Department of Neurology, UMC Utrecht Brain Center, University Medical Center Utrecht, Utrecht, the Netherlands; PROVIDI Lab, Image Sciences Institute, University Medical Center Utrecht, Utrecht, the Netherlands.
Brigham and Women's Hospital, Harvard Medical School, Boston, MA, United States.
Neuroimage. 2022 Oct 1;259:119439. doi: 10.1016/j.neuroimage.2022.119439. Epub 2022 Jul 3.
Quantification methods based on the acquisition of diffusion magnetic resonance imaging (dMRI) with multiple diffusion weightings (e.g., multi-shell) are becoming increasingly applied to study the in-vivo brain. Compared to single-shell data for diffusion tensor imaging (DTI), multi-shell data allows to apply more complex models such as diffusion kurtosis imaging (DKI), which attempts to capture both diffusion hindrance and restriction effects, or biophysical models such as NODDI, which attempt to increase specificity by separating biophysical components. Because of the strong dependence of the dMRI signal on the measurement hardware, DKI and NODDI metrics show scanner and site differences, much like other dMRI metrics. These effects limit the implementation of multi-shell approaches in multicenter studies, which are needed to collect large sample sizes for robust analyses. Recently, a post-processing technique based on rotation invariant spherical harmonics (RISH) features was introduced to mitigate cross-scanner differences in DTI metrics. Unlike statistical harmonization methods, which require repeated application to every dMRI metric of choice, RISH harmonization is applied once on the raw data, and can be followed by any analysis. RISH features harmonization has been tested on DTI features but not its generalizability to harmonize multi-shell dMRI. In this work, we investigated whether performing the RISH features harmonization of multi-shell dMRI data removes cross-site differences in DKI and NODDI metrics while retaining longitudinal effects. To this end, 46 subjects underwent a longitudinal (up to 3 time points) two-shell dMRI protocol at 3 imaging sites. DKI and NODDI metrics were derived before and after harmonization and compared both at the whole brain level and at the voxel level. Then, the harmonization effects on cross-sectional and on longitudinal group differences were evaluated. RISH features averaged for each of the 3 sites exhibited prominent between-site differences in the frontal and posterior part of the brain. Statistically significant differences in fractional anisotropy, mean diffusivity and mean kurtosis were observed both at the whole brain and voxel level between all the acquisition sites before harmonization, but not after. The RISH method also proved effective to harmonize NODDI metrics, particularly in white matter. The RISH based harmonization maintained the magnitude and variance of longitudinal changes as compared to the non-harmonized data of all considered metrics. In conclusion, the application of RISH feature based harmonization to multi-shell dMRI data can be used to remove cross-site differences in DKI metrics and NODDI analyses, while retaining inherent relations between longitudinal acquisitions.
基于获取具有多个扩散权重(例如多壳)的扩散磁共振成像(dMRI)的量化方法越来越多地应用于研究活体大脑。与用于扩散张量成像(DTI)的单壳数据相比,多壳数据允许应用更复杂的模型,例如扩散峰度成像(DKI),该模型试图捕获扩散障碍和限制效应,或生物物理模型,如 NODDI,其试图通过分离生物物理成分来提高特异性。由于 dMRI 信号对测量硬件的强烈依赖,DKI 和 NODDI 指标显示出扫描仪和站点之间的差异,就像其他 dMRI 指标一样。这些效应限制了多壳方法在多中心研究中的实施,多中心研究需要收集大量样本以进行稳健分析。最近,引入了一种基于旋转不变球谐函数(RISH)特征的后处理技术,以减轻 DTI 指标在扫描仪之间的差异。与需要对所选每个 dMRI 指标重复应用的统计协调方法不同,RISH 协调仅在原始数据上应用一次,并且可以紧随其后进行任何分析。RISH 特征协调已在 DTI 特征上进行了测试,但尚未将其推广到协调多壳 dMRI。在这项工作中,我们研究了在保留纵向效应的同时,对多壳 dMRI 数据执行 RISH 特征协调是否可以消除 DKI 和 NODDI 指标中的跨站点差异。为此,46 名受试者在 3 个成像部位进行了纵向(最多 3 个时间点)双壳 dMRI 方案。在协调前后从 DKI 和 NODDI 指标中得出,并在全脑水平和体素水平上进行了比较。然后,评估了协调对横截面和纵向组差异的影响。在 RISH 特征平均为每个 3 个站点中,在前脑和后脑部分都表现出明显的站点间差异。在协调之前,在整个大脑和体素水平上,所有采集站点之间的各向异性分数、平均扩散系数和平均峰度都存在统计学上的显著差异,但在协调之后则没有。RISH 方法还证明在协调 NODDI 指标方面非常有效,尤其是在白质中。与所有考虑的指标的未协调数据相比,RISH 基于协调的方法保留了纵向变化的幅度和方差。总之,将基于 RISH 特征的协调应用于多壳 dMRI 数据可用于消除 DKI 指标和 NODDI 分析中的站点间差异,同时保留纵向采集之间的固有关系。