RIL-Contour: a Medical Imaging Dataset Annotation Tool for and with Deep Learning
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Bradley J. Erickson | Panagiotis Korfiatis | Timothy L. Kline | Zeynettin Akkus | Naoki Takahashi | Petro Kostandy | Arunnit Boonrod | Kenneth A. Philbrick | Petro M. Kostandy | Alexander D. Weston | Tomas Sakinis | Atefeh Zeinoddini | Kenneth A. Philbrick | B. Erickson | P. Korfiatis | Z. Akkus | T. Kline | K. Philbrick | Arunnit Boonrod | Tomas Sakinis | Naoki Takahashi | Atefeh Zeinoddini
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