Abstract

Automatic segmentation of optic disc (OD) and optic cup (OC) is an essential task for analysing colour fundus images. In clinical practice, accurate OD and OC segmentation assist ophthalmologists in diagnosing glaucoma. In this paper, we propose a unified convolutional neural network, named ResFPN-Net, which learns the boundary feature and the inner relation between OD and OC for automatic segmentation. The proposed ResFPN-Net is mainly composed of multi-scale feature extractor, multi-scale segmentation transition and attention pyramid architecture. The multi-scale feature extractor achieved the feature encoding of fundus images and captured the boundary representations. The multi-scale segmentation transition is employed to retain the features of different scales. Moreover, an attention pyramid architecture is proposed to learn rich representations and the mutual connection in the OD and OC. To verify the effectiveness of the proposed method, we conducted extensive experiments on two public datasets. On the Drishti-GS database, we achieved a Dice coefficient of 97.59%, 89.87%, the accuracy of 99.21%, 98.77%, and the Averaged Hausdorff distance of 0.099, 0.882 on the OD and OC segmentation, respectively. We achieved a Dice coefficient of 96.41%, 83.91%, the accuracy of 99.30%, 99.24%, and the Averaged Hausdorff distance of 0.166, 1.210 on the RIM-ONE database for OD and OC segmentation, respectively. Comprehensive results show that the proposed method outperforms other competitive OD and OC segmentation methods and appears more adaptable in cross-dataset scenarios. The introduced multi-scale loss function achieved significantly lower training loss and higher accuracy compared with other loss functions. Furthermore, the proposed method is further validated in OC to OD ratio calculation task and achieved the best MAE of 0.0499 and 0.0630 on the Drishti-GS and RIM-ONE datasets, respectively. Finally, we evaluated the effectiveness of the glaucoma screening on Drishti-GS and RIM-ONE datasets, achieving the AUC of 0.8947 and 0.7964. These results proved that the proposed ResFPN-Net is effective in analysing fundus images for glaucoma screening and can be applied in other relative biomedical image segmentation applications.

Highlights

  • Glaucoma is the second leading cause of blindness in the world and the first irreversible cause of blindness [26]

  • These results proved that the proposed ResFPN-Net is effective in analysing fundus images for glaucoma screening and can be applied in other relative biomedical image segmentation applications

  • We propose a convolutional neural network, named ResFPN-Net, for joint optic disc (OD) and optic cup (OC) segmentation

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Summary

Introduction

Glaucoma is the second leading cause of blindness in the world (after cataracts) and the first irreversible cause of blindness [26]. Developing automatic algorithms to segment OD and OC from fundus images is significant for lightening the burden of ophthalmologists and promoting large-scale screenings of glaucoma. Most of the early segmentation methods of OD and OC are based on hand-crafted features (e.g. colour, gradient and texture features), which include adaptive thresholdbased method [2, 27], regional growth method [28] and segmentation method based on Wavelet transform [6]. These hand-crafted features are affected by the physiological structure of the fundus images. The main contribution of our work can be summarized as follows: (1) A segmentation network for joint OD and OC segmentation: Through multi-scale loss supervision, the network can accurately segment the OD and OC from fundus images by fully taking advantage of the internal relationship between OD and OC. (2) A multi-scale feature extractor: It takes images of different scales as input and merges information from various feature maps, which can adequately express the feature information of the fundus image and preserve the edge features. (3) An attention pyramid structure: This structure combines attention mechanism with feature pyramid architecture to enhance the representation of OD and OC in the fundus image, which improves the segmentation performance of the network

Related works
Methodology
Multi-scale extractor
Multi-scale segmentation transition
Attention pyramid architecture
Loss function
Datasets and evaluation method
 TP TP þ FP þ
Implementation details
Segmentation results
Accuracy analysis results
Method
Visual analysis results
Glaucoma screening
Ablation experiments
Findings
Conclusion
Full Text
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