DocumentCode :
2857191
Title :
Training neural networks for computer-aided diagnosis: experience in the intelligence community
Author :
Sajda, Paul ; Spence, Clay
Author_Institution :
Nat. Inf. Display Lab., Nat. Technol. Alliance, Princeton, NJ, USA
fYear :
1998
fDate :
1998
Firstpage :
388
Lastpage :
392
Abstract :
Neural networks are often used in computer-aided diagnosis (CAD) systems for detecting clinically significant objects. They have also been applied in the AI community to cue image analysts (IAs) for assisted target recognition and wide-area searching. Given the similarity between the applications in the two communities, there are a number of common issues that must be considered when training these neural networks. Two such issues are: (1) exploiting information at multiple scales (e.g. context and detail structure), and (2) dealing with uncertainty (e.g. errors in truth data). We address these two issues, transferring architectures and training algorithms originally developed for assisting IAs in search applications, to improve CAD for mammography. These include hierarchical pyramid neural net (HPNN) architectures that automatically learn and integrate multi-resolution features for improving microcalcification and mass detection in CAD systems. These networks are trained using an uncertain object position (UOP) error function for the supervised learning of image searching/detection tasks when the position of the objects to be found is uncertain or ill-defined. The results show that the HPNN architecture trained using the UOP error function reduces the false-positive rate of a mammographic CAD system by 30%-50% without any significant loss in sensitivity. We conclude that the transfer of assisted target recognition technology from the AI community to the medical community can significantly impact the clinical utility of CAD systems
Keywords :
image recognition; learning (artificial intelligence); mammography; medical diagnostic computing; medical image processing; neural net architecture; object detection; uncertainty handling; artificial intelligence community; assisted target recognition; clinical utility; clinically significant object detection; computer-aided diagnosis; context; detail structure; error function; false-positive rate; hierarchical pyramid neural net architectures; image analysis; image detection; image searching; mammography; mass detection; microcalcification detection; multi-resolution features; multi-scale information; neural network training; sensitivity; supervised learning; truth data errors; uncertain object position; uncertainty; wide-area searching; Application software; Artificial intelligence; Computer aided diagnosis; Image analysis; Mammography; Neural networks; Object detection; Supervised learning; Target recognition; Uncertainty;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Medical Technology Symposium, 1998. Proceedings. Pacific
Conference_Location :
Honolulu, HI
Print_ISBN :
0-8186-8667-7
Type :
conf
DOI :
10.1109/PACMED.1998.769970
Filename :
769970
Link To Document :
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