| Literature DB >> 25189363 |
Jianfei Liu1, Shijun Wang1, Marius George Linguraru2, Jianhua Yao1, Ronald M Summers3.
Abstract
Renal lesions are important extracolonic findings on computed tomographic colonography (CTC). They are difficult to detect on non-contrast CTC images due to low image contrast with surrounding objects. In this paper, we developed a novel computer-aided diagnosis system to detect a subset of renal lesions, exophytic lesions, by (1) exploiting efficient belief propagation to segment kidneys, (2) establishing an intrinsic manifold diffusion on kidney surface, (3) searching for potential lesion-caused protrusions with local maximum diffusion response, and (4) exploring novel shape descriptors, including multi-scale diffusion response, with machine learning to classify exophytic renal lesions. Experimental results on the validation dataset with 167 patients revealed that manifold diffusion significantly outperformed conventional shape features (p<1e-3) and resulted in 95% sensitivity with 15 false positives per patient for detecting exophytic renal lesions. Fivefold cross-validation also demonstrated that our method could stably detect exophytic renal lesions. These encouraging results demonstrated that manifold diffusion is a key means to enable accurate computer-aided diagnosis of renal lesions. Published by Elsevier B.V.Entities:
Keywords: Belief propagation; Computer aided diagnosis; Extracolonic findings; Manifold diffusion process; Renal lesions
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Year: 2014 PMID: 25189363 PMCID: PMC4250413 DOI: 10.1016/j.media.2014.07.005
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545