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Frontiers of Computer Science

ISSN 2095-2228

ISSN 2095-2236(Online)

CN 10-1014/TP

邮发代号 80-970

2019 Impact Factor: 1.275

Frontiers of Computer Science  2016, Vol. 10 Issue (1): 189-200   https://doi.org/10.1007/s11704-015-4543-x
  RESEARCH ARTICLE 本期目录
An automated pulmonary parenchyma segmentation method based on an improved region growing algorithm in PET-CT imaging
Juanjuan ZHAO1,*(),Guohua JI1,Xiaohong HAN2,Yan QIANG1,Xiaolei LIAO1
1. College of Computer Science and Technology, Taiyuan University of Technology, Taiyuan 030024, China
2. Key Laboratory of Advanced Transducers and Intelligent Control Systems, Taiyuan University of Technology,Taiyuan 030024, China
 全文: PDF(719 KB)  
Abstract

To address the incomplete problem in pulmonary parenchyma segmentation based on the traditional methods,a novel automated segmentation method based on an eightneighbor region growing algorithm with left-right scanning and four-corner rotating and scanning is proposed in this paper.The proposed method consists of four main stages: image binarization, rough segmentation of lung, image denoising and lung contour refining. First, the binarization of images is done and the regions of interest are extracted. After that, the rough segmentation of lung is performed through a general region growing method. Then the improved eight-neighbor region growing is used to remove noise for the upper, middle,and bottom region of lung. Finally, corrosion and expansion operations are utilized to smooth the lung boundary.The proposed method was validated on chest positron emission tomography-computed tomography (PET-CT) data of 30 cases from a hospital in Shanxi, China. Experimental results show that our method can achieve an average volume overlap ratio of 96.21±0.39% with the manual segmentation results.Compared with the existing methods, the proposed algorithm segments the lung in PET-CT images more efficiently and accurately.

Key wordspulmonary parenchyma segmentation    bottom region of lung    image binarization    iterative threshold    seeded region growing    four-corner rotating and scanning    denoising    contour refining    PET-CT
收稿日期: 2014-11-28      出版日期: 2016-01-06
Corresponding Author(s): Juanjuan ZHAO   
 引用本文:   
. [J]. Frontiers of Computer Science, 2016, 10(1): 189-200.
Juanjuan ZHAO, Guohua JI, Xiaohong HAN, Yan QIANG, Xiaolei LIAO. An automated pulmonary parenchyma segmentation method based on an improved region growing algorithm in PET-CT imaging. Front. Comput. Sci., 2016, 10(1): 189-200.
 链接本文:  
https://academic.hep.com.cn/fcs/CN/10.1007/s11704-015-4543-x
https://academic.hep.com.cn/fcs/CN/Y2016/V10/I1/189
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