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High-Resolution Swin Transformer for Automatic Medical Image Segmentation.

Chen WeiShenghan RenKaitai GuoHaihong HuJimin Liang
Published in: Sensors (Basel, Switzerland) (2023)
The resolution of feature maps is a critical factor for accurate medical image segmentation. Most of the existing Transformer-based networks for medical image segmentation adopt a U-Net-like architecture, which contains an encoder that converts the high-resolution input image into low-resolution feature maps using a sequence of Transformer blocks and a decoder that gradually generates high-resolution representations from low-resolution feature maps. However, the procedure of recovering high-resolution representations from low-resolution representations may harm the spatial precision of the generated segmentation masks. Unlike previous studies, in this study, we utilized the high-resolution network (HRNet) design style by replacing the convolutional layers with Transformer blocks, continuously exchanging feature map information with different resolutions generated by the Transformer blocks. The proposed Transformer-based network is named the high-resolution Swin Transformer network (HRSTNet). Extensive experiments demonstrated that the HRSTNet can achieve performance comparable with that of the state-of-the-art Transformer-based U-Net-like architecture on the 2021 Brain Tumor Segmentation dataset, the Medical Segmentation Decathlon's liver dataset, and the BTCV multi-organ segmentation dataset.
Keyphrases
  • deep learning
  • high resolution
  • convolutional neural network
  • machine learning
  • healthcare
  • mass spectrometry
  • working memory
  • single molecule
  • tandem mass spectrometry
  • high speed
  • network analysis
  • social media