Automatic extraction of ground-glass opacity shadows on CT images of the thorax by correlation between successive slices

Hyoungseop Kim, Masaki Maekado, J. Tan, S. Ishikawa, Masaaki Tsukuda
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引用次数: 5

Abstract

In general, segmentation is difficult because surrounding soft tissues and organs have similar CT values and sometimes contact with each other. We propose a new technique for automatic segmentation of lung regions and its classification for ground-glass opacity from the segmented lung regions by computer based on a set of the thorax CT images. In this paper, we segment the lung region for extraction of the region of interest employing binarization and labeling process from the inputted each slices images. The region having the largest area is regarded as the tentative lung regions. Furthermore, the ground-glass opacity is classified by correlation distribution on the slice to slice from the extracted lung region with respect to the thorax CT images. Experiment is performed employing twenty six thorax CT image sets and 96% of recognition rates were achieved. Obtained results are shown along with a discussion
基于连续切片间相关性的胸部CT图像毛玻璃阴影自动提取方法
通常情况下,由于周围软组织和器官的CT值相似,有时彼此接触,分割是困难的。基于一组胸腔CT图像,提出了一种新的肺区域自动分割技术,并对分割后的肺区域进行磨玻璃不透明分类。在本文中,我们从输入的每个切片图像中使用二值化和标记处理对肺区域进行分割以提取感兴趣的区域。面积最大的区域称为试验性肺区。此外,根据提取的肺区与胸部CT图像在各切片上的相关分布对毛玻璃不透明进行分类。采用26组胸腔CT图像进行实验,识别率达到96%。给出了所得结果,并进行了讨论
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