Author:
Bonassi Fernando V.,You Lingchong,West Mike
Abstract
In studies of dynamic molecular networks in systems biology, experiments are increasingly exploiting technologies such as flow cytometry to generate data on marginal distributions of a few network nodes at snapshots in time. For example, levels of intracellular expression of a few genes, or cell surface protein markers, can be assayed at a series of interim time points and assumed steady-states under experimentally stimulated growth conditions in small cellular systems. Such marginal data on a small number of cellular markers will typically carry very limited information on the parameters and structure of dynamic network models, though experiments will typically be designed to expose variation in cellular phenotypes that are inherently related to some aspects of model parametrization and structure. Our work addresses statistical questions of how to integrate such data with dynamic stochastic models in order to properly quantify the information—or lack of information—it carries relative to models assumed. We present a Bayesian computational strategy coupled with a novel approach to summarizing and numerically characterizing biological phenotypes that are represented in terms of the resulting sample distributions of cellular markers. We build on Bayesian simulation methods and mixture modeling to define the approach to linking mechanistic mathematical models of network dynamics to snapshot data, using a toggle switch example integrating simulated and real data as context.
Subject
Computational Mathematics,Genetics,Molecular Biology,Statistics and Probability
Reference19 articles.
1. Image segmentation and dynamic lineage analysis in single - cell fluorescent mi - croscopy;Wang;Cytometry,2010
2. On optimal selection of summary statistics for Approximate Bayesian Computation Statistical Applications in Genetics and Molecular Article;Nunes;Biology,2010
3. Franc ois Non - linear regression models for Approximate Bayesian Computation and;Blum;Statistics Computing,2010
4. Gene expression phenotypes of oncogenic pathways;Huang;Cell Cycle,2003
5. Statistical mixture modelling for cell subtype identification in flow cytom - etry;Chan;Cytometry,2008
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