Book Chapter10.1007/978-3-642-28502-8_76
IRMA Code II
Tim-Christian Piesch,Henning Müller,Christiane K. Kuhl,Thomas M. Deserno +3 more
- 01 Jan 2012
- pp 440-445
2
TL;DR: This paper proposes axes for medical equipment, findings and body positioning as well as additional flags for age, body part, ethnicity, gender, image quality and scanned film in the IRMA Code II as a database of classified images to evaluate visual information retrieval systems.
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Abstract: Content-based image retrieval (CBIR) provides novel options to access large repositories of medical images. Thus, there are new opportunities for storing, querying and reporting especially within the field of digital radiology. This, however, requires a revisit of nomenclatures for image classification. The Digital Imaging and Communication in Medicine (DICOM), for instance, defines only about 20, partly overlapping terms for coding the body region. In 2002, the Image Retrieval in Medical Applications (IRMA) project has proposed a mono-hierarchic, multi-axial coding scheme. Although the initial concept of the IRMA Code was designed for later expansion, the appliance of the terminology in the practice of scientific projects discovered several weak points. In this paper, based on a systematic analysis and the comparison with other relevant medical ontologies such as the Lexicon for Uniform Indexing and Retrieval of Radiology Information Resources (RadLex), we accordingly propose axes for medical equipment, findings and body positioning as well as additional flags for age, body part, ethnicity, gender, image quality and scanned film. The IRMA Code II may be used in the Cross Language Evaluation Campaign (CLEF) annotation tasks as a database of classified images to evaluate visual information retrieval systems.
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Citations
•Proceedings Article
IRMA Code II: unique annotation of medical images for access and retrieval.
Tim-Christian Piesch,Henning Müller,Christiane K. Kuhl,Thomas M. Deserno +3 more
- 01 Jan 2012
TL;DR: Content-based image retrieval (CBIR) provides novel options to access large repositories of medical images, in particular for storing, querying and reporting, which requires a revisit of nomenclatures for image classification such as DICOM, SNOMED, and RadLex.
IRMA Code II: Unique Annotation of Medical Images for Access and Retrieval.
Tim-Christian Piesch,Henning Mueller,Christiane K. Kuhl,Thomas M. Deserno +3 more
TL;DR: This paper proposes IRMA Code II, an enhanced image annotation system for medical images, addressing limitations of existing nomenclatures like DICOM and RadLex, with a revised hierarchical coding scheme and additional flags for improved access and retrieval.
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