Design principles of noise-induced oscillation in biochemical reaction networks: II. coupled positive and negative feedback loops
Jaewook Joo, Sanjeev Chauhan

TL;DR
This study explores how specific network structures in biochemical systems, especially coupled feedback loops, influence the emergence and quality of noise-induced oscillations, revealing design principles for such oscillatory behavior.
Contribution
It provides a detailed analysis of how coupled positive and negative feedback loops affect noise-induced oscillations in biochemical networks, highlighting architectural features that enhance oscillation performance.
Findings
Coupling of feedback loops enhances oscillation coherence.
Networks with larger positive feedback are less effective oscillators.
Structural network features predict oscillation robustness.
Abstract
According to the chemical reaction network theory, the topology of a certain class of chemical reaction networks, regardless of the kinetic details, sets a limit on the dynamical properties that a particular network can potentially admit; the structure of a network predetermines the dynamic capacity of the network. We note that stochastic fluctuations can possibly confer a new dynamical capability to a network. Thus, it is of tremendous value to understand and be able to control the landscape of stochastic dynamical behaviors of a biochemical reaction network as a function of network architecture. Here we investigate such a case where stochastic fluctuations can give rise to the new capability of noise-induced oscillation in a subset of biochemical reaction networks, the networks with only three biochemical species whose reactions are governed by mass action kinetics and with the…
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Taxonomy
TopicsGene Regulatory Network Analysis · stochastic dynamics and bifurcation · Neural dynamics and brain function
