Image feature selection by a genetic algorithm: Application to classification of mass and normal breast tissue

被引:101
作者
Sahiner, B
Chan, HP
Wei, DT
Petrick, N
Helvie, MA
Adler, DD
Goodsitt, MM
机构
[1] University of Michigan, Department of Radiology, Ann Arbor
关键词
mammography; computer-aided diagnosis; genetic algorithms; feature selection;
D O I
10.1118/1.597829
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 a new approach to feature selection, and demonstrated its application in the task of differentiating regions of interest (ROIs) on mammograms as either mass or normal tissue. The classifier included a genetic algorithm (GA) for image feature selection, and a linear discriminant classifier or a backpropagation neural network (BPN) for formulation of the classifier outputs. The GA-based feature selection was guided by higher probabilities of survival for fitter combinations of features, where the fitness measure was the area A(z) under the receiver operating characteristic (ROC) curve. We studied the effect of different GA parameters on classification accuracy, and compared the results to those obtained with stepwise feature selection. The data set used in this study consisted of 168 ROIs containing biopsy-proven masses and 504 ROIs containing normal tissue. From each ROI, a total of 587 features were extracted, of which 572 were texture features and 15 were morphological features. The GA was trained and tested with several different partitionings of the ROIs into training and testing sets. With the best combination of the GA parameters, the average test A(z) value using a linear discriminant classifier reached 0.90, as compared to 0.89 for stepwise feature selection. Test A(z) values with a BPN classifier and a more limited feature pool were 0.90 with GA-based feature selection, and 0.89 for stepwise feature selection. The use of a GA in tailoring classifiers with specific design characteristics was also discussed. This study indicates that a GA can provide versatility in the design of Linear or nonlinear classifiers without a trade-off in the effectiveness of the selected features. (C) 1996 American Association of Physicists in Medicine.
引用
收藏
页码:1671 / 1684
页数:14
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