Effective Function Annotation through Catalytic Residue Conservation

Because of the extreme impact of genome sequencing projects, protein sequences without accompanying experimental data now dominate public databases. Homology searches, by providing an opportunity to transfer functional information between related proteins, have become the de facto way to address thi...

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Published inProceedings of the National Academy of Sciences - PNAS Vol. 102; no. 35; pp. 12299 - 12304
Main Authors George, Richard A., Spriggs, Ruth V., Bartlett, Gail J., Gutteridge, Alex, MacArthur, Malcolm W., Porter, Craig T., Al-Lazikani, Bissan, Thornton, Janet M., Swindells, Mark B.
Format Journal Article
LanguageEnglish
Published United States National Academy of Sciences 30.08.2005
National Acad Sciences
SeriesInaugural Article
Subjects
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Summary:Because of the extreme impact of genome sequencing projects, protein sequences without accompanying experimental data now dominate public databases. Homology searches, by providing an opportunity to transfer functional information between related proteins, have become the de facto way to address this. Although a single, well annotated, close relationship will often facilitate sufficient annotation, this situation is not always the case, particularly if mutations are present in important functional residues. When only distant relationships are available, the transfer of function information is more tenuous, and the likelihood of encountering several well annotated proteins with different functions is increased. The consequence for a researcher is a range of candidate functions with little way of knowing which, if any, are correct. Here, we address the problem directly by introducing a computational approach to accurately identify and segregate related proteins into those with a functional similarity and those where function differs. This approach should find a wide range of applications, including the interpretation of genomics/proteomics data and the prioritization of targets for high-throughput structure determination. The method is generic, but here we concentrate on enzymes and apply high-quality catalytic site data. In addition to providing a series of comprehensive benchmarks to show the overall performance of our approach, we illustrate its utility with specific examples that include the correct identification of haptoglobin as a nonenzymatic relative of trypsin, discrimination of acid-D-amino acid ligases from a much larger ligase pool, and the successful annotation of BioH, a structural genomics target.
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To whom correspondence should be addressed. E-mail: thornton@ebi.ac.uk.
R.A.G. and R.V.S. contributed equally to this work.
Abbreviations: CSA, Catalytic Site Atlas; iCSA, Inpharmatica CSA.
Author contributions: R.A.G., R.V.S., B.A.-L., J.M.T., and M.B.S. designed research; R.A.G. and R.V.S. performed research; R.A.G., R.V.S., G.J.B., A.G., M.W.M., and C.T.P. contributed new reagents/analytic tools; R.A.G. and R.V.S. analyzed data; and R.A.G. and R.V.S. wrote the paper.
See accompanying Profile on page 12296.
As employees of Inpharmatica, B.A.-L. and M.B.S. participate in the company's stock option plan.
This contribution is part of the special series of Inaugural Articles by members of the National Academy of Sciences elected on April 29, 2003.
Contributed by Janet M. Thornton, June 10, 2005
ISSN:0027-8424
1091-6490
DOI:10.1073/pnas.0504833102