Segmentation of pulmonary nodules in thoracic CT scans: A region growing approach

被引:258
作者
Dehmeshi, Jamshid [1 ]
Amin, Hamdan [2 ]
Valdivieso, Manlio [2 ]
Ye, Xujiong [2 ]
机构
[1] Kingston Univ, Fac Comp Informat Syst & Math, Kingston upon Thames KT1 2EE, Surrey, England
[2] Mediesight Ple, London W1J 5AT, England
关键词
fuzzy connectivity; local adaptive segmentation; nodule segmentation; region growing;
D O I
10.1109/TMI.2007.907555
中图分类号
TP39 [计算机的应用];
学科分类号
081203 [计算机应用技术]; 0835 [软件工程];
摘要
This paper presents an efficient algorithm for segmenting different types of pulmonary nodules including high and low contrast nodules, nodules with vasculature attachment, and nodules in the close vicinity of the lung wall or diaphragm. The algorithm performs an adaptive sphericity oriented contrast region growing on the fuzzy connectivity map of the object of interest. This region growing is operated within a volumetric mask which is created by first applying a local adaptive segmentation algorithm that identifies foreground and background regions within a certain window size. The foreground objects are then filled to remove any holes, and a spatial connectivity map is generated to create a 3-D mask. The mask is then enlarged to contain the background while excluding unwanted foreground regions. Apart from generating a confined search volume, the mask is also used to estimate the parameters for the subsequent region growing, as well as for repositioning the seed point in order to ensure reproducibility. The method was run on 815 pulmonary nodules. By using randomly placed seed points, the approach was shown to be fully reproducible. As for acceptability, the segmentation results were visually inspected by a qualified radiologist to search for any gross misssegmentation. 84% of the first results of the segmentation were accepted by the radiologist while for the remaining 16% nodules, alternative segmentation solutions that were provided by the method were selected.
引用
收藏
页码:467 / 480
页数:14
相关论文
共 27 条
[1]
Patient-specific models for lung nodule detection and surveillance in CT images [J].
Brown, MS ;
McNitt-Gray, MF ;
Goldin, JG ;
Suh, RD ;
Sayre, JW ;
Aberle, DR .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2001, 20 (12) :1242-1250
[2]
An adaptive segmentation and 3-D visualisation of the lungs [J].
Dehmeshki, J .
PATTERN RECOGNITION LETTERS, 1999, 20 (09) :919-926
[3]
Automatic segmentation of pulmonary nodules by using dynamic 3D cross-correlation for interactive CAD systems [J].
Fan, L ;
Qian, JZ ;
Odry, B ;
Shen, H ;
Naidich, D ;
Kohl, G ;
Klotz, E .
MEDICAL IMAGING 2002: IMAGE PROCESSING, VOL 1-3, 2002, 4684 :1362-1369
[4]
FETITA CI, MED IMAGE COMPUTING, P626
[5]
Computer-aided, detection of lung nodules: False positive reduction using a 3D gradient field method and 3D ellipsoid fitting [J].
Ge, ZY ;
Sahiner, B ;
Chan, HP ;
Hadjiiski, LM ;
Cascade, PN ;
Bogot, N ;
Kazerooni, EA ;
Wei, J ;
Zhou, CA .
MEDICAL PHYSICS, 2005, 32 (08) :2443-2454
[6]
Gonzalez R., 2019, Digital Image Processing, V2nd
[7]
Region growing: A new approach [J].
Hojjatoleslami, SA ;
Kittler, J .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 1998, 7 (07) :1079-1084
[8]
Kawata Y, 2003, IEICE T INF SYST, VE86D, P1921
[9]
Quantitative surface characterization of pulmonary nodules based on thin-section CT images [J].
Kawata, Y ;
Niki, N ;
Ohmatsu, H ;
Kakinuma, R ;
Eguchi, K ;
Kaneko, M ;
Moriyama, N .
IEEE TRANSACTIONS ON NUCLEAR SCIENCE, 1998, 45 (04) :2132-2138
[10]
Small pulmonary nodules: Volume measurement at chest CT - Phantom study [J].
Ko, JP ;
Rusinek, H ;
Jacobs, EL ;
Babb, JS ;
Betke, M ;
McGuinness, G ;
Naidich, DP .
RADIOLOGY, 2003, 228 (03) :864-870