Author/Authors :
Wang, Jinke Department of Software Engineering - Harbin University of Science and Technology - Rongcheng, China , Guo, Haoyan School of Computer Science and Technology - Harbin Institute of Technology - Weihai, China
Abstract :
This paper presents a fully automatic framework for lung segmentation, in which juxta-pleural nodule problem is brought into
strong focus. The proposed scheme consists of three phases: skin boundary detection, rough segmentation of lung contour, and
pulmonary parenchyma refinement. Firstly, chest skin boundary is extracted through image aligning, morphology operation, and
connective region analysis. Secondly, diagonal-based border tracing is implemented for lung contour segmentation, with maximum
cost path algorithm used for separating the left and right lungs. Finally, by arc-based border smoothing and concave-based border
correction, the refined pulmonary parenchyma is obtained. The proposed scheme is evaluated on 45 volumes of chest scans,
with volume difference (VD) 11.15 ± 69.63 cm3
, volume overlap error (VOE) 3.5057 ± 1.3719%, average surface distance (ASD)
0.7917 ± 0.2741 mm, root mean square distance (RMSD) 1.6957 ± 0.6568 mm, maximum symmetric absolute surface distance
(MSD) 21.3430 ± 8.1743 mm, and average time-cost 2 seconds per image. The preliminary results on accuracy and complexity
prove that our scheme is a promising tool for lung segmentation with juxta-pleural nodules.
Keywords :
RMSD , Juxta-Pleural , Segmentation , Tracing