Display Settings:

Format

Send to:

Choose Destination
    BMC Bioinformatics. 2004 Sep 2;5:122.

    Automatic annotation of protein motif function with Gene Ontology terms.

    Source

    Dept. of Biostatistics, Bioinformatics and Epidemiology, Medical University of South Carolina, 135 Cannon St, Suite 303, Charleston, SC 29425, USA. lux@musc.edu

    Abstract

    BACKGROUND:

    Conserved protein sequence motifs are short stretches of amino acid sequence patterns that potentially encode the function of proteins. Several sequence pattern searching algorithms and programs exist foridentifying candidate protein motifs at the whole genome level. However, a much needed and important task is to determine the functions of the newly identified protein motifs. The Gene Ontology (GO) project is an endeavor to annotate the function of genes or protein sequences with terms from a dynamic, controlled vocabulary and these annotations serve well as a knowledge base.

    RESULTS:

    This paper presents methods to mine the GO knowledge base and use the association between the GO terms assigned to a sequence and the motifs matched by the same sequence as evidence for predicting the functions of novel protein motifs automatically. The task of assigning GO terms to protein motifs is viewed as both a binary classification and information retrieval problem, where PROSITE motifs are used as samples for mode training and functional prediction. The mutual information of a motif and aGO term association is found to be a very useful feature. We take advantage of the known motifs to train a logistic regression classifier, which allows us to combine mutual information with other frequency-based features and obtain a probability of correct association. The trained logistic regression model has intuitively meaningful and logically plausible parameter values, and performs very well empirically according to our evaluation criteria.

    CONCLUSIONS:

    In this research, different methods for automatic annotation of protein motifs have been investigated. Empirical result demonstrated that the methods have a great potential for detecting and augmenting information about the functions of newly discovered candidate protein motifs.

    PMID:
    15345032
    [PubMed - indexed for MEDLINE]
    PMCID: PMC517493
    Free PMC Article

    Images from this publication.See all images (4) Free text

    Figure 3
    Figure 1
    Figure 2
    Figure 4

      Supplemental Content

      Click here to read Click here to read

      Recent activity

      Your browsing activity is empty.

      Activity recording is turned off.

      Turn recording back on

      See more...
      Write to the Help Desk