Display Settings:

Format

Send to:

Choose Destination
    BMC Bioinformatics. 2012 Feb 3;13:23.

    Markov Chain Ontology Analysis (MCOA).

    Source

    Center for Biomedical Informatics, Harvard Medical School, Boston, MA 02115, USA. rob_frost@hms.harvard.edu

    Abstract

    BACKGROUND:

    Biomedical ontologies have become an increasingly critical lens through which researchers analyze the genomic, clinical and bibliographic data that fuels scientific research. Of particular relevance are methods, such as enrichment analysis, that quantify the importance of ontology classes relative to a collection of domain data. Current analytical techniques, however, remain limited in their ability to handle many important types of structural complexity encountered in real biological systems including class overlaps, continuously valued data, inter-instance relationships, non-hierarchical relationships between classes, semantic distance and sparse data.

    RESULTS:

    In this paper, we describe a methodology called Markov Chain Ontology Analysis (MCOA) and illustrate its use through a MCOA-based enrichment analysis application based on a generative model of gene activation. MCOA models the classes in an ontology, the instances from an associated dataset and all directional inter-class, class-to-instance and inter-instance relationships as a single finite ergodic Markov chain. The adjusted transition probability matrix for this Markov chain enables the calculation of eigenvector values that quantify the importance of each ontology class relative to other classes and the associated data set members. On both controlled Gene Ontology (GO) data sets created with Escherichia coli, Drosophila melanogaster and Homo sapiens annotations and real gene expression data extracted from the Gene Expression Omnibus (GEO), the MCOA enrichment analysis approach provides the best performance of comparable state-of-the-art methods.

    CONCLUSION:

    A methodology based on Markov chain models and network analytic metrics can help detect the relevant signal within large, highly interdependent and noisy data sets and, for applications such as enrichment analysis, has been shown to generate superior performance on both real and simulated data relative to existing state-of-the-art approaches.

    PMID:
    22300537
    [PubMed - in process]
    PMCID:
    PMC3329418
    Free PMC Article

    Images from this publication.See all images (7) Free text

    Figure 2
    Figure 4
    Figure 6
    Figure 1
    Figure 3
    Figure 5
    Figure 7

      Supplemental Content

      Icon for BioMed Central Icon for PubMed Central

      Save items

      loading

      Recent activity

      Your browsing activity is empty.

      Activity recording is turned off.

      Turn recording back on

      See more...
      Write to the Help Desk