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Computing and Applying Atomic Regulons to Understand Gene Expression and Regulation

Overview of attention for article published in Frontiers in Microbiology, November 2016
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Title
Computing and Applying Atomic Regulons to Understand Gene Expression and Regulation
Published in
Frontiers in Microbiology, November 2016
DOI 10.3389/fmicb.2016.01819
Pubmed ID
Authors

José P. Faria, James J. Davis, Janaka N. Edirisinghe, Ronald C. Taylor, Pamela Weisenhorn, Robert D. Olson, Rick L. Stevens, Miguel Rocha, Isabel Rocha, Aaron A. Best, Matthew DeJongh, Nathan L. Tintle, Bruce Parrello, Ross Overbeek, Christopher S. Henry

Abstract

Understanding gene function and regulation is essential for the interpretation, prediction, and ultimate design of cell responses to changes in the environment. An important step toward meeting the challenge of understanding gene function and regulation is the identification of sets of genes that are always co-expressed. These gene sets, Atomic Regulons (ARs), represent fundamental units of function within a cell and could be used to associate genes of unknown function with cellular processes and to enable rational genetic engineering of cellular systems. Here, we describe an approach for inferring ARs that leverages large-scale expression data sets, gene context, and functional relationships among genes. We computed ARs for Escherichia coli based on 907 gene expression experiments and compared our results with gene clusters produced by two prevalent data-driven methods: Hierarchical clustering and k-means clustering. We compared ARs and purely data-driven gene clusters to the curated set of regulatory interactions for E. coli found in RegulonDB, showing that ARs are more consistent with gold standard regulons than are data-driven gene clusters. We further examined the consistency of ARs and data-driven gene clusters in the context of gene interactions predicted by Context Likelihood of Relatedness (CLR) analysis, finding that the ARs show better agreement with CLR predicted interactions. We determined the impact of increasing amounts of expression data on AR construction and find that while more data improve ARs, it is not necessary to use the full set of gene expression experiments available for E. coli to produce high quality ARs. In order to explore the conservation of co-regulated gene sets across different organisms, we computed ARs for Shewanella oneidensis, Pseudomonas aeruginosa, Thermus thermophilus, and Staphylococcus aureus, each of which represents increasing degrees of phylogenetic distance from E. coli. Comparison of the organism-specific ARs showed that the consistency of AR gene membership correlates with phylogenetic distance, but there is clear variability in the regulatory networks of closely related organisms. As large scale expression data sets become increasingly common for model and non-model organisms, comparative analyses of atomic regulons will provide valuable insights into fundamental regulatory modules used across the bacterial domain.

Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 25 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
Mexico 1 4%
Portugal 1 4%
Unknown 23 92%

Demographic breakdown

Readers by professional status Count As %
Researcher 5 20%
Student > Doctoral Student 3 12%
Student > Postgraduate 3 12%
Professor > Associate Professor 3 12%
Student > Master 3 12%
Other 6 24%
Unknown 2 8%
Readers by discipline Count As %
Biochemistry, Genetics and Molecular Biology 8 32%
Agricultural and Biological Sciences 8 32%
Computer Science 2 8%
Unspecified 1 4%
Immunology and Microbiology 1 4%
Other 1 4%
Unknown 4 16%