(DA-U)2Net: double attention U2Net for retinal vessel segmentation.

IF 1.7 4区 医学 Q3 OPHTHALMOLOGY
Bing Chu, Jinsong Zhao, Wenqiang Zheng, Zhengyuan Xu
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引用次数: 0

Abstract

Background: Morphological changes in the retina are crucial and serve as valuable references in the clinical diagnosis of ophthalmic and cardiovascular diseases. However, the retinal vascular structure is complex, making manual segmentation time-consuming and labor-intensive.

Methods: This paper proposes a retinal segmentation network that integrates feature channel attention and the Convolutional Block Attention Module (CBAM) attention within the U2Net model. First, a feature channel attention module is introduced into the RSU (Residual Spatial Unit) block of U2Net, forming an Attention-RSU block, which focuses more on significant areas during feature extraction and suppresses the influence of noise; Second, a Spatial Attention Module (SAM) is introduced into the high-resolution module of Attention-RSU to enrich feature extraction from both spatial and channel dimensions, and a Channel Attention Module (CAM) is integrated into the lowresolution module of Attention-RSU, which uses dual channel attention to reduce detail loss.Finally, dilated convolution is applied during the upscaling and downscaling processes to expand the receptive field in low-resolution states, allowing the model to better integrate contextual information.

Results: The evaluation across multiple clinical datasets demonstrated excellent performance on various metrics, with an accuracy (ACC) of 98.71%.

Conclusion: The proposed Network is general enough and we believe it can be easily extended to other medical image segmentation tasks where large scale variation and complicated features are the main challenges.

(DA-U)2Net:用于视网膜血管分割的双注意U2Net。
背景:视网膜的形态学变化对眼科和心血管疾病的临床诊断具有重要的参考价值。然而,视网膜血管结构复杂,人工分割费时费力。方法:提出了一种融合了U2Net模型中特征通道注意和卷积块注意模块(CBAM)注意的视网膜分割网络。首先,在U2Net的残差空间单元(Residual Spatial Unit, RSU)块中引入特征通道注意模块,形成一个注意力-RSU块,该块在特征提取过程中更加关注重要区域,抑制噪声的影响;其次,在注意- rsu的高分辨率模块中引入空间注意模块(SAM),从空间和通道两个维度丰富特征提取;在注意- rsu的低分辨率模块中引入通道注意模块(CAM),利用双通道注意减少细节损失。最后,在升尺度和降尺度过程中应用扩展卷积来扩展低分辨率状态下的接受野,使模型能够更好地整合上下文信息。结果:跨多个临床数据集的评估在各种指标上表现出色,准确率(ACC)为98.71%。结论:本文提出的网络具有一定的通用性,可以很容易地推广到其他大尺度变化和复杂特征的医学图像分割任务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Ophthalmology
BMC Ophthalmology OPHTHALMOLOGY-
CiteScore
3.40
自引率
5.00%
发文量
441
审稿时长
6-12 weeks
期刊介绍: BMC Ophthalmology is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of eye disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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