Connecting protein and mRNA burst distributions for stochastic models of gene expression
Vlad Elgart, Tao Jia, Andrew T. Fenley, Rahul V. Kulkarni

TL;DR
This paper develops analytical methods to connect mRNA and protein burst distributions in stochastic gene expression models, enabling inference of mRNA burst characteristics from protein data and validating results with simulations.
Contribution
It derives analytical expressions linking mRNA and protein burst distributions in models with independent bursts, including under repression, and validates these with stochastic simulations.
Findings
Analytical formulas relate protein and mRNA burst distributions.
Protein burst observations can infer mRNA burst characteristics.
Validated models with small RNA regulation through stochastic simulations.
Abstract
The intrinsic stochasticity of gene expression can lead to large variability in protein levels for genetically identical cells. Such variability in protein levels can arise from infrequent synthesis of mRNAs which in turn give rise to bursts of protein expression. Protein expression occurring in bursts has indeed been observed experimentally and recent studies have also found evidence for transcriptional bursting, i.e. production of mRNAs in bursts. Given that there are distinct experimental techniques for quantifying the noise at different stages of gene expression, it is of interest to derive analytical results connecting experimental observations at different levels. In this work, we consider stochastic models of gene expression for which mRNA and protein production occurs in independent bursts. For such models, we derive analytical expressions connecting protein and mRNA burst…
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