Purpose: This study aims to evaluate the performance of a deep learning-based artificial intelligence (AI) diagnostic system in the analysis of retinal diseases, assessing its consistency with expert diagnoses and its overall utility in screening applications. Methods: A total of 3076 patients attending our hospital underwent comprehensive ophthalmic examinations. Initial assessments were performed using the AI, the Comprehensive AI Retinal Expert (CARE) system, followed by thorough manual reviews to establish final diagnoses. A comparative analysis was conducted between the AI-generated results and the evaluations by senior ophthalmologists to assess the diagnostic reliability and feasibility of the AI system in the context of ophthalmic screening. Results: : The AI diagnostic system demonstrated a sensitivity of 94.12% and specificity of 98.60% for diabetic retinopathy (DR); 89.50% sensitivity and 98.33% specificity for age-related macular degeneration (AMD); 91.55% sensitivity and 97.40% specificity for suspected glaucoma; 90.77% sensitivity and 99.10% specificity for pathological myopia; 81.58% sensitivity and 99.49% specificity for retinal vein occlusion (RVO); 88.64% sensitivity and 99.18% specificity for retinal detachment; 83.33% sensitivity and 99.80% specificity for macular hole; 82.26% sensitivity and 99.23% specificity for epiretinal membrane; 94.55% sensitivity and 97.82% specificity for hypertensive retinopathy; 83.33% sensitivity and 99.74% specificity for myelinated fibers; and 75.00% sensitivity and 99.95% specificity for retinitis pigmentosa. Additionally, the system exhibited notable performance in screening for other prevalent conditions, including DR, suspected glaucoma, suspected glaucoma, pathological myopia, and hypertensive retinopathy. Conclusions: : The AI-assisted screening system exhibits high sensitivity and specificity for a majority of retinal diseases, suggesting its potential as a valuable tool for screening practices. Its implementation is particularly beneficial for grassroots and community healthcare settings, facilitating initial diagnostic efforts and enhancing the efficacy of tiered ophthalmic care, with important implications for broader clinical adoption.
基金:
Shanghai Key Laboratory of Ocular Fundus Diseases [20180801]; The 6th Three-year Action Program of Shanghai Municipality for Strengthening the Construction of Public Health System [GWVI-11.1-30]; Changning District Health and Family Planning Commission Fund [2022QN04, Z-2017-26-2302]; Research Fund of Shanghai Tongren Hospital, Shanghai Jiaotong University School Medicine [TRYJ2024LC07]; Norman Bethune Public Welfare Foundation; Shanghai Municipal Health Commission Clinical Research Special Project in the Health Industry [20244Y0213]
第一作者机构:[1]Shanghai Jiao Tong Univ, Tong Ren Hosp, Sch Med, Dept Ophthalmol, 1111 Xianxia West Rd, Shanghai, Peoples R China
通讯作者:
推荐引用方式(GB/T 7714):
Wei Qingquan,Chi Lifang,Li Meiling,et al.Practical Applications of Artificial Intelligence Diagnostic Systems in Fundus Retinal Disease Screening[J].INTERNATIONAL JOURNAL OF GENERAL MEDICINE.2025,18:1173-1180.doi:10.2147/IJGM.S507100.
APA:
Wei, Qingquan,Chi, Lifang,Li, Meiling,Qiu, Qinghua&Liu, Qing.(2025).Practical Applications of Artificial Intelligence Diagnostic Systems in Fundus Retinal Disease Screening.INTERNATIONAL JOURNAL OF GENERAL MEDICINE,18,
MLA:
Wei, Qingquan,et al."Practical Applications of Artificial Intelligence Diagnostic Systems in Fundus Retinal Disease Screening".INTERNATIONAL JOURNAL OF GENERAL MEDICINE 18.(2025):1173-1180