Open Access
Using average transcription level to understand the regulation of stochastic gene activation
Author(s) -
Chen Liang,
Guojian Lin,
Jianshe Yu
Publication year - 2022
Publication title -
royal society open science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.84
H-Index - 51
ISSN - 2054-5703
DOI - 10.1098/rsos.211757
Subject(s) - transcription (linguistics) , gene , computational biology , biology , genetics , computer science , philosophy , linguistics
Gene activation is a random process, modelled as a framework of multiple rate-limiting steps listed sequentially, in parallel or in combination. Together with suitably assumed processes of gene inactivation, transcript birth and death, the step numbers and parameters in activation frameworks can be estimated by fitting single-cell transcription data. However, current algorithms require computing master equations that are tightly correlated with prior hypothetical frameworks of gene activation. We found that prior estimation of the framework can be facilitated by the traditional dynamical data of mRNA average levelM (t ), presenting discriminated dynamical features. Rigorous theory regardingM (t ) profiles allows to confidently rule out the frameworks that fail to captureM (t ) features and to test potential competent frameworks by fittingM (t ) data. We implemented this procedure for a large number of mouse fibroblast genes under tumour necrosis factor induction and determined exactly the ‘cross-talkingn -state’ framework; the cross-talk between the signalling and basal pathways is crucial to trigger the first peak ofM (t ), while the following damped gentleM (t ) oscillation is regulated by the multi-step basal pathway. This framework can be used to fit sophisticated single-cell data and may facilitate a more accurate understanding of stochastic activation of mouse fibroblast genes.