Abstract

Ophthalmological analysis plays a vital role in the diagnosis of various eye diseases, such as glaucoma, retinitis pigmentosa (RP), and diabetic and hypertensive retinopathy. RP is a genetic retinal disorder that leads to progressive vision degeneration and initially causes night blindness. Currently, the most commonly applied method for diagnosing retinal diseases is optical coherence tomography (OCT)-based disease analysis. In contrast, fundus imaging-based disease diagnosis is considered a low-cost diagnostic solution for retinal diseases. This study focuses on the detection of RP from the fundus image, which is a crucial task because of the low quality of fundus images and non-cooperative image acquisition conditions. Automatic detection of pigment signs in fundus images can help ophthalmologists and medical practitioners in diagnosing and analyzing RP disorders. To accurately segment pigment signs for diagnostic purposes, we present an automatic RP segmentation network (RPS-Net), which is a specifically designed deep learning-based semantic segmentation network to accurately detect and segment the pigment signs with fewer trainable parameters. Compared with the conventional deep learning methods, the proposed method applies a feature enhancement policy through multiple dense connections between the convolutional layers, which enables the network to discriminate between normal and diseased eyes, and accurately segment the diseased area from the background. Because pigment spots can be very small and consist of very few pixels, the RPS-Net provides fine segmentation, even in the case of degraded images, by importing high-frequency information from the preceding layers through concatenation inside and outside the encoder-decoder. To evaluate the proposed RPS-Net, experiments were performed based on 4-fold cross-validation using the publicly available Retinal Images for Pigment Signs (RIPS) dataset for detection and segmentation of retinal pigments. Experimental results show that RPS-Net achieved superior segmentation performance for RP diagnosis, compared with the state-of-the-art methods.

Highlights

  • Retina is among the highest metabolically active tissues in the body, and different diseases can cause structural changes in the retina

  • Because this study is based on the rare retinitis pigmentosa disease with applications for the method of RP analysis to aid the medical practitioner in early diagnosis of the disease, we used Retinal Images for Pigment Signs (RIPS) dataset which is the only publicly available real dataset [46]

  • Of the 120 images, 99 images were of RP, whereas 21 images were of healthy eyes

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Summary

Introduction

Retina is among the highest metabolically active tissues in the body, and different diseases can cause structural changes in the retina. These changes can be identified for diagnostic purposes. Retinal imaging by optical coherence tomography (OCT) and fundus imaging can help in the analysis of eye diseases. These diseases include diabetic retinopathy, macular degeneration, retinitis pigmentosa (RP), macular edema, macular bunker, and glaucoma [1]. Among these diseases, RP is a rare eye disease with a prevalence of 1/4000 which is caused by degeneration of the cones and rods by a gene mutation. A retinal image of RP shows pigmented areas on Sensors 2020, 20, 3454; doi:10.3390/s20123454 www.mdpi.com/journal/sensors

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