Automatic geographic atrophy segmentation using optical attenuation in OCT scans with deep learning.
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Ruikang K. Wang | Xiaoping Zhou | P. Rosenfeld | Qinqin Zhang | Zhongdi Chu | G. Gregori | Hao Zhou | Yingying Shi | R. Laiginhas | Aaron Y. Lee | Yuxuan Cheng | Mengxi Shen | Liang Wang | L. de Sisternes | Aaron Lee | Giovanni Gregori
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