Litcius/Paper detail

Using single-cell models to predict the functionality of synthetic circuits at the population scale

Chetan Aditya, François Bertaux, Grégory Batt, Jakob Ruess

2022Proceedings of the National Academy of Sciences20 citationsDOIOpen Access PDF

Abstract

SignificanceAt the single-cell level, biochemical processes are inherently stochastic. For many natural systems, the resulting cell-to-cell variability is exploited by microbial populations. In synthetic biology, however, the interplay of cell-to-cell variability and population processes such as selection or growth often leads to circuits not functioning as predicted by simple models. Here we show how multiscale stochastic kinetic models that simultaneously track single-cell and population processes can be obtained based on an augmentation of the chemical master equation. These models enable us to quantitatively predict complex population dynamics of a yeast optogenetic differentiation system from a specification of the circuit's components and to demonstrate how cell-to-cell variability can be exploited to purposefully create unintuitive circuit functionality.

Topics & Concepts

Scale (ratio)PopulationComputer scienceElectronic circuitEngineeringElectrical engineeringGeographyCartographySociologyDemographyGene Regulatory Network AnalysisSingle-cell and spatial transcriptomicsCell Image Analysis Techniques