4.3 Article

ICA-Unet: An improved U-net network for brown adipose tissue segmentation

出版社

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S1793545822500183

关键词

PET; CT; segmentation of brown adipose tissue; U-net; medical image processing; deep learning

资金

  1. National Natural Science Foundation of China [61701403, 82122033, 81871379]
  2. National Key Research and Development Program of China [2016YFC0103804, 2019YFC1521103, 2020YFC1523301, 2019YFC1521102]
  3. Key R&D Projects in Shaanxi Province [2019ZDLSF07-02, 2019ZDLGY10-01]
  4. Key R&D Projects in Qinghai Province [2020-SF-143]
  5. China Post-doctoral Science Foundation [2018M643719]
  6. Young Talent Support Program of the Shaanxi Association for Science and Technology [20190107]

向作者/读者索取更多资源

This paper proposes an improved U-net network, ICA-Unet, for automatic and precise segmentation of brown adipose tissue (BAT). By introducing depth-wise over-parameterized convolutional layers, channel attention blocks, and image information entropy blocks, the method achieves excellent segmentation results on the PET/CT images of 368 patients.
Brown adipose tissue (BAT) is a kind of adipose tissue engaging in thermoregulatory thermogenesis, metaboloregulatory thermogenesis, and secretory. Current studies have revealed that BAT activity is negatively correlated with adult body weight and is considered a target tissue for the treatment of obesity and other metabolic-related diseases. Additionally, the activity of BAT presents certain differences between different ages and genders. Clinically, BAT segmentation based on PET/CT data is a reliable method for brown fat research. However, most of the current BAT segmentation methods rely on the experience of doctors. In this paper, an improved U-net network, ICA-Unet, is proposed to achieve automatic and precise segmentation of BAT. First, the traditional 2D convolution layer in the encoder is replaced with a depth-wise over-parameterized convolutional (Do-Conv) layer. Second, the channel attention block is introduced between the double-layer convolution. Finally, the image information entropy (IIE) block is added in the skip connections to strengthen the edge features. Furthermore, the performance of this method is evaluated on the dataset of PET/CT images from 368 patients. The results demonstrate a strong agreement between the automatic segmentation of BAT and manual annotation by experts. The average DICE coefficient (DSC) is 0.9057, and the average Hausdorff distance is 7.2810. Experimental results suggest that the method proposed in this paper can achieve efficient and accurate automatic BAT segmentation and satisfy the clinical requirements of BAT.

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