Artificial intelligence: the unstoppable revolution in ophthalmology

Survey of Ophthalmology - Tập 67 - Trang 252-270 - 2022
David Benet1, Oscar J. Pellicer-Valero2
1Independent Researcher, Spain
2Intelligent Data Analysis Laboratory, Department of Electronic Engineering, ETSE (Engineering School), Universitat de València (UV), Valencia, Spain

Tài liệu tham khảo

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