DocumentCode :
81381
Title :
Juxta-Vascular Nodule Segmentation Based on Flow Entropy and Geodesic Distance
Author :
Shenshen Sun ; Yang Guo ; Yubao Guan ; Huizhi Ren ; Linan Fan ; Yan Kang
Author_Institution :
Inf. Sch., Shenyang Univ., Shenyang, China
Volume :
18
Issue :
4
fYear :
2014
fDate :
Jul-14
Firstpage :
1355
Lastpage :
1362
Abstract :
Computed aided diagnosis of lung CT data is a new quantitative analysis technique to distinguish malignant nodules from benign ones. Nodule growth rate is a key indicator to discriminate between benign and malignant nodules. Accurate nodule segmentation is the essential for calculating the nodule growth rate. However, it is difficult to segment juxta-vascular nodules, due to the similar gray levels in nodule and attached blood vessels. To distinguish the nodule region from the adjacent vessel region, a flowing direction feature, referred to as the direction of the normal vector for a pixel, is introduced. Since blood is flowing in one single direction through a vessel, the normal vectors of pixels in the vessel region typically point in similar orientations while the directions of those in the nodule region can be viewed as disorganized. The entropy value of the flowing direction features in a neighboring region for a vessel pixel is smaller than that for a nodule pixel. Moreover, vessel pixels typically have a larger geodesic distance to the nodule center than nodule pixels. Based on k -means clustering method, the flow entropy, combined with the geodesic distance, is used to segment vessel attached nodules. The validation of the proposed segmentation algorithm was carried out on juxta-vascular nodules, identified in the Chinalung-CT screening trial and on Lung Image Database Consortium (LIDC) dataset. In fully automated mode, accuracies of 92.9% (26/28), 87.5%(7/8), and 94.9% (149/157) are reached for the outlining of juxta-vascular nodules in the Chinalung-CT, and the first and second datasets of LIDC, respectively. Furthermore, it is demonstrated that the proposed method has low time complexity and high accuracies.
Keywords :
blood vessels; cancer; computerised tomography; differential geometry; entropy; haemodynamics; image segmentation; lung; medical disorders; medical image processing; visual databases; Chinalung-CT screening trial; LIDC dataset; benign nodules; blood flowing; blood vessels; computed aided diagnosis; entropy value; flow entropy; flowing direction features; geodesic distance; gray levels; juxta-vascular nodule segmentation; k-means clustering method; large geodesic distance; lung CT data; lung image database consortium dataset; malignant nodules; neighboring region; nodule center; nodule growth rate; nodule pixel; nodule pixels; quantitative analysis technique; segment vessel attached nodules; segmentation algorithm; vessel pixel; Cancer; Computed tomography; Entropy; Image segmentation; Lungs; Three-dimensional displays; Vectors; Computer-aided detection, flow direction feature, geodesic distance, lung cancer, nodule segmentation;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2014.2303511
Filename :
6728607
Link To Document :
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