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"Self-supervised retinal thickness prediction enables deep learning from ..."
Olle G. Holmberg et al. (2020)
- Olle G. Holmberg, Niklas D. Köhler, Thiago Martins, Jakob Siedlecki
, Tina Herold, Leonie Keidel, Ben Asani
, Johannes Schiefelbein
, Siegfried Priglinger, Karsten U. Kortuem
, Fabian J. Theis
:
Self-supervised retinal thickness prediction enables deep learning from unlabelled data to boost classification of diabetic retinopathy. Nat. Mach. Intell. 2(11): 719-726 (2020)
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