Relevant parameters in models of cell division control
Jacopo Grilli, Matteo Osella, Andrew S. Kennard, Marco Cosentino, Lagomarsino

TL;DR
This paper introduces a unified, simple framework linking different models of bacterial cell division control, enabling better interpretation of data and identification of key parameters influencing division mechanisms.
Contribution
It presents a generic framework that connects continuous-time hazard functions with discrete-time size equations, clarifying how various division control mechanisms are represented and distinguished.
Findings
A single parameter characterizes division control strength.
Current data cannot distinguish higher-order effects.
The framework unifies multiple modeling approaches.
Abstract
A recent burst of dynamic single-cell growth-division data makes it possible to characterize the stochastic dynamics of cell division control in bacteria. Different modeling frameworks were used to infer specific mechanisms from such data, but the links between frameworks are poorly explored, with relevant consequences for how well any particular mechanism can be supported by the data. Here, we describe a simple and generic framework in which two common formalisms can be used interchangeably: (i) a continuous-time division process described by a hazard function and (ii) a discrete-time equation describing cell size across generations (where the unit of time is a cell cycle). In our framework, this second process is a discrete-time Langevin equation with a simple physical analogue. By perturbative expansion around the mean initial size (or inter-division time), we show explicitly how…
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