Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, the Netherlands.
Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, the Netherlands.
Neuroimage. 2020 Nov 1;221:117159. doi: 10.1016/j.neuroimage.2020.117159. Epub 2020 Jul 11.
Myelin water fraction (MWF) mapping based on data fitting of a 3-pool exponential model of multi-echo gradient echo (mGRE) data using MRI shows great promises for in vivo myelin quantification. However, this multi-exponential fitting is ill-conditioned because of the similar relaxation times and frequency shifts of the various compartments. Additionally, the bound water residing in the myelin sheath of white matter is expected to have a faster longitudinal magnetisation recovery than that of the free water in the intra-axonal and extra-axonal space. When the Ernst angle is used to achieve maximum SNR and improve fitting, this will introduce a T-weighting effect to the derived MWF. In this study, we first demonstrate that diffusion-weighted imaging can be used to infer the compartmental signal properties using an analytical fibre model to achieve a robust MWF estimation. Second, we show that by incorporating a variable flip angle scheme to the mGRE acquisition with a multi-compartment relaxometry model, not only the MWF is corrected from the T dependency but also the fitting procedure becomes less ill-conditioned and more SNR efficient. Finally, we demonstrate these two approaches can be combined to allow higher spatial resolution MWF maps than what has been reported to date with robust MWF estimation on a small cohort.
基于多回波梯度回波(mGRE)数据的三池指数模型对数据进行拟合的髓鞘水分数(MWF)图,为体内髓鞘定量显示出巨大的应用潜力。然而,由于各腔室的弛豫时间和频移相似,这种多指数拟合条件不佳。此外,预计位于白质髓鞘中的结合水的纵向磁化恢复速度比轴内和轴外空间中的游离水快。当使用 Ernst 角获得最大 SNR 并改善拟合时,这将对衍生的 MWF 产生 T 加权效应。在这项研究中,我们首先证明扩散加权成像可以通过分析纤维模型来推断腔室信号特性,从而实现稳健的 MWF 估计。其次,我们表明,通过将可变翻转角方案与多腔室弛豫测量模型相结合,可以不仅校正 MWF 对 T 依赖性,而且还使拟合过程的条件数更差,对 SNR 的效率更高。最后,我们证明这两种方法可以结合使用,以在小队列中实现比以往报道的更高的空间分辨率 MWF 图,同时具有稳健的 MWF 估计。