SGD Paper Help



Zhang KX and Ouellette BF  (2009) GAIA: a gram-based interaction analysis tool--an approach for identifying interacting domains in yeast. BMC Bioinformatics 10 Suppl 1:S60

Abstract: BACKGROUND: Protein-Protein Interactions (PPIs) play important roles in many biological functions. Protein domains, which are defined as independently folding structural blocks of proteins, physically interact with each other to perform these biological functions. Therefore, the identification of Domain-Domain Interactions (DDIs) is of great biological interests because it is generally accepted that PPIs are mediated by DDIs. As a result, much effort has been put on the prediction of domain pair interactions based on computational methods. Many DDI prediction tools using PPIs network and domain evolution information have been reported. However, tools that combine the primary sequences, domain annotations, and structural annotations of proteins have not been evaluated before. RESULTS: In this study, we report a novel approach called Gram-bAsed Interaction Analysis (GAIA). GAIA extracts peptide segments that are composed of fixed length of continuous amino acids, called n-grams (where n is the number of amino acids), from the annotated domain and DDI data set in Saccharomyces cerevisiae (budding yeast) and identifies a list of n-grams that may contribute to DDIs and PPIs based on the frequencies of their appearance. GAIA also reports the coordinate position of gram pairs on each interacting domain pair. We demonstrate that our approach improves on other DDI prediction approaches when tested against a gold-standard data set and achieves a true positive rate of 82% and a false positive rate of 21%. We also identify a list of 4-gram pairs that are significantly over-represented in the DDI data set and may mediate PPIs. CONCLUSION: GAIA represents a novel and reliable way to predict DDIs that mediate PPIs. Our results, which show the localizations of interacting grams/hotspots, provide testable hypotheses for experimental validation. Complemented with other prediction methods, this study will allow us to elucidate the interactome of cells.

Status: Published Type: Journal Article | Research Support, Non-U.S. Gov't PubMed ID: 19208164

Topics addressed in this paper

Number of different genes curated to this paper: 8

  • To find other papers on a gene and topic, click on the colored ball in the appropriate box.
  • displays other papers with information about that topic for that gene.
  • displays other papers in SGD that are associated with that topic.
    The topic is addressed in these papers but does not describe a specific gene or chromosomal feature.
  • To go to the Locus page for a gene, click on the gene name.
Topics Topics not linked to Genes Genes linked to topics
BUD5 BUD8 COR1 QCR2 RPB8 RPO21 SEC23 SMY2
Additional Literature blue ball blue ball blue ball blue ball
Computational analysis yg ball
Omics yg ball
Primary Literature blue ball blue ball blue ball blue ball
Protein Sequence Features blue ball blue ball blue ball blue ball blue ball blue ball blue ball blue ball
Protein-protein Interactions blue ball blue ball blue ball blue ball blue ball blue ball blue ball blue ball
Protein/Nucleic Acid Structure blue ball blue ball blue ball blue ball

Author Searches

To find contact information or other publications by the authors of this paper, follow these three steps:
  1. (1) Choose an author,
  2. (2) Choose a search parameter,
  3. (3) Click to implement