| Literature DB >> 26167381 |
Barry Smith1, Sivaram Arabandi2, Mathias Brochhausen3, Michael Calhoun4, Paolo Ciccarese5, Scott Doyle6, Bernard Gibaud7, Ilya Goldberg8, Charles E Kahn9, James Overton10, John Tomaszewski6, Metin Gurcan11.
Abstract
BACKGROUND: Ontology is one strategy for promoting interoperability of heterogeneous data through consistent tagging. An ontology is a controlled structured vocabulary consisting of general terms (such as "cell" or "image" or "tissue" or "microscope") that form the basis for such tagging. These terms are designed to represent the types of entities in the domain of reality that the ontology has been devised to capture; the terms are provided with logical definitions thereby also supporting reasoning over the tagged data. AIM: This paper provides a survey of the biomedical imaging ontologies that have been developed thus far. It outlines the challenges, particularly faced by ontologies in the fields of histopathological imaging and image analysis, and suggests a strategy for addressing these challenges in the example domain of quantitative histopathology imaging. RESULTS ANDEntities:
Keywords: Histopathology imaging; interoperability; ontology; quantitative histopathology image ontology
Year: 2015 PMID: 26167381 PMCID: PMC4485195 DOI: 10.4103/2153-3539.159214
Source DB: PubMed Journal: J Pathol Inform