A generalizable deep learning regression model for automated glaucoma screening from fundus images

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作者
Ruben Hemelings
Bart Elen
Alexander K. Schuster
Matthew B. Blaschko
João Barbosa-Breda
Pekko Hujanen
Annika Junglas
Stefan Nickels
Andrew White
Norbert Pfeiffer
Paul Mitchell
Patrick De Boever
Anja Tuulonen
Ingeborg Stalmans
机构
[1] Research Group Ophthalmology,Department of Ophthalmology
[2] Department of Neurosciences,Cardiovascular R&D Center
[3] KU Leuven,Department of Ophthalmology
[4] Flemish Institute for Technological Research (VITO),Tays Eye Centre
[5] University Medical Center Mainz,Department of Ophthalmology
[6] ESAT-PSI,Centre for Environmental Sciences
[7] KU Leuven,undefined
[8] Faculty of Medicine of the University of Porto,undefined
[9] Alameda Prof. Hernâni Monteiro,undefined
[10] Centro Hospitalar e Universitário São João,undefined
[11] Alameda Prof. Hernâni Monteiro,undefined
[12] Tampere University Hospital,undefined
[13] The University of Sydney,undefined
[14] Hasselt University,undefined
[15] Agoralaan building D,undefined
[16] University of Antwerp,undefined
[17] Department of Biology,undefined
[18] Ophthalmology Department,undefined
[19] UZ Leuven,undefined
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摘要
A plethora of classification models for the detection of glaucoma from fundus images have been proposed in recent years. Often trained with data from a single glaucoma clinic, they report impressive performance on internal test sets, but tend to struggle in generalizing to external sets. This performance drop can be attributed to data shifts in glaucoma prevalence, fundus camera, and the definition of glaucoma ground truth. In this study, we confirm that a previously described regression network for glaucoma referral (G-RISK) obtains excellent results in a variety of challenging settings. Thirteen different data sources of labeled fundus images were utilized. The data sources include two large population cohorts (Australian Blue Mountains Eye Study, BMES and German Gutenberg Health Study, GHS) and 11 publicly available datasets (AIROGS, ORIGA, REFUGE1, LAG, ODIR, REFUGE2, GAMMA, RIM-ONEr3, RIM-ONE DL, ACRIMA, PAPILA). To minimize data shifts in input data, a standardized image processing strategy was developed to obtain 30° disc-centered images from the original data. A total of 149,455 images were included for model testing. Area under the receiver operating characteristic curve (AUC) for BMES and GHS population cohorts were at 0.976 [95% CI: 0.967–0.986] and 0.984 [95% CI: 0.980–0.991] on participant level, respectively. At a fixed specificity of 95%, sensitivities were at 87.3% and 90.3%, respectively, surpassing the minimum criteria of 85% sensitivity recommended by Prevent Blindness America. AUC values on the eleven publicly available data sets ranged from 0.854 to 0.988. These results confirm the excellent generalizability of a glaucoma risk regression model trained with homogeneous data from a single tertiary referral center. Further validation using prospective cohort studies is warranted.
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