Mass lesion detection with a fuzzy neural network

被引:41
作者
Cheng, HD [1 ]
Cui, M [1 ]
机构
[1] Utah State Univ, Dept Comp Sci, Logan, UT 84322 USA
关键词
entropy; uniformity; contrast; co-occurrence matrix; true positive (TP); false negative (FN);
D O I
10.1016/j.patcog.2003.11.002
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
This paper presents a novel fuzzy neural network (FNN) approach to detect malignant mass lesions on mammograms. The FNN is a self-adjusting and adaptive system. It is simple in Structure and easy to incorporate experts' knowledge and fuzzified factors in the detection of malignant mass lesions on mammograms. The FNN has four layers. The first layer is the input layer consisting of 4 fuzzy neurons. The second layer has 4 ordinary neurons. The third layer consists of N maximum fuzzy neurons. The number of fuzzy neurons, N, in the third layer is determined during the training process and varies with the network parameters and data distribution. The fourth layer has 2 maximum fuzzy neurons and one competitive fuzzy neuron. Mammograms were obtained from the digital database for screening mammography, DDSM. Six-hundred and seventy regions of interest (ROIs) were extracted from 100 mammograms. All extracted ROIs were randomly divided into two sets: training and testing sets. The co-occurrence matrix of each ROI was computed. Textural features were calculated at sizes of 256 x 256 and 768 x 768, respectively. The feature differences at these two image sizes were computed for each feature. These feature differences are very discriminant in differentiating between malignant masses and normal tissues regardless of lesion shape, size, and Subtlety. After training, the FNN can correctly detect all malignant masses on mammograms in the testing group. The true-positive fraction (TPF) is 0.92 when the number of false positives (FP) is 1.33 per mammogram and 1.0 when the FP is 2.15 per mammogram. The proposed approach will be Very useful for breast cancer control. (C) 2003 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
引用
收藏
页码:1189 / 1200
页数:12
相关论文
共 55 条
[11]  
CHUNG FL, 1994, NEURAL NETWORKS, V7, P539, DOI 10.1016/0893-6080(94)90111-2
[12]   On multistage fuzzy neural network modeling [J].
Chung, FL ;
Duan, JC .
IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2000, 8 (02) :125-142
[13]   Automatic tumor segmentation using knowledge-based techniques [J].
Clark, MC ;
Hall, LO ;
Goldgof, DB ;
Velthuizen, R ;
Murtagh, FR ;
Silbiger, MS .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 1998, 17 (02) :187-201
[14]   ON THE PRINCIPLES OF FUZZY NEURAL NETWORKS [J].
GUPTA, MM ;
RAO, DH .
FUZZY SETS AND SYSTEMS, 1994, 61 (01) :1-18
[15]  
HAYASHI Y, 1992, P INT JOINT C NEURAL, V2, P696
[16]   ON FUZZY MODELING USING FUZZY NEURAL NETWORKS WITH THE BACKPROPAGATION ALGORITHM [J].
HORIKAWA, S ;
FURUHASHI, T ;
UCHIKAWA, Y .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1992, 3 (05) :801-806
[17]  
ISHIBUCHI H, 1995, INT J APPROX REASON, V13, P327, DOI 10.1016/0888-613X(95)00060-T
[18]   STRUCTURE OPTIMIZATION OF FUZZY NEURAL-NETWORK BY GENETIC ALGORITHM [J].
ISHIGAMI, H ;
FUKUDA, T ;
SHIBATA, T ;
ARAI, F .
FUZZY SETS AND SYSTEMS, 1995, 71 (03) :257-264
[19]  
Jain R., 1995, Machine Vision, V5
[20]   ANFIS - ADAPTIVE-NETWORK-BASED FUZZY INFERENCE SYSTEM [J].
JANG, JSR .
IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS, 1993, 23 (03) :665-685