BioProspector: discovering conserved DNA motifs in upstream regulatory regions of co-expressed genes

X Liu, DL Brutlag, JS Liu - Biocomputing 2001, 2000 - World Scientific
Biocomputing 2001, 2000World Scientific
The development of genome sequencing and DNA microarray analysis of gene expression
gives rise to the demand for data-mining tools. BioProspector, a C program using a Gibbs
sampling strategy, examines the upstream region of genes in the same gene expression
pattern group and looks for regulatory sequence motifs. BioProspector uses zero to third-
order Markov background models whose parameters are either given by the user or
estimated from a specified sequence file. The significance of each motif found is judged …
Abstract
The development of genome sequencing and DNA microarray analysis of gene expression gives rise to the demand for data-mining tools. BioProspector, a C program using a Gibbs sampling strategy, examines the upstream region of genes in the same gene expression pattern group and looks for regulatory sequence motifs. BioProspector uses zero to third-order Markov background models whose parameters are either given by the user or estimated from a specified sequence file. The significance of each motif found is judged based on a motif score distribution estimated by a Monte Carlo method. In addition, BioProspector modifies the motif model used in the earlier Gibbs samplers to allow for the modeling of gapped motifs and motifs with palindromic patterns. All these modifications greatly improve the performance of the program. Although testing and development are still in progress, the program has shown preliminary success in finding the binding motifs for Saccharomyces cerevisiae RAP1, Bacillus subtilis RNA polymerase, and Escherichia coli CRP. We are currently working on combining BioProspector with a clustering program to explore gene expression networks and regulatory mechanisms. For a copy of the program and documentation for UNIX systems, please contact xliu@smi.stanford.edu.
World Scientific