Breast mass classification in sonography with transfer learning using a deep convolutional neural network and color conversion
Medical Physics2018Vol. 46(2), pp. 746–755
Citations Over TimeTop 1% of 2018 papers
Michał Byra, Michael Y. Galperin, Haydee Ojeda‐Fournier, Linda K. Olson, M K O'Boyle, Christopher Comstock, Michael P. André
Abstract
The concept of the matching layer is generalizable and can be used to improve the overall performance of the transfer learning techniques using deep convolutional neural networks. When fully developed as a clinical tool, the methods proposed in this paper have the potential to help radiologists with breast mass classification in ultrasound.
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