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Related Concept Videos

What is Gene Expression?01:42

What is Gene Expression?

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Overview
Gene expression is the process in which DNA directs the synthesis of functional products, that is, proteins. Cells can regulate gene expression at various stages. It allows organisms to generate different cell types and enables cells to adapt to internal and external factors.
Genetic Information Flows from DNA to RNA to Protein
A gene is a stretch of DNA that serves as the blueprint for functional RNAs and proteins. Since DNA is made up of nucleotides and proteins consist of amino...
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What is Gene Expression?01:36

What is Gene Expression?

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A gene is a stretch of DNA that serves as the blueprint for functional RNAs and proteins. Since DNA is comprised  of nucleotides and proteins are comprised of amino acids, a mediator is required to convert the information encoded in DNA into proteins. This mediator is the messenger RNA (mRNA). mRNA copies the blueprint from DNA by a process called transcription. In eukaryotes, transcription occurs in the nucleus by complementary base-pairing with the DNA template. The mRNA is then...
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Cell Specific Gene Expression01:58

Cell Specific Gene Expression

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Multicellular organisms contain a variety of structurally and functionally distinct cell types, but the DNA in all the cells originated from the same parent cells. The differences in the cells can be attributed to the differential gene expression. Liver cells, whose functions include detoxification of blood, production of bile to metabolize fats, and synthesis of proteins essential for metabolism, must express a specific set of genes to perform their functions. Gene expression also varies with...
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Cell Specific Gene Expression01:58

Cell Specific Gene Expression

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Chromatin Position Affects Gene Expression02:35

Chromatin Position Affects Gene Expression

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Chromatin is the massive complex of DNA and proteins packaged inside the nucleus. The complexity of chromatin folding and how it is packaged inside the nucleus greatly influences  access to genetic information. Generally, the nucleus' periphery is considered transcriptionally repressive, while the cell's interior is considered a transcriptionally active area. 
Topologically Associated Domains (TADs)
The 3-dimensional positioning of chromatin in the nucleus influences the...
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mRNA Stability and Gene Expression02:51

mRNA Stability and Gene Expression

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The structure and stability of mRNA molecules regulates gene expression, as mRNAs are a key step in the pathway from gene to protein. In eukaryotes, the half-life of mRNA varies from a few minutes up to several days. mRNA stability is essential in growth and development. The absence of the proteins regulating its stability, such as tristetraprolin in mice, can cause systemic issues, including bone marrow overgrowth, inflammation, and autoimmunity.
Cis-acting Elements involved in mRNA stability
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Using an Automated Cell Counter to Simplify Gene Expression Studies: siRNA Knockdown of IL-4 Dependent Gene Expression in Namalwa Cells
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Bayesian Estimation for Stochastic Gene Expression Using Multifidelity Models.

Huy D Vo1, Zachary Fox2, Ania Baetica3

  • 1Department of Chemical and Biological Engineering , Colorado State University , Fort Collins , Colorado 80523 , United States.

The Journal of Physical Chemistry. B
|February 20, 2019
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Summary
This summary is machine-generated.

New computational methods, adaptive delayed acceptance Metropolis-Hastings (ADAMH) and a hybrid scheme, significantly speed up Bayesian inference for stochastic gene expression models. These approaches reduce computational costs, enabling more complex model analysis.

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Area of Science:

  • Computational biology
  • Systems biology
  • Biophysics

Background:

  • The finite state projection (FSP) approach is crucial for inferring stochastic models of single-cell gene regulation dynamics.
  • However, FSP is computationally intensive, hindering parameter inference and uncertainty quantification for complex models.

Purpose of the Study:

  • To develop computationally efficient methods for Bayesian inference of stochastic gene expression parameters from single-cell data.
  • To address the computational limitations of the FSP approach in analyzing complex gene regulatory networks.

Main Methods:

  • Formulation and verification of an adaptive delayed acceptance Metropolis-Hastings (ADAMH) algorithm using reduced Krylov-basis projections of the FSP.
  • Introduction of a hybrid ADAMH scheme combining model reduction and efficient posterior sampling.
  • Comparison of ADAMH variants against a standard adaptive Metropolis algorithm with full FSP likelihood evaluations using simulated data.

Main Results:

  • The proposed ADAMH variants achieve substantial computational speedup compared to the full FSP approach.
  • Demonstrated efficiency on three example gene regulation models.
  • Validation through comparison with existing adaptive Metropolis algorithms.

Conclusions:

  • The developed ADAMH algorithms significantly reduce the computational cost of parameter estimation in stochastic gene expression models.
  • These methods are expected to facilitate efficient data-driven analysis of more complex gene regulatory models.
  • Enables broader application of computational modeling in single-cell biology.