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Artificial intelligence support improves diagnosis accuracy in anterior segment eye diseases.

Authors :
Maehara, Hiroki
Ueno, Yuta
Yamaguchi, Takefumi
Kitaguchi, Yoshiyuki
Miyazaki, Dai
Nejima, Ryohei
Inomata, Takenori
Kato, Naoko
Chikama, Tai-ichiro
Ominato, Jun
Yunoki, Tatsuya
Tsubota, Kinya
Oda, Masahiro
Suzutani, Manabu
Sekiryu, Tetsuju
Oshika, Tetsuro
Source :
Scientific Reports; 2/11/2025, Vol. 15 Issue 1, p1-10, 10p
Publication Year :
2025

Abstract

CorneAI, a deep learning model designed for diagnosing cataracts and corneal diseases, was assessed for its impact on ophthalmologists' diagnostic accuracy. In the study, 40 ophthalmologists (20 specialists and 20 residents) classified 100 images, including iPhone 13 Pro photos (50 images) and diffuser slit-lamp photos (50 images), into nine categories (normal condition, infectious keratitis, immunological keratitis, corneal scar, corneal deposit, bullous keratopathy, ocular surface tumor, cataract/intraocular lens opacity, and primary angle-closure glaucoma). The iPhone and slit-lamp images represented the same cases. After initially answering without CorneAI, the same ophthalmologists responded to the same cases with CorneAI 2–4 weeks later. With CorneAI's support, the overall accuracy of ophthalmologists increased significantly from 79.2 to 88.8% (P < 0.001). Specialists' accuracy rose from 82.8 to 90.0%, and residents' from 75.6 to 86.2% (P < 0.001). Smartphone image accuracy improved from 78.7 to 85.5% and slit-lamp image accuracy from 81.2 to 90.6% (both, P < 0.001). In this study, CorneAI's own accuracy was 86%, but its support enhanced ophthalmologists' accuracy beyond the CorneAI's baseline. This study demonstrated that CorneAI, despite being trained on diffuser slit-lamp images, effectively improved diagnostic accuracy, even with smartphone images. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20452322
Volume :
15
Issue :
1
Database :
Complementary Index
Journal :
Scientific Reports
Publication Type :
Academic Journal
Accession number :
182957671
Full Text :
https://doi.org/10.1038/s41598-025-89768-6