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From Point to Local Neighborhood: Polyp Detection in CT Colonography Using Geodesic Ring Neighborhoods

机译:从点到局部邻域:使用测地线环邻域在CT结肠造影中进行息肉检测

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摘要

Existing polyp detection methods rely heavily on curvature-based characteristics to differentiate between lesions. These assume that the discrete triangulated surface mesh or volume closely approximates a smooth continuous surface. However, this is often not the case and because curvature is computed as a local feature and a second-order differential quantity, the presence of noise significantly affects its estimation. For this reason, a more global feature is required to provide an accurate description of the surface at hand. In this paper, a novel method incorporating a local neighborhood around the centroid of a surface patch is proposed. This is done using geodesic rings which accumulate curvature information in a neighborhood around this centroid. This geodesic-ring neighborhood approximates a single smooth, continuous surface upon which curvature and orientation estimation methods can be applied. A new global shape index, $S$ is also introduced and computed. These curvature and orientation values will be used to classify the surface as either a bulbous polyp, ridge-like fold or semiplanar structure. Experimental results show that this method is promising (100% sensitivity, 100% specificity for lesions $>$ 10 mm) for distinguishing between bulbous polyps, folds and planar-like structures in the colon.
机译:现有的息肉检测方法严重依赖于基于曲率的特征来区分病变。这些假设是离散的三角表面网格或体积非常接近平滑的连续表面。但是,通常不是这种情况,并且因为曲率被计算为局部特征和二阶微分量,所以噪声的存在会显着影响其估计。因此,需要更全面的功能来提供手头表面的准确描述。在本文中,提出了一种新方法,该方法结合了表面贴片质心周围的局部邻域。这是使用测地线环完成的,该测地线环在此质心附近的区域中累积曲率信息。该测地线环邻域近似于一个平滑,连续的表面,可以在其上应用曲率和方向估计方法。还引入并计算了一个新的全局形状指数$ S $。这些曲率和方向值将用于将表面分类为球状息肉,山脊状褶皱或半平面结构。实验结果表明,该方法在区分结肠球状息肉,皱褶和平面状结构方面很有前景(100%的敏感性,对大于10 mm的病变具有100%的特异性)。

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