Impact of lesion segmentation metrics on computer-aided diagnosis/detection in breast computed tomography.

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🔗 View Article (PMC 4478751)

Published in J Med Imaging (Bellingham) on December 24, 2014

Authors

Hsien-Chi Kuo1, Maryellen L Giger1, Ingrid Reiser1, Karen Drukker1, John M Boone2, Karen K Lindfors2, Kai Yang3, Alexandra Edwards1

Author Affiliations

1: University of Chicago , Department of Radiology, 5841 S. Maryland Avenue, Chicago 60637, Illinois, United States.
2: University of California at Davis , Department of Radiology, 4860 Y Street, Suite 3100, Sacramento 95817, California, United States.
3: University of Oklahoma Health Sciences Center , Department of Radiological Sciences, 940 N.E. 13th Street, Oklahoma City 73104, Oklahoma, United States.

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