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An improved shift‐invariant artificial neural network for computerized detection of clustered microcalcifications in digital mammograms
Author(s) -
Zhang Wei,
Doi Kunio,
Giger Maryellen L.,
Nishikawa Robert M.,
Schmidt Robert A.
Publication year - 1996
Publication title -
medical physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.473
H-Index - 180
eISSN - 2473-4209
pISSN - 0094-2405
DOI - 10.1118/1.597891
Subject(s) - artificial intelligence , preprocessor , pattern recognition (psychology) , normalization (sociology) , computer science , receiver operating characteristic , pixel , computer aided diagnosis , artificial neural network , cad , region of interest , mammography , digital mammography , mathematics , computer vision , medicine , cancer , machine learning , sociology , engineering drawing , breast cancer , anthropology , engineering
A shift‐invariant artificial neutral network (SIANN) has been applied to eliminate the false‐positive detections reported by a rule‐based computer aided‐diagnosis (CAD) scheme developed in our laboratory. Regions of interest (ROIs) were selected around the centers of the rule‐based CAD detections and analyzed by the SIANN. In our previous study, background‐trend correction and pixel‐value normalization were used as the preprocessing of the ROIs prior to the SIANN. A ROI is classified as a positive ROI, if the total number of microcalcifications detected in the ROI is greater than a certain number. In this study, modifications were made to improve the performance of the SIANN. First, the preprocessing is removed because the result of the background‐trend correction is affected by the size of ROIs. Second, image‐feature analysis is employed to the output of the SIANN in an effort to eliminate some of the false detections by the SIANN. In order to train the SIANN to detect microcalcifications and also to extract image features of microcalcifications, the zero‐mean‐weight constraint and training‐free‐zone techniques have been developed. A cross‐validation training method was also applied to avoid the overtraining problem. The performance of the SIANN was evaluated by means of ROC analysis using a database of 39 mammograms for training and 50 different mammograms for testing. The analysis yielded an average area under the ROC curve ( A Z ) of 0.90 for the testing set. Approximately 62% of false‐positive clusters detected by the rule‐based scheme were eliminated without any loss of the true‐positive clusters by using the improved SIANN with image feature analysis techniques.