TY - JOUR
T1 - Artificial Intelligence-Based Detection of Central Retinal Artery Occlusion Within 4.5Hours on Standard Fundus Photographs
AU - Gungor, Ayse
AU - Sarbout, Ilias
AU - Gilbert, Aubrey L.
AU - Hamann, Steffen
AU - Lebranchu, Pierre
AU - Hobeanu, Cristina
AU - Gohier, Philippe
AU - Vignal-Clermont, Catherine
AU - Dumitrascu, Oana M.
AU - Cohen, Salomon Yves
AU - Lagrèze, Wolf A.
AU - Feltgen, Nicolas
AU - van der Heide, Frank
AU - Lamirel, Cédric
AU - Jonas, Jost B.
AU - Obadia, Michael
AU - Racoceanu, Daniel
AU - Milea, Dan
N1 - Publisher Copyright:
© 2025 The Author(s).
PY - 2025
Y1 - 2025
N2 - BACKGROUND: Prompt diagnosis of acute central retinal artery occlusion (CRAO) is crucial for therapeutic management and stroke prevention. However, most stroke centers lack onsite ophthalmic expertise before considering fibrinolytic treatment. This study aimed to develop, train, and test a deep learning system to detect hyperacute CRAO on retinal fundus photographs within the critical 4.5-hour treatment window and up to 24hours after visual loss to aid in secondary stroke prevention. METHODS: Our retrospective, cross-sectional study included 1322 color fundus photographs from 771 patients with acute visual loss due to CRAO, central retinal vein occlusion, nonarteritic anterior ischemic optic neuropathy, and healthy controls. Photographs were collected from 9 expert neuro-ophthalmology centers in 6 countries, including 3 randomized clinical trials. Training included 1039 photographs (517 patients), followed by testing on 2 data sets: (1) hyperacute CRAO (54 photographs, 54 patients) and (2) CRAO within 24hours after visual loss (110 photographs, 109 patients). RESULTS: The deep learning system achieved an area under the receiver operating characteristic curve of 0.96 (95% confidence interval (CI), 0.95–0.98), a sensitivity of 92.6% (95% CI, 87.0–98.0), and a specificity of 85.0% (95% CI, 81.8–92.8) for detecting CRAO at hyperacute stage, with similar results within 24hours. The deep learning system outperformed stroke neurologists on a subset of hyperacute testing data set (120 photographs, 120 patients). CONCLUSIONS: A deep learning system can accurately detect hyperacute CRAO on retinal photographs within a time window compatible with urgent fibrinolysis. If further validated, such systems could improve patient selection for fibrinolytic trials and optimize secondary stroke prevention.
AB - BACKGROUND: Prompt diagnosis of acute central retinal artery occlusion (CRAO) is crucial for therapeutic management and stroke prevention. However, most stroke centers lack onsite ophthalmic expertise before considering fibrinolytic treatment. This study aimed to develop, train, and test a deep learning system to detect hyperacute CRAO on retinal fundus photographs within the critical 4.5-hour treatment window and up to 24hours after visual loss to aid in secondary stroke prevention. METHODS: Our retrospective, cross-sectional study included 1322 color fundus photographs from 771 patients with acute visual loss due to CRAO, central retinal vein occlusion, nonarteritic anterior ischemic optic neuropathy, and healthy controls. Photographs were collected from 9 expert neuro-ophthalmology centers in 6 countries, including 3 randomized clinical trials. Training included 1039 photographs (517 patients), followed by testing on 2 data sets: (1) hyperacute CRAO (54 photographs, 54 patients) and (2) CRAO within 24hours after visual loss (110 photographs, 109 patients). RESULTS: The deep learning system achieved an area under the receiver operating characteristic curve of 0.96 (95% confidence interval (CI), 0.95–0.98), a sensitivity of 92.6% (95% CI, 87.0–98.0), and a specificity of 85.0% (95% CI, 81.8–92.8) for detecting CRAO at hyperacute stage, with similar results within 24hours. The deep learning system outperformed stroke neurologists on a subset of hyperacute testing data set (120 photographs, 120 patients). CONCLUSIONS: A deep learning system can accurately detect hyperacute CRAO on retinal photographs within a time window compatible with urgent fibrinolysis. If further validated, such systems could improve patient selection for fibrinolytic trials and optimize secondary stroke prevention.
KW - acute stroke
KW - artificial intelligence
KW - central retinal artery occlusion
KW - cerebrovascular stroke
KW - early diagnosis
KW - machine learning
KW - visual loss
UR - https://www.scopus.com/pages/publications/105009824517
U2 - 10.1161/JAHA.124.041441
DO - 10.1161/JAHA.124.041441
M3 - Article
AN - SCOPUS:105009824517
SN - 2047-9980
VL - 14
JO - Journal of the American Heart Association
JF - Journal of the American Heart Association
IS - 13
M1 - e041441
ER -