Deep Learning based Retinal OCT Segmentation
Mike Pekala, Neil Joshi, David E. Freund, Neil M. Bressler, Delia, Cabrera DeBuc, Philippe M Burlina

TL;DR
This paper evaluates a deep learning approach combining fully convolutional networks and Gaussian process regression for automatic retinal OCT segmentation, achieving performance comparable to human experts in mild retinopathy cases.
Contribution
It introduces a novel combination of FCNs and Gaussian process regression for improved OCT image segmentation accuracy.
Findings
Proposed method outperforms five state-of-the-art techniques.
Achieves segmentation accuracy comparable to human experts.
Demonstrates effectiveness on mild retinopathy OCT images.
Abstract
Our objective is to evaluate the efficacy of methods that use deep learning (DL) for the automatic fine-grained segmentation of optical coherence tomography (OCT) images of the retina. OCT images from 10 patients with mild non-proliferative diabetic retinopathy were used from a public (U. of Miami) dataset. For each patient, five images were available: one image of the fovea center, two images of the perifovea, and two images of the parafovea. For each image, two expert graders each manually annotated five retinal surfaces (i.e. boundaries between pairs of retinal layers). The first grader's annotations were used as ground truth and the second grader's annotations to compute inter-operator agreement. The proposed automated approach segments images using fully convolutional networks (FCNs) together with Gaussian process (GP)-based regression as a post-processing step to improve the…
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Taxonomy
MethodsGaussian Process
