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Publication year
2009Source
Proteins: Structure, Function, and Bioinformatics, 76, 3, (2009), pp. 608-16ISSN
Publication type
Article / Letter to editor
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Organization
CMBI
Human Genetics
Bioinformatics
Former Organization
Bioinformatics (umcn)
Journal title
Proteins: Structure, Function, and Bioinformatics
Volume
vol. 76
Issue
iss. 3
Page start
p. 608
Page end
p. 16
Subject
NCMLS 6: Genetics and epigenetic pathways of disease; NCMLS 7: Chemical and physical biologyAbstract
Correlated mutation analyses (CMA) on multiple sequence alignments are widely used for the prediction of the function of amino acids. The accuracy of CMA-based predictions is mainly determined by the number of sequences, by their evolutionary distances, and by the quality of the alignments. These criteria are best met in structure-based sequence alignments of large super-families. So far, CMA-techniques have mainly been employed to study the receptor interactions. The present work shows how a novel CMA tool, called Comulator, can be used to determine networks of functionally related residues in enzymes. These analyses provide leads for protein engineering studies that are directed towards modification of enzyme specificity or activity. As proof of concept, Comulator has been applied to four enzyme super-families: the isocitrate lyase/phoshoenol-pyruvate mutase super-family, the hexokinase super-family, the RmlC-like cupin super-family, and the FAD-linked oxidases super-family. In each of those cases networks of functionally related residue positions were discovered that upon mutation influenced enzyme specificity and/or activity as predicted. We conclude that CMA is a powerful tool for redesigning enzyme activity and selectivity.
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- Faculty of Medical Sciences [94006]
- Faculty of Science [38204]
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