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IEEE-INNS-ENNS International Joint Conference on Neural Networks (IJCNN'00)-Volume 1
Identification of Masses in Digital Mammograms with MLP and RBF Nets
Como, Italy
July 24-July 27
ISBN: 0-7695-0619-4
Keir Bovis, University of Exeter
Sameer Singh, University of Exeter
Jonathan Fieldsend, University of Exeter
Chris Pinder, Royal Devon & Exeter Hospital
In this paper, we study the identification of masses in digital mammograms using texture analysis. A number of texture measures are calculated for bilateral difference images showing regions of interest. The measurements are made on co-occurrence matrices in four different directions giving seventy features. These features include the ones proposed by Haralick et. al., (1973) and (Chan et al., 1997). We study 144 breast images from the MIAS database. The dimensionality of the dataset is reduced using principal component analysis (PCA). PCA components are classified using both multilayer perceptron networks using backpropagation (MLP) and radial basis functions based on Gaussian kernels (RBF). The two methods are compared on the same data across a ten fold cross-validation. The results are generated on the average recognition rate over these folds on correctly recognizing masses and normal regions. Further analysis is based on the Receiver Operating Characteristic (ROC) plots. The best results show recognition rates of 77% correct recognition and an area under the ROC curve value Az of 0.74.
Citation:
Keir Bovis, Sameer Singh, Jonathan Fieldsend, Chris Pinder, "Identification of Masses in Digital Mammograms with MLP and RBF Nets," ijcnn, vol. 1, pp.1342, IEEE-INNS-ENNS International Joint Conference on Neural Networks (IJCNN'00)-Volume 1, 2000
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