Optimal methylation noise for best chemotactic performance of {\sl E. coli}
Subrata Dev, Sakuntala Chatterjee

TL;DR
This study models the stochastic biochemical network in E. coli to identify an optimal methylation noise level that maximizes chemotactic efficiency, revealing a non-intuitive performance decline at very low noise levels.
Contribution
It introduces a coupled stochastic model of intracellular variables to analyze how methylation noise influences E. coli chemotaxis, identifying an optimal noise strength for best performance.
Findings
Optimal noise enhances chemotactic performance.
Performance worsens at very low noise levels.
There is an optimal nutrient lifetime for maximum efficiency.
Abstract
In response to a concentration gradient of nutrient, E. coli bacterium modulates the rotational bias of flagellar motors which control its run-and-tumble motion, to migrate towards regions of high nutrient concentration. Presence of stochastic noise in the biochemical pathway of the cell has important consequence on the switching mechanism of motor bias, which in turn affects the runs and tumbles of the cell. We model the intra-cellular reaction network in terms of coupled time-evolution of three stochastic variables, kinase activity, methylation level and CheY-P protein level, and study the effect of methylation noise on the chemotactic performance of the cell. In presence of a spatially varying nutrient concentration profile, a good chemotactic performance allows the cell to climb up the concentration gradient fast and localize in the nutrient-rich regions in the long time limit. Our…
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