CT结肠镜下结肠壁分割及体积分析对扁平息肉候选物的检测

Lihong C. Li, Xinzhou Wei, Kenneth Ng, Anushka Banerjee, Huafeng Wang, Wenfeng Song, Zhengrong Liang
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引用次数: 3

摘要

在计算机断层结肠镜检查(CTC)中,精确的结肠壁分割和体积分析是提高结肠息肉的计算机辅助检测(CAD)的必要条件。由于扁平息肉的几何信息有限,无论是光学结肠镜检查还是CTC检查,扁平息肉的检测都非常困难。本文提出了一种新的结肠壁分割和体积分析框架,以提高对扁平息肉的检测。首先,通过我们基于PV的电子结肠清洁,保留了结肠内粘膜周围的部分体积(PV)效应。进一步利用PV信息指导肠壁分割,建立肠壁厚度测量等电位面起始点。然后,我们采用双水平集竞争模型,考虑到两个边界之间的相互干扰,同时分割内外结肠壁。我们进一步对动态结肠壁信息进行了体积分析,并构建了四层等电位面,代表了结肠壁的内在解剖信息。我们建立了一个独特的点对点路径从结肠粘膜的最开始。由于扁平息肉是斑块状病变,凸起距离结肠粘膜层小于3mm,因此纳入PV效应可为我们提供扁平息肉的精细信息,从而提高检测性能。提出的框架在患有扁平息肉的患者CTC扫描上得到验证。实验结果表明,该框架在结肠扁平息肉的CTC检测中具有很好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation and Volumetric Analysis of Colon Wall for Detection of Flat Polyp Candidates via CT Colonography
Accurate segmentation and volumetric analysis of colon wall is essential to advance computer-aided detection (CAD) of colonic polyps in computed tomography colonography (CTC). Due to their limited geometric information, detection of flat polyps is very difficult in both optical colonoscopy and CTC. In this paper, we present a new framework of segmentation and volumetric analysis of colon wall for improving detection of flat polyps. First, partial volume (PV) effects around the inner mucous membrane of the colon were reserved through our PV based electronic colon cleansing. PV information was further used to guide colon wall segmentation as well as to establish the starting point of iso-potential surfaces for colon wall thickness measures. Then, we employed a dual level set competition model to simultaneously segment both inner and outer colon wall by taking into account the mutual interference between two borders. We further conducted volumetric analysis of the dynamic colon wall information and built four layer of iso-potential surfaces which represent the intrinsic anatomical information of colon wall. We built a unique point-to-point path starting from the very beginning of the mucous membrane of the colon. As flat polyps are plaque-like lesions raised less than 3mm from the colonic mucosa layer, inclusion of PV effects shall bring us the fine information about flat polyps, thus improving the detection performance. The proposed framework was validated on patient CTC scans with flat polyps. Experimental results demonstrated that the framework is very promising towards detection of colonic flat polyps via CTC.
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