Abstract

Diabetic retinopathy (DR) is the prime cause of blindness in people who suffer from diabetes. Automation of DR diagnosis could help a lot of patients avoid the risk of blindness by identifying the disease and making judgments at an early stage. The main focus of the present work is to propose a feasible scheme of DR severity level detection under the MobileNetV3 backbone network based on a multi-scale feature of the retinal fundus image and improve the classification performance of the model. Firstly, a special residual attention module RCAM for multi-scale feature extraction from different convolution layers was designed. Then, the feature fusion by an innovative operation of adaptive weighting was carried out in each layer. The corresponding weight of the convolution block is updated in the model training automatically, with further global average pooling (GAP) and division process to avoid over-fitting of the model and removing non-critical features. In addition, Focal Loss is used as a loss function due to the data imbalance of DR images. The experimental results based on Kaggle APTOS 2019 contest dataset show that our proposed method for DR severity classification achieves an accuracy of 85.32%, a kappa statistic of 77.26%, and an AUC of 0.97. The comparison results also indicate that the model obtained is superior to the existing models and presents superior classification performance on the dataset.

Highlights

  • We explore the different combinations of convolution blocks for different fusion fusion approaches anda show a visualization of our convolution asthe well as the map therapproaches and show visualization of our convolution layers aslayers well as thermal mal map under MobileNetv3 and ournetwork

  • The proposed method has some limitations, The results provided by artificial intelligence methods are inexplicable, for example in the part of weight extraction, weights extracted through attention module, global average pooling (GAP), and division operations may still contain unrelated features

  • We propose a novel multi-scale feature fusion network for Diabetic retinopathy (DR) classification based on MobileNet

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. Diabetic retinopathy (DR), one of the most common complications of diabetes mellitus, refers to a series of lesions caused by the microvascular damage to the retina resulting from diabetes, and the fundus diseases such as weak vision and blindness in adults are mainly caused by DR. The number of diabetic patients in China will reach 140 million in 2035 [1], which is the country with the most diabetes.

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