Abstract
AbstractIn this paper a study about breast cancer detection is presented. Mammography images in DICOM format are processed using Convolutional Neural Networks (CNN’s) to get a pre-diagnosis. Of course, this preliminary result needs to be checked by a trained radiologist. CNN’s are trained and checked using a big database that is publicly available. Standard measurements for success are computed (accuracy, precision, recall) obtaining outstanding results better than other examples from the literature.
Publisher
Cold Spring Harbor Laboratory
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