TY - JOUR
T1 - Content-based image retrieval in radiology
T2 - Current status and future directions
AU - Burak Akgül, Ceyhun
AU - Rubin, Daniel L.
AU - Napel, Sandy
AU - Beaulieu, Christopher F.
AU - Greenspan, Hayit
AU - Acar, Burak
N1 - Funding Information:
This work has partly been supported by NIH CA72023 and TÜBİTAK KARİYER-DRESS (104E035).
PY - 2011/4
Y1 - 2011/4
N2 - Diagnostic radiology requires accurate interpretation of complex signals in medical images. Content-based image retrieval (CBIR) techniques could be valuable to radiologists in assessing medical images by identifying similar images in large archives that could assist with decision support. Many advances have occurred in CBIR, and a variety of systems have appeared in nonmedical domains; however, permeation of these methods into radiology has been limited. Our goal in this review is to survey CBIR methods and systems from the perspective of application to radiology and to identify approaches developed in nonmedical applications that could be translated to radiology. Radiology images pose specific challenges compared with images in the consumer domain; they contain varied, rich, and often subtle features that need to be recognized in assessing image similarity. Radiology images also provide rich opportunities for CBIR: rich metadata about image semantics are provided by radiologists, and this information is not yet being used to its fullest advantage in CBIR systems. By integrating pixel-based and metadata- based image feature analysis, substantial advances of CBIR in medicine could ensue, with CBIR systems becoming an important tool in radiology practice.
AB - Diagnostic radiology requires accurate interpretation of complex signals in medical images. Content-based image retrieval (CBIR) techniques could be valuable to radiologists in assessing medical images by identifying similar images in large archives that could assist with decision support. Many advances have occurred in CBIR, and a variety of systems have appeared in nonmedical domains; however, permeation of these methods into radiology has been limited. Our goal in this review is to survey CBIR methods and systems from the perspective of application to radiology and to identify approaches developed in nonmedical applications that could be translated to radiology. Radiology images pose specific challenges compared with images in the consumer domain; they contain varied, rich, and often subtle features that need to be recognized in assessing image similarity. Radiology images also provide rich opportunities for CBIR: rich metadata about image semantics are provided by radiologists, and this information is not yet being used to its fullest advantage in CBIR systems. By integrating pixel-based and metadata- based image feature analysis, substantial advances of CBIR in medicine could ensue, with CBIR systems becoming an important tool in radiology practice.
KW - Content-based image retrieval
KW - Decision support
KW - Digital image management
KW - Imaging informatics
KW - Information storage and retrieval
UR - http://www.scopus.com/inward/record.url?scp=79960078876&partnerID=8YFLogxK
U2 - 10.1007/s10278-010-9290-9
DO - 10.1007/s10278-010-9290-9
M3 - Article
C2 - 20376525
AN - SCOPUS:79960078876
SN - 0897-1889
VL - 24
SP - 208
EP - 222
JO - Journal of Digital Imaging
JF - Journal of Digital Imaging
IS - 2
ER -