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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Multilabel Region Classification and Semantic Linking for Colon Segmentation in CT Colonography
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Multilabel Region Classification and Semantic Linking for Colon Segmentation in CT Colonography

机译:CT结肠造影中结肠分割的多标签区域分类和语义链接

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Accurate and automatic colon segmentation from CT images is a crucial step of many clinical applications in CT colonography, including computer-aided detection (CAD) of colon polyps, 3-D virtual flythrough of the colon, and prone/supine registration. However, the existence of adjacent air-filled organs such as the lung, stomach, and small intestine, and the collapse of the colon due to poor insufflation, render accurate segmentation of the colon a difficult problem. Extra-colonic components can be categorized into two types based on their 3-D connection to the colon: detached and attached extracolonic components (DEC and AEC, respectively). In this paper, we propose graph inference methods to remove extracolonic components to achieve a high quality segmentation. We first decompose each 3-D air-filled object into a set of 3-D regions. A classifier trained with region-level features can be used to identify the colon regions from noncolon regions. After removing obvious DEC, we remove the remaining DEC by modeling the global anatomic structure with an topological constraint and solving a graph inference problem using semantic information provided by a multiclass classifier. Finally, we remove AEC by modeling regions within each 3-D object with a hierarchical conditional random field, solved by graph cut. Experimental results demonstrate that our method outperforms a purely discriminative learning method in detecting true colon regions, while decreasing extra-colonic components in challenging clinical data that includes collapsed cases.
机译:从CT图像进行准确的自动结肠分割是CT结肠造影术中许多临床应用的关键步骤,包括结肠息肉的计算机辅助检测(CAD),结肠的3-D虚拟穿行以及俯卧/仰卧位。但是,由于存在诸如肺,胃和小肠之类的相邻充气器官,以及由于吹入不良而导致的结肠塌陷,使结肠的精确分割成为一个难题。根据结肠与结肠的3-D连接,结肠外成分可以分为两种类型:分离结肠和附着结肠外成分(分别为DEC和AEC)。在本文中,我们提出了图推断方法,以去除结肠外的成分,以实现高质量的分割。我们首先将每个3-D充气对象分解为一组3-D区域。经过区域级特征训练的分类器可用于从非冒号区域中识别结肠区域。删除明显的DEC之后,我们通过使用拓扑约束对全局解剖结构建模并使用多类分类器提供的语义信息解决图推断问题,从而删除了剩余的DEC。最后,我们通过使用分层的条件随机场对每个3-D对象内的区域进行建模来消除AEC,并通过图割来解决。实验结果表明,在检测真实结肠区域时,我们的方法优于纯粹的判别式学习方法,同时在包括塌陷病例在内的具有挑战性的临床数据中减少了结肠外成分。

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