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Fully automatic colon segmentation in computed tomography colonography

机译:计算机断层扫描结肠造影中的全自动结肠分割

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Colon cancer is the second leading cause of cancer-related death in the United States, and can be prevented by the removal of precancerous colon polyps. For colon diagnosis, computed tomography colonography (CTC) has been proposed as a minimally invasive technique, and computer aided diagnosis (CAD) systems using CTC data are a rapidly evolving tool to localize, detect, and identify colon polyps. Colon segmentation is an essential and challenging step in the development of CAD systems. To accurately segment the whole colon using CTC data, we propose a fully automatic method. In this work, the whole body region excluding the lungs is first localized to narrow the search region and lower computation burden. Inside the body of the test case, a pre-trained colon atlas probability map is fitted using anatomy constraints to localize parts of the colon as seeded regions. Then, region growing is applied to generate an initial 3D segmentation. Below colon air, discriminative classifiers are used to classify regions into colon-tagged materials or non-colon regions, and a fuzzy connectedness segmentation method is applied. Combining colon air and tagged residuals, the whole colon is extracted from CTC data. Experiments were conducted on publicly available CTC database which results in better accuracy and error rate compared with other methods.
机译:结肠癌是美国癌症相关死亡的第二大主要原因,可以通过去除癌前结肠息肉来预防。对于结肠诊断,已提出计算机断层摄影结肠成像(CTC)作为一种微创技术,并且使用CTC数据的计算机辅助诊断(CAD)系统是一种快速发展的工具,可以定位,检测和识别结肠息肉。结肠分割是CAD系统开发中必不可少且具有挑战性的一步。为了使用CTC数据准确分割整个结肠,我们提出了一种全自动方法。在这项工作中,首先要定位除肺以外的整个身体区域,以缩小搜索区域并降低计算负担。在测试用例的体内,使用解剖学约束拟合预先训练的结肠图集概率图,以将结肠的一部分定位为种子区域。然后,应用区域增长以生成初始3D分割。在结肠空气以下,使用判别式分类器将区域分为结肠标记的材料或非结肠区域,并应用模糊连通性分割方法。结合结肠空气和标记残留物,从CTC数据中提取整个结肠。实验是在可公开获得的CTC数据库上进行的,与其他方法相比,其准确性和错误率更高。

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