TY - JOUR
T1 - Chest x-ray characterization: From organ identification to pathology categorization
AU - Avni, Uri
AU - Goldberger, Jacob
AU - Sharon, Michal
AU - Konen, Eli
AU - Greenspan, Hayit
PY - 2010/1/1
Y1 - 2010/1/1
N2 - This work presents a novel approach to chest x-ray characterization. It is based on the generation of a visual words dictionary to represent x-ray images, and similarity-based categorization with a kernel based SVM classifier. Two main tasks are addressed: First, the extraction of chest images from a large radiograph archive, i.e. an organ identification task; Second, the detection and identification of chest pathologies, i.e. shifting from the organ level to a pathology level analysis. We used a large generic archive of 12,000 radiographs (IRMA) to tune the system parameters. We demonstrate automated organ detection on the IRMA collection as well as the generalization to a new data collection. The application is shown to discriminate between healthy and pathology cases, as well as identify specific pathologies on a set of 223 chest radiographs taken from a routine hospital examination. Results indicate detection of pathology at a sensitivity of 88.4% and a specificity of 81%. This is a first step towards similarity-based categorization that has a major clinical importance in computer-assisted diagnostics. Copyright 2010 ACM.
AB - This work presents a novel approach to chest x-ray characterization. It is based on the generation of a visual words dictionary to represent x-ray images, and similarity-based categorization with a kernel based SVM classifier. Two main tasks are addressed: First, the extraction of chest images from a large radiograph archive, i.e. an organ identification task; Second, the detection and identification of chest pathologies, i.e. shifting from the organ level to a pathology level analysis. We used a large generic archive of 12,000 radiographs (IRMA) to tune the system parameters. We demonstrate automated organ detection on the IRMA collection as well as the generalization to a new data collection. The application is shown to discriminate between healthy and pathology cases, as well as identify specific pathologies on a set of 223 chest radiographs taken from a routine hospital examination. Results indicate detection of pathology at a sensitivity of 88.4% and a specificity of 81%. This is a first step towards similarity-based categorization that has a major clinical importance in computer-assisted diagnostics. Copyright 2010 ACM.
UR - https://www.mendeley.com/catalogue/65286447-126d-34b4-91d2-04c77408aacd/
U2 - 10.1145/1743384.1743414
DO - 10.1145/1743384.1743414
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SP - 155
EP - 163
JO - MIR 2010 - Proceedings of the 2010 ACM SIGMM International Conference on Multimedia Information Retrieval
JF - MIR 2010 - Proceedings of the 2010 ACM SIGMM International Conference on Multimedia Information Retrieval
ER -