Abstract

With recent advancements in machine learning, especially in deep learning, the prediction of eye diseases based on fundus photography using deep convolutional neural networks (DCNNs) has attracted great attention. However, studies focusing on identifying the right disease among several candidates, which is a better approximation of clinical diagnosis in practice comparing with the case that aims to distinguish one particular eye disease from normal controls, are limited. The performance of existing algorithms for multi-class classification of fundus images is at most mediocre. Moreover, in many studies consisting of different eye diseases, labeled images are quite limited mainly due to privacy concern of patients. In this case, it is infeasible to train huge DCNNs, which usually have millions of parameters. To address these challenges, we propose to utilize a lightweight deep learning architecture called MobileNetV2 and transfer learning to distinguish four common eye diseases, including Glaucoma, Maculopathy, Pathological Myopia, and Retinitis Pigmentosa, from normal controls using a small training data. We also apply a visualization approach to highlight the loci that are most related to the disease labels to make the model more explainable. The highlighted area chosen by the algorithm itself may give some hints for further fundus image studies. Our experimental results show that our system achieves an average accuracy of 96.2%, sensitivity of 90.4%, and specificity of 97.6% on the test data via five independent runs, and outperforms two other deep learning-based algorithms both in terms of accuracy and efficiency.

Highlights

  • Fundus photography is a popular non-invasive method used to inspect anomalies associated with diseases of eyes and their progression, and has been widely utilized across the world for its comprehensiveness and convenience

  • The results illustrate that with transfer learning, MobileNetV2 can achieve incredible results in classifying different eye diseases based on fundus images with a very small amount of labelled data

  • We study the problem of retinal disease diagnosis based on fundus images using Artificial Intelligence (AI) and machine learning algorithms

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Summary

Introduction

Fundus photography is a popular non-invasive method used to inspect anomalies associated with diseases of eyes and their progression, and has been widely utilized across the world for its comprehensiveness and convenience. Analysis of fundus images by ophthalmologists or optometrists is a labor-intensive task. With the ever-increasing quantity of fundus images as well as other types of images such as optical coherence tomography (OCT), there is a great shortage of human experts to interpret the available images, which results in delays of diagnoses and treatments [1]. Readings based on fundus images from different doctors may not always be consistent. A final diagnosis of a patient often involves multiple doctors, which may further delay the process. Given the recent development in Artificial Intelligence (AI), especially in the area of deep learning and their successful applications in image analysis, machine learning systems that can automatically perform pre-clinical analysis and diagnosis can be a promising solution for the problem

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