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首页> 外文期刊>NeuroImage >MAPL: Tissue microstructure estimation using Laplacian- regularized MAP-MRI and its application to HCP data
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MAPL: Tissue microstructure estimation using Laplacian- regularized MAP-MRI and its application to HCP data

机译:MAPL:使用LAPLACIAN-Corraredized MAP-MRI的组织微结构估计及其在HCP数据中的应用

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摘要

The recovery of microstructure-related features of the brain's white matter is a current challenge in diffusion MRI. To robustly estimate these important features from multi-shell diffusion MRI data, we propose to analytically regularize the coefficient estimation of the Mean Apparent Propagator (MAP)-MRI method using the norm of the Laplacian of the reconstructed signal. We first compare our approach, which we call MAPL, with competing, state-of-the-art functional basis approaches. We show that it outperforms the original MAP-MRI implementation and the recently proposed modified Spherical Polar Fourier (mSPF) basis with respect to signal fitting and reconstruction of the Ensemble Average Propagator (EAP) and Orientation Distribution Function (ODF) in noisy, sparsely sampled data of a physical phantom with reference gold standard data. Then, to reduce the variance of parameter estimation using multi-compartment tissue models, we propose to use MAPL's signal fitting and extrapolation as a preprocessing step. We study the effect of MAPL on the estimation of axon diameter using a simplified Axcaliber model and axonal dispersion using the Neurite Orientation Dispersion and Density Imaging (NODDI) model. We show the positive effect of using it as a preprocessing step in estimating and reducing the variances of these parameters in the Corpus Callosum of six different subjects of the MGH Human Connectome Project. Finally, we correlate the estimated axon diameter, dispersion and restricted volume fractions with Fractional Anisotropy ( FA) and clearly show that changes in FA significantly correlate with changes in all estimated parameters.
机译:大脑白质的微观结构相关特征的回收是扩散MRI的当前挑战。从多壳扩散MRI数据估计这些重要特征,我们建议分析使用重建信号的拉普拉斯的标准的平均表观传播器(MAP)-MRI方法的系数估计。我们首先比较我们的方法,我们称之为Mapl,竞争,最先进的功能基础方法。我们表明它优于原始地图-MRI实现和最近提出的修改的球形极性傅立叶(MSPF)基础,相对于信号拟合和重建集合平均传播(EAP)和方向分布函数(ODF)在嘈杂,稀疏地采样具有参考金标准数据的物理幻影的数据。然后,为了使用多隔室组织模型来降低参数估计的方差,我们建议使用MaPL的信号拟合和外推作为预处理步骤。我们使用神经沸石取向分散和密度成像(Noddi)模型,研究了MAPL对轴突直径估计轴突直径的影响。我们展示了使用它作为预处理步骤估算和减少MGH人体连接项目的六个不同主题的胼callosum中这些参数的差异的积极效果。最后,我们将估计的轴突直径,分散和限制体积分数与分数各向异性(FA)相关联,并清楚地表明FA的变化与所有估计参数的变化显着相关。

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