Title of article :
Segmentation Refinement of Small-Size Juxta-Pleural Lung Nodules in CT Scans
Author/Authors :
Liu, Jiyu Department of Radiology - Shanghai Pulmonary Hospital - Tongji University - Shanghai, China , Gong, Jing School of Medical Instrumentation & Foodstuff - University of Shanghai for Science and Technology - Shanghai, China , Wang, Lijia School of Medical Instrumentation & Foodstuff - University of Shanghai for Science and Technology - Shanghai, China , Sun, Xiwen Department of Radiology - Shanghai Pulmonary Hospital - Tongji University - Shanghai, China , Nie, Shengdong School of Medical Instrumentation & Foodstuff - University of Shanghai for Science and Technology - Shanghai, China
Abstract :
Background: In order to evaluate the growth rate of lung cancer, pulmonary nodule segmentation is an essential and crucial step.
Segmentation of juxta-pleural pulmonary nodule in CT scans, especially small size ones, is still a challenge.
Objectives: To better support the following radiomics analysis, this study aims to propose and develop a novel segmentation
method for small-size juxta-pleural pulmonary nodules.
Materials and Methods: In this study, we investigated and developed a novel approach based on transition region thresholding
and chain code analysis to segment juxta-pleural pulmonary nodules. First, we cropped the region of interest (ROI) from the lung
CT scans, and enhanced the nodule regions by using an anisotropic diffusion algorithm. Second, to extract the foreground pixels
(including the attached chest wall) from ROIs, we applied an adaptive segmentation process by incorporating a threshold segmentation
method with transition region analysis. Third, we smoothed the lung contour by using iterative weighted averaging algorithm.
Then, we utilized chain code analysis to repair lung parenchyma boundaries. Finally, we obtained the segmentation result
by overlapping the extracted foreground with the repaired lung parenchyma mask.
Results: To validate the performance of the proposed segmentation approach, we selected 50 juxta-pleural nodules with diameter
ranges from 5mmto 10mmfrom Lung Image Database Consortium (LIDC) database. Compared with the ground truth generated
by radiologists, we achieved an average overlap rate of 76.93% 0.06 with a false positive rate of 13.09% 0.09.
Conclusion: After comparing and analyzing the segmentation results, we found that our approach outperformed the method reported
in other literature. The experimental results demonstrated that our new method is an effective approach to segment smallsize
juxta-pleural pulmonary nodules accurately.
Keywords :
Pulmonary Nodule , Image Segmentation , Transition Region , IterativeWeighted Averaging , Chain Code
Journal title :
Iranian Journal of Radiology (IJR)