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Derivation of stationary distributions of biochemical reaction networks via structure transformation SCIE SCOPUS

Title
Derivation of stationary distributions of biochemical reaction networks via structure transformation
Authors
Hong, HyukpyoKim, JinsuAli Al-Radhawi, M.Sontag, Eduardo D.Kim, Jae Kyoung
Date Issued
2021-05
Publisher
Nature Publishing Group
Abstract
AbstractLong-term behaviors of biochemical reaction networks (BRNs) are described by steady states in deterministic models and stationary distributions in stochastic models. Unlike deterministic steady states, stationary distributions capturing inherent fluctuations of reactions are extremely difficult to derive analytically due to the curse of dimensionality. Here, we develop a method to derive analytic stationary distributions from deterministic steady states by transforming BRNs to have a special dynamic property, called complex balancing. Specifically, we merge nodes and edges of BRNs to match in- and out-flows of each node. This allows us to derive the stationary distributions of a large class of BRNs, including autophosphorylation networks of EGFR, PAK1, and Aurora B kinase and a genetic toggle switch. This reveals the unique properties of their stochastic dynamics such as robustness, sensitivity, and multi-modality. Importantly, we provide a user-friendly computational package, CASTANET, that automatically derives symbolic expressions of the stationary distributions of BRNs to understand their long-term stochasticity.
URI
https://oasis.postech.ac.kr/handle/2014.oak/110542
DOI
10.1038/s42003-021-02117-x
ISSN
2399-3642
Article Type
Article
Citation
Communications Biology, vol. 4, no. 1, 2021-05
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