1. Deep learning on fundus images detects glaucoma beyond the optic disc
- Author
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Bart Elen, Ruben Hemelings, Patrick De Boever, Matthew B. Blaschko, João Barbosa-Breda, and Ingeborg Stalmans
- Subjects
FOS: Computer and information sciences ,Male ,genetic structures ,PREDICTION ,Computer Vision and Pattern Recognition (cs.CV) ,Fundus image ,Computer Science - Computer Vision and Pattern Recognition ,Glaucoma ,Fundus (eye) ,RETINAL IMAGES ,Optic Nerve Diseases ,Medicine ,Diagnosis, Computer-Assisted ,Image resolution ,Multidisciplinary ,Image and Video Processing (eess.IV) ,Middle Aged ,Multidisciplinary Sciences ,medicine.anatomical_structure ,Area Under Curve ,FIBER LAYER THICKNESS ,Optic nerve ,Science & Technology - Other Topics ,Regression Analysis ,Female ,Engineering sciences. Technology ,Optic disc ,medicine.medical_specialty ,Fundus Oculi ,Science ,Optic Disk ,Information technology ,DIAGNOSIS ,Sensitivity and Specificity ,VALIDATION ,Article ,Retina ,Deep Learning ,Ophthalmology ,FOS: Electrical engineering, electronic engineering, information engineering ,Humans ,Biology ,Optic nerve diseases ,Aged ,Science & Technology ,IDENTIFICATION ,business.industry ,Deep learning ,Electrical Engineering and Systems Science - Image and Video Processing ,medicine.disease ,eye diseases ,Artificial intelligence ,sense organs ,business ,DIABETIC-RETINOPATHY - Abstract
Although unprecedented sensitivity and specificity values are reported, recent glaucoma detection deep learning models lack in decision transparency. Here, we propose a methodology that advances explainable deep learning in the field of glaucoma detection and vertical cup-disc ratio (VCDR), an important risk factor. We trained and evaluated deep learning models using fundus images that underwent a certain cropping policy. We defined the crop radius as a percentage of image size, centered on the optic nerve head (ONH), with an equidistant spaced range from 10-60% (ONH crop policy). The inverse of the cropping mask was also applied (periphery crop policy). Trained models using original images resulted in an area under the curve (AUC) of 0.94 [95% CI 0.92-0.96] for glaucoma detection, and a coefficient of determination (R-2) equal to 77% [95% CI 0.77-0.79] for VCDR estimation. Models that were trained on images with absence of the ONH are still able to obtain significant performance (0.88 [95% CI 0.85-0.90] AUC for glaucoma detection and 37% [95% CI 0.35-0.40] R-2 score for VCDR estimation in the most extreme setup of 60% ONH crop). Our findings provide the first irrefutable evidence that deep learning can detect glaucoma from fundus image regions outside the ONH. Research Group Ophthalmology, KU Leuven; VITO NV; Flemish Government; European Commission
- Published
- 2021