Author
Listed:
- Andrew G. Nicoll
(University of Edinburgh)
- Juraj Szavits-Nossan
(University of Edinburgh)
- Martin R. Evans
(University of Edinburgh)
- Ramon Grima
(University of Edinburgh)
Abstract
What features of transcription can be learnt by fitting mathematical models of gene expression to mRNA count data? Given a suite of models, fitting to data selects an optimal one, thus identifying a probable transcriptional mechanism. Whilst attractive, the utility of this methodology remains unclear. Here, we sample steady-state, single-cell mRNA count distributions from parameters in the physiological range, and show they cannot be used to confidently estimate the number of inactive gene states, i.e. the number of rate-limiting steps in transcriptional initiation. Distributions from over 99% of the parameter space generated using models with 2, 3, or 4 inactive states can be well fit by one with a single inactive state. However, we show that for many minutes following induction, eukaryotic cells show an increase in the mean mRNA count that obeys a power law whose exponent equals the sum of the number of states visited from the initial inactive to the active state and the number of rate-limiting post-transcriptional processing steps. Our study shows that estimation of the exponent from eukaryotic data can be sufficient to determine a lower bound on the total number of regulatory steps in transcription initiation, splicing, and nuclear export.
Suggested Citation
Andrew G. Nicoll & Juraj Szavits-Nossan & Martin R. Evans & Ramon Grima, 2025.
"Transient power-law behaviour following induction distinguishes between competing models of stochastic gene expression,"
Nature Communications, Nature, vol. 16(1), pages 1-18, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58127-4
DOI: 10.1038/s41467-025-58127-4
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