DeepAlienorNet: A deep learning model to extract clinical features from colour fundus photography in age-related macular degeneration.
Alexis MathieuSoufiane AjanaJean-François KorobelnikMélanie Le GoffBrigitte GontierMarie-Bénédicte RougierCécile DelcourtMarie-Noelle DelyferPublished in: Acta ophthalmologica (2024)
DeepAlienorNet demonstrates promising performance in automatically identifying clinical signs of AMD from CFP, offering several notable advantages. Its high interpretability reduces the black box effect, addressing ethical concerns. Additionally, the model can be easily integrated to automate well-established and validated AMD progression scores, and the user-friendly interface further enhances its usability. The main value of DeepAlienorNet lies in its ability to assist in precise severity scoring for further adapted AMD management, all while preserving interpretability.