4.3 Article

Medical image segmentation using boundary-enhanced guided packet rotation dual attention decoder network

Journal

TECHNOLOGY AND HEALTH CARE
Volume 30, Issue 1, Pages 129-143

Publisher

IOS PRESS
DOI: 10.3233/THC-202789

Keywords

Medical image segmentation; packet rotation convolution; dual attention mechanism; boundary enhancement; convolutional neural network

Funding

  1. Xinjiang Uygur Autonomous Region Postgraduate Research and Innovation Project [XJ2020G072, XJ2020G073]
  2. Xinjiang Uygur Autonomous Region Natural Science Fund Project [2016D01C050]
  3. Xinjiang Autonomous Region Science and Technology Talent Training Project [QN2016YX0051]

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This study proposes a boundary-enhanced guided packet rotation dual attention decoder network to address the low segmentation accuracy caused by unclear image boundaries. It demonstrates that the proposed method improves the segmentation performance for medical images, achieving high accuracy with reduced parameter number.
BACKGROUND: The automatic segmentation of medical images is an important task in clinical applications. However, due to the complexity of the background of the organs, the unclear boundary, and the variable size of different organs, some of the features are lost during network learning, and the segmentation accuracy is low. OBJECTIVE: To address these issues, this prompted us to study whether it is possible to better preserve the deep feature information of the image and solve the problem of low segmentation caused by unclear image boundaries. METHODS: In this study, we (1) build a reliable deep learning network framework, named BGRANet,to improve the segmentation performance for medical images; (2) propose a packet rotation convolutional fusion encoder network to extract features; (3) build a boundary enhanced guided packet rotation dual attention decoder network, which is used to enhance the boundary of the segmentation map and effectively fuse more prior information; and (4) propose a multi-resolution fusion module to generate high-resolution feature maps. We demonstrate the effectiveness of the proposed method on two publicly available datasets. RESULTS: BGRANet has been trained and tested on the prepared dataset and the experimental results show that our proposed model has better segmentation performance. For 4 class classification (CHAOS dataset), the average dice similarity coefficient reached 91.73%. For 2 class classification (Herlev dataset), the prediction, sensitivity, specificity, accuracy, and Dice reached 93.75%, 94.30%, 98.19%, 97.43%, and 98.08% respectively. The experimental results show that BGRANet can improve the segmentation effect for medical images. CONCLUSION: We propose a boundary-enhanced guided packet rotation dual attention decoder network. It achieved high segmentation accuracy with a reduced parameter number.

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