RA-SIFA: Unsupervised domain adaptation multi-modality cardiac segmentation network combining parallel attention module and residual attention unit

Author:

Yang Tiejun12,Cui Xiaojuan3,Bai Xinhao3,Li Lei2,Gong Yuehong3

Affiliation:

1. Key Laboratory of Grain Information Processing and Control, Henan University of Technology, Ministry of Education, Zhengzhou, China

2. School of Artificial Intelligence and Big Data, Henan University of Technology, Zhengzhou, China

3. College of Information Science and Engineering, Henan University of Technology, Zhengzhou, China

Abstract

BACKGROUND: Convolutional neural network has achieved a profound effect on cardiac image segmentation. The diversity of medical imaging equipment brings the challenge of domain shift for cardiac image segmentation. OBJECTIVE: In order to solve the domain shift existed in multi-modality cardiac image segmentation, this study aims to investigate and test an unsupervised domain adaptation network RA-SIFA, which combines a parallel attention module (PAM) and residual attention unit (RAU). METHODS: First, the PAM is introduced in the generator of RA-SIFA to fuse global information, which can reduce the domain shift from the respect of image alignment. Second, the shared encoder adopts the RAU, which has residual block based on the spatial attention module to alleviate the problem that the convolution layer is insensitive to spatial position. Therefore, RAU enables to further reduce the domain shift from the respect of feature alignment. RA-SIFA model can realize the unsupervised domain adaption (UDA) through combining the image and feature alignment, and then solve the domain shift of cardiac image segmentation in a complementary manner. RESULTS: The model is evaluated using MM-WHS2017 datasets. Compared with SIFA, the Dice of our new RA-SIFA network is improved by 8.4%and 3.2%in CT and MR images, respectively, while, the average symmetric surface distance (ASD) is reduced by 3.4 and 0.8mm in CT and MR images, respectively. CONCLUSION: The study results demonstrate that our new RA-SIFA network can effectively improve the accuracy of whole-heart segmentation from CT and MR images.

Publisher

IOS Press

Subject

Electrical and Electronic Engineering,Condensed Matter Physics,Radiology, Nuclear Medicine and imaging,Instrumentation,Radiation

Reference23 articles.

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3. Multi-label whole heart segmentation using CNNs and anatomical label configurations;Payer;International Workshop on Statistical Atlases and Computational Models of the Heart,2017

4. Tumor-aware, adversarial domain adaptation from CT to MRI for lung cancer segmentation;Jiang;International Conference on Medical Image Computing and Computer-Assisted Intervention,2018

5. Dual-Teacher: Integrating intra-domain and inter-domain teachers for annotation-efficient cardiac segmentation;Li;International Conference on Medical Image Computing and Computer-Assisted Intervention,2020

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