Automated classification of hyperlucency, fibrosis, ground glass, solid, and focal lesions in high-resolution CT of the lung

被引:54
作者
Sluimer, Ingrid C. [1 ]
Prokop, Mathias
Hartmann, Ieneke
van Ginneken, Bram
机构
[1] Univ Med Ctr, Image Sci Inst, Utrecht, Netherlands
[2] Univ Med Ctr, Dept Radiol, Utrecht, Netherlands
关键词
high-resolution computed tomography; chest; interstitial disease; texture analysis computer-aided detection;
D O I
10.1118/1.2207131
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
An automatic method for textural analysis of complete HRCT lung slices is presented. The system performs classification of regions of interest (ROIs) into one of six classes: normal, hyperlucency, fibrosis, ground glass, solid, and focal. We propose a novel method of automatically generating ROIs that contain homogeneous texture. The use of such regions rather than, square regions is shown to improve performance of the automated system. Furthermore, the use of two different, previously published, feature sets is investigated. Both feature sets are shown to yield similar results. Classification performance of the complete system is characterized by ROC curves for each of the classes of abnormality and compared to a total of three expert readings by two experienced radiologists. The different types of abnormality can be automatically distinguished with areas under the ROC curve that range from 0.74 (focal) to 0.95 (solid). The kappa statistics for intraobserver agreement, interobserver agreement, and computer versus observer agreement were 0.70, 0.53 +/- 0.02, and 0.40 +/- 0.03, respectively. The question whether or not a class of abnormality was present in a slice could be answered by the computer system with an accuracy comparable to that of radiologists. (C) 2006 American Association of Physicists in Medicine.
引用
收藏
页码:2610 / 2620
页数:11
相关论文
共 27 条
[1]   Vessel tree reconstruction in thoracic CT scans with application to nodule detection [J].
Agam, G ;
Armato, SG ;
Wu, CH .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2005, 24 (04) :486-499
[2]  
Altman DG, 1990, PRACTICAL STAT MED R
[3]  
[Anonymous], 2002, AM J RESP CRIT CARE, V165, P277, DOI [DOI 10.1164/AJRCCM.165.2.ATS01, 10.1164/ajrccm.165.2.ats01]
[4]   Automated detection of lung nodules in CT scans: Preliminary results [J].
Armato, SG ;
Giger, ML ;
MacMahon, H .
MEDICAL PHYSICS, 2001, 28 (08) :1552-1561
[5]   An optimal algorithm for approximate nearest neighbor searching in fixed dimensions [J].
Arya, S ;
Mount, DM ;
Netanyahu, NS ;
Silverman, R ;
Wu, AY .
JOURNAL OF THE ACM, 1998, 45 (06) :891-923
[6]   HRCT diagnosis of diffuse parenchymal lung disease: interobserver variation [J].
Aziz, ZA ;
Wells, AU ;
Hansell, DM ;
Bain, GA ;
Copley, SJ ;
Desai, SR ;
Ellis, SM ;
Gleeson, FV ;
Grubnic, S ;
Nicholson, AG ;
Padley, SPG ;
Pointon, KS ;
Reynolds, JH ;
Robertson, RJH ;
Rubens, MB .
THORAX, 2004, 59 (06) :506-511
[7]  
*BTS, 1999, THORAX S1, V54, pS24
[8]   Usual interstitial pneumonia - Quantitative assessment of high-resolution computed tomography findings by computer-assisted texture-based image analysis [J].
Delorme, S ;
KellerReichenbecher, MA ;
Zuna, I ;
Schlegel, W ;
vanKaick, G .
INVESTIGATIVE RADIOLOGY, 1997, 32 (09) :566-574
[9]  
Duda R.O., 2001, Pattern Classification, V2nd
[10]   Unsupervised feature selection applied to content-based retrieval of lung images [J].
Dy, JG ;
Brodley, CE ;
Kak, A ;
Broderick, LS ;
Aisen, AM .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2003, 25 (03) :373-378