A deep learning method for classifying mammographic breast density categories
Medical Physics2017Vol. 45(1), pp. 314–321
Citations Over TimeTop 1% of 2017 papers
Abstract
Our study demonstrated high classification accuracies between two difficult to distinguish breast density categories that are routinely assessed by radiologists. We anticipate that our approach will help enhance current clinical assessment of breast density and better support consistent density notification to patients in breast cancer screening.
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