Training Deep Learning Models to Work on Multiple Devices by Cross-Domain Learning with No Additional Annotations

Ophthalmology - Tập 130 - Trang 213-222 - 2023
Yue Wu1, Abraham Olvera-Barrios2,3, Ryan Yanagihara1, Timothy-Paul H. Kung1, Randy Lu1, Irene Leung2, Amit V. Mishra2, Hanan Nussinovitch2, Gabriela Grimaldi2, Marian Blazes1, Cecilia S. Lee1,4, Catherine Egan2,3, Adnan Tufail2,3, Aaron Y. Lee1,4
1Department of Ophthalmology, University of Washington, Seattle, Washington
2Moorfields Eye Hospital NHS Foundation Trust, London, United Kingdom
3Institute of Ophthalmology, University College London, London, United Kingdom
4Roger and Angie Karalis Johnson Retina Center, Seattle, Washington

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