基于临床知识的混合Swin变压器用于脑肿瘤分割

Xiaoliang Lei, Xiaosheng Yu, Hao Wu, Chengdong Wu, Jingsi Zhang
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引用次数: 0

摘要

磁共振成像(MRI)成像中脑组织肿瘤的准确分割对于脑肿瘤的术前规划至关重要。MRI图像强度不均,边界模糊,给脑肿瘤分割带来了挑战。此外,最近的研究尚未充分利用MRI序列的可观和补充信息,这提供了关键的先验知识。本文提出了一种基于临床知识的混合Swin Transformer多模态脑肿瘤分割算法,该算法基于专家如何从MRI图像中识别恶性肿瘤。在编码器阶段,构建了一个双骨干网络,其中Swin Transformer骨干网络用于捕获3D MR图像的长依赖关系,基于卷积神经网络(CNN)的骨干网络用于表示局部特征。该方法不是将所有的MRI序列直接连接起来,而是根据MRI的原理和特征将它们重新组织并分成两组:T1和T1ce, T2和Flair。这些聚合图像由基于双杆Swin变压器的编码器分支接收,多模态序列交互交叉注意模块(MScAM)在每个阶段捕获两组相连模态之间的交互信息。在基于cnn的编码器分支中,提出了三重下采样模块(TDsM)来平衡下采样时的性能。在编码器的最后阶段,从两个分支获取的特征映射被连接作为解码器的输入,解码器受MScAM输出的约束。该方法已在MICCAI BraTS2021挑战赛的数据集上进行了评估。实验结果表明,该方法能够准确地分割脑肿瘤,特别是肿瘤内部的部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clinical Knowledge-Based Hybrid Swin Transformer for Brain Tumor Segmentation
Accurate tumor segmentation from brain tissues in Magnetic Resonance Imaging (MRI) imaging is crucial in the pre-surgical planning of brain tumor malignancy. MRI images’ heterogeneous intensity and fuzzy boundaries make brain tumor segmentation challenging. Furthermore, recent studies have yet to fully employ MRI sequences’ considerable and supplementary information, which offers critical a priori knowledge. This paper proposes a clinical knowledge-based hybrid Swin Transformer multimodal brain tumor segmentation algorithm based on how experts identify malignancies from MRI images. During the encoder phase, a dual backbone network with a Swin Transformer backbone to capture long dependencies from 3D MR images and a Convolutional Neural Network (CNN)-based backbone to represent local features have been constructed. Instead of directly connecting all the MRI sequences, the proposed method re-organizes them and splits them into two groups based on MRI principles and characteristics: T1 and T1ce, T2 and Flair. These aggregated images are received by the dual-stem Swin Transformer-based encoder branch, and the multimodal sequence-interacted cross-attention module (MScAM) captures the interactive information between two sets of linked modalities in each stage. In the CNN-based encoder branch, a triple down-sampling module (TDsM) has been proposed to balance the performance while downsampling. In the final stage of the encoder, the feature maps acquired from two branches are concatenated as input to the decoder, which is constrained by MScAM outputs. The proposed method has been evaluated on datasets from the MICCAI BraTS2021 Challenge. The results of the experiments demonstrate that the method algorithm can precisely segment brain tumors, especially the portions within tumors.
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