Physikalisch-Technische Bundesanstalt, Abbestraße 2-12, D-10587 Berlin, Germany.
Department of Radiology, Center for Biomedical Imaging, New York University School of Medicine, New York, United States of America.
Phys Med Biol. 2021 Mar 23;66(7). doi: 10.1088/1361-6560/abeae7.
Magnetic Resonance Fingerprinting (MRF) is a promising technique for fast quantitative imaging of human tissue. In general, MRF is based on a sequence of highly undersampled MR images which are analyzed with a pre-computed dictionary. MRF provides valuable diagnostic parameters such as theandMR relaxation times. However, uncertainty characterization of dictionary-based MRF estimates forandhas not been achieved so far, which makes it challenging to assess if observed differences in these estimates are significant and may indicate pathological changes of the underlying tissue. We propose a Bayesian approach for the uncertainty quantification of dictionary-based MRF which leads to probability distributions forandin every voxel. The distributions can be used to make probability statements about the relaxation times, and to assign uncertainties to their dictionary-based MRF estimates. All uncertainty calculations are based on the pre-computed dictionary and the observed sequence of undersampled MR images, and they can be calculated in short time. The approach is explored by analyzing MRF measurements of a phantom consisting of several tubes across which MR relaxation times are constant. The proposed uncertainty quantification is quantitatively consistent with the observed within-tube variability of estimated relaxation times. Furthermore, calculated uncertainties are shown to characterize well observed differences between the MRF estimates and the results obtained from high-accurate reference measurements. These findings indicate that a reliable uncertainty quantification is achieved. We also present results for simulated MRF data and an uncertainty quantification for anMRF measurement. MATLABsource code implementing the proposed approach is made available.
磁共振指纹成像(MRF)是一种快速定量人体组织成像的有前途的技术。一般来说,MRF 基于一系列高度欠采样的 MR 图像,这些图像通过预计算的字典进行分析。MRF 提供了有价值的诊断参数,如和MR 弛豫时间。然而,到目前为止,还没有实现基于字典的 MRF 估计的不确定性特征描述,这使得评估这些估计中的观察到的差异是否显著并可能表明潜在组织的病理变化具有挑战性。我们提出了一种基于贝叶斯的方法来量化基于字典的 MRF 的不确定性,从而在每个体素中为和产生概率分布。这些分布可用于对弛豫时间做出概率陈述,并为基于字典的 MRF 估计分配不确定性。所有不确定性计算都是基于预计算的字典和观察到的欠采样 MR 图像序列进行的,可以在短时间内计算。该方法通过分析由几个穿过 MR 弛豫时间恒定的管的幻影的 MRF 测量来探索。所提出的不确定性量化与估计弛豫时间的管内可变性的观察结果具有定量一致性。此外,计算出的不确定性很好地描述了 MRF 估计值与高精度参考测量结果之间的观察到的差异。这些发现表明实现了可靠的不确定性量化。我们还展示了模拟 MRF 数据的结果以及 MRF 测量的不确定性量化。实现所提出方法的 MATLAB 源代码可用。