DocumentCode :
1797872
Title :
Efficient deformable model with sparse shape composition prior on compromised right lung segmentation in CT
Author :
Jinghao Zhou ; Lasio, Giovanni ; Zhang, Boming ; Prado, Karl ; D´Souza, Warren ; Zhennan Yan ; Metaxas, Dimitris
Author_Institution :
Sch. of Med., Dept. of Radiat. Oncology, Univ. of Maryland, Baltimore, MD, USA
fYear :
2014
fDate :
15-17 Nov. 2014
Firstpage :
764
Lastpage :
768
Abstract :
We developed an automated lung segmentation method, which uses deformable model with sparse shape composition prior for patients with compromised lung volumes with severe pathologies in CT. Fifteen thoracic computed tomography scans for patients with lung tumors were collected and reference lung ROIs in each scan was manually segmented to assess the performance of the method. First, sparse shape composition model is constructed using training dataset. Next, the deformable model with SSC prior will be initialized according to the rough segmented right lung ROI. Then, the right lung with compromised lung volumes is segmented using the robust deformable model. Energy terms from ROI edge potential and interior ROI region based potential are combined in this model for accurate and robust segmentation. The quantitative results of our segmentation method achieved mean dice score of (0.86, 0.97) with 95% CI, mean accuracy of (0.93, 0.98) with 95% CI, and mean relative error of (0.07, 0.17) with 95% CI. The qualitative and quantitative comparisons show that our proposed method can achieve better segmentation accuracy with less variance compared with a robust active shape model method (RASM). The proposed method will be useful in radiotherapy assessment in thoracic computed tomography and image analysis applications for lung nodule or lung cancer diagnosis.
Keywords :
computerised tomography; image segmentation; medical image processing; CT; RASM; automated lung segmentation method; compromised right lung segmentation; computerised tomography; deformable model; image analysis application; lung ROI; mean dice score; mean relative error; region-of-interest; robust active shape model method; sparse shape composition; sparse shape composition model; Biomedical imaging; Computed tomography; Deformable models; Image segmentation; Lungs; Robustness; Shape; Deformable Model; Lung Segmentation; Sparse Shape Composition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems and Informatics (ICSAI), 2014 2nd International Conference on
Conference_Location :
Shanghai
Print_ISBN :
978-1-4799-5457-5
Type :
conf
DOI :
10.1109/ICSAI.2014.7009387
Filename :
7009387
Link To Document :
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