Automatic Drusen Quantification and Risk Assessment of Age-related Macular Degeneration on Color Fundus Images
Publication year
2013Source
Investigative Ophthalmology and Visual Science, 54, 4, (2013), pp. 3019-3027ISSN
Publication type
Article / Letter to editor

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Organization
Radiology
Ophthalmology
Journal title
Investigative Ophthalmology and Visual Science
Volume
vol. 54
Issue
iss. 4
Page start
p. 3019
Page end
p. 3027
Subject
N4i 3: Poverty-related infectious diseases ONCOL 5: Aetiology, screening and detection; NCEBP 2: Evaluation of complex medical interventions IGMD 1: Functional imaging; ONCOL 5: Aetiology, screening and detection; NCEBP 2: Evaluation of complex medical interventions IGMD 3: Genomic disorders and inherited multi-system disordersAbstract
PURPOSE: To evaluate a machine learning algorithm that allows for computer aided diagnosis (CAD) of non-advanced age-related macular degeneration (AMD) by providing an accurate detection and quantification of drusen location, area and size. METHODS: Color fundus photographs of 407 eyes without AMD or with early to moderate AMD were randomly selected from a large European multicenter database. A machine learning system was developed to automatically detect and quantify drusen on each image. Based on detected drusen, the CAD software provided a risk assessment to develop advanced AMD. Evaluation of the CAD system was performed using annotations made by two blinded human graders. RESULTS: Free-response Receiver Operating Characteristics (FROC) analysis showed that the proposed system approaches the performance of human observers in detecting drusen. The estimated drusen area showed excellent agreement with both observers, with mean intra-class correlation coefficients (ICC) larger than 0.85. Maximum druse diameter agreement was lower with a maximum ICC of 0.69 but comparable to the interobserver agreement (ICC=0.79). For automatic AMD risk assessment, the system achieved areas under the Receiver Operating Characteristic (ROC) curve of 0.948 and 0.954, reaching similar performance as human observers. CONCLUSIONS: A machine learning system, capable of separating high risk from low risk patients with non-advanced AMD by providing accurate detection and quantification of drusen, was developed. The proposed method allows for quick and reliable diagnosis of AMD, opening the way for large dataset analysis within population studies and genotype-phenotype correlation analysis.
This item appears in the following Collection(s)
- Academic publications [229134]
- Electronic publications [111496]
- Faculty of Medical Sciences [87758]
- Open Access publications [80319]
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