Retinal Cyst Detection from Optical Coherence Tomography Images
Abhishek Dharmaratnakar, Aadheeshwar Vijayakumar, Suchand Dayanand

TL;DR
This paper presents a ResNet CNN-based method for automatic segmentation of retinal cysts in OCT images, achieving over 70% dice coefficient and improving accuracy over previous approaches.
Contribution
It introduces a novel patchwise classification approach using ResNet CNN for intraretinal cyst segmentation on a new public dataset.
Findings
Achieved over 70% dice coefficient across all vendors.
Outperformed previous state-of-the-art methods.
Demonstrated robustness against image quality variations.
Abstract
Retinal Cysts are formed by leakage and accumulation of fluid in the retina due to the incompetence of retinal vasculature. These cystic spaces have significance in several ocular diseases such as age-related macular degeneration, diabetic macular edema, etc. Optical coherence tomography is one of the predominant diagnosing techniques for imaging retinal pathologies. Segmenting and quantification of intraretinal cysts plays the vital role in predicting visual acuity. In literature, several methods have been proposed for automatic segmentation of intraretinal cysts. As cystoid macular edema becomes a major problem to humankind, we need to quantify it accurately and operate it out, else it might cause many problems later on. Though research is being carried out in this area, not much of progress has been made and accuracy achieved so far is 68\% which is very less. Also, the methods…
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