Assessing Clusters and Motifs from Gene Expression Data
- 1 January 2001
- journal article
- Published by Cold Spring Harbor Laboratory in Genome Research
- Vol. 11 (1) , 112-123
- https://doi.org/10.1101/gr.148301
Abstract
Large-scale gene expression studies and genomic sequencing projects are providing vast amounts of information that can be used to identify or predict cellular regulatory processes. Genes can be clustered on the basis of the similarity of their expression profiles or function and these clusters are likely to contain genes that are regulated by the same transcription factors. Searches for cis-regulatory elements can then be undertaken in the noncoding regions of the clustered genes. However, it is necessary to assess the efficiency of both the gene clustering and the postulated regulatory motifs, as there are many difficulties associated with clustering and determining the functional relevance of matches to sequence motifs. We have developed a method to assess the potential functional significance of clusters and motifs based on the probability of finding a certain number of matches to a motif in all of the gene clusters. To avoid problems with threshold scores for a match, the top matches to a motif are taken in several sample sizes. Genes from a sample are then counted by the cluster in which they appear. The probability of observing these counts by chance is calculated using the hypergeometric distribution. Because of the multiple sample sizes, strong and weak matching motifs can be detected and refined and significant matches to motifs across cluster boundaries are observed as all clusters are considered. By applying this method to many motifs and to a cluster set of yeast genes, we detected a similarity between Swi Five Factor and forkhead proteins and suggest that the currently unidentified Swi Five Factor is one of the yeast forkhead proteins.Keywords
This publication has 59 references indexed in Scilit:
- Computational identification of Cis -regulatory elements associated with groups of functionally related genes in Saccharomyces cerevisiae 1 1Edited by F. E. CohenJournal of Molecular Biology, 2000
- Making the most of microarray dataNature Genetics, 2000
- Regulatory elements and expression profilesCurrent Opinion in Structural Biology, 1999
- Options available — from start to finish — for obtaining expression data by microarrayNature Genetics, 1999
- The Transcriptional Program of Sporulation in Budding YeastScience, 1998
- Finding DNA regulatory motifs within unaligned noncoding sequences clustered by whole-genome mRNA quantitationNature Biotechnology, 1998
- Software for the analysis of DNA sequence elements of transcriptionBioinformatics, 1997
- DNA recognition site analysis of Xenopus wingedhelix proteinsJournal of Molecular Biology, 1995
- CLUSTAL W: improving the sensitivity of progressive multiple sequence alignment through sequence weighting, position-specific gap penalties and weight matrix choiceNucleic Acids Research, 1994
- Sequence logos: a new way to display consensus sequencesNucleic Acids Research, 1990