Stochastic focusing coupled with negative feedback enables robust regulation in biochemical reaction networks
Andreas Milias-Argeitis, Stefan Engblom, Pavol Bauer, Mustafa Khammash

TL;DR
This paper demonstrates how negative feedback combined with stochastic focusing in biochemical networks can achieve robust regulation and high precision despite inherent noise and low molecule counts.
Contribution
It introduces a simple enzymatic model showing how negative feedback transforms a noisy, high-gain system into a robust, low-noise homeostatic mechanism, resolving conflicts between noise and precision.
Findings
Negative feedback reduces output noise and enhances robustness.
Stochastic focusing can be stabilized by feedback, aligning stochastic and deterministic behaviors.
The mechanism explains high precision in noisy intracellular processes.
Abstract
Nature presents multiple intriguing examples of processes which proceed at high precision and regularity. This remarkable stability is frequently counter to modelers' experience with the inherent stochasticity of chemical reactions in the regime of low copy numbers. Moreover, the effects of noise and nonlinearities can lead to "counter-intuitive" behavior, as demonstrated for a basic enzymatic reaction scheme that can display stochastic focusing (SF). Under the assumption of rapid signal fluctuations, SF has been shown to convert a graded response into a threshold mechanism, thus attenuating the detrimental effects of signal noise. However, when the rapid fluctuation assumption is violated, this gain in sensitivity is generally obtained at the cost of very large product variance, and this unpredictable behavior may be one possible explanation of why, more than a decade after its…
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