Department of Radiology, Massachusetts General Hospital and Harvard Medical School, Boston, MA 02114, USA.
IEEE Trans Med Imaging. 2011 Mar;30(3):559-74. doi: 10.1109/TMI.2010.2087389. Epub 2010 Oct 14.
Electronic cleansing (EC) is a method that segments fecal material tagged by an X-ray-opaque oral contrast agent in computed tomographic colonography (CTC) images, and effectively removes the material for digitally cleansing the colon. In this study, we developed a novel EC method, called mosaic decomposition (MD), for reduction of the artifacts due to incomplete cleansing of inhomogeneously tagged fecal material in CTC images, especially in noncathartic CTC images. In our approach, the entire colonic region, including the residual fecal regions, was first decomposed into a set of local homogeneous regions, called tiles, after application of a 3-D watershed transform to the CTC images. Each tile was then subjected to a single-class support vector machine (SVM) classifier for soft-tissue discrimination. The feature set of the soft-tissue SVM classifier was selected by a genetic algorithm (GA). A scalar index, called a soft-tissue likelihood, is formulated for differentiation of the soft-tissue tiles from those of other materials. Then, EC based on MD, called MD-cleansing, is performed by first initializing of the level-set front with the classified tagged regions; the front is then evolved by use of a speed function that was designed, based on the soft-tissue index, to reserve the submerged soft-tissue structures while suppressing the residual fecal regions. The performance of the MD-cleansing method was evaluated by use of a phantom and of clinical cases. In the phantom evaluation, our MD-cleansing was trained with the supine (prone) scan and tested on the prone (supine) scan, respectively. In both cases, the sensitivity and specificity of classification were 100%. The average cleansing ratio was 90.6%, and the soft-tissue preservation ratio was 97.6%. In the clinical evaluation, 10 noncathartic CTC cases (20 scans) were collected, and the ground truth of a total of 2095 tiles was established by manual assignment of a material class to each tile. Five cases were randomly selected for training GA/SVM, and the remaining five cases were used for testing. The overall sensitivity and specificity of the proposed classification scheme were 97.1% and 85.3%, respectively, and the accuracy was 94.6%. The area under the ROC curve (Az) was 0.96. Our results indicated that the use of MD-cleansing substantially improved the effectiveness of our EC method in the reduction of incomplete cleansing artifacts.
电子清洗(EC)是一种方法,通过在计算机断层结肠成像(CTC)图像中标记的 X 射线不透射线的口服对比剂来分割粪便物质,并有效地清除物质以进行数字结肠清洗。在这项研究中,我们开发了一种新的 EC 方法,称为镶嵌分解(MD),用于减少 CTC 图像中不均匀标记的粪便物质不完全清洗引起的伪影,特别是在非通便 CTC 图像中。在我们的方法中,在 CTC 图像上应用三维分水岭变换后,首先将整个结肠区域,包括残留的粪便区域,分解为一组称为瓦片的局部均匀区域。然后,每个瓦片都要经过单类支持向量机(SVM)分类器进行软组织判别。软组织 SVM 分类器的特征集通过遗传算法(GA)选择。然后为从其他材料中区分软组织瓦片制定一个标量指数,称为软组织可能性。然后,基于 MD 的 EC,称为 MD 清洗,首先使用分类标记区域初始化水平集前沿;然后使用基于软组织指数设计的速度函数来演化前沿,该速度函数旨在保留淹没的软组织结构,同时抑制残留的粪便区域。使用体模和临床病例评估 MD 清洗方法的性能。在体模评估中,我们的 MD 清洗分别用仰卧位(俯卧位)扫描进行训练和俯卧位(仰卧位)扫描进行测试。在这两种情况下,分类的灵敏度和特异性均为 100%。平均清洗率为 90.6%,软组织保留率为 97.6%。在临床评估中,收集了 10 例非通便 CTC 病例(20 次扫描),并通过手动为每个瓦片分配材料类别来建立总共 2095 个瓦片的真实数据。随机选择 5 个病例进行 GA/SVM 训练,其余 5 个病例用于测试。所提出的分类方案的总体灵敏度和特异性分别为 97.1%和 85.3%,准确性为 94.6%。ROC 曲线下的面积(Az)为 0.96。我们的结果表明,使用 MD 清洗可以显著提高我们的 EC 方法在减少不完全清洗伪影方面的有效性。