ADMANI: Annotated Digital Mammograms and Associated Non-Image Datasets
Radiology Artificial Intelligence2022Vol. 5(2), pp. e220072–e220072
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Helen Frazer, Jennifer S. N. Tang, Michael S. Elliott, Katrina Kunicki, Brendan Hill, Ravishankar Karthik, Chun Fung Kwok, Carlos A. Peña‐Solórzano, Yuanhong Chen, Chong Wang, Osamah M. Al-Qershi, Samantha Fox, Shuai Li, Enes Makalic, Tuong L. Nguyen, Daniel F. Schmidt, Prabhathi Basnayake Ralalage, Jocelyn Lippey, Peter Brotchie, John L. Hopper, Gustavo Carneiro, Davis J. McCarthy
Abstract
Supplemental material is available for this article. Keywords: Mammography, Screening, Convolutional Neural Network (CNN) Published under a CC BY 4.0 license. See also the commentary by Cadrin-Chênevert in this issue.
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