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. 2025 Aug;14(8):1637-1647.
doi: 10.1007/s40123-025-01191-2. Epub 2025 Jul 2.

Selecting the Right AI Algorithm for the Job: A Guide for Navigating the AI Jungle in Ophthalmology

Affiliations

Selecting the Right AI Algorithm for the Job: A Guide for Navigating the AI Jungle in Ophthalmology

Louis Arnould et al. Ophthalmol Ther. 2025 Aug.
No abstract available

Keywords: Algorithms; Artificial intelligence; Interpretability; Segmentation.

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Conflict of interest statement

Declarations. Conflict of Interest: Andrzej Grzybowski is an Editorial Board member of Ophthalmology and Therapy. He was not involved in the selection of peer reviewers for the manuscript nor any of the subsequent editorial decisions. Furthermore, he holds grants from: Alcon, Bausch&Lomb, Zeiss, Teleon, J&J, CooperVision, Hoya, Essilor, Thea, Polpharma, Viatris, Alcon; Lectures fees: Thea, Polpharma, Viatris, Eyerising, Essilor, Alcon; Member of Advisory Boards: Nevakar, GoCheckKids and Thea. Louis Arnould; Lectures fees: Glaukos, Théa, Horus. Atif Anwer and Fabrice Meriaudeau have no financial or non-financial interests to declare. Ethical Approval: This article is based on previously conducted studies and does not contain any new studies with human participants or animals performed by any of the authors.

Figures

Fig. 1
Fig. 1
Vessel segmentation algorithm of fundus photograph (used with permission from the Idris Dulau LaBRI research team, Bordeaux, France)

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