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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.
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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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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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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. 
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mRNA Stability and Gene Expression02:51

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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.
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Missing-Values Imputation Algorithms for Microarray Gene Expression Data.

Kohbalan Moorthy1, Aws Naser Jaber2, Mohd Arfian Ismail2

  • 1Faculty of Computer Systems & Software Engineering, Universiti Malaysia Pahang, Kuantan, Pahang, Malaysia. kohbalan@ump.edu.my.

Methods in Molecular Biology (Clifton, N.J.)
|May 23, 2019
PubMed
Summary
This summary is machine-generated.

Missing values in gene expression data hinder accurate cancer prediction. This review categorizes imputation algorithms (global, hybrid, local, knowledge-based) to help scientists select appropriate methods for their data.

Keywords:
Cancer InformaticsComputational intelligenceGene expression dataMicroarrayMissing-values imputation

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Area of Science:

  • Bioinformatics
  • Genomics
  • Computational Biology

Background:

  • Missing values are a pervasive issue in gene expression studies, impacting data interpretation and downstream analyses like cancer prediction.
  • Existing bioinformatics tools for cancer prediction rely on comprehensive datasets, necessitating effective strategies for handling missing data.

Purpose of the Study:

  • To review and classify existing missing-value imputation techniques for gene expression data.
  • To guide scientists in selecting appropriate imputation algorithms based on data characteristics and analytical goals.

Main Methods:

  • The study reviews research on missing-value imputation approaches for gene expression data.
  • Algorithms are classified into global, hybrid, local, and knowledge-based techniques.
  • Focus is placed on differences between algorithms using local and global data correlations.

Main Results:

  • A classification framework for imputation algorithms is presented.
  • The review highlights the importance of matching algorithms to specific data characteristics.
  • Suitable assessments for evaluating different imputation approaches are discussed.

Conclusions:

  • Effective imputation of missing values is crucial for reliable gene expression analysis and cancer prediction.
  • Understanding algorithm classifications aids scientists in choosing optimal methods.
  • This review provides a resource for adapting imputation techniques to diverse gene expression datasets.