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Computer-aided detection of colonic polyps with level set-based adaptive convolution in volumetric mucosa to advance CT colonography toward a screening modality

机译:计算机辅助检测结肠息肉使用基于水平集的容积性粘膜卷积在粘膜中进行以将CT结肠造影术推向筛查模式

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摘要

As a promising second reader of computed tomographic colonography (CTC) screening, the computer-aided detection (CAD) of colonic polyps has earned fast growing research interest. In this paper, we present a CAD scheme to automatically detect colonic polyps in CTC images. First, a thick colon wall representation, ie, a volumetric mucosa (VM) with several voxels wide in general, was segmented from CTC images by a partial-volume image segmentation algorithm. Based on the VM, we employed a level set-based adaptive convolution method for calculating the first- and second-order spatial derivatives more accurately to start the geometric analysis. Furthermore, to emphasize the correspondence among different layers in the VM, we introduced a middle-layer enhanced integration along the image gradient direction inside the VM to improve the operation of extracting the geometric information, like the principal curvatures. Initial polyp candidates (IPCs) were then determined by thresholding the geometric measurements. Based on IPCs, several features were extracted for each IPC, and fed into a support vector machine to reduce false positives (FPs). The final detections were displayed in a commercial system to provide second opinions for radiologists. The CAD scheme was applied to 26 patient CTC studies with 32 confirmed polyps by both optical and virtual colonoscopies. Compared to our previous work, all the polyps can be detected successfully with less FPs. At the 100% by polyp sensitivity, the new method yielded 3.5 FPs/dataset.
机译:作为计算机断层扫描(CTC)筛查的有希望的第二读者,结肠息肉的计算机辅助检测(CAD)赢得了快速增长的研究兴趣。在本文中,我们提出了一种CAD方案来自动检测CTC图像中的结肠息肉。首先,通过部分体积图像分割算法从CTC图像中分割出厚厚的结肠壁表示,即通常具有几个体素的体粘膜(VM)。基于虚拟机,我们采用了基于水平集的自适应卷积方法,可以更准确地计算一阶和二阶空间导数,从而开始进行几何分析。此外,为了强调虚拟机中不同层之间的对应关系,我们在虚拟机内部沿图像梯度方向引入了中间层增强集成,以改进提取几何信息(如主曲率)的操作。然后通过对几何测量值进行阈值确定初始息肉候选者(IPC)。基于IPC,为每个IPC提取了几个特征,并将其输入到支持向量机中以减少误报(FP)。最终的检测结果显示在商业系统中,以向放射科医生提供第二意见。通过光学和虚拟结肠镜检查,将CAD方案应用于26例CTC研究,其中32例息肉已确诊。与我们以前的工作相比,可以用更少的FP成功检测出所有息肉。在息肉敏感度为100%的情况下,新方法产生了3.5个FP /数据集。

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