Literature DB >> 27896997

IMPROVED PERFORMANCE OF GENE SET ANALYSIS ON GENOME-WIDE TRANSCRIPTOMICS DATA WHEN USING GENE ACTIVITY STATE ESTIMATES.

Thomas Kamp1, Micah Adams, Craig Disselkoen, Nathan Tintle.   

Abstract

Gene set analysis methods continue to be a popular and powerful method of evaluating genome-wide transcriptomics data. These approach require a priori grouping of genes into biologically meaningful sets, and then conducting downstream analyses at the set (instead of gene) level of analysis. Gene set analysis methods have been shown to yield more powerful statistical conclusions than single-gene analyses due to both reduced multiple testing penalties and potentially larger observed effects due to the aggregation of effects across multiple genes in the set. Traditionally, gene set analysis methods have been applied directly to normalized, log-transformed, transcriptomics data. Recently, efforts have been made to transform transcriptomics data to scales yielding more biologically interpretable results. For example, recently proposed models transform log-transformed transcriptomics data to a confidence metric (ranging between 0 and 100%) that a gene is active (roughly speaking, that the gene product is part of an active cellular mechanism). In this manuscript, we demonstrate, on both real and simulated transcriptomics data, that tests for differential expression between sets of genes using are typically more powerful when using gene activity state estimates as opposed to log-transformed gene expression data. Our analysis suggests further exploration of techniques to transform transcriptomics data to meaningful quantities for improved downstream inference.

Entities:  

Mesh:

Year:  2017        PMID: 27896997      PMCID: PMC5153581          DOI: 10.1142/9789813207813_0042

Source DB:  PubMed          Journal:  Pac Symp Biocomput        ISSN: 2335-6928


  15 in total

1.  Analyzing gene expression data in terms of gene sets: methodological issues.

Authors:  Jelle J Goeman; Peter Bühlmann
Journal:  Bioinformatics       Date:  2007-02-15       Impact factor: 6.937

Review 2.  The statistical properties of gene-set analysis.

Authors:  Christiaan A de Leeuw; Benjamin M Neale; Tom Heskes; Danielle Posthuma
Journal:  Nat Rev Genet       Date:  2016-04-12       Impact factor: 53.242

3.  A geometric framework for evaluating rare variant tests of association.

Authors:  Keli Liu; Shannon Fast; Matthew Zawistowski; Nathan L Tintle
Journal:  Genet Epidemiol       Date:  2013-03-21       Impact factor: 2.135

4.  Evaluating the consistency of gene sets used in the analysis of bacterial gene expression data.

Authors:  Nathan L Tintle; Alexandra Sitarik; Benjamin Boerema; Kylie Young; Aaron A Best; Matthew Dejongh
Journal:  BMC Bioinformatics       Date:  2012-08-08       Impact factor: 3.169

5.  Large-scale mapping and validation of Escherichia coli transcriptional regulation from a compendium of expression profiles.

Authors:  Jeremiah J Faith; Boris Hayete; Joshua T Thaden; Ilaria Mogno; Jamey Wierzbowski; Guillaume Cottarel; Simon Kasif; James J Collins; Timothy S Gardner
Journal:  PLoS Biol       Date:  2007-01       Impact factor: 8.029

6.  A novel method for accurate operon predictions in all sequenced prokaryotes.

Authors:  Morgan N Price; Katherine H Huang; Eric J Alm; Adam P Arkin
Journal:  Nucleic Acids Res       Date:  2005-02-08       Impact factor: 16.971

7.  Cautions about the reliability of pairwise gene correlations based on expression data.

Authors:  Scott Powers; Matt DeJongh; Aaron A Best; Nathan L Tintle
Journal:  Front Microbiol       Date:  2015-06-26       Impact factor: 5.640

8.  A Bayesian Framework for the Classification of Microbial Gene Activity States.

Authors:  Craig Disselkoen; Brian Greco; Kaitlyn Cook; Kristin Koch; Reginald Lerebours; Chase Viss; Joshua Cape; Elizabeth Held; Yonatan Ashenafi; Karen Fischer; Allyson Acosta; Mark Cunningham; Aaron A Best; Matthew DeJongh; Nathan Tintle
Journal:  Front Microbiol       Date:  2016-08-09       Impact factor: 5.640

9.  Gene set analyses for interpreting microarray experiments on prokaryotic organisms.

Authors:  Nathan L Tintle; Aaron A Best; Matthew DeJongh; Dirk Van Bruggen; Fred Heffron; Steffen Porwollik; Ronald C Taylor
Journal:  BMC Bioinformatics       Date:  2008-11-05       Impact factor: 3.169

10.  Many Microbe Microarrays Database: uniformly normalized Affymetrix compendia with structured experimental metadata.

Authors:  Jeremiah J Faith; Michael E Driscoll; Vincent A Fusaro; Elissa J Cosgrove; Boris Hayete; Frank S Juhn; Stephen J Schneider; Timothy S Gardner
Journal:  Nucleic Acids Res       Date:  2007-10-11       Impact factor: 16.971

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