基于几何特征的彩色编码结肠息肉检测框架

Dongqing Chen, A. Farag, M. Hassouna, R. Falk, G. Dryden
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引用次数: 14

摘要

基于曲率的几何特征已被证明对结肠息肉的检测是重要的。在本文中,我们提出了一个自动检测框架和颜色编码方案,以突出显示检测到的息肉。关键思想是将检测到的息肉放置在新创建的多边形数据集中的相同位置,该数据集具有与真实冒号数据集的三角网格表面相同的拓扑和几何属性,并为两个分离的数据集分配不同的颜色以突出显示息肉。最后,我们通过计算机模拟和真实冒号数据集验证了所提出的框架。对15个不同形状和大小的合成息肉,灵敏度为100%,假阳性为0。对于4个真实冒号数据集,本文算法的灵敏度达到75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geometric Features Based Framework for Colonic Polyp Detection using a New Color Coding Scheme
Curvature-based geometric features have been proven to be important for colonic polyp detection. In this paper, we present an automatic detection framework and color coding scheme to highlight the detected polyps. The key idea is to place the detected polyps at the same locations in a newly created polygonal dataset with the same topology and geometry properties as the triangulated mesh surface of real colon dataset, and assign different colors to the two separated datasets to highlight the polyps. Finally, we validate the proposed framework by computer simulated and real colon datasets. For fifteen synthetic polyps with different shapes and different sizes, the sensitivity is 100%, and false positive is 0. For four real colon datasets, the proposed algorithm has achieved the sensitivity of 75%.
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