Learnable Prompting SAM-Induced Knowledge Distillation for Semi-Supervised Medical Image Segmentation

Kaiwen Huang;Tao Zhou;Huazhu Fu;Yizhe Zhang;Yi Zhou;Chen Gong;Dong Liang
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Abstract

The limited availability of labeled data has driven advancements in semi-supervised learning for medical image segmentation. Modern large-scale models tailored for general segmentation, such as the Segment Anything Model (SAM), have revealed robust generalization capabilities. However, applying these models directly to medical image segmentation still exposes performance degradation. In this paper, we propose a learnable prompting SAM-induced Knowledge distillation framework (KnowSAM) for semi-supervised medical image segmentation. Firstly, we propose a Multi-view Co-training (MC) strategy that employs two distinct sub-networks to employ a co-teaching paradigm, resulting in more robust outcomes. Secondly, we present a Learnable Prompt Strategy (LPS) to dynamically produce dense prompts and integrate an adapter to fine-tune SAM specifically for medical image segmentation tasks. Moreover, we propose SAM-induced Knowledge Distillation (SKD) to transfer useful knowledge from SAM to two sub-networks, enabling them to learn from SAM’s predictions and alleviate the effects of incorrect pseudo-labels during training. Notably, the predictions generated by our subnets are used to produce mask prompts for SAM, facilitating effective inter-module information exchange. Extensive experimental results on various medical segmentation tasks demonstrate that our model outperforms the state-of-the-art semi-supervised segmentation approaches. Crucially, our SAM distillation framework can be seamlessly integrated into other semi-supervised segmentation methods to enhance performance. The code will be released upon acceptance of this manuscript at https://github.com/taozh2017/KnowSAM.
可学习提示sam诱导的半监督医学图像分割知识蒸馏
标记数据的有限可用性推动了医学图像分割的半监督学习的进步。现代针对一般分割的大规模模型,如任意分割模型(SAM),已经显示出强大的泛化能力。然而,将这些模型直接应用于医学图像分割仍然暴露出性能下降的问题。在本文中,我们提出了一个可学习的提示sam诱导知识蒸馏框架(KnowSAM)用于半监督医学图像分割。首先,我们提出了一种多视图协同训练(MC)策略,该策略采用两个不同的子网络来采用协同教学范式,从而产生更稳健的结果。其次,我们提出了一个可学习提示策略(LPS)来动态生成密集提示,并集成一个适配器来微调SAM,专门用于医学图像分割任务。此外,我们提出了SAM诱导的知识蒸馏(SKD),将有用的知识从SAM转移到两个子网络,使它们能够从SAM的预测中学习,并减轻训练过程中错误伪标签的影响。值得注意的是,我们的子网生成的预测用于生成SAM的掩码提示,促进有效的模块间信息交换。在各种医学分割任务上的大量实验结果表明,我们的模型优于最先进的半监督分割方法。至关重要的是,我们的SAM蒸馏框架可以无缝集成到其他半监督分割方法中,以提高性能。本文被接受后,代码将在https://github.com/taozh2017/KnowSAM上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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