2023
DOI: 10.1101/2023.03.09.532005
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What can we learn when fitting a simple telegraph model to a complex gene expression model?

Abstract: In experiments, the distributions of mRNA or protein numbers in single cells are often fitted to the random telegraph model which includes synthesis and degradation of mRNA or protein, and switching of the gene between active and inactive states. While commonly used, this model does not describe how fluctuations are influenced by crucial biological mechanisms such as feedback regulation, non-exponential gene inactivation durations, and multiple gene activation pathways. Here we investigate the dynamical proper… Show more

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“…It is currently unclear how far away from steady state does one need to be for these methods to perform robustly – if the shape or another property of the steady-state distribution of mRNA counts encapsulates information about the number of inactive states then the latter could be estimated. There is some evidence from comparison of the telegraph and the N -state model with N = 3 that it is not easy to estimate the number of gene states from steady-state count data [38, 39] but a systematic analysis, especially one for larger values of N , remains missing.…”
Section: Introductionmentioning
confidence: 99%
“…It is currently unclear how far away from steady state does one need to be for these methods to perform robustly – if the shape or another property of the steady-state distribution of mRNA counts encapsulates information about the number of inactive states then the latter could be estimated. There is some evidence from comparison of the telegraph and the N -state model with N = 3 that it is not easy to estimate the number of gene states from steady-state count data [38, 39] but a systematic analysis, especially one for larger values of N , remains missing.…”
Section: Introductionmentioning
confidence: 99%