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Inference and uncertainty quantification of stochastic gene expression via synthetic models.

Kaan ÖcalMichael U GutmannGuido SanguinettiRamon Grima
Published in: Journal of the Royal Society, Interface (2022)
Estimating uncertainty in model predictions is a central task in quantitative biology. Biological models at the single-cell level are intrinsically stochastic and nonlinear, creating formidable challenges for their statistical estimation which inevitably has to rely on approximations that trade accuracy for tractability. Despite intensive interest, a sweet spot in this trade-off has not been found yet. We propose a flexible procedure for uncertainty quantification in a wide class of reaction networks describing stochastic gene expression including those with feedback. The method is based on creating a tractable coarse-graining of the model that is learned from simulations, a synthetic model , to approximate the likelihood function. We demonstrate that synthetic models can substantially outperform state-of-the-art approaches on a number of non-trivial systems and datasets, yielding an accurate and computationally viable solution to uncertainty quantification in stochastic models of gene expression.
Keyphrases
  • gene expression
  • single cell
  • dna methylation
  • rna seq
  • molecular dynamics
  • high resolution
  • minimally invasive
  • high throughput
  • molecular dynamics simulations