Prescreening entire mammograms for masses with artificial neural networks: Preliminary results

被引:12
作者
Kalman, BL [1 ]
Reinus, WR [1 ]
Kwasny, SC [1 ]
Laine, A [1 ]
Kotner, L [1 ]
机构
[1] BARNES JEWISH HOSP,MALLINCKRODT INST RADIOL,ST LOUIS,MO 63110
关键词
computers; neural network; breast neoplasms; diagnosis; breast radiography;
D O I
10.1016/S1076-6332(97)80046-3
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
Rationale and Objectives. The authors evaluated the feasibility of combining wavelet transform and artificial neural network (ANN) technologies to prescreen mammograms for masses. Methods and Materials. Fifty-five mammograms (29) with masses and 26 without) were digitized to 100-mm resolution and processed by using wavelet transformation. These wavelets were subjected to a linear output sequential recursive auto-associative memory ANN and cluster analysis with feature vector formation. These vectors were used in two separate experiments-one with 13 cases and another with seven cases held out in a test set-to train feed-forward ANNs to detect the mammograms with a mass. The experiments were repeated with rerandomization of the data, four and six times, respectively. Results. There was a statistically significant correlation (P < .01) between the network's prediction of a mass and the presence of a mass. With majority voting, the feed-forward ANNs detected masses with 79% sensitivity and 50% specificity. Conclusion. Although preliminary, the combination of wavelet transform and ANN is promising and may provide a viable method to prescreen mammograms for masses with high sensitivity and reasonable specificity.
引用
收藏
页码:405 / 414
页数:10
相关论文
共 52 条
[1]   MACHINES THAT LEARN FROM HINTS [J].
ABUMOSTAFA, YS .
SCIENTIFIC AMERICAN, 1995, 272 (04) :64-69
[2]   NEURAL NETWORKS IN RADIOLOGIC-DIAGNOSIS .1. INTRODUCTION AND ILLUSTRATION [J].
BOONE, JM ;
GROSS, GW ;
GRECOHUNT, V .
INVESTIGATIVE RADIOLOGY, 1990, 25 (09) :1012-1016
[3]   NEURAL NETWORKS IN RADIOLOGY - AN INTRODUCTION AND EVALUATION IN A SIGNAL-DETECTION TASK [J].
BOONE, JM ;
SIGILLITO, VG ;
SHABER, GS .
MEDICAL PHYSICS, 1990, 17 (02) :234-241
[4]   RADIOGRAPHIC INFORMATION-THEORY AND APPLICATION TO MAMMOGRAPHY [J].
BRODIE, I ;
GUTCHECK, RA .
MEDICAL PHYSICS, 1982, 9 (01) :79-95
[5]   COMPUTER-AIDED DETECTION OF MAMMOGRAPHIC MICROCALCIFICATIONS - PATTERN-RECOGNITION WITH AN ARTIFICIAL NEURAL-NETWORK [J].
CHAN, HP ;
LO, SCB ;
SAHINER, B ;
LAM, KL ;
HELVIE, MA .
MEDICAL PHYSICS, 1995, 22 (10) :1555-1567
[6]  
CHAN HP, 1988, INVEST RADIOL, V23, P664
[7]   TREE-STRUCTURED NONLINEAR FILTER AND WAVELET TRANSFORM FOR MICROCALCIFICATION SEGMENTATION IN DIGITAL MAMMOGRAPHY [J].
CLARKE, LP ;
KALLERGI, M ;
QIAN, W ;
LI, HD ;
CLARK, RA ;
SILBIGER, ML .
CANCER LETTERS, 1994, 77 (2-3) :173-181
[8]  
DAI XD, 1996, THESIS WASHINGTON U
[9]  
DODD GD, 1993, CANCER, V72, P1429, DOI 10.1002/1097-0142(19930815)72:4+<1429::AID-CNCR2820721403>3.0.CO
[10]  
2-N