4.6 Article

Diabetic Retinopathy Grading by Deep Graph Correlation Network on Retinal Images Without Manual Annotations

期刊

FRONTIERS IN MEDICINE
卷 9, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fmed.2022.872214

关键词

diabetic retinopathy; retinal image classification; graph correlation network; unsupervised learning; automated diagnosis

资金

  1. Research Funds of Shanxi Transformation and Comprehensive Reform Demonstration Zone [2018KJCX04]
  2. Fund for Shanxi 1331 Project
  3. Key Research and Development Program of Shanxi Province [201903D311009]
  4. Research Foundation of the Education Bureau of Shanxi Province [HLW-20132]
  5. Scientific Innovation Plan of Universities in Shanxi Province [2021L575]
  6. Shanxi Scholarship Council of China [2020-149]
  7. Medical Science and Technology Development Project Fund of Nanjing [YKK21262]
  8. Nanjing Enterprise Expert Team Project
  9. Medical Big Data Clinical Research Project of Nanjing Medical University

向作者/读者索取更多资源

This study proposes a deep graph correlation network (DGCN) for automated diabetic retinopathy grading. The DGCN model utilizes a graph convolutional network algorithm to extract inherent correlations from independent retinal image features. Experimental results demonstrate that the DGCN model achieves high accuracy, sensitivity, and specificity on the evaluation datasets.
BackgroundDiabetic retinopathy, as a severe public health problem associated with vision loss, should be diagnosed early using an accurate screening tool. While many previous deep learning models have been proposed for this disease, they need sufficient professional annotation data to train the model, requiring more expensive and time-consuming screening skills. MethodThis study aims to economize manual power and proposes a deep graph correlation network (DGCN) to develop automated diabetic retinopathy grading without any professional annotations. DGCN involves the novel deep learning algorithm of a graph convolutional network to exploit inherent correlations from independent retinal image features learned by a convolutional neural network. Three designed loss functions of graph-center, pseudo-contrastive, and transformation-invariant constrain the optimisation and application of the DGCN model in an automated diabetic retinopathy grading task. ResultsTo evaluate the DGCN model, this study employed EyePACS-1 and Messidor-2 sets to perform grading results. It achieved an accuracy of 89.9% (91.8%), sensitivity of 88.2% (90.2%), and specificity of 91.3% (93.0%) on EyePACS-1 (Messidor-2) data set with a confidence index of 95% and commendable effectiveness on receiver operating characteristic (ROC) curve and t-SNE plots. ConclusionThe grading capability of this study is close to that of retina specialists, but superior to that of trained graders, which demonstrates that the proposed DGCN provides an innovative route for automated diabetic retinopathy grading and other computer-aided diagnostic systems.

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