Automated detection of fundus photographic red lesions in diabetic retinopathy

Michael Larsen, Jannik Godt, Nicolai Larsen, Henrik Lund-Andersen, Anne Katrin Sjølie, Elisabet Agardh, Helle Kalm, Michael Grunkin, David R Owens

132 Citationer (Scopus)

Abstract

PURPOSE: To compare a fundus image-analysis algorithm for automated detection of hemorrhages and microaneurysms with visual detection of retinopathy in patients with diabetes.

METHODS: 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.

RESULTS: 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).

CONCLUSIONS: 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.

OriginalsprogEngelsk
TidsskriftInvestigative ophthalmology & visual science
Vol/bind44
Udgave nummer2
Sider (fra-til)761-6
Antal sider6
ISSN0146-0404
DOI
StatusUdgivet - feb. 2003
Udgivet eksterntJa

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