October 11, 2012
Journal Article

Modeling Dynamic Regulatory Processes in Stroke.

Abstract

The ability to examine in silico the behavior of biological systems can greatly accelerate the pace of discovery in disease pathologies, such as stroke, where in vivo experimentation is lengthy and costly. In this paper we describe an approach to in silico examination of blood genomic responses to neuroprotective agents and subsequent stroke through the development of dynamic models of the regulatory processes observed in the experimental gene expression data. First, we identified functional gene clusters from these data. Next, we derived ordinary differential equations (ODEs) relating regulators and functional clusters from the data. These ODEs were used to develop dynamic models that simulate the expression of regulated functional clusters using system dynamics as the modeling paradigm. The dynamic model has the considerable advantage of only requiring an initial starting state, and does not require measurement of regulatory influences at each time point in order to make accurate predictions. The manipulation of input model parameters, such as changing the magnitude of gene expression, made it possible to assess the behavior of the networks through time under varying conditions. We report that an optimized dynamic model can provide accurate predictions of overall system behavior under several different preconditioning paradigms.

Revised: November 15, 2012 | Published: October 11, 2012

Citation

McDermott J.E., K.D. Jarman, R.C. Taylor, M.J. Lancaster, H. Shankaran, K.B. Vartanian, and S. Stevens, et al. 2012. Modeling Dynamic Regulatory Processes in Stroke. PLoS Computational Biology 8, no. 10:e1002722. PNNL-SA-81643. doi:10.1371/journal.pcbi.1002722