Aim: To assess the efficacy of automated “disease/no disease” grading for diabetic retinopathy within a systematic screening programme. Methods: Anonymised images were obtained from consecutive patients attending a regional primary care based diabetic retinopathy screening programme. A training set of 1067 images was used to develop automated grading algorithms. The final software was tested using a separate set of 14406 images from 6722 patients. The sensitivity and specificity of manual and automated systems operating as “disease/no disease” graders (detecting poor quality images and any diabetic retinopathy) were determined relative to a clinical reference standard. Results: The reference standard classified 8.2% of the patients as h...
BACKGROUND/AIMS: Human grading of digital images from diabetic retinopathy (DR) screening programmes...
OBJECTIVE: With the increasing prevalence of diabetes, annual screening for diabetic retinopathy (DR...
PURPOSE. To evaluate the performance of an automated fundus photographic image-analysis algorithm in...
Background/aims Automated grading software has the potential to reduce the manual grading workload w...
Aims: 1. To assess the efficiency of the three level manual grading recommended by the Health Techno...
Objectives Diabetic retinopathy screening in England involves labour intensive manual grading of dig...
To assess the performance of automated disease detection in diabetic retinopathy screening using two...
Systematic screening for diabetic retinopathy using retinal photography has been shown to reduce the...
Purpose: To increase the efficiency of retinal image grading, algorithms for automated grading have ...
To assess the performance of automated disease detection in diabetic retinopathy screening using two...
Background/aims: human grading of digital images from diabetic retinopathy (DR) screening programmes...
Aims To assess the cost-effectiveness of an improved automated grading algorithm for diabetic retino...
Retinopathy is the most common microvascular complication of diabetes mellitus. It is the leading ca...
Artificial Intelligence has showcased clear capabilities to automatically grade diabetic retinopathy...
Background: Diabetic retinopathy screening in England involves labour-intensive manual grading of re...
BACKGROUND/AIMS: Human grading of digital images from diabetic retinopathy (DR) screening programmes...
OBJECTIVE: With the increasing prevalence of diabetes, annual screening for diabetic retinopathy (DR...
PURPOSE. To evaluate the performance of an automated fundus photographic image-analysis algorithm in...
Background/aims Automated grading software has the potential to reduce the manual grading workload w...
Aims: 1. To assess the efficiency of the three level manual grading recommended by the Health Techno...
Objectives Diabetic retinopathy screening in England involves labour intensive manual grading of dig...
To assess the performance of automated disease detection in diabetic retinopathy screening using two...
Systematic screening for diabetic retinopathy using retinal photography has been shown to reduce the...
Purpose: To increase the efficiency of retinal image grading, algorithms for automated grading have ...
To assess the performance of automated disease detection in diabetic retinopathy screening using two...
Background/aims: human grading of digital images from diabetic retinopathy (DR) screening programmes...
Aims To assess the cost-effectiveness of an improved automated grading algorithm for diabetic retino...
Retinopathy is the most common microvascular complication of diabetes mellitus. It is the leading ca...
Artificial Intelligence has showcased clear capabilities to automatically grade diabetic retinopathy...
Background: Diabetic retinopathy screening in England involves labour-intensive manual grading of re...
BACKGROUND/AIMS: Human grading of digital images from diabetic retinopathy (DR) screening programmes...
OBJECTIVE: With the increasing prevalence of diabetes, annual screening for diabetic retinopathy (DR...
PURPOSE. To evaluate the performance of an automated fundus photographic image-analysis algorithm in...