An Adversarial Learning Approach to Medical Image Synthesis for Lesion Detection
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Hayit Greenspan | Liyan Sun | Jiexiang Wang | Xinghao Ding | John Paisley | Yue Huang | H. Greenspan | J. Paisley | Yue Huang | Xinghao Ding | Liyan Sun | Jiexiang Wang
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