5th Conference on Constraint-Based Reconstruction and Analysis (COBRA 2018)
Developing and Evaluating Integrated Metabolic Regulatory Models for Microbial Life
Authors
Nathan Tintle - Presenter, Dordt College
Matthew DeJongh - Presenter, Hope College
William Lindsey - Presenter, Dordt College
Aaron Best, Hope College
Molly Creagar, University of San Francisco
Craig Disselkoen, University of California, San Diego
Ruby Fore, Brown University
Derek Friend, University of Nevada, Reno
Thomas Kamp, Dordt College
Christopher S. Henry, Argonne National Laboratory
A number of papers have described methods to include transcriptional regulatory networks (TRNs) in the development of metabolic models. However, in general, these models do not allow for statistical uncertainty in TRN interactions. Furthermore, methods which do allow for uncertainty do so in a non-rigorous manner which, effectively, downweights prior transcriptomics data to the point where it has little impact on the resulting model. To combat these limitations, we developed an integrated metabolic regulatory model (iMRM). This novel approach explicitly models the statistical uncertainty in gene state activity inferences by using gene activity state estimates, and the iMRM process measures the flux through reactions for a sole single-cell organism. This allows for benefits such as differential thresholds for gene activity for different genes, a stronger correlation with experimental flux data, and the application of a non-Boolean confidence metric. Furthermore, this is the first such metabolic model to be grounded on a statistically rigorous foundation.