posted on 2022-07-22, 12:08authored byRussell
Jie Kai Ngo, Jing Wui Yeoh, Gerald Horng Wei Fan, Wilbert Keat Siang Loh, Chueh Loo Poh
Modeling in synthetic biology constitutes a powerful
means in our
continuous search for improved performance with a rational Design–Build–Test–Learn
approach. Particularly, kinetic models unravel system dynamics and
enable system analysis for guiding experimental design. However, a
systematic yet modular pipeline that allows one to identify the appropriate
model and guide the experimental designs while tracing the entire
model development and analysis is still lacking. Here, we develop
BMSS2, a unified tool that streamlines and automates model selection
by combining information criterion ranking with upstream and parallel
analysis algorithms. These include Bayesian parameter inference, a priori and a posteriori identifiability
analysis, and global sensitivity analysis. In addition, the database-driven
design supports interactive model storage/retrieval to encourage reusability
and facilitate automated model selection. This allows ease of model
manipulation and deposition for the selection and analysis, thus enabling
better utilization of models in guiding experimental design.