Screening Glaucoma With Red-free Fundus Photography Using Deep Learning Classifier and Polar Transformation.
Summary
The proposed software can be an effective tool for automated detection of RNFL defect.
Abstract
UNLABELLED
PRéCIS:: The novel proposed algorithm using deep learning classifier and polar transformation technique can be an economical as well as an effective tool for early detection of glaucomatous RNFL defect.
PURPOSE
The main purpose of this study was to develop novel software to determine whether there is a retinal nerve fiber layer (RNFL) defect in a given fundus image using deep learning classifier and, if there is, where it presents.
MATERIALS AND METHODS
In the deep learning classifier, the bottleneck features were extracted, followed by application of the softmax classifier, which outputted the glaucoma probability. For localization of RNFL defect, an image processing algorithm was implemented as follows: (1) the given image was normalized to enhance the contrast; (2) the region of interest (ROI) was set as the circumferential area surrounding the optic disc (internal diameter: 2 disc diameters, external diameter: 3 disc diameter), and converted to a polar image; (3) blood vessels were removed and the average curvatures were calculated. If the local maximum curvature was greater than the cut-off value, the sector was considered to be an RNFL defect.The images of 100 normal healthy controls and 100 open-angle glaucoma patients were enrolled. Maximum curvatures and area under receiver operating characteristic curve were compared to determine the diagnostic validity.
RESULTS
There were no significant differences in age or sex (P=0.275, P=0.479, respectively) between the 2 groups. In the glaucoma group, the mean deviation was -4.9±5.4 dB. There was a significant difference of maximum curvature (14.37±5.13 in control group, 20.67±10.56 in glaucoma group, P<0.001). Area under receiver operating characteristic curve was 0.939 in deep learning classifier and 0.711 in maximum curvature.
CONCLUSIONS
The proposed software can be an effective tool for automated detection of RNFL defect.
More by Jinho Lee
View full profile →Diagnosing Glaucoma With Spectral-Domain Optical Coherence Tomography Using Deep Learning Classifier.
Explaining the Rationale of Deep Learning Glaucoma Decisions with Adversarial Examples.
Temporal Raphe Sign for Discrimination of Glaucoma from Optic Neuropathy in Eyes with Macular Ganglion Cell-Inner Plexiform Layer Thinning.
Top Research in Optic Nerve & Disc
Browse all →Efficacy of a Deep Learning System for Detecting Glaucomatous Optic Neuropathy Based on Color Fundus Photographs.
Relationship between Optical Coherence Tomography Angiography Vessel Density and Severity of Visual Field Loss in Glaucoma.
Inflammation in Glaucoma: From the back to the front of the eye, and beyond.
Discussion
Comments and discussion will appear here in a future update.