» Articles » PMID: 17517669

Stochastic Fluctuations in Metabolic Pathways

Overview
Specialty Science
Date 2007 May 23
PMID 17517669
Citations 58
Authors
Affiliations
Soon will be listed here.
Abstract

Fluctuations in the abundance of molecules in the living cell may affect its growth and well being. For regulatory molecules (e.g., signaling proteins or transcription factors), fluctuations in their expression can affect the levels of downstream targets in a network. Here, we develop an analytic framework to investigate the phenomenon of noise correlation in molecular networks. Specifically, we focus on the metabolic network, which is highly interlinked, and noise properties may constrain its structure and function. Motivated by the analogy between the dynamics of a linear metabolic pathway and that of the exactly soluble linear queuing network or, alternatively, a mass transfer system, we derive a plethora of results concerning fluctuations in the abundance of intermediate metabolites in various common motifs of the metabolic network. For all but one case examined, we find the steady-state fluctuation in different nodes of the pathways to be effectively uncorrelated. Consequently, fluctuations in enzyme levels only affect local properties and do not propagate elsewhere into metabolic networks, and intermediate metabolites can be freely shared by different reactions. Our approach may be applicable to study metabolic networks with more complex topologies or protein signaling networks that are governed by similar biochemical reactions. Possible implications for bioinformatic analysis of metabolomic data are discussed.

Citing Articles

Single-Molecule Observation of Competitive Protein-Protein Interactions Utilizing a Nanopore.

Sun J, Skanata A, Movileanu L ACS Nano. 2024; 19(1):1103-1115.

PMID: 39718930 PMC: 11752528. DOI: 10.1021/acsnano.4c13072.


Time and dose selective glucose metabolism for glucose homeostasis and energy conversion in the liver.

Pan Y, Hatano A, Ohno S, Morita K, Kokaji T, Bai Y NPJ Syst Biol Appl. 2024; 10(1):107.

PMID: 39349490 PMC: 11443093. DOI: 10.1038/s41540-024-00437-2.


Solving stochastic gene-expression models using queueing theory: A tutorial review.

Szavits-Nossan J, Grima R Biophys J. 2024; 123(9):1034-1057.

PMID: 38594901 PMC: 11079947. DOI: 10.1016/j.bpj.2024.04.004.


Connecting metabolome and phenotype: recent advances in functional metabolomics tools for the identification of bioactive natural products.

Vitale G, Geibel C, Minda V, Wang M, Aron A, Petras D Nat Prod Rep. 2024; 41(6):885-904.

PMID: 38351834 PMC: 11186733. DOI: 10.1039/d3np00050h.


Generalized Michaelis-Menten rate law with time-varying molecular concentrations.

Lim R, Martin T, Chae J, Kim W, Ghim C, Kim P PLoS Comput Biol. 2023; 19(12):e1011711.

PMID: 38079453 PMC: 10735182. DOI: 10.1371/journal.pcbi.1011711.


References
1.
English B, Min W, van Oijen A, Lee K, Luo G, Sun H . Ever-fluctuating single enzyme molecules: Michaelis-Menten equation revisited. Nat Chem Biol. 2006; 2(2):87-94. DOI: 10.1038/nchembio759. View

2.
Zhou T, Chen L, Aihara K . Molecular communication through stochastic synchronization induced by extracellular fluctuations. Phys Rev Lett. 2005; 95(17):178103. DOI: 10.1103/PhysRevLett.95.178103. View

3.
Suel G, Garcia-Ojalvo J, Liberman L, Elowitz M . An excitable gene regulatory circuit induces transient cellular differentiation. Nature. 2006; 440(7083):545-50. DOI: 10.1038/nature04588. View

4.
Hooshangi S, Weiss R . The effect of negative feedback on noise propagation in transcriptional gene networks. Chaos. 2006; 16(2):026108. DOI: 10.1063/1.2208927. View

5.
Kou S, Cherayil B, Min W, English B, Xie X . Single-molecule Michaelis-Menten equations. J Phys Chem B. 2006; 109(41):19068-81. DOI: 10.1021/jp051490q. View