4.7 Article

Dual Encoder-Based Dynamic-Channel Graph Convolutional Network With Edge Enhancement for Retinal Vessel Segmentation

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 41, Issue 8, Pages 1975-1989

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2022.3151666

Keywords

Image edge detection; Biomedical imaging; Image segmentation; Feature extraction; Deep learning; Convolution; Decoding; Retinal vessel segmentation; dual encoder; dynamic graph convolution network; edge enhancement; deep learning

Funding

  1. National Natural Science Foundation of China [U1809209, 61671042, 61403016]
  2. Beijing Natural Science Foundation
  3. Beijing United Imaging Research Institute of Intelligent Imaging Foundation [L182015, 4172037, CRIBJQY202103]

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Retinal vessel segmentation is crucial for diagnosing fundus diseases, and this paper proposes a novel method called DE-DCGCN-EE. It uses a dual encoder to preserve edge information during down-sampling, a dynamic-channel graph convolutional network to address the issue of insufficient channel information utilization, and an edge enhancement block to improve the accuracy of fine blood vessel segmentation. Experimental results show that DE-DCGCN-EE outperforms other state-of-the-art methods on five retinal image datasets, indicating its potential clinical application.
Retinal vessel segmentation with deep learning technology is a crucial auxiliary method for clinicians to diagnose fundus diseases. However, the deep learning approaches inevitably lose the edge information, which contains spatial features of vessels while performing down-sampling, leading to the limited segmentation performance of fine blood vessels. Furthermore, the existing methods ignore the dynamic topological correlations among feature maps in the deep learning framework, resulting in the inefficient capture of the channel characterization. To address these limitations, we propose a novel dual encoder-based dynamic-channel graph convolutional network with edge enhancement (DE-DCGCN-EE) for retinal vessel segmentation. Specifically, we first design an edge detection-based dual encoder to preserve the edge of vessels in down-sampling. Secondly, we investigate a dynamic-channel graph convolutional network to map the image channels to the topological space and synthesize the features of each channel on the topological map, which solves the limitation of insufficient channel information utilization. Finally, we study an edge enhancement block, aiming to fuse the edge and spatial features in the dual encoder, which is beneficial to improve the accuracy of fine blood vessel segmentation. Competitive experimental results on five retinal image datasets validate the efficacy of the proposed DE-DCGCN-EE, which achieves more remarkable segmentation results against the other state-of-the-art methods, indicating its potential clinical application.

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