首页> 外文期刊>Neuroscience: An International Journal under the Editorial Direction of IBRO >Longitudinal Reproducibility of Neurite Orientation Dispersion and Density Imaging (NODDI) Derived Metrics in the White Matter
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Longitudinal Reproducibility of Neurite Orientation Dispersion and Density Imaging (NODDI) Derived Metrics in the White Matter

机译:白质取向分散和密度成像(Noddi)衍生度量的纵向再现性

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Diffusion-weighted magnetic resonance imaging (DWI) is undergoing constant evolution with the ambitious goal of developing in-vivo histology of the brain. A recent methodological advancement is Neurite Orientation Dispersion and Density Imaging (NODDI), a histologically validated multi-compartment model to yield microstructural features of brain tissue such as geometric complexity and neurite packing density, which are especially useful in imaging the white matter. Since NODDI is increasingly popular in clinical research and fields such as developmental neuroscience and neuroplasticity, it is of vast importance to characterize its reproducibility (or reliability). We acquired multi-shell DWI data in 29 healthy young subjects twice over a rescan interval of 4 weeks to assess the within-subject coefficient of variation (CVws), between-subject coefficient of variation (CVBS) and the intraclass correlation coefficient (ICC), respectively. Using these metrics, we compared regional and voxel-by-voxel reproducibility of the most common image analysis approaches (tract-based spatial statistics [TBSS], voxel-based analysis with different extents of smoothing ["VBM-style"], ROI-based analysis). We observed high test-retest reproducibility for the orientation dispersion index (ODI) and slightly worse results for the neurite density index (NDI). Our findings also suggest that the choice of analysis approach might have significant consequences for the results of a study. Collectively, the voxel-based approach with Gaussian smoothing kernels of >= 4 mm FWHM and ROI-averaging yielded the highest reproducibility across NDI and ODI maps (CV ws mostly = 0.8), respectively, whilst smaller kernels and TBSS performed consistently worse. Furthermore, we demonstrate that image quality (signal-to-noise ratio [SNR]) is an important determinant of NODDI metric reproducibility. We discuss the implications of these results for longitudinal and cross-sectional research designs commonly employed in the neuroimaging field. (C) 2021 IBRO. Published by Elsevier Ltd. All rights reserved.
机译:弥散加权磁共振成像(DWI)正在不断发展,其雄心勃勃的目标是发展大脑的活体组织学。最近的一项方法学进展是神经轴突方向分散和密度成像(NODDI),这是一种经组织学验证的多室模型,可产生脑组织的微观结构特征,如几何复杂性和神经轴突堆积密度,尤其适用于白质成像。由于NODDI在临床研究和发展性神经科学和神经可塑性等领域越来越受欢迎,因此对其再现性(或可靠性)进行表征非常重要。我们在4周的重新扫描间隔内,对29名健康年轻受试者进行了两次多壳层DWI数据采集,以分别评估受试者内变异系数(CVws)、受试者间变异系数(CVBS)和组内相关系数(ICC)。利用这些指标,我们比较了最常见的图像分析方法(基于轨迹的空间统计[TBS],基于体素的分析,具有不同平滑程度[“VBM风格”],基于ROI的分析)的区域和逐体素再现性。我们观察到定向分散指数(ODI)的重测重复性很高,而轴突密度指数(NDI)的结果稍差。我们的研究结果还表明,分析方法的选择可能会对研究结果产生重大影响。总的来说,基于体素的方法(高斯平滑核的半高宽大于等于4mm,ROI平均值大于等于4mm)在NDI和ODI地图上分别产生了最高的再现性(CV ws大多=0.8),而较小的核和TBS表现一直较差。此外,我们还证明了图像质量(信噪比[SNR])是NODDI度量再现性的重要决定因素。我们讨论了这些结果对神经成像领域常用的纵向和横向研究设计的影响。(c)2021 IBRO。爱思唯尔有限公司出版。版权所有。

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