Journal of Pathology Informatics (Jan 2015)

Biomedical imaging ontologies: A survey and proposal for future work

  • Barry Smith,
  • Sivaram Arabandi,
  • Mathias Brochhausen,
  • Michael Calhoun,
  • Paolo Ciccarese,
  • Scott Doyle,
  • Bernard Gibaud,
  • Ilya Goldberg,
  • Charles E Kahn,
  • James Overton,
  • John Tomaszewski,
  • Metin Gurcan

DOI
https://doi.org/10.4103/2153-3539.159214
Journal volume & issue
Vol. 6, no. 1
pp. 37 – 37

Abstract

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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 defi nitions 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 and Conclusions: The ultimate goal is to support the multiscale understanding of disease that comes from using interoperable ontologies to integrate imaging data with clinical and genomics data.

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