从CT腹部图像中自动检测肝脏肿瘤——一种比较方法

R. Devi, A. Shenbagavalli
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引用次数: 0

摘要

肝脏是人体的重要器官。肝脏发挥着重要的功能,包括新陈代谢、消化和排毒。肝脏是腹部的重要器官,它通过血管与附近的器官如脾、胰腺、胆囊、腹部和肠道相连。具体的方法,如图像梯度和区域增长是不太可靠的分割肝脏肿瘤。将水平集方法与主动轮廓法和统一水平集方法进行比较,评价了空间模糊c均值方法在分割肝脏图像中分割肿瘤的效果。所提出的方法是通过使用向公众提供的3DIRCADB数据集以及从arti医院、钦奈和Tirunelveli扫描中心获取的非公共数据集来实现的。使用公共数据集3DIRCADB中的ground truth图像和非公共数据集的临床合作伙伴手动识别的专家分割结果,基于空间重叠、相似系数、Jaccard指数等多种定量度量对系统进行验证。通过对算法的分析,表明采用水平集系统和模糊C均值的空间分割对肝脏进行肿瘤分割具有较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Detection of Liver Tumor from CT Abdominal Images - A Comparative Approach
The liver is a vital organ in human body. Liver performs an important function including metabolism, digestion, and detoxification. Liver is a significant organ in an abdomen, and is connected to the nearby organ such as spleen, pancreas, gallbladder, abdomen, and gut through blood vessels. Specific approaches such as image gradient and region growing are not quite reliable for the segmentation of the liver tumor. A level-set approach is evaluated in this paper compared with the active contour approach of segmentation of the liver imaging from the image of the CT abdomen and Unified level set method, spatial Fuzzy C-means method for segmenting tumor from segmented liver images is appraised. The proposed approach is implemented by using the 3DIRCADB dataset available to the public as well as non-public datasets taken from Arthi Hospital, Chennai and Tirunelveli scanning centre. For validating the system based on the diverse quantitative measures, including space overlap, coefficient of similarity, Jaccard indices, using ground truth images, which are available in the public data set 3DIRCADB and the expert segmentation results which are manually identified by the clinical partner for nonpublic datasets. The analysis of the algorithm shows the better results for segmenting liver using level set system and spatial segmentation of Fuzzy C means of the tumor segmentation.
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