RADNet: Ensemble Model for Robust Glaucoma Classification in Color
Fundus Images
- URL: http://arxiv.org/abs/2205.12902v1
- Date: Wed, 25 May 2022 16:48:00 GMT
- Title: RADNet: Ensemble Model for Robust Glaucoma Classification in Color
Fundus Images
- Authors: Dmitrii Medvedev, Rand Muhtaseb, Ahmed Al Mahrooqi
- Abstract summary: Glaucoma is one of the most severe eye diseases, characterized by rapid progression and leading to irreversible blindness.
Regular glaucoma screenings of the population shall improve early-stage detection, however the desirable frequency of etymological checkups is often not feasible.
In our work, we propose an advanced image pre-processing technique combined with an ensemble of deep classification networks.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Glaucoma is one of the most severe eye diseases, characterized by rapid
progression and leading to irreversible blindness. It is often the case that
pathology diagnostics is carried out when the one's sight has already
significantly degraded due to the lack of noticeable symptoms at early stage of
the disease. Regular glaucoma screenings of the population shall improve
early-stage detection, however the desirable frequency of etymological checkups
is often not feasible due to excessive load imposed by manual diagnostics on
limited number of specialists. Considering the basic methodology to detect
glaucoma is to analyze fundus images for the \textit{optic-disc-to-optic-cup
ratio}, Machine Learning domain can offer sophisticated tooling for image
processing and classification. In our work, we propose an advanced image
pre-processing technique combined with an ensemble of deep classification
networks. Our \textit{Retinal Auto Detection (RADNet)} model has been
successfully tested on Rotterdam EyePACS AIROGS train dataset with AUC of 0.92,
and then additionally finetuned and tested on a fraction of RIM-ONE DL dataset
with AUC of 0.91.
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