Integrating transcription factor binding site information with gene expression datasets
Open Access
- 24 November 2006
- journal article
- research article
- Published by Oxford University Press (OUP) in Bioinformatics
- Vol. 23 (3) , 298-305
- https://doi.org/10.1093/bioinformatics/btl597
Abstract
Motivation: Microarrays are widely used to measure gene expression differences between sets of biological samples. Many of these differences will be due to differences in the activities of transcription factors. In principle, these differences can be detected by associating motifs in promoters with differences in gene expression levels between the groups. In practice, this is hard to do. Results: We combine correspondence analysis, between group analysis and co-inertia analysis to determine which motifs, from a database of promoter motifs, are strongly associated with differences in gene expression levels. Given a database of motifs and gene expression levels from a set of arrays, the method produces a ranked list of motifs associated with any specified split in the arrays. We give an example using the Gene Atlas compendium of gene expression levels for human tissues where we search for motifs that are associated with expression in central nervous system (CNS) or muscle tissues. Most of the motifs that we find are known from previous work to be strongly associated with expression in CNS or muscle. We give a second example using a published prostate cancer dataset where we can simply and clearly find which transcriptional pathways are associated with differences between benign and metastatic samples. Availability: The source code is freely available upon request from the authors. Contact:Ian.Jeffery@ucd.ieKeywords
This publication has 49 references indexed in Scilit:
- High-Resolution Genome-Wide Mapping of Genetic Alterations in Human Glial Brain TumorsCancer Research, 2005
- Toucan: deciphering the cis-regulatory logic of coregulated genesNucleic Acids Research, 2003
- Colocalisation of the protein tyrosine phosphatases PTP-SL and PTPBR7 with β4-adaptin in neuronal cellsHistochemistry and Cell Biology, 2002
- PipTools: A Computational Toolkit to Annotate and Analyze Pairwise Comparisons of Genomic SequencesGenomics, 2002
- Expression of the aryl hydrocarbon receptor (AhR) and the aryl hydrocarbon receptor nuclear translocator (ARNT) in fetal, benign hyperplastic, and malignant prostateThe Prostate, 1998
- Pax: Gene regulators in the developing nervous systemJournal of Neurobiology, 1993
- PLS regression methodsJournal of Chemometrics, 1988
- Enhanced expression of the c‐myc protooncogene in high‐grade human prostate cancersThe Prostate, 1987
- Androgen receptor binding activity in human prostate cancerCancer, 1985
- SPECIFIC HIGH-AFFINITY RECEPTORS FOR 1,25-DIHYDROXYVITAMIN D3IN HUMAN PERIPHERAL BLOOD MONONUCLEAR CELLS: PRESENCE IN MONOCYTES AND INDUCTION IN T LYMPHOCYTES FOLLOWING ACTIVATIONJournal of Clinical Endocrinology & Metabolism, 1983