A two-level approach towards semantic colon segmentation: removing extra-colonic findings.

MEDICAL IMAGE COMPUTING AND COMPUTER-ASSISTED INTERVENTION - MICCAI 2009, PT II, PROCEEDINGS(2009)

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摘要
Computer aided detection (CAD) of colonic polyps in computed tomographic colonography has tremendously impacted colorectal cancer diagnosis using 3D medical imaging. It is a prerequisite for all CAD systems to extract the air-distended colon segments from 3D abdomen computed tomography scans. In this paper, we present a two-level statistical approach of first separating colon segments from small intestine, stomach and other extra-colonic parts by classification on a new geometric feature set; then evaluating the overall performance confidence using distance and geometry statistics over patients. The proposed method is fully automatic and validated using both the classification results in the first level and its numerical impacts on false positive reduction of extra-colonic findings in a CAD system. It shows superior performance than the state-of-art knowledge or anatomy based colon segmentation algorithms.
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关键词
extra-colonic part,classification result,colon segmentation algorithm,colon segmentation,computed tomographic colonography,overall performance confidence,removing extra-colonic findings,air-distended colon segment,colon segment,extra-colonic finding,cad system,abdomen computed tomography,two-level approach towards semantic,colorectal cancer,computed tomography,false positive
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