Chinese Journal of Magnetic Resonance ›› 2023, Vol. 40 ›› Issue (1): 39-51.doi: 10.11938/cjmr20222992

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Fast Multi-channel Magnetic Resonance Imaging Based on PCAU-Net

SHI Weicheng,JIN Zhaoyang*(),YE Zheng   

  1. Machine Learning and I-health International Cooperation Base of Zhejiang Province, School of Automation, Hangzhou Dianzi University, Hangzhou 310018, China
  • Received:2022-03-29 Published:2023-03-05 Online:2022-08-10
  • Contact: JIN Zhaoyang E-mail:jinzhaoyang@hdu.edu.cn.

Abstract:

Multi-channel magnetic resonance imaging methods utilize multiple receiving coils to simultaneously under-sample k-space for fast magnetic resonance imaging. Post-processing algorithms were often used to restore the missing information for under-sampled images. However, the quality of reconstructed images is far from satisfying, especially at higher acceleration factor. In this backdrop, a fast multi-channel magnetic resonance imaging method based on parallel complex asymmetric U-Net (PCAU-Net) was proposed, which extends single-channel real-valued U-shaped convolutional neural network to multi-channel complex convolutional neural network. A U-shaped network with an asymmetric structure was designed to reduce the model complexity by reducing the network size in decoding. A 1×1 convolution block was added before skip-connection for PCAU-Net to share cross-channel information. The residual connection between the input and output of the network facilitates loss backpropagation. The experimental results show that by using regular and random sampling templates, the proposed PCAU-Net method can reconstruct the complex magnetic resonance images with high quality compared with the conventional generalized auto-calibrating partially parallel acquisitions (GRAPPA) reconstruction algorithm and iterative self-consistent parallel imaging reconstruction (SPIRiT) algorithm at different acceleration factors. Moreover, compared with the parallel complex U-Net (PCU-Net) method, PCAU-Net reduces model parameters and shortens the training time.

Key words: multi-coils, fast magnetic resonance imaging, deep learning, complex convolution, asymmetric neural network

CLC Number: