A Comparative Genomics Approach to Prediction of New Members of Regulons

  1. Kai Tan1,
  2. Gabriel Moreno-Hagelsieb2,
  3. Julio Collado-Vides2, and
  4. Gary D. Stormo1,3
  1. 1Department of Genetics, Washington University School of Medicine, St. Louis, Missouri 63110-8232, USA; 2Programa de Biolı́ogía Molecular Computacional, Centro de Investigacion Sobre Fijacion de Nitrogeno-UNAM, Cuernavaca, Morelos 62100, México

Abstract

Identifying the complete transcriptional regulatory network for an organism is a major challenge. For each regulatory protein, we want to know all the genes it regulates, that is, its regulon. Examples of known binding sites can be used to estimate the binding specificity of the protein and to predict other binding sites. However, binding site predictions can be unreliable because determining the true specificity of the protein is difficult because of the considerable variability of binding sites. Because regulatory systems tend to be conserved through evolution, we can use comparisons between species to increase the reliability of binding site predictions. In this article, an approach is presented to evaluate the computational predicitions of regulatory sites. We combine the prediction of transcription units having orthologous genes with the prediction of transcription factor binding sites based on probabilistic models. We augment the sets of genes inEscherichia coli that are expected to be regulated by two transcription factors, the cAMP receptor protein and the fumarate and nitrate reduction regulatory protein, through a comparison with theHaemophilus influenzae genome. At the same time, we learned more about the regulatory networks of H. influenzae, a species with much less experimental knowledge than E. coli. By studying orthologous genes subject to regulation by the same transcription factor, we also gained understanding of the evolution of the entire regulatory systems.

Footnotes

  • 3 Corresponding author.

  • E-MAIL stormo{at}ural.wustl.edu; FAX (314) 362-7855.

  • Article and publication are at www.genome.org/cgi/doi/10.1101/gr.149301.

    • Received May 24, 2000.
    • Accepted February 8, 2001.
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