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用于肺病变少样本医学分割的多级支持辅助原型优化网络

Multilevel support-assisted prototype optimization network for few-shot medical segmentation of lung lesions.

作者信息

Tian Yuan, Liang Yongquan, Chen Yufeng, Zhang Jingjing, Bian Hongyang

机构信息

College of Computer Science and Engineering, Shandong University of Science and Technology, Qingdao, 266590, Shandong, China.

Shandong Provincial Public Health Clinical Center, Shandong University, Jinan, 250013, Shandong, China.

出版信息

Sci Rep. 2025 Jan 26;15(1):3290. doi: 10.1038/s41598-025-87829-4.

Abstract

Medical image annotation is scarce and costly. Few-shot segmentation has been widely used in medical image from only a few annotated examples. However, its research on lesion segmentation for lung diseases is still limited, especially for pulmonary aspergillosis. Lesion areas usually have complex shapes and blurred edges. Lesion segmentation requires more attention to deal with the diversity and uncertainty of lesions. To address this challenge, we propose MSPO-Net, a multilevel support-assisted prototype optimization network designed for few-shot lesion segmentation in computerized tomography (CT) images of lung diseases. MSPO-Net learns lesion prototypes from low-level to high-level features. Self-attention threshold learning strategy can focus on the global information and obtain an optimal threshold for CT images. Our model refines prototypes through a support-assisted prototype optimization module, adaptively enhancing their representativeness for the diversity of lesions and adapting to the unseen lesions better. In clinical examinations, CT is more practical than X-rays. To ensure the quality of our work, we have established a small-scale CT image dataset for three lung diseases and annotated by experienced doctors. Experiments demonstrate that MSPO-Net can improve segmentation performance and robustness of lung disease lesion. MSPO-Net achieves state-of-the-art performance in both single and unseen lung disease segmentation, indicating its potentiality to reduce doctors' workload and improve diagnostic accuracy. This research has certain clinical significance. Code is available at https://github.com/Tian-Yuan-ty/MSPO-Net .

摘要

医学图像标注既稀缺又昂贵。少样本分割已在医学图像中广泛应用,只需少量标注示例。然而,其在肺部疾病病变分割方面的研究仍很有限,尤其是对于肺曲霉病。病变区域通常形状复杂且边缘模糊。病变分割需要更多关注以应对病变的多样性和不确定性。为应对这一挑战,我们提出了MSPO-Net,这是一种用于肺部疾病计算机断层扫描(CT)图像少样本病变分割的多级支持辅助原型优化网络。MSPO-Net从低级特征到高级特征学习病变原型。自注意力阈值学习策略能够聚焦全局信息并为CT图像获得最优阈值。我们的模型通过支持辅助原型优化模块细化原型,自适应增强其对病变多样性的代表性,并更好地适应未见病变。在临床检查中,CT比X光更实用。为确保我们工作的质量,我们建立了一个针对三种肺部疾病的小规模CT图像数据集,并由经验丰富的医生进行标注。实验表明,MSPO-Net能够提高肺部疾病病变的分割性能和鲁棒性。MSPO-Net在单病种和未见肺部疾病分割中均取得了领先性能,表明其具有减轻医生工作量和提高诊断准确性的潜力。本研究具有一定的临床意义。代码可在https://github.com/Tian-Yuan-ty/MSPO-Net获取。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6585/11770124/1b87e8f58509/41598_2025_87829_Fig1_HTML.jpg

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