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用于自动皮肤病变分割的基于注意力的双路径特征融合网络。

Attention-based dual-path feature fusion network for automatic skin lesion segmentation.

作者信息

He Zhenxiang, Li Xiaoxia, Chen Yuling, Lv Nianzu, Cai Yong

机构信息

School of Information Engineering, Southwest University of Science and Technology, Mianyang, China.

Tianfu College of Southwest University of Finance and Economics, Mianyang, China.

出版信息

BioData Min. 2023 Oct 9;16(1):28. doi: 10.1186/s13040-023-00345-x.

DOI:10.1186/s13040-023-00345-x
PMID:37807076
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10561442/
Abstract

Automatic segmentation of skin lesions is a critical step in Computer Aided Diagnosis (CAD) of melanoma. However, due to the blurring of the lesion boundary, uneven color distribution, and low image contrast, resulting in poor segmentation result. Aiming at the problem of difficult segmentation of skin lesions, this paper proposes an Attention-based Dual-path Feature Fusion Network (ADFFNet) for automatic skin lesion segmentation. Firstly, in the spatial path, a Boundary Refinement (BR) module is designed for the output of low-level features to filter out irrelevant background information and retain more boundary details of the lesion area. Secondly, in the context path, a Multi-scale Feature Selection (MFS) module is constructed for high-level feature output to capture multi-scale context information and use the attention mechanism to filter out redundant semantic information. Finally, we design a Dual-path Feature Fusion (DFF) module, which uses high-level global attention information to guide the step-by-step fusion of high-level semantic features and low-level detail features, which is beneficial to restore image detail information and further improve the pixel-level segmentation accuracy of skin lesion. In the experiment, the ISIC 2018 and PH2 datasets are employed to evaluate the effectiveness of the proposed method. It achieves a performance of 0.890/ 0.925 and 0.933 /0.954 on the F1-score and SE index, respectively. Comparative analysis with state-of-the-art segmentation methods reveals that the ADFFNet algorithm exhibits superior segmentation performance.

摘要

皮肤病变的自动分割是黑色素瘤计算机辅助诊断(CAD)中的关键步骤。然而,由于病变边界模糊、颜色分布不均以及图像对比度低,导致分割效果不佳。针对皮肤病变分割困难的问题,本文提出了一种基于注意力的双路径特征融合网络(ADFFNet)用于皮肤病变的自动分割。首先,在空间路径中,为低级特征的输出设计了一个边界细化(BR)模块,以滤除无关的背景信息并保留病变区域更多的边界细节。其次,在上下文路径中,为高级特征输出构建了一个多尺度特征选择(MFS)模块,以捕获多尺度上下文信息并使用注意力机制滤除冗余语义信息。最后,我们设计了一个双路径特征融合(DFF)模块,它利用高级全局注意力信息来指导高级语义特征和低级细节特征的逐步融合,这有利于恢复图像细节信息并进一步提高皮肤病变的像素级分割精度。在实验中,使用ISIC 2018和PH2数据集来评估所提方法的有效性。该方法在F1分数和SE指标上分别达到了0.890/0.925和0.933/0.954的性能。与现有最先进分割方法的对比分析表明,ADFFNet算法具有卓越的分割性能。

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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7fef/10561442/f4bd889772c3/13040_2023_345_Fig8_HTML.jpg
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