Zhang Xiaoxia, de Moura Hector L, Monga Anmol, Zibetti Marcelo V W, Regatte Ravinder R
Center for Biomedical Imaging, Department of Radiology, New York University Grossman School of Medicine, New York, New York, USA.
NMR Biomed. 2025 Jun;38(6):e70045. doi: 10.1002/nbm.70045.
Magnetic resonance fingerprinting (MRF), as an emerging versatile and noninvasive imaging technique, provides simultaneous quantification of multiple quantitative MRI parameters, which have been used to detect changes in cartilage composition and structure in osteoarthritis. Deep learning (DL)-based methods for quantification mapping in MRF overcome the memory constraints and offer faster processing compared to the conventional dictionary matching (DM) method. However, limited attention has been given to the fine-tuning of neural networks (NNs) in DL and fair comparison with DM. In this study, we investigate the impact of training parameter choices on NN performance and compare the fine-tuned NN with DM for multiparametric mapping in MRF. Our approach includes optimizing NN hyperparameters, analyzing the singular value decomposition (SVD) components of MRF data, and optimization of the DM method. We conducted experiments on synthetic data, the NIST/ISMRM MRI system phantom with ground truth, and in vivo knee data from 14 healthy volunteers. The results demonstrate the critical importance of selecting appropriate training parameters, as these significantly affect NN performance. The findings also show that NNs improve the accuracy and robustness of T, T, and T mappings compared to DM in synthetic datasets. For in vivo knee data, the NN achieved comparable results for T, with slightly lower T and slightly higher T measurements compared to DM. In conclusion, the fine-tuned NN can be used to increase accuracy and robustness for multiparametric quantitative mapping from MRF of the knee joint.
磁共振指纹识别(MRF)作为一种新兴的通用且无创的成像技术,可同时对多个定量MRI参数进行量化,这些参数已被用于检测骨关节炎中软骨成分和结构的变化。与传统的字典匹配(DM)方法相比,基于深度学习(DL)的MRF定量映射方法克服了内存限制并提供了更快的处理速度。然而,对于DL中神经网络(NN)的微调以及与DM的公平比较,人们关注较少。在本研究中,我们研究了训练参数选择对NN性能的影响,并将微调后的NN与DM用于MRF中的多参数映射进行比较。我们的方法包括优化NN超参数、分析MRF数据的奇异值分解(SVD)成分以及优化DM方法。我们对合成数据、具有真实数据的NIST/ISMRM MRI系统体模以及来自14名健康志愿者的体内膝关节数据进行了实验。结果表明选择合适的训练参数至关重要,因为这些参数会显著影响NN性能。研究结果还表明,在合成数据集中,与DM相比,NN提高了T1、T2和T2映射的准确性和鲁棒性。对于体内膝关节数据,NN在T1测量方面取得了可比的结果,与DM相比,T2测量略低,T2测量略高。总之,微调后的NN可用于提高膝关节MRF多参数定量映射的准确性和鲁棒性。