Unsupervised cycle‐consistent network using restricted subspace field map for removing susceptibility artifacts in EPI

Author:

Bao Qingjia1ORCID,Xie Weida2,Otikovs Martins3,Xia Liyang2,Xie Han1ORCID,Liu Xinjie1,Liu Kewen2,Zhang Zhi1,Chen Fang1,Zhou Xin145ORCID,Liu Chaoyang145

Affiliation:

1. Key Laboratory of Magnetic Resonance in Biological Systems Innovation Academy for Precision Measurement Science and Technology Wuhan 430071 People's Republic of China

2. School of Information Engineering Wuhan University of Technology Wuhan People's Republic of China

3. Weizmann Institute of Science Rehovot 76001 Israel

4. University of Chinese Academy of Sciences Beijing 100049 People's Republic of China

5. Wuhan National Laboratory for Optoelectronics Huazhong University of Science and Technology‐Optics Valley Laboratory Hubei 430074 People's Republic of China

Abstract

PurposeTo design an unsupervised deep neural model for correcting susceptibility artifacts in single‐shot Echo Planar Imaging (EPI) and evaluate the model for preclinical and clinical applications.MethodsThis work proposes an unsupervised cycle‐consistent model based on the restricted subspace field map to take advantage of both the deep learning (DL) and the reverse polarity‐gradient (RPG) method for single‐shot EPI. The proposed model consists of three main components: (1) DLRPG neural network (DLRPG‐net) to obtain field maps based on a pair of images acquired with reversed phase encoding; (2) spin physical model–based modules to obtain the corrected undistorted images based on the learned field map; and (3) cycle‐consistency loss between the input images and back‐calculated images from each cycle is explored for network training. In addition, the field maps generated by DLRPG‐net belong to a restricted subspace, which is a span of predefined cubic splines to ensure the smoothness of the field maps and avoid blurring in the corrected images. This new method is trained and validated on both preclinical and clinical datasets for diffusion MRI.ResultsThe proposed network could effectively generate smooth field maps and correct susceptibility artifacts in single‐shot EPI. Simulated and in vivo preclinical/clinical experiments demonstrated that our method outperforms the state‐of‐the‐art susceptibility artifact correction methods. Furthermore, the ablation experiments of the cycle‐consistent network and the restricted subspace in generating field maps did show the advantages of DLRPG‐net.ConclusionThe proposed method (DLRPG‐net) can effectively correct susceptibility artifacts for preclinical and clinical single‐shot EPI sequences.

Funder

Chinese Academy of Sciences

National Natural Science Foundation of China

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging

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