A deep residual learning network for practical voxel dosimetry in radionuclide therapy. Li, Z., Fessler, J. A., Mikell, J. K., Wilderman, S. J., & Dewaraja, Y. K. 2020. doi bibtex @CONFERENCE{li:20:adr,
author = {Z. Li and J. A. Fessler and J. K. Mikell and S. J. Wilderman and Y. K. Dewaraja},
title = {A deep residual learning network for practical voxel dosimetry in radionuclide therapy},
booktitle = {{Proc. IEEE Nuc. Sci. Symp. Med. Im. Conf.}},
doi = {10.1109/NSS/MIC42677.2020.9507764},
year = 2020
}
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