Stochasticity in the miR-9/Hes1 oscillatory network can account for clonal heterogeneity in the timing of differentiation

Nick E. Phillips(University of Manchester), Cerys Manning(University of Manchester), Tom Pettini(University of Manchester), Veronica Biga(University of Manchester), Elli Marinopoulou(University of Manchester), Peter Stanley(University of Manchester), James Boyd(University of Manchester), James Bagnall(University of Manchester), Pawel Paszek(University of Manchester), David G. Spiller(University of Manchester), Michael White(University of Manchester), Marc Goodfellow(Engineering and Physical Sciences Research Council), Tobias Galla(University of Manchester), Magnus Rattray(University of Manchester), Nancy Papalopulu(University of Manchester)
eLife
October 4, 2016
Cited by 53Open Access
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Abstract

Recent studies suggest that cells make stochastic choices with respect to differentiation or division. However, the molecular mechanism underlying such stochasticity is unknown. We previously proposed that the timing of vertebrate neuronal differentiation is regulated by molecular oscillations of a transcriptional repressor, HES1, tuned by a post-transcriptional repressor, miR-9. Here, we computationally model the effects of intrinsic noise on the Hes1/miR-9 oscillator as a consequence of low molecular numbers of interacting species, determined experimentally. We report that increased stochasticity spreads the timing of differentiation in a population, such that initially equivalent cells differentiate over a period of time. Surprisingly, inherent stochasticity also increases the robustness of the progenitor state and lessens the impact of unequal, random distribution of molecules at cell division on the temporal spread of differentiation at the population level. This advantageous use of biological noise contrasts with the view that noise needs to be counteracted.


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