TY - JOUR
T1 - Assessment of automated screening for treatment-requiring diabetic retinopathy
AU - Larsen, Michael
AU - Gondolf, Theis
AU - Godt, Jannik
AU - Jensen, Maja Skytte
AU - Hartvig, Niels Vaever
AU - Lund-Andersen, Henrik
AU - Larsen, Nicolai
PY - 2007/4
Y1 - 2007/4
N2 - PURPOSE: To evaluate fundus photographic image analysis combining automated detection of red lesions, bright lesions, and image quality as a means of identifying treatment-requiring diabetic retinopathy in a screening population of diabetic patients.METHODS: This was a retrospective cross-sectional study of 106 patients from a diabetic retinopathy screening clinic referred for photocoagulation treatment in the period from January 1996 to May 2002 on the basis of mydriatic 60-degree 35-mm color transparency fundus photography. One fovea-centered fundus photograph and one centered nasal of the optic disk from each of a subject's two eyes was selected for digitization and analyzed using a previously tested computerized red-lesion detection algorithm in combination with a new algorithm for detection of bright lesions and image quality. The algorithm was calibrated on an independent set of fundus photographs.RESULTS: Automated red-lesion detection identified 104 of 106 patients requiring photocoagulation treatment, whereas bright-lesion detection identified only 91 of the 106 patients. Two patients who were not identified by either lesion detection algorithm were automatically detected as having poor image quality in one or both eyes. In the study sample, the risk of missing treatment-requiring retinopathy patients from being detected was 0.0% (estimated CI(95) 0.0-3.4%).CONCLUSIONS: The combination of automated detection of red lesions and poor image quality identified all treatment-requiring diabetic retinopathy patients in the study sample. No additional information was contributed by the automated bright-lesion detection.
AB - PURPOSE: To evaluate fundus photographic image analysis combining automated detection of red lesions, bright lesions, and image quality as a means of identifying treatment-requiring diabetic retinopathy in a screening population of diabetic patients.METHODS: This was a retrospective cross-sectional study of 106 patients from a diabetic retinopathy screening clinic referred for photocoagulation treatment in the period from January 1996 to May 2002 on the basis of mydriatic 60-degree 35-mm color transparency fundus photography. One fovea-centered fundus photograph and one centered nasal of the optic disk from each of a subject's two eyes was selected for digitization and analyzed using a previously tested computerized red-lesion detection algorithm in combination with a new algorithm for detection of bright lesions and image quality. The algorithm was calibrated on an independent set of fundus photographs.RESULTS: Automated red-lesion detection identified 104 of 106 patients requiring photocoagulation treatment, whereas bright-lesion detection identified only 91 of the 106 patients. Two patients who were not identified by either lesion detection algorithm were automatically detected as having poor image quality in one or both eyes. In the study sample, the risk of missing treatment-requiring retinopathy patients from being detected was 0.0% (estimated CI(95) 0.0-3.4%).CONCLUSIONS: The combination of automated detection of red lesions and poor image quality identified all treatment-requiring diabetic retinopathy patients in the study sample. No additional information was contributed by the automated bright-lesion detection.
KW - Algorithms
KW - Calibration
KW - Cross-Sectional Studies
KW - Diabetic Retinopathy/pathology
KW - Fundus Oculi
KW - Humans
KW - Image Processing, Computer-Assisted
KW - Light Coagulation
KW - Mass Screening/methods
KW - Optic Disk/pathology
KW - Photography
KW - Referral and Consultation
KW - Retrospective Studies
U2 - 10.1080/02713680701215587
DO - 10.1080/02713680701215587
M3 - Journal article
C2 - 17453954
SN - 0271-3683
VL - 32
SP - 331
EP - 336
JO - Current Eye Research
JF - Current Eye Research
IS - 4
ER -