用于三维生物医学图像分割的动态线性变换器

Zheyuan Zhang, Ulas Bagci
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引用次数: 0

摘要

基于变压器的神经网络在许多生物医学图像分割任务中都取得了可喜的成绩,这得益于自注意机制带来的更好的全局信息建模。然而,大多数方法仍然是针对二维医学图像设计的,而忽略了重要的三维体积信息。基于三维变换器的分割方法面临的主要挑战是自注意机制带来的二次复杂性[17]。在本文中,我们提出了一种新颖的变换器架构,它具有线性复杂度的编码器-解码器式架构,从而解决了变换器中缺乏三维方法和计算复杂度这两个研究空白。此外,我们还新引入了动态标记概念,以进一步减少自我关注计算的标记数量。利用全局信息建模的优势,我们提供了来自不同层次阶段的不确定性映射。我们在多个具有挑战性的 CT 胰腺分割数据集上对该方法进行了评估。结果表明,我们基于三维变换器的新型分割器可以提供非常可行的分割性能,并能使用单一注释进行精确的不确定性量化。代码见 https://github.com/freshman97/LinTransUNet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Linear Transformer for 3D Biomedical Image Segmentation.

Transformer-based neural networks have surpassed promising performance on many biomedical image segmentation tasks due to a better global information modeling from the self-attention mechanism. However, most methods are still designed for 2D medical images while ignoring the essential 3D volume information. The main challenge for 3D Transformer-based segmentation methods is the quadratic complexity introduced by the self-attention mechanism [17]. In this paper, we are addressing these two research gaps, lack of 3D methods and computational complexity in Transformers, by proposing a novel Transformer architecture that has an encoder-decoder style architecture with linear complexity. Furthermore, we newly introduce a dynamic token concept to further reduce the token numbers for self-attention calculation. Taking advantage of the global information modeling, we provide uncertainty maps from different hierarchy stages. We evaluate this method on multiple challenging CT pancreas segmentation datasets. Our results show that our novel 3D Transformer-based segmentor could provide promising highly feasible segmentation performance and accurate uncertainty quantification using single annotation. Code is available https://github.com/freshman97/LinTransUNet.

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