Larsen Michael, Godt Jannik, Larsen Nicolai, Lund-Andersen Henrik, Sjølie Anne Katrin, Agardh Elisabet, Kalm Helle, Grunkin Michael, Owens David R
Department of Ophthalmology, Herlev Hospital, University of Copenhagen, Copenhagen, Denmark.
Invest Ophthalmol Vis Sci. 2003 Feb;44(2):761-6. doi: 10.1167/iovs.02-0418.
To compare a fundus image-analysis algorithm for automated detection of hemorrhages and microaneurysms with visual detection of retinopathy in patients with diabetes.
Four hundred fundus photographs (35-mm color transparencies) were obtained in 200 eyes of 100 patients with diabetes who were randomly selected from the Welsh Community Diabetic Retinopathy Study. A gold standard reference was defined by classifying each patient as having or not having diabetic retinopathy based on overall visual grading of the digitized transparencies. A single-lesion visual grading was made independently, comprising meticulous outlining of all single lesions in all photographs and used to develop the automated red lesion detection system. A comparison of visual and automated single-lesion detection in replicating the overall visual grading was then performed.
Automated red lesion detection demonstrated a specificity of 71.4% and a resulting sensitivity of 96.7% in detecting diabetic retinopathy when applied at a tentative threshold setting for use in diabetic retinopathy screening. The accuracy of 79% could be raised to 85% by adjustment of a single user-supplied parameter determining the balance between the screening priorities, for which a considerable range of options was demonstrated by the receiver-operating characteristic (area under the curve 90.3%). The agreement of automated lesion detection with overall visual grading (0.659) was comparable to the mean agreement of six ophthalmologists (0.648).
Detection of diabetic retinopathy by automated detection of single fundus lesions can be achieved with a performance comparable to that of experienced ophthalmologists. The results warrant further investigation of automated fundus image analysis as a tool for diabetic retinopathy screening.
比较一种用于自动检测出血和微动脉瘤的眼底图像分析算法与糖尿病患者视网膜病变的视觉检测方法。
从威尔士社区糖尿病视网膜病变研究中随机选取100例糖尿病患者的200只眼睛,获取400张眼底照片(35毫米彩色幻灯片)。通过对数字化幻灯片进行整体视觉分级,将每位患者分类为患有或未患有糖尿病视网膜病变,以此定义金标准参考。独立进行单病变视觉分级,包括细致勾勒所有照片中所有单病变,并用于开发自动红色病变检测系统。然后比较视觉和自动单病变检测在复制整体视觉分级方面的情况。
在用于糖尿病视网膜病变筛查的初步阈值设置下,自动红色病变检测在检测糖尿病视网膜病变时显示出71.4%的特异性和96.7%的灵敏度。通过调整一个由用户提供的单一参数(该参数决定筛查优先级之间的平衡),准确率可从79%提高到85%,对此,接收器操作特征曲线(曲线下面积为90.3%)显示了相当大的选择范围。自动病变检测与整体视觉分级的一致性(0.659)与六位眼科医生的平均一致性(0.648)相当。
通过自动检测单个眼底病变来检测糖尿病视网膜病变,其性能可与经验丰富的眼科医生相媲美。这些结果值得进一步研究将自动眼底图像分析作为糖尿病视网膜病变筛查工具的可行性。