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Volume-based Feature Analysis of Mucosa for Automatic Initial Polyp Detection in Virtual Colonoscopy

机译:基于体积的粘膜特征分析用于虚拟结肠镜检查中的自动初始息肉检测

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摘要

In this paper, we present a volume-based mucosa-based polyp candidate determination scheme for automatic polyp detection in computed colonography. Different from most of the existing computer-aided detection (CAD) methods where mucosa layer is a one-layer surface, a thick mucosa of 3-5 voxels wide fully reflecting partial volume effect is intentionally extracted, which excludes the direct applications of the traditional geometrical features. In order to address this dilemma, fast marching-based adaptive gradient/curvature and weighted integral curvature along normal directions (WICND) are developed for volume-based mucosa. In doing so, polyp candidates are optimally determined by computing and clustering these fast marching-based adaptive geometrical features. By testing on 52 patients datasets in which 26 patients were found with polyps of size 4-22 mm, both the locations and number of polyp candidates detected by WICND and previously developed linear integral curvature (LIC) were compared. The results were promising that WICND outperformed LIC mainly in two aspects: (1) the number of detected false positives was reduced from 706 to 132 on average, which significantly released our burden of machine learning in the feature space, and (2) both the sensitivity and accuracy of polyp detection have been slightly improved, especially for those polyps smaller than 5mm.
机译:在本文中,我们提出了一种基于体积的基于粘膜的息肉候选者确定方案,用于计算机结肠造影中的自动息肉检测。与大多数现有的计算机辅助检测(CAD)方法不同(粘膜层是一层表面),有意提取了3-5个体素的粘膜,其宽度充分反映了部分体积效应,这排除了传统方法的直接应用。几何特征。为了解决这个难题,针对基于体积的粘膜开发了基于快速行进的自适应梯度/曲率和沿法线方向的加权积分曲率(WICND)。这样做,通过计算和聚类这些基于快速行进的自适应几何特征,可以最佳地确定息肉候选者。通过对52位患者数据集进行测试,发现26位患者的息肉大小为4-22 mm,比较了WICND检测到的息肉候选者的位置和数目以及先前形成的线性积分曲率(LIC)。结果令人鼓舞,WICND在两个方面都胜过LIC:(1)平均检测到的误报次数从706个减少到132个,这大大减轻了我们在特征空间中的机器学习负担,并且(2)息肉检测的灵敏度和准确性已略有提高,尤其是对于那些小于5mm的息肉。

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