Computer-aided diagnosis of mammographic masses using vocabulary tree-based image retrieval

ISBI(2014)

引用 8|浏览36
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摘要
Computer-aided diagnosis of masses in mammograms is important to the prevention of breast cancer. Many approaches tackle this problem through content-based image retrieval (CBIR) techniques. However, most of them fall short of scalability in the retrieval stage, and their diagnostic accuracy is therefore restricted. To overcome this drawback, we propose a scalable method for retrieval and diagnosis of mam-mographic masses. Specifically, for a query mammographic region of interest (ROI), SIFT descriptors are extracted and searched in a vocabulary tree, which stores all the quantized descriptors of previously diagnosed mammographic ROIs. In addition, to fully exert the discriminative power of SIFT descriptors, contextual information in the vocabulary tree is employed to refine the weights of tree nodes. The retrieved ROIs are then used to determine whether the query ROI contains a mass. This method has excellent scalability due to the low spatial-temporal cost of vocabulary tree. Retrieval precision and diagnostic accuracy are evaluated on 5005 ROIs extracted from the digital database for screening mammography (DDSM), which demonstrate the efficacy of our approach.
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关键词
mammography,retrieval precision,content-based image retrieval (CBIR),mammographic masses,screening mammography,low spatial-temporal cost,mammographic region of interest,mammographic ROI,vocabulary tree-based image retrieval,cancer,breast cancer,content-based image retrieval techniques,CBIR techniques,image retrieval,transforms,digital database,biological organs,Mammographic masses,tree nodes,content-based retrieval,computer-aided diagnosis,medical image processing,computer-aided diagnosis (CAD),SIFT descriptors
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