Background: Mechanistic models that describe the dynamical behaviors of biochemical systems are common in
computational systems biology, especially in the realm of cellular signaling. The development of families of such
models, either by a single research group or by different groups working within the same area, presents significant
challenges that range from identifying structural similarities and differences between models to understanding how
these differences affect system dynamics.
Results: We present the development and features of an interactive model exploration system, MOSBIE, which
provides utilities for identifying similarities and differences between models within a family. Models are clustered
using a custom similarity metric, and a visual interface is provided that allows a researcher to interactively compare
the structures of pairs of models as well as view simulation results.
Conclusions: We illustrate the usefulness of MOSBIE via two case studies in the cell signaling domain. We also
present feedback provided by domain experts and discuss the benefits, as well as the limitations, of the approach.
Funding
This work has been supported by grant NSF-IIS-0952720, the Pitt Clinical
Translational Science Institute (Fellows Program) 5UL1RR024153-05, and
NIH/NIGMS grant P41GM103712. Many thanks to Tim Luciani and Adam Smith
for help in testing and debugging, and to the other members of the Marai
VisLab and Faeder Lab for their feedback and useful discussions.