CLASSIFICATION OF MASS AND NORMAL BREAST-TISSUE ON DIGITAL MAMMOGRAMS - MULTIRESOLUTION TEXTURE ANALYSIS

被引:74
作者
WEI, DT [1 ]
CHAN, HP [1 ]
HELVIE, MA [1 ]
SAHINER, B [1 ]
PETRICK, N [1 ]
ADLER, DD [1 ]
GOODSITT, MM [1 ]
机构
[1] UNIV MICHIGAN,DEPT RADIOL,ANN ARBOR,MI 48109
关键词
MAMMOGRAPHY; COMPUTER-AIDED DIAGNOSIS; MASS; WAVELET TRANSFORM; MULTIRESOLUTION TEXTURE ANALYSIS; LINEAR DISCRIMINANT CLASSIFIER;
D O I
10.1118/1.597418
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
We investigated the feasibility of using multiresolution texture analysis for differentiation of masses from normal breast tissue on mammograms. The wavelet transform was used to decompose regions of interest (ROIs) on digitized mammograms into several scales. Multiresolution texture features were calculated from the spatial gray level dependence matrices of (1) the original images at variable distances between the pixel pairs, (2) the wavelet coefficients at different scales, and (3) the wavelet coefficients up to certain scale and then at variable distances between the pixel pairs. In this study, 168 ROIs containing biopsy-proven masses and 504 ROIs containing normal parenchyma were used as the data set. The mass ROIs were randomly and equally divided into training and test groups along with corresponding normal ROIs from the same film. Stepwise linear discriminant analysis was used to select optimal features from the multiresolution texture feature space to maximize the separation of mass and normal tissue for all ROIs. We found that texture features at large pixel distances are important for the classification task. The wavelet transform can effectively condense the image information into its coefficients. With texture features based on the wavelet coefficients and variable distances, the area A(z) under the receiver operating characteristic curve reached 0.89 and 0.86 for the training and test groups, respectively. The results demonstrate that a linear discriminant classifier using the multiresolution texture features can effectively classify masses from normal tissue on mammograms.
引用
收藏
页码:1501 / 1513
页数:13
相关论文
共 38 条
[1]  
ACKERMAN LV, 1972, CANCER, V30, P1025, DOI 10.1002/1097-0142(197210)30:4<1025::AID-CNCR2820300425>3.0.CO
[2]  
2-7
[3]   BREAST-CANCER DETECTION - ONE VERSUS 2 VIEWS [J].
BASSETT, LW ;
BUNNELL, DH ;
JAHANSHAHI, R ;
GOLD, RH ;
ARNDT, RD ;
LINSMAN, J .
RADIOLOGY, 1987, 165 (01) :95-97
[4]   ANALYSIS OF CANCERS MISSED AT SCREENING MAMMOGRAPHY [J].
BIRD, RE ;
WALLACE, TW ;
YANKASKAS, BC .
RADIOLOGY, 1992, 184 (03) :613-617
[5]   IMPROVEMENT IN RADIOLOGISTS DETECTION OF CLUSTERED MICROCALCIFICATIONS ON MAMMOGRAMS - THE POTENTIAL OF COMPUTER-AIDED DIAGNOSIS [J].
CHAN, HP ;
DOI, K ;
VYBORNY, CJ ;
SCHMIDT, RA ;
METZ, CE ;
LAM, KL ;
OGURA, T ;
WU, YZ ;
MACMAHON, H .
INVESTIGATIVE RADIOLOGY, 1990, 25 (10) :1102-1110
[6]   COMPUTER-AIDED CLASSIFICATION OF MAMMOGRAPHIC MASSES AND NORMAL TISSUE - LINEAR DISCRIMINANT-ANALYSIS IN TEXTURE FEATURE SPACE [J].
CHAN, HP ;
WEI, DT ;
HELVIE, MA ;
SAHINER, B ;
ADLER, DD ;
GOODSITT, MM ;
PETRICK, N .
PHYSICS IN MEDICINE AND BIOLOGY, 1995, 40 (05) :857-876
[7]  
CHANG T, 1994, IEEE T IMAGE PROCESS, V2, P429
[8]  
Conners R. W., 1979, Proceedings of the 1979 IEEE Computer Society Conference on Pattern Recognition and Image Processing, P382
[9]   THE WAVELET TRANSFORM, TIME-FREQUENCY LOCALIZATION AND SIGNAL ANALYSIS [J].
DAUBECHIES, I .
IEEE TRANSACTIONS ON INFORMATION THEORY, 1990, 36 (05) :961-1005
[10]   ORTHONORMAL BASES OF COMPACTLY SUPPORTED WAVELETS [J].
DAUBECHIES, I .
COMMUNICATIONS ON PURE AND APPLIED MATHEMATICS, 1988, 41 (07) :909-996