Kilic, NiyaziOsman, OnurUcan, Osman N.Demirel, Kemal2024-10-122024-10-1220071303-0914https://hdl.handle.net/11467/8770In this paper, an automatic colon segmentation method for Computed Tomography (CT) colonography is presented. Colon segmentation is considered in order to prevent the time consumption while searching polyps out of the colon region and reduce radiologists' interpretation time. The proposed method is the combination of pre-processing and Cellular Neural Networks (CNN). Also recurrent perceptron learning algorithm (RPLA) is used for CNN training. Original CT images are passed through a threshold and then CNN is used to erase unrelated small objects and smooth sharp corners. It is expected automatic colon segmentation will improve the radiologists' diagnostic performance.eninfo:eu-repo/semantics/closedAccessVirtual colonoscopySegmentationColorectal polypCellular Neural NetworkAUTOMATIC COLON SEGMENTATION USING CELLULAR NEURAL NETWORK FOR THE DETECTION OF COLORECTAL POLYPSArticle72419+N/AWOS:000409729900006