基于双插值和灵活部署的少镜头医学图像分割

Ziming Cheng;Shidong Wang;Yang Long;Tao Zhou;Haofeng Zhang;Ling Shao
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引用次数: 0

摘要

由于时间、财务和法律的限制,获取大量带注释的医疗数据是不切实际的。因此,少镜头医学图像分割日益成为一个突出的研究方向。目前,医学场景面临两大挑战:1)支持集和查询集的多样性导致类内差异;2)背景异质性导致的阶层间极度失衡。然而,现有的原型网络很难有效地解决这些障碍。为此,我们提出了双分散和灵活部署(DIFD)模型。从军事穿插战术中汲取灵感,我们设计了双穿插模块,从支持特征中生成具有代表性的基础原型。然后,这些基本原型与查询特征进行深度交互。在此基础上,引入融合因子对基础原型进行融合和细化。最终,我们对基原型进行了无缝集成和灵活部署,便于查询特征与基原型的正确匹配,从而有利于提高模型的分割精度。在三个公开可用的医学图像数据集上进行的大量实验表明,我们的模型明显优于其他sota(在所有数据集上平均高出2.78%的骰子分数),达到了一个新的性能水平。代码可从https://github.com/zmcheng9/DIFD获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual Interspersion and Flexible Deployment for Few-Shot Medical Image Segmentation
Acquiring a large volume of annotated medical data is impractical due to time, financial, and legal constraints. Consequently, few-shot medical image segmentation is increasingly emerging as a prominent research direction. Nowadays, Medical scenarios pose two major challenges: 1) intra-class variation caused by diversity among support and query sets; 2) inter-class extreme imbalance resulting from background heterogeneity. However, existing prototypical networks struggle to tackle these obstacles effectively. To this end, we propose a Dual Interspersion and Flexible Deployment (DIFD) model. Drawing inspiration from military interspersion tactics, we design the dual Interspersion module to generate representative basis prototypes from support features. These basis prototypes are then deeply interacted with query features. Furthermore, we introduce a fusion factor to fuse and refine the basis prototypes. Ultimately, we seamlessly integrate and flexibly deploy the basis prototypes to facilitate correct matching between the query features and basis prototypes, thus conducive to improving the segmentation accuracy of the model. Extensive experiments on three publicly available medical image datasets demonstrate that our model significantly outshines other SoTAs (2.78% higher dice score on average across all datasets), achieving a new level of performance. The code is available at: https://github.com/zmcheng9/DIFD.
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