Lung nodule segmentation using active contour modeling

M. Keshani, Z. Azimifar, R. Boostani, A. Shakibafar
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引用次数: 17

Abstract

In this paper, we propose an automatic lung nodule segmentation algorithm using computed tomography (CT) images. The main contribution is automatically detecting large or small non-isolated nodules connected to the chest wall and accurately segmenting solid and cavity nodules by active contour modeling. This method consists of several steps. First, the lung is segmented by active contour modeling. The initialization is the main core of this step. It causes to transfer non-isolated nodules into isolated ones. Then, regions of interest are detected using 2D stochastic features. After that, an anatomical 3D feature is used to detect nodules. Finally, contours of detected nodules are extracted by active contour modeling. At the end, the performance of our proposed method is reported by experimental results using clinical CT images. All nodules (including solid and cavity) are detected and the number of FP is 3/scan.
基于活动轮廓建模的肺结节分割
本文提出了一种基于计算机断层扫描(CT)图像的肺结节自动分割算法。主要贡献是通过主动轮廓建模自动检测胸壁连接的大小非孤立性结节,准确分割实性和空洞性结节。这个方法包括几个步骤。首先,通过活动轮廓建模对肺进行分割。初始化是这一步的主要核心。它导致非孤立性结节向孤立性结节转移。然后,利用二维随机特征检测感兴趣的区域。之后,使用解剖三维特征来检测结节。最后,通过主动轮廓建模提取检测到的结节的轮廓。最后,通过临床CT图像的实验结果报告了该方法的性能。检测到所有结节(包括实性和空洞性),FP数量为3个/次。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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