Deep learning to reconstruct quasi‐steady‐state chemical exchange saturation transfer from a non‐steady‐state experiment

Author:

Xiao Gang1,Zhang Xiaolei23ORCID,Yang Guisheng4,Jia Yanlong5,Yan Gen6,Wu Renhua2

Affiliation:

1. School of Mathematics and Statistics Hanshan Normal University Chaozhou China

2. Department of Radiology Second Affiliated Hospital of Shantou University Medical College Shantou China

3. Center for Translational Medicine Second Affiliated Hospital of Shantou University Medical College Shantou China

4. Department of Nuclear Medicine Jieyang People's Hospital Jieyang China

5. Xiangyang Central Hospital and Affiliated Hospital of Hubei University of Arts and Science Xiangyang China

6. Department of Radiology Second Affiliated Hospital of Xiamen Medical College Xiamen China

Abstract

AbstractThe insufficiently long RF saturation duration and relaxation delay in chemical exchange saturation transfer (CEST)‐MRI experiments may result in underestimation of CEST measurements. To maintain the CEST effect without prolonging the saturation duration and reach quasi‐steady state (QUASS), a deep learning method was developed to reconstruct a QUASS CEST image pixel by pixel from non‐steady‐state CEST acquired in experiments. In this work, we established a tumor‐bearing rat model on a 7 T horizontal bore small‐animal MRI scanner, allowing ground‐truth generation, after which a bidirectional long short‐term memory network was formulated and trained on simulated CEST Z‐spectra to reconstruct the QUASS CEST; finally, the ground truth yielded by experiments was used to evaluate the performance of the reconstruction model by comparing the estimates with the ground truth. For quantitation evaluation, linear regression analysis, structural similarity index (SSIM) and peak signal‐to‐noise ratio (peak SNR) were used to assess the proposed model in the QUASS CEST reconstruction. In the linear regression analysis of in vivo data, the coefficient of determination for six different representative frequency offsets was at least R2 = 0.9521. Using the SSIM and peak SNR as evaluation metrics, the reconstruction accuracies of in vivo QUASS CEST were found to be 0.9991 and 46.7076, respectively. Experimental results demonstrate that the proposed model provides a robust and accurate solution for QUASS CEST reconstruction using a deep learning mechanism.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Spectroscopy,Radiology, Nuclear Medicine and imaging,Molecular Medicine

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