IVCVJul 7, 2022

TFCNs: A CNN-Transformer Hybrid Network for Medical Image Segmentation

UW
arXiv:2207.03450v163 citationsh-index: 16Has Code
AI Analysis

This work addresses medical image segmentation for healthcare applications, representing an incremental improvement over existing methods.

The authors tackled the challenge of high-precision medical image segmentation by proposing TFCNs, a hybrid CNN-Transformer network, which achieved a state-of-the-art dice score of 83.72% on the Synapse dataset.

Medical image segmentation is one of the most fundamental tasks concerning medical information analysis. Various solutions have been proposed so far, including many deep learning-based techniques, such as U-Net, FC-DenseNet, etc. However, high-precision medical image segmentation remains a highly challenging task due to the existence of inherent magnification and distortion in medical images as well as the presence of lesions with similar density to normal tissues. In this paper, we propose TFCNs (Transformers for Fully Convolutional denseNets) to tackle the problem by introducing ResLinear-Transformer (RL-Transformer) and Convolutional Linear Attention Block (CLAB) to FC-DenseNet. TFCNs is not only able to utilize more latent information from the CT images for feature extraction, but also can capture and disseminate semantic features and filter non-semantic features more effectively through the CLAB module. Our experimental results show that TFCNs can achieve state-of-the-art performance with dice scores of 83.72\% on the Synapse dataset. In addition, we evaluate the robustness of TFCNs for lesion area effects on the COVID-19 public datasets. The Python code will be made publicly available on https://github.com/HUANGLIZI/TFCNs.

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