Automatic prediction of protein function

  • B. Rost
  • , J. Liu
  • , R. Nair
  • , K. O. Wrzeszczynski
  • , Y. Ofran

Research output: Contribution to journalReview articlepeer-review

212 Scopus citations

Abstract

Most methods annotating protein function utilise sequence homology to proteins of experimentally known function. Such a homology-based annotation transfer is problematic and limited in scope. Therefore, computational biologists have begun to develop ab initio methods that predict aspects of function, including subcellular localization, post-translational modifications, functional type and protein-protein interactions. For the first two cases, the most accurate approaches rely on identifying short signalling motifs, while the most general methods utilise tools of artificial intelligence. An outstanding new method predicts classes of cellular function directly from sequence. Similarly, promising methods have been developed predicting protein-protein interaction partners at acceptable levels of accuracy for some pairs in entire proteomes. No matter how difficult the task, successes over the last few years have clearly paved the way for ab initio prediction of protein function.

Original languageEnglish
Pages (from-to)2637-2650
Number of pages14
JournalCellular and Molecular Life Sciences
Volume60
Issue number12
DOIs
StatePublished - Dec 2003
Externally publishedYes

Funding

FundersFunder number
National Institute of General Medical SciencesP50GM062413

    Keywords

    • Ab initio prediction
    • Bioinformatics
    • Genome analysis
    • Multiple alignments
    • Neural networks
    • Post-translational modifications
    • Protein function prediction
    • Protein-protein interactions
    • Sequence analysis
    • Subcellular localization

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