基于多尺度注意力和病变感知的糖尿病视网膜病变病灶分割方法

Algorithms Pub Date : 2024-04-19 DOI:10.3390/a17040164
Ye Bian, Chengyong Si, Lei Wang
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引用次数: 0

摘要

糖尿病视网膜病变(DR)的早期诊断可有效防止不可逆转的视力损失,并有助于眼科医生提供及时准确的治疗方案。然而,现有的基于深度学习的方法对视网膜眼底图像中不同尺度信息的感知能力较弱,对细微病变的分割能力也不足。本文旨在解决这些问题,提出了用于 DR 病变分割的 MLNet,主要由多尺度注意块(MSAB)和病变感知块(LPB)组成。MSAB 专为捕捉眼底图像中的多尺度病变特征而设计,而 LPB 可感知深度上的细微病变。此外,还设计了一种具有定制病变权重的新型损失函数,以减少不平衡数据集对算法的影响。在 DDR 数据集和 DIARETDB1 数据集中,MLNet 与其他最先进方法进行了性能比较,在 DDR 数据集中,MLNet 取得了 51.81% mAUPR、49.85% mDice 和 37.19% mIoU 的最佳结果;在 DIARETDB1 数据集中,MLNet 取得了 67.16% mAUPR 和 61.82% mDice 的最佳结果。MLNet 在 IDRiD 数据集中的泛化实验取得了 59.54% 的 mAUPR,是其他方法中最好的。结果表明,MLNet 具有出色的 DR 病变分割能力。
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Diabetic Retinopathy Lesion Segmentation Method Based on Multi-Scale Attention and Lesion Perception
The early diagnosis of diabetic retinopathy (DR) can effectively prevent irreversible vision loss and assist ophthalmologists in providing timely and accurate treatment plans. However, the existing methods based on deep learning have a weak perception ability of different scale information in retinal fundus images, and the segmentation capability of subtle lesions is also insufficient. This paper aims to address these issues and proposes MLNet for DR lesion segmentation, which mainly consists of the Multi-Scale Attention Block (MSAB) and the Lesion Perception Block (LPB). The MSAB is designed to capture multi-scale lesion features in fundus images, while the LPB perceives subtle lesions in depth. In addition, a novel loss function with tailored lesion weight is designed to reduce the influence of imbalanced datasets on the algorithm. The performance comparison between MLNet and other state-of-the-art methods is carried out in the DDR dataset and DIARETDB1 dataset, and MLNet achieves the best results of 51.81% mAUPR, 49.85% mDice, and 37.19% mIoU in the DDR dataset, and 67.16% mAUPR and 61.82% mDice in the DIARETDB1 dataset. The generalization experiment of MLNet in the IDRiD dataset achieves 59.54% mAUPR, which is the best among other methods. The results show that MLNet has outstanding DR lesion segmentation ability.
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