Annotating Protein Function through Lexical Analysis

Authors

  • Rajesh Nair
  • Burkhard Rost

DOI:

https://doi.org/10.1609/aimag.v25i1.1746

Abstract

We now know the full genomes of more than 60 organisms. The experimental characterization of the newly sequenced proteins is deemed to lack behind this explosion of naked sequences (sequencefunction gap). The rate at which expert annotators add the experimental information into more or less controlled vocabularies of databases snails along at an even slower pace. Most methods that annotate protein function exploit sequence similarity by transferring experimental information for homologues. A crucial development aiding such transfer is large-scale, work- and management-intensive projects aimed at developing a comprehensive ontology for gene-protein function, such as the Gene Ontology project. In parallel, fully automatic or semiautomatic methods have successfully begun to mine the existing data through lexical analysis. Some of these tools target parsing controlled vocabulary from databases; others venture at mining free texts from MEDLINE abstracts or full scientific papers. Automated text analysis has become a rapidly expanding discipline in bioinformatics. A few of these tools have already been embedded in research projects.

Downloads

Published

2004-03-15

How to Cite

Nair, R., & Rost, B. (2004). Annotating Protein Function through Lexical Analysis. AI Magazine, 25(1), 45. https://doi.org/10.1609/aimag.v25i1.1746

Issue

Section

Articles