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基于 Transformer 的渐进式融合网络用于 3D 胰腺和胰腺肿块分割。

Transformer guided progressive fusion network for 3D pancreas and pancreatic mass segmentation.

机构信息

AI Lab, Deepwise Healthcare, Beijing 100080, China.

AI Lab, Deepwise Healthcare, Beijing 100080, China.

出版信息

Med Image Anal. 2023 May;86:102801. doi: 10.1016/j.media.2023.102801. Epub 2023 Mar 31.

Abstract

Pancreatic masses are diverse in type, often making their clinical management challenging. This study aims to address the task of various types of pancreatic mass segmentation and detection while accurately segmenting the pancreas. Although convolution operation performs well at extracting local details, it experiences difficulty capturing global representations. To alleviate this limitation, we propose a transformer guided progressive fusion network (TGPFN) that utilizes the global representation captured by the transformer to supplement long-range dependencies lost by convolution operations at different resolutions. TGPFN is built on a branch-integrated network structure, where the convolutional neural network and transformer branches first perform separate feature extraction in the encoder, and then the local and global features are progressively fused in the decoder. To effectively integrate the information of the two branches, we design a transformer guidance flow to ensure feature consistency, and present a cross-network attention module to capture the channel dependencies. Extensive experiments with nnUNet (3D) show that TGPFN improves the mass segmentation (Dice: 73.93% vs. 69.40%) and detection accuracy (detection rate: 91.71% vs. 84.97%) on 416 private CTs, and also obtains performance improvements of mass segmentation (Dice: 43.86% vs. 42.07%) and detection (detection rate: 83.33% vs. 71.74%) on 419 public CTs.

摘要

胰腺肿块类型多样,临床管理颇具挑战。本研究旨在解决多种胰腺肿块分割和检测任务,同时准确分割胰腺。卷积操作在提取局部细节方面表现出色,但难以捕获全局表示。为缓解这一限制,我们提出一种基于 Transformer 引导的渐进式融合网络(TGPFN),利用 Transformer 捕获的全局表示补充不同分辨率卷积操作丢失的长程依赖。TGPFN 构建在分支集成网络结构上,其中卷积神经网络和 Transformer 分支首先在编码器中进行独立的特征提取,然后在解码器中逐步融合局部和全局特征。为了有效融合两个分支的信息,我们设计了 Transformer 引导流来确保特征一致性,并提出了跨网络注意力模块来捕获通道依赖。在 nnUNet(3D)上的大量实验表明,TGPFN 提高了 416 个私有 CT 上的肿块分割(Dice:73.93% 对 69.40%)和检测精度(检出率:91.71% 对 84.97%),并在 419 个公共 CT 上提高了肿块分割(Dice:43.86% 对 42.07%)和检测(检出率:83.33% 对 71.74%)的性能。

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