Validation of Computer-Aided Diagnosis of Diabetic Retinopathy from Retinal Photographs of Diabetic Patients from Telecamps

S. John, S. Srinivasan, Natarajan Sundaram
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引用次数: 1

Abstract

Objective: To validate an algorithm previously developed by the Healthcare Technology Innovation Centre, IIT Madras, India for screening of diabetic retinopathy (DR),  in fundus images of diabetic patients from telecamps to examine the screening performance for DR. Design: Photographs of patients with diabetes were examined using the automated algorithm for the detection of DR   Setting: Mobile Teleophthalmology camps were conducted in two districts in Tamil Nadu, India from Jan 2015 to May 2017. Participants: 939 eyes of 472 diabetic patients were examined at Mobile Teleophthalmology camps in Thiruvallur and Kanchipuram districts, Tamil Nadu, India,. Fundus images were obtained (40-45-degree posterior pole in each eye) for all patients using a nonmydriatic fundus camera by the fundus photographer. Main Outcome Measures: Fundus images were evaluated for presence or absence of DR using a computer-assisted algorithm, by an ophthalmologist at a tertiary eye care centre (reference standard) and by a fundus photographer. Results: The algorithm demonstrated 85% sensitivity and 80% specificity in detecting DR compared to ophthalmologist. The area under the receiver operating characteristic curve was 0.69 (95%CI=0.65 to 0.73). The algorithm identified 100% of vision-threatening retinopathy just like the ophthalmologist. When compared to the photographer, the algorithm demonstrated 81% sensitivity and 78% specificity. The sensitivity of the photographer to detect DR was found to be 86% and specificity was 99% in detecting DR compared to ophthalmologist. Conclusions: The algorithm can detect the presence or absence of DR in diabetic patients. All findings of vision-threatening retinopathy could be detected with reasonable accuracy and will help to reduce the workload for human graders in remote areas.
计算机辅助诊断糖尿病视网膜病变从糖尿病患者视网膜照片的验证
目的:验证印度IIT马德拉斯医疗保健技术创新中心先前开发的用于筛查糖尿病视网膜病变(DR)的算法,在远程营地的糖尿病患者眼底图像中检查DR的筛查性能。设计:使用自动算法检查糖尿病患者的照片以检测DR。设置:2015年1月至2017年5月在印度泰米尔纳德邦的两个地区进行了移动远程眼科营地。参与者:在印度泰米尔纳德邦Thiruvallur和Kanchipuram地区的移动远程眼科营地,对472名糖尿病患者的939只眼睛进行了检查。眼底摄影师使用无散瞳眼底相机拍摄眼底图像(每只眼后极40-45度)。主要结果测量:眼底图像由三级眼科保健中心(参考标准)的眼科医生和眼底摄影师使用计算机辅助算法评估DR的存在或不存在。结果:与眼科医生相比,该算法检测DR的灵敏度为85%,特异性为80%。受试者工作特征曲线下面积为0.69 (95%CI=0.65 ~ 0.73)。该算法与眼科医生一样,100%识别出威胁视力的视网膜病变。与摄影师相比,该算法的灵敏度为81%,特异性为78%。与眼科医生相比,摄影师检测DR的灵敏度为86%,特异性为99%。结论:该算法可以检测出糖尿病患者是否存在DR。所有威胁视力的视网膜病变的发现都可以以合理的准确性检测出来,这将有助于减少偏远地区人类评分员的工作量。
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