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AA-WGAN:注意力增强的瓦瑟斯坦生成对抗网络及其在眼底视网膜血管分割中的应用

AA-WGAN: Attention augmented Wasserstein generative adversarial network with application to fundus retinal vessel segmentation.

作者信息

Liu Meilin, Wang Zidong, Li Han, Wu Peishu, Alsaadi Fuad E, Zeng Nianyin

机构信息

Institute of Artificial Intelligence, Xiamen University, Fujian 361005, China.

Department of Computer Science, Brunel University London, Uxbridge UB8 3PH, UK.

出版信息

Comput Biol Med. 2023 May;158:106874. doi: 10.1016/j.compbiomed.2023.106874. Epub 2023 Mar 30.

DOI:10.1016/j.compbiomed.2023.106874
PMID:37019013
Abstract

In this paper, a novel attention augmented Wasserstein generative adversarial network (AA-WGAN) is proposed for fundus retinal vessel segmentation, where a U-shaped network with attention augmented convolution and squeeze-excitation module is designed to serve as the generator. In particular, the complex vascular structures make some tiny vessels hard to segment, while the proposed AA-WGAN can effectively handle such imperfect data property, which is competent in capturing the dependency among pixels in the whole image to highlight the regions of interests via the applied attention augmented convolution. By applying the squeeze-excitation module, the generator is able to pay attention to the important channels of the feature maps, and the useless information can be suppressed as well. In addition, gradient penalty method is adopted in the WGAN backbone to alleviate the phenomenon of generating large amounts of repeated images due to excessive concentration on accuracy. The proposed model is comprehensively evaluated on three datasets DRIVE, STARE, and CHASE_DB1, and the results show that the proposed AA-WGAN is a competitive vessel segmentation model as compared with several other advanced models, which obtains the accuracy of 96.51%, 97.19% and 96.94% on each dataset, respectively. The effectiveness of the applied important components is validated by ablation study, which also endows the proposed AA-WGAN with considerable generalization ability.

摘要

本文提出了一种用于眼底视网膜血管分割的新型注意力增强瓦瑟斯坦生成对抗网络(AA-WGAN),其中设计了一个带有注意力增强卷积和挤压激励模块的U形网络作为生成器。特别是,复杂的血管结构使得一些微小血管难以分割,而所提出的AA-WGAN能够有效处理这种不完美的数据特性,它能够通过应用注意力增强卷积捕捉整个图像中像素之间的依赖关系,以突出感兴趣区域。通过应用挤压激励模块,生成器能够关注特征图的重要通道,同时无用信息也能得到抑制。此外,在WGAN主干中采用梯度惩罚方法,以缓解由于过度关注准确性而产生大量重复图像的现象。所提出的模型在DRIVE、STARE和CHASE_DB1三个数据集上进行了综合评估,结果表明,与其他几个先进模型相比,所提出的AA-WGAN是一个有竞争力的血管分割模型,在每个数据集上分别获得了96.51%、97.19%和96.94%的准确率。通过消融研究验证了所应用的重要组件的有效性,这也赋予了所提出的AA-WGAN相当强的泛化能力。

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