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Attention-guided cascaded network with pixel-importance-balance loss for retinal vessel segmentation

Hexing Su, Le Gao, Yichao Lu, Han Jing, Jin Hong, Li Huang, Zequn Chen

2023Frontiers in Cell and Developmental Biology21 citationsDOIOpen Access PDF

Abstract

Accurate retinal vessel segmentation from fundus images is essential for eye disease diagnosis. Many deep learning methods have shown great performance in this task but still struggle with limited annotated data. To alleviate this issue, we propose an Attention-Guided Cascaded Network (AGC-Net) that learns more valuable vessel features from a few fundus images. Attention-guided cascaded network consists of two stages: the coarse stage produces a rough vessel prediction map from the fundus image, and the fine stage refines the missing vessel details from this map. In attention-guided cascaded network, we incorporate an inter-stage attention module (ISAM) to cascade the backbone of these two stages, which helps the fine stage focus on vessel regions for better refinement. We also propose Pixel-Importance-Balance Loss (PIB Loss) to train the model, which avoids gradient domination by non-vascular pixels during backpropagation. We evaluate our methods on two mainstream fundus image datasets (i.e., DRIVE and CHASE-DB1) and achieve AUCs of 0.9882 and 0.9914, respectively. Experimental results show that our method outperforms other state-of-the-art methods in performance.

Topics & Concepts

Computer scienceArtificial intelligenceFundus (uterus)SegmentationPixelFocus (optics)BackpropagationComputer visionDeep learningPattern recognition (psychology)Artificial neural networkOpticsPhysicsMedicineOphthalmologyRetinal Imaging and AnalysisGlaucoma and retinal disordersDigital Imaging for Blood Diseases
Attention-guided cascaded network with pixel-importance-balance loss for retinal vessel segmentation | Litcius