Interactive content-based image retrieval with deep learning for CT abdominal organ recognition
Chung-Ming Lo,
Chi-Cheng Wang,
Peng-Hsiang Hung
Abstract:Objective: Recognizing the most relevant seven organs in an abdominal computed tomography (CT) slice requires sophisticated knowledge. This study proposed automatically extracting relevant features and applying them in a content-based image retrieval (CBIR) system to provide similar evidence for clinical use.
Approach: A total of 2827 abdominal CT slices, including 638 liver, 450 stomach, 229 pancreas, 442 spleen, 362 right kidney, 424 left kidney and 282 gallbladder tissues, were collected to evaluate… Show more
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