Identifiability of linear noise approximation models of chemical reaction networks from stationary distributions
Author(s)
Grunberg, Theodore W.; Del Vecchio, Domitilla
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Biomolecular systems can often be modeled by
chemical reaction networks with unknown parameters. In many
cases, the available data is constituted of samples from the
stationary distribution, wherein each sample is given by a
cell in a population. In this work, we develop a framework
to assess identifiability of parameters in such a situation.
Working with the Linear Noise Approximation (LNA) we
give an algebraic formulation of identifiability and use it to
certify identifiability with Hilbert’s Nullstellensatz. We include
applications to particular biomolecular systems, focusing on the
identifiability of a sequestration-based motif and of a feedback
arrangement based on it.
Description
2022 IEEE 61st Conference on Decision and Control (CDC) December 6-9, 2022. Cancún, Mexico
Date issued
2022-12-06Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science; Massachusetts Institute of Technology. Department of Mechanical EngineeringPublisher
IEEE|2022 IEEE 61st Conference on Decision and Control (CDC)
Citation
Grunberg, Theodore W. and Del Vecchio, Domitilla. 2022. "Identifiability of linear noise approximation models of chemical reaction networks from stationary distributions."
Version: Author's final manuscript