Accurate tumor positioning from PET-CT by performing registration based segmentation

Dengwang Li, Xueting Liu, Jie Wang, Qinfen Wang, Jinhu Chen, Hongsheng Li, Yong Yin
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Abstract

In this work, an efficient tumor positioning method is proposed by performing registration based segmentation from 18-FDG PET-CT scanners. At the first stage, the tumor is segmented from PET scans by region growing using the manual seeds which employs the SUV monotonous features, and then the tumor contours are transferred to corresponding CT images automatically by registration method which is based on edge preserving scale space for following radiation therapy planning. The experiments results demonstrate the efficiency of proposed method.
基于配准分割的PET-CT精确定位肿瘤
在这项工作中,通过对18-FDG PET-CT扫描仪进行基于配准的分割,提出了一种有效的肿瘤定位方法。首先,采用基于SUV单调特征的人工种子区域生长方法从PET扫描中分割出肿瘤,然后采用基于边缘保持尺度空间的配准方法将肿瘤轮廓自动转移到相应的CT图像中,以便后续放疗规划。实验结果证明了该方法的有效性。
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