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Novel computational biology model accurately describes dynamics of gene expression

Date:
January 31, 2018
Source:
Los Alamos National Laboratory
Summary:
Using a simple analytical framework for random events within a predictable system, computational biologists have found a new way to accurately model certain forms of gene expression, including the body's 24-hour internal clock. This new approach of applying a piecewise deterministic Markov process (PDMP) to gene expression could inform possible design principles for synthetic biologists.
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Using a simple analytical framework for random events within a predictable system, computational biologists have found a new way to accurately model certain forms of gene expression, including the body's 24-hour internal clock. This new approach of applying a piecewise deterministic Markov process (PDMP) to gene expression could inform possible design principles for synthetic biologists.

"In this study, we develop a simplifying method to reduce a class of commonly adopted gene expression models to a mathematical model, the PDMP, because it is easier to analyze and simulate than previous models," said Yen Ting Lin, corresponding author of the study and an applied mathematician in the Theoretical Division and Center for Nonlinear Studies at Los Alamos National Laboratory.

Nicolas E. Buchler of Duke University and Center for Genomic & Computational Biology, coauthored the study, which appears today in the journal Royal Society Interface.

Lin said the new model turned out to be a very natural language to describe the dynamics of eukaryotic gene expression. Mathematical models for the kinetics of chemical reactions -- in this case, the process of gene expression -- often assume that, because some processes are reacting at a much faster timescale, averaging can be used as an analytical technique. However, recent experiments suggest such fast averaging may not be true.

Single-cell experiments show that gene expression is random and "bursty," Lin said, a feature that can emerge from slow switching between promoter states with different activities. Promoters help regulate gene expression, but how they are activated and the impact of kinetics remains elusive. One source of long-lived promoter states is the slow binding and unbinding kinetics of transcription factors to promoters. The study found that the PDMP mathematical model accurately describes the random, or stochastic, dynamics of gene expression in the non-adiabatic regime (where promoter kinetics are slow and fast averaging cannot occur).

The current study found that oscillatory dynamics could be more robust than previously thought, because the slow promoter kinetics can induce reliable oscillations that a fast-switching promoter cannot do.

"Possible mechanisms to regulate the coherence of the oscillation, as a living organism would have evolved to develop a robust circadian rhythm, or daily biological clock, can also be revealed from the theoretical analyses," Lin said. "These hypotheses merit future experimental verification."


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Materials provided by Los Alamos National Laboratory. Note: Content may be edited for style and length.


Journal Reference:

  1. Yen Ting Lin, Nicolas E. Buchler. Efficient analysis of stochastic gene dynamics in the non-adiabatic regime using piecewise deterministic Markov processes. Journal of The Royal Society Interface, 2018; 15 (138): 20170804 DOI: 10.1098/rsif.2017.0804

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Los Alamos National Laboratory. "Novel computational biology model accurately describes dynamics of gene expression." ScienceDaily. ScienceDaily, 31 January 2018. <www.sciencedaily.com/releases/2018/01/180131144555.htm>.
Los Alamos National Laboratory. (2018, January 31). Novel computational biology model accurately describes dynamics of gene expression. ScienceDaily. Retrieved April 19, 2024 from www.sciencedaily.com/releases/2018/01/180131144555.htm
Los Alamos National Laboratory. "Novel computational biology model accurately describes dynamics of gene expression." ScienceDaily. www.sciencedaily.com/releases/2018/01/180131144555.htm (accessed April 19, 2024).

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