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Spectral solutions to stochastic models of gene expression with bursts and regulation. | LitMetric

Spectral solutions to stochastic models of gene expression with bursts and regulation.

Phys Rev E Stat Nonlin Soft Matter Phys

Department of Physics, Columbia University, New York, New York 10027, USA.

Published: October 2009

AI Article Synopsis

  • Signal-processing molecules in cells exist in low quantities, which leads to the need for probabilistic models to deal with inherent noise in their behavior.
  • The text proposes a new method for calculating probability distributions directly through the natural eigenfunctions of the governing linear equations, rather than relying on simulation-based approaches.
  • This new spectral method is shown to be more efficient and accurate than simulations when applied to various models of stochastic gene expression, demonstrating optimal bimodal responses for information transmission in slow-switching scenarios.

Article Abstract

Signal-processing molecules inside cells are often present at low copy number, which necessitates probabilistic models to account for intrinsic noise. Probability distributions have traditionally been found using simulation-based approaches which then require estimating the distributions from many samples. Here we present in detail an alternative method for directly calculating a probability distribution by expanding in the natural eigenfunctions of the governing equation, which is linear. We apply the resulting spectral method to three general models of stochastic gene expression: a single gene with multiple expression states (often used as a model of bursting in the limit of two states), a gene regulatory cascade, and a combined model of bursting and regulation. In all cases we find either analytic results or numerical prescriptions that greatly outperform simulations in efficiency and accuracy. In the last case, we show that bimodal response in the limit of slow switching is not only possible but optimal in terms of information transmission.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3115574PMC
http://dx.doi.org/10.1103/PhysRevE.80.041921DOI Listing

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