
Keywords: networks: flow
Abstract:

Motivation: Biological processes can be considered at many levels of detail, ranging from automatic mechanism to general processes such as cell division, cell adhesion or cell invasion. The experimental study of protein function and gene regulation typically provides information at many levels. The representation of hierarchical process knowledge in biology is therefore a major challenge for bioinformatics. To represent high-level processes in the context of their component functions, we have developed a graphical knowledge model for biological processes that supports methods for qualitative reasoning. Results: We assessed eleven diverse models that were developed in the fields of software engineering, business, and biology, to evaluate their suitability for representing and simulating biological processes. Based on this assessment, we combined the best aspects of two models: Workflow/Petri Net and a biological concept model. The Workflow model can represent nesting and ordering of processes, the structural components that participate in the processes, and the roles that they play. It also maps to Petri Nets, which allow verification of formal properties and qualitative simulation. The biological concept mode, TAMBIS, provides a framework for describing biological entities that can be mapped to the workflow model. We tested our model by representing malaria parasites invading host erythrocytes, and composed queries, in five general classes, to discover relationships among processes and structural components. We used reachability analysis to answer queries about the dynamic aspects of the model.

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