Abstract

Nowadays, retinal optical coherence tomography (OCT) plays an important role in ophthalmology and automatic analysis of the OCT is of real importance: image denoising facilitates a better diagnosis and image segmentation and classification are undeniably critical in treatment evaluation. Synthetic OCT was recently considered to provide a benchmark for quantitative comparison of automatic algorithms and to be utilized in the training stage of novel solutions based on deep learning. Due to complicated data structure in retinal OCTs, a limited number of delineated OCT datasets are already available in presence of abnormalities; furthermore, the intrinsic three-dimensional (3D) structure of OCT is ignored in many public 2D datasets. We propose a new synthetic method, applicable to 3D data and feasible in presence of abnormalities like diabetic macular edema (DME). In this method, a limited number of OCT data is used during the training step and the Active Shape Model is used to produce synthetic OCTs plus delineation of retinal boundaries and location of abnormalities. Statistical comparison of thickness maps showed that synthetic dataset can be used as a statistically acceptable representative of the original dataset (p > 0.05). Visual inspection of the synthesized vessels was also promising. Regarding the texture features of the synthesized datasets, Q-Q plots were used, and even in cases that the points have slightly digressed from the straight line, the p-values of the Kolmogorov–Smirnov test rejected the null hypothesis and showed the same distribution in texture features of the real and the synthetic data. The proposed algorithm provides a unique benchmark for comparison of OCT enhancement methods and a tailored augmentation method to overcome the limited number of OCTs in deep learning algorithms.Graphical abstract

Highlights

  • The retina is an important component in the eye, made up of several inter-retinal layers

  • Over the past two decades, researches on Optical coherence tomography (OCT) image processing has been devoted to the main areas: segmentation of the retinal layers [1, 2, 4,5,6,7,8,9], classification [10, 11], enhancement, and denoising [12,13,14]

  • We focused on the synthesis of data with abnormalities in one of the most complicated eye diseases, diabetic macular edema (DME) [44]

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Summary

Introduction

The retina is an important component in the eye, made up of several inter-retinal layers. Manual analysis of this data is tedious, time-consuming, and prone to error. Over the past two decades, researches on OCT image processing has been devoted to the main areas: segmentation of the retinal layers [1, 2, 4,5,6,7,8,9], classification [10, 11], enhancement, and denoising [12,13,14]

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