Vision transformers (ViTs) have quickly superseded convolutional networks (ConvNets) as the current state-of-the-art (SOTA) models for medical image segmentation. Hierarchical transformers (e.g., Swin Transformers) reintroduced several ConvNet priors and further enhanced the practical viability of adapting volumetric segmentation in 3D medical datasets. The effectiveness of hybrid approaches is largely credited to the large receptive field for non-local self-attention and the large number of model parameters. In this work, we propose a lightweight volumetric ConvNet, termed 3D UX-Net, which adapts the hierarchical transformer using ConvNet modules for robust volumetric segmentation. Specifically, we revisit volumetric depth-wise convolutions with large kernel size (e.g. starting from $7\times7\times7$) to enable the larger global receptive fields, inspired by Swin Transformer. We further substitute the multi-layer perceptron (MLP) in Swin Transformer blocks with pointwise depth convolutions and enhance model performances with fewer normalization and activation layers, thus reducing the number of model parameters. 3D UX-Net competes favorably with current SOTA transformers (e.g. SwinUNETR) using three challenging public datasets on volumetric brain and abdominal imaging: 1) MICCAI Challenge 2021 FLARE, 2) MICCAI Challenge 2021 FeTA, and 3) MICCAI Challenge 2022 AMOS. 3D UX-Net consistently outperforms SwinUNETR with improvement from 0.929 to 0.938 Dice (FLARE2021) and 0.867 to 0.874 Dice (Feta2021). We further evaluate the transfer learning capability of 3D UX-Net with AMOS2022 and demonstrates another improvement of $2.27\%$ Dice (from 0.880 to 0.900). The source code with our proposed model are available at https://github.com/MASILab/3DUX-Net.
翻译:视觉变异器(ViTs)已迅速取代了当前用于医学图像分割的当前状态艺术型(SOTA)模型的UXD网络(Convlations),高端变异器(例如Swin变异器)重新引入了ConvNet的前几个前科,并进一步加强了在3D医疗数据集中调整体积分解的实际可行性。混合方法的效力主要归功于非本地自我意识和大量模型参数的大型可接受域。在这项工作中,我们提议使用一个轻量体积体型ConvNet(称为3D UXXX-Net)来调整等级变异器,使用ConvNet模块模块进行稳健的体积分解。具体地,我们重新审视了体积深度变异变异器,从7美元开始,从7美元到7美元,在Swin变现模型变异变异器的激励下,将202020DFNSD(WMLP) 和多层变异器改进。我们进一步用Swinervical 的变异器元化器元件,用点深度的深度模型模型模型模型模型模型,用3DAreal-Areal-revorate Stal 3D 3xxxxxxxxxxxxx