CNN-based hierarchical coarse-to-fine segmentation of pelvic CT images for prostate cancer radiotherapy
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Junghoon Lee | Sharmin Sultana | Adam Robinson | Danny Y. Song | Junghoon Lee | S. Sultana | A. Robinson | D. Song
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