Transformer, benefiting from global (long-range) information modeling using self-attention mechanism, has been successful in natural language processing and computer vision recently. Convolutional Neural Networks, capable of capturing local features, are difficult to model explicit long-distance dependencies from global feature space. However, both local and global features are crucial for dense prediction tasks, especially for 3D medical image segmentation. In this paper, we present the further attempt to exploit Transformer in 3D CNN for 3D medical image volumetric segmentation and propose a novel network named TransBTSV2 based on the encoder-decoder structure. Different from TransBTS, the proposed TransBTSV2 is not limited to brain tumor segmentation (BTS) but focuses on general medical image segmentation, providing a stronger and more efficient 3D baseline for volumetric segmentation of medical images. As a hybrid CNN-Transformer architecture, TransBTSV2 can achieve accurate segmentation of medical images without any pre-training, possessing the strong inductive bias as CNNs and powerful global context modeling ability as Transformer. With the proposed insight to redesign the internal structure of Transformer block and the introduced Deformable Bottleneck Module to capture shape-aware local details, a highly efficient architecture is achieved with superior performance. Extensive experimental results on four medical image datasets (BraTS 2019, BraTS 2020, LiTS 2017 and KiTS 2019) demonstrate that TransBTSV2 achieves comparable or better results compared to the state-of-the-art methods for the segmentation of brain tumor, liver tumor as well as kidney tumor. Code will be publicly available at https://github.com/Wenxuan-1119/TransBTS.
翻译:借助于全球( 远程) 信息模型的变异器, 利用自我注意机制从全球( 远程) 信息模型中受益, 最近在自然语言处理和计算机愿景方面取得了成功。 革命性神经网络(TranBTSV2), 能够捕捉本地功能, 很难从全球地貌空间模拟明显的长距离依赖性。 然而, 本地和全球功能对于密集的预测任务都至关重要, 特别是3D 医学图像分割。 本文还介绍了进一步尝试利用3D CNN 的变异器进行3D 医疗图像体积分解, 并提议以 encoder- decoder 结构为基础建立一个名为 TransBTSV2 的新的网络。 不同于 TransBTSV2, 拟议的 TransBTSV2 大脑网络网络网络网络不仅限于脑肿瘤分解(BTS), 侧重于一般医疗图像分解, 3D 用于医疗图解混合型结构, TransTSV2, 可以在任何培训前实现医学分解的准确分解, 以及更强大的全球背景模型作为变换式的变式的变式的变式 20TSeral- 。, roal- real- roal- deal- real- real- real- real- develal- 将实现高的直径 roal- sal- sal- salmalmalmalmalmalmalmalmalversalmal- sal- sal- salversalversalversalversal