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Segmentation of colon and removal of opacified fluid for virtual colonoscopy

机译:结肠分割和去除不透明液体以进行虚拟结肠镜检查

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AbstractColorectal cancer (CRC) is the third most common type of cancer. The use of techniques such as flexible sigmoidoscopy and capsule endoscopy for the screening of colorectal cancer causes physical pain and hardship to the patients. Hence, to overcome the above disadvantages, computed tomography (CT) can be employed for the identification of polyps or growth, while screening for CRC. This proposed approach was implemented to improve the accuracy and to reduce the computation time of the accurate segmentation of the colon segments from the abdominal CT images which contain anatomical organs such as lungs, small bowels, large bowels (Colon), ribs, opacified fluid and bones. The segmentation is performed in two major steps. The first step segments the air-filled colon portions by placing suitable seed points using modified 3D seeded region growing which identify and match the similar voxels by 6-neighborhood connectivity technique. The segmentation of the opacified fluid portions is done using fuzzy connectedness approach enhanced with interval thresholding. The membership classes are defined and the voxels are categorized based on the class value. Interval thresholding is performed so that the bones and opacified fluid parts may be extracted. The bones are removed by the placement of seed points as the existence of the continuity of the bone region is more in the axial slices. The resultant image containing bones is subtracted from the threshold output to segment the opacified fluid segments in all the axial slices of a dataset. Finally, concatenation of the opacified fluid with the segmented colon is performed for the 3D rendering of the segmented colon. This method was implemented in 15 datasets downloaded from TCIA and in real-time dataset in both supine and prone position and the accuracy achieved was 98.73%.
机译: Abstract 结肠直肠癌(CRC)是第三大常见癌症。使用诸如柔性乙状结肠镜检查和胶囊内窥镜检查之类的技术来筛查结直肠癌会给患者带来身体上的痛苦和困难。因此,为了克服上述缺点,可以在对CRC进行筛查的同时,利用计算机断层摄影(CT)来识别息肉或生长。实施此提议的方法可提高准确性,并减少从腹部CT图像准确分割结肠段的计算时间,该腹部CT图像包含解剖器官,例如肺,小肠,大肠(结肠),肋骨,乳浊液和骨头。分割过程分为两个主要步骤。第一步是通过使用修改后的3D种子区域生长放置合适的种子点来分割空气填充的结肠部分,该区域通过6邻域连接技术识别并匹配相似的体素。不透明流体部分的分割是使用模糊连接方法进行的,该方法通过间隔阈值增强。定义成员资格类别,并根据类别值对体素进行分类。执行间隔阈值处理,以便可以提取骨骼和不透明的液体部分。通过在轴向切片中增加骨骼区域的连续性,可以通过放置种子点来移除骨骼。从阈值输出中减去包含骨骼的合成图像,以在数据集的所有轴向切片中分割不透明的流体片段。最后,执行不透明流体与分割结肠的连接,以对分割结肠进行3D渲染。该方法在从TCIA下载的15个数据集中以及仰卧和俯卧位置的实时数据集中均实现,实现的准确率为98.73%。

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