Authors
Christoph Zechner, Jakob Ruess, Peter Krenn, Serge Pelet, Matthias Peter, John Lygeros, Heinz Koeppl
Publication date
2012/5/22
Journal
Proceedings of the National Academy of Sciences
Volume
109
Issue
21
Pages
8340-8345
Publisher
National Academy of Sciences
Description
Recent computational studies indicate that the molecular noise of a cellular process may be a rich source of information about process dynamics and parameters. However, accessing this source requires stochastic models that are usually difficult to analyze. Therefore, parameter estimation for stochastic systems using distribution measurements, as provided for instance by flow cytometry, currently remains limited to very small and simple systems. Here we propose a new method that makes use of low-order moments of the measured distribution and thereby keeps the essential parts of the provided information, while still staying applicable to systems of realistic size. We demonstrate how cell-to-cell variability can be incorporated into the analysis obviating the need for the ubiquitous assumption that the measurements stem from a homogeneous cell population. We demonstrate the method for a simple example of …
Total citations
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Scholar articles
C Zechner, J Ruess, P Krenn, S Pelet, M Peter… - Proceedings of the National Academy of Sciences, 2012