Mamba-Sea:一种基于mamba的全局到局部序列增强框架,用于广义医学图像分割

Zihan Cheng;Jintao Guo;Jian Zhang;Lei Qi;Luping Zhou;Yinghuan Shi;Yang Gao
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引用次数: 0

摘要

为了分割具有分布移位的医学图像,域泛化(DG)已经成为一种很有前途的设置,可以在源域上训练模型,从而可以泛化到未知的目标域。现有的DG方法主要基于CNN或ViT架构。近年来,以Mamba为代表的先进状态空间模型在各种监督医学图像分割中显示出良好的效果。Mamba的成功主要是由于它能够捕获远程依赖关系,同时保持输入序列长度的线性复杂性,使其成为cnn和ViTs的有希望的替代品。受成功的启发,在本文中,我们探索了曼巴架构的潜力,以解决医学图像分割中DG的分布变化。具体来说,我们提出了一个新的基于mamba的框架,Mamba-Sea,结合全局到局部序列增强来提高模型在域漂移问题下的泛化性。我们的Mamba-Sea引入了一个全局增强机制,旨在模拟不同站点外观的潜在变化,旨在抑制模型对特定领域信息的学习。在局部层面上,我们提出了一种沿输入序列的序列增强方法,该方法通过建模和重采样与域移位相关的样式统计来干扰随机连续子序列中的令牌样式。据我们所知,Mamba- sea是第一个探索Mamba医学图像分割的推广工作,提供了一个先进的和有前途的基于Mamba的架构,具有很强的鲁棒性。值得注意的是,我们提出的方法是第一个在前列腺数据集上超过90% Dice系数的方法,这超过了之前的SOTA(88.61%)。代码可在https://github.com/orange-czh/Mamba-Sea上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mamba-Sea: A Mamba-Based Framework With Global-to-Local Sequence Augmentation for Generalizable Medical Image Segmentation
To segment medical images with distribution shifts, domain generalization (DG) has emerged as a promising setting to train models on source domains that can generalize to unseen target domains. Existing DG methods are mainly based on CNN or ViT architectures. Recently, advanced state space models, represented by Mamba, have shown promising results in various supervised medical image segmentation. The success of Mamba is primarily owing to its ability to capture long-range dependencies while keeping linear complexity with input sequence length, making it a promising alternative to CNNs and ViTs. Inspired by the success, in the paper, we explore the potential of the Mamba architecture to address distribution shifts in DG for medical image segmentation. Specifically, we propose a novel Mamba-based framework, Mamba-Sea, incorporating global-to-local sequence augmentation to improve the model’s generalizability under domain shift issues. Our Mamba-Sea introduces a global augmentation mechanism designed to simulate potential variations in appearance across different sites, aiming to suppress the model’s learning of domain-specific information. At the local level, we propose a sequence-wise augmentation along input sequences, which perturbs the style of tokens within random continuous sub-sequences by modeling and resampling style statistics associated with domain shifts. To our best knowledge, Mamba-Sea is the first work to explore the generalization of Mamba for medical image segmentation, providing an advanced and promising Mamba-based architecture with strong robustness to domain shifts. Remarkably, our proposed method is the first to surpass a Dice coefficient of 90% on the Prostate dataset, which exceeds previous SOTA of 88.61%. The code is available at https://github.com/orange-czh/Mamba-Sea.
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