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Related Concept Videos

Combinatorial Gene Control02:33

Combinatorial Gene Control

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Combinatorial gene control is the synergistic action of several transcriptional factors to regulate the expression of a single gene. The absence of one or more of these factors may lead to a significant difference in the level of gene expression or repression.
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Gene expression in prokaryotes is governed by constitutive and regulated systems, allowing cells to balance the production of essential proteins with adaptive responses to environmental changes.Constitutive Gene ExpressionConstitutive, or housekeeping, genes are continuously expressed as they encode proteins vital for fundamental cellular processes. These include enzymes for glycolysis, ribosomal components for protein synthesis, and proteins involved in DNA replication. Their constant...
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Transcriptional regulators bind to specific cis-regulatory sequences in the DNA to regulate gene transcription. These cis-regulatory sequences are very short, usually less than ten nucleotide pairs in length. The short length means that there is a high probability of the exact same sequence randomly occurring throughout the genome.  Since regulators can also bind to groups of similar sequences, this further increases the chances of random binding. Transcriptional regulators form...
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The gene expression in cells is regulated at different stages: (i) transcription, (ii) RNA processing, (iii) RNA localization, and (iv) translation. Transcriptional regulation is mediated by regulatory proteins such as transcription factors, activators, or repressors—these control gene expression by initiating or inhibiting the transcription of genes. Once a precursor or pre-mRNA is produced, it undergoes post-transcriptional modification, including 5' capping, splicing, and the...
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Constructing gene co-functional and co-regulatory networks from public transcriptomes using condition-specific

Peng Ken Lim1, Ruoxi Wang2, Shan Chun Lim2

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We developed TEA-GCN, a novel method for constructing gene co-expression networks (GCNs) from large public RNA-seq datasets. TEA-GCN improves gene function prediction and regulatory network inference across multiple species.

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Area of Science:

  • Computational Biology
  • Bioinformatics
  • Systems Biology

Background:

  • Gene co-expression networks (GCNs) are crucial for understanding gene relationships.
  • Existing GCN methods struggle with batch effects and sample composition in public RNA-seq data.
  • This limits their utility for cross-species comparative studies.

Purpose of the Study:

  • To develop a robust GCN construction method for large-scale, public RNA-seq data.
  • To improve the accuracy of gene function prediction and regulatory network inference.
  • To enhance cross-species GCN conservation for comparative genomics.

Main Methods:

  • Introduced TEA-GCN (two-tier ensemble aggregation-GCN), a novel GCN construction approach.
  • Utilized unsupervised transcriptomic dataset partitioning and multi-metric co-expression scoring.
  • Leveraged natural language processing for biologically relevant dataset partitioning and explainability.

Main Results:

  • TEA-GCN demonstrated superior performance over state-of-the-art methods across 12 species.
  • Achieved enhanced accuracy in predicting gene functions and inferring gene regulatory networks.
  • Identified tissue-/condition-specific co-expression patterns with high explainability.
  • Showcased improved cross-species conservation of constructed GCNs.

Conclusions:

  • TEA-GCN offers a robust and scalable solution for building high-quality GCNs from public RNA-seq data.
  • The method enhances biological discovery through improved prediction and inference capabilities.
  • TEA-GCN facilitates cross-species comparative transcriptomic analyses.