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GREEN: a Graph REsidual rE-ranking Network for Grading Diabetic Retinopathy

About

The automatic grading of diabetic retinopathy (DR) facilitates medical diagnosis for both patients and physicians. Existing researches formulate DR grading as an image classification problem. As the stages/categories of DR correlate with each other, the relationship between different classes cannot be explicitly described via a one-hot label because it is empirically estimated by different physicians with different outcomes. This class correlation limits existing networks to achieve effective classification. In this paper, we propose a Graph REsidual rE-ranking Network (GREEN) to introduce a class dependency prior into the original image classification network. The class dependency prior is represented by a graph convolutional network with an adjacency matrix. This prior augments image classification pipeline by re-ranking classification results in a residual aggregation manner. Experiments on the standard benchmarks have shown that GREEN performs favorably against state-of-the-art approaches.

Shaoteng Liu, Lijun Gong, Kai Ma, Yefeng Zheng• 2020

Related benchmarks

TaskDatasetResultRank
Diabetic Retinopathy ClassificationDEEPDR (test)
Accuracy0.446
30
Diabetic Retinopathy GradingAPTOS ESDG (test)
AUC67.5
24
Diabetic Retinopathy GradingFGADR ESDG (test)
AUC58.1
24
Ophthalmic disease diagnosisEyeQ
AUC (%)81.23
22
Lung disease diagnosisCXR-IQAD
AUC90.06
15
Disease DiagnosisAverage across datasets
AUC85.87
15
Lung disease diagnosisCT-IQAD
AUC92.54
15
Ophthalmic disease diagnosisDRAC
AUC84.37
15
Ophthalmic disease diagnosisDeepDR
AUC81.14
15
Diabetic Retinopathy ClassificationIDRiD (test)
AUC68.5
13
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