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Assignment of protein function and discovery of novel nucleolar proteins based on automatic analysis of MEDLINE
Author(s) -
Schuemie Martijn,
Chichester Christine,
Lisacek Frederique,
Coute Yohann,
Roes PeterJan,
Sanchez Jean Charles,
Kors Jan,
Mons Barend
Publication year - 2007
Publication title -
proteomics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.26
H-Index - 167
eISSN - 1615-9861
pISSN - 1615-9853
DOI - 10.1002/pmic.200600693
Subject(s) - computational biology , proteomics , proteome , biology , protein function prediction , nucleolus , protein sequencing , function (biology) , cluster analysis , sequence (biology) , annotation , computer science , bioinformatics , peptide sequence , genetics , protein function , gene , artificial intelligence , cytoplasm
Attribution of the most probable functions to proteins identified by proteomics is a significant challenge that requires extensive literature analysis. We have developed a system for automated prediction of implicit and explicit biologically meaningful functions for a proteomics study of the nucleolus. This approach uses a set of vocabulary terms to map and integrate the information from the entire MEDLINE database. Based on a combination of cross‐species sequence homology searches and the corresponding literature, our approach facilitated the direct association between sequence data and information from biological texts describing function. Comparison of our automated functional assignment to manual annotation demonstrated our method to be highly effective. To establish the sensitivity, we defined the functional subtleties within a family containing a highly conserved sequence. Clustering of the DEAD‐box protein family of RNA helicases confirmed that these proteins shared similar morphology although functional subfamilies were accurately identified by our approach. We visualized the nucleolar proteome in terms of protein functions using multi‐dimensional scaling, showing functional associations between nucleolar proteins that were not previously realized. Finally, by clustering the functional properties of the established nucleolar proteins, we predicted novel nucleolar proteins. Subsequently, nonproteomics studies confirmed the predictions of previously unidentified nucleolar proteins.