Abstract

A major challenge in systems biology is to infer the parameters of regulatory networks that operate in a noisy environment, such as in a single cell. In a stochastic regime it is hard to distinguish noise from the real signal and to infer the noise contribution to the dynamical behavior. When the genetic network displays oscillatory dynamics, it is even harder to infer the parameters that produce the oscillations. To address this issue we introduce a new estimation method built on a combination of stochastic simulations, mass action kinetics and ensemble network simulations in which we match the average periodogram and phase of the model to that of the data. The method is relatively fast (compared to Metropolis-Hastings Monte Carlo Methods), easy to parallelize, applicable to large oscillatory networks and large (~2000 cells) single cell expression data sets, and it quantifies the noise impact on the observed dynamics. Standard errors of estimated rate coefficients are typically two orders of magnitude smaller than the mean from single cell experiments with on the order of ~1000 cells. We also provide a method to assess the goodness of fit of the stochastic network using the Hilbert phase of single cells. An analysis of phase departures from the null model with no communication between cells is consistent with a hypothesis of Stochastic Resonance describing single cell oscillators. Stochastic Resonance provides a physical mechanism whereby intracellular noise plays a positive role in establishing oscillatory behavior, but may require model parameters, such as rate coefficients, that differ substantially from those extracted at the macroscopic level from measurements on populations of millions of communicating, synchronized cells.

Highlights

  • Gene regulation is an intrinsically stochastic process[1,2,3]

  • We selected this summary statistic in fitting the stochastic network because we looked for models with periodic behavior at the single cell level

  • Parallel tempering as opposed to Metropolis Hastings (M-H) Monte Carlo is sufficient for fitting stochastic models with many parameters

Read more

Summary

Introduction

By measuring the trajectories of many cells, we can find desired statistical summaries of the period, phase, and amplitude for the time series of molecular numbers in a cell By comparing these with analogous summaries generated by a stochastic model, we can infer parameters of the underlying stochastic process. In modeling stochastic molecular time series data, it is important to notice that the individual random trajectories of molecule numbers cannot, in general, be compared directly to individual observed single-cell fluorescence time series. . ., M, are defined based on mass action kinetics, aj(x) = kjbj(x) where kj is a Ensemble methods for stochastic networks with special reference to the biological clock of Neurospora crassa kinetic constant specific to reaction Rj and bj(x) counts the number of ways reaction Rj can occur given state X. The FRQ protein appears to have a role in stabilizing the wc-1 mRNA (wc-1r) [28]

Materials and methods
Calculate g the inverse function of f
Results
Discussion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.