Xiao Gang, Zhang Xiaolei, Yang Guisheng, Jia Yanlong, Yan Gen, Wu Renhua
School of Mathematics and Statistics, Hanshan Normal University, Chaozhou, China.
Department of Radiology, Second Affiliated Hospital of Shantou University Medical College, Shantou, China.
NMR Biomed. 2023 Mar 28:e4940. doi: 10.1002/nbm.4940.
The 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 R = 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.
在化学交换饱和转移(CEST)-MRI实验中,射频饱和持续时间和弛豫延迟不够长可能会导致CEST测量值被低估。为了在不延长饱和持续时间的情况下维持CEST效应并达到准稳态(QUASS),开发了一种深度学习方法,用于从实验中采集的非稳态CEST逐像素重建QUASS CEST图像。在这项工作中,我们在一台7T水平孔径小动物MRI扫描仪上建立了荷瘤大鼠模型,以便生成真实数据,之后构建了一个双向长短期记忆网络,并在模拟的CEST Z谱上进行训练,以重建QUASS CEST;最后,通过将估计值与真实数据进行比较,利用实验产生的真实数据来评估重建模型的性能。对于定量评估,使用线性回归分析、结构相似性指数(SSIM)和峰值信噪比(peak SNR)来评估所提出的模型在QUASS CEST重建中的性能。在体内数据的线性回归分析中,六个不同代表性频率偏移的决定系数至少为R = 0.9521。以SSIM和peak SNR作为评估指标,发现体内QUASS CEST的重建准确率分别为0.9991和46.7076。实验结果表明,所提出的模型利用深度学习机制为QUASS CEST重建提供了一种稳健且准确的解决方案。