Segmentation and Image Analysis of Abnormal Lungs at CT: Current Approaches, Challenges, and Future Trends

被引:172
作者
Mansoor, Awais [1 ]
Bagci, Ulas [1 ]
Foster, Brent [1 ]
Xu, Ziyue [1 ]
Papadakis, Georgios Z. [1 ]
Folio, Les R. [1 ]
Udupa, Jayaram K. [1 ]
Mollura, Daniel J. [1 ]
机构
[1] NIH, Ctr Infect Dis Imaging, Dept Radiol & Imaging Sci, Bethesda, MD 20892 USA
基金
美国国家卫生研究院;
关键词
COMPUTER-AIDED DIAGNOSIS; AUTOMATED NODULE DETECTION; CHEST CT; PULMONARY INFECTIONS; OBJECT RECOGNITION; PATHOLOGICAL LUNG; TOMOGRAPHY SCANS; CLASSIFICATION; ALGORITHM; QUANTIFICATION;
D O I
10.1148/rg.2015140232
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
The computer-based process of identifying the boundaries of lung from surrounding thoracic tissue on computed tomographic (CT) images, which is called segmentation, is a vital first step in radiologic pulmonary image analysis. Many algorithms and software platforms provide image segmentation routines for quantification of lung abnormalities; however, nearly all of the current image segmentation approaches apply well only if the lungs exhibit minimal or no pathologic conditions. When moderate to high amounts of disease or abnormalities with a challenging shape or appearance exist in the lungs, computer-aided detection systems may be highly likely to fail to depict those abnormal regions because of inaccurate segmentation methods. In particular, abnormalities such as pleural effusions, consolidations, and masses often cause inaccurate lung segmentation, which greatly limits the use of image processing methods in clinical and research contexts. In this review, a critical summary of the current methods for lung segmentation on CT images is provided, with special emphasis on the accuracy and performance of the methods in cases with abnormalities and cases with exemplary pathologic findings. The currently available segmentation methods can be divided into five major classes: (a) thresholding-based, (b) region-based, (c) shapebased, (d) neighboring anatomy-guided, and (e) machine learning-based methods. The feasibility of each class and its shortcomings are explained and illustrated with the most common lung abnormalities observed on CT images. In an overview, practical applications and evolving technologies combining the presented approaches for the practicing radiologist are detailed. (C) RSNA, 2015
引用
收藏
页码:1056 / 1076
页数:21
相关论文
共 68 条
[1]   SEEDED REGION GROWING [J].
ADAMS, R ;
BISCHOF, L .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 1994, 16 (06) :641-647
[2]   Computerized analysis of mesothelioma on CT scans [J].
Armato, SG .
LUNG CANCER, 2005, 49 :S41-S44
[3]   Evaluation of semiautomated measurements of mesothelioma tumor thickness on CT scans [J].
Armato, SG ;
Oxnard, GR ;
Kocherginsky, M ;
Vogelzang, NJ ;
Kindler, HL ;
MacMahon, H .
ACADEMIC RADIOLOGY, 2005, 12 (10) :1301-1309
[4]   Automated lung segmentation for thoracic CT: Impact on computer-aided diagnosis [J].
Armato, SG ;
Sensakovic, WF .
ACADEMIC RADIOLOGY, 2004, 11 (09) :1011-1021
[5]   Automated lung nodule classification following automated nodule detection on CT: A serial approach [J].
Armato, SG ;
Altman, MB ;
Wilkie, J ;
Sone, S ;
Li, F ;
Doi, K ;
Roy, AS .
MEDICAL PHYSICS, 2003, 30 (06) :1188-1197
[6]   Image annotation for conveying automated lung nodule detection results to radiologists [J].
Armato, SG .
ACADEMIC RADIOLOGY, 2003, 10 (09) :1000-1007
[7]   Pulmonary nodules at chest CT: Effect of computer-aided diagnosis on radiologists' detection performance [J].
Awai, K ;
Murao, K ;
Ozawa, A ;
Komi, M ;
Hayakawa, H ;
Hori, S ;
Nishimura, Y .
RADIOLOGY, 2004, 230 (02) :347-352
[8]   A computational pipeline for quantification of pulmonary infections in small animal models using serial PET-CT imaging [J].
Bagci, Ulas ;
Foster, Brent ;
Miller-Jaster, Kirsten ;
Luna, Brian ;
Dey, Bappaditya ;
Bishai, William R. ;
Jonsson, Colleen B. ;
Jain, Sanjay ;
Mollura, Daniel J. .
EJNMMI RESEARCH, 2013, 3
[9]   Automated computer quantification of breast cancer in small-animal models using PET-guided MR image co-segmentation [J].
Bagci, Ulas ;
Kramer-Marek, Gabriela ;
Mollura, Daniel J. .
EJNMMI RESEARCH, 2013, 3 :1-13
[10]  
Bagci U, 2012, 2012 9TH IEEE INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI), P1459, DOI 10.1109/ISBI.2012.6235846