Control and Intelligent Processing Center of Excellence (CIPCE), School of Electrical and Computer Engineering, University of Tehran, Tehran 1439957131, Iran.
Magn Reson Imaging. 2011 Nov;29(9):1175-85. doi: 10.1016/j.mri.2011.07.006. Epub 2011 Aug 27.
Modeling of water diffusion in white matter is useful for revealing microstructure of the brain tissue and hence diagnosis and evaluation of white matter diseases. Researchers have modeled diffusion in white matter using mathematical and mechanical analysis at the cellular level. However, less work has been devoted to evaluate these models using macroscopic real data such as diffusion tensor magnetic resonance imaging (DTMRI) data. DTMRI is a noninvasive tool for evaluating white matter microstructure by measuring random motion of water molecules referred to as diffusion. It reflects directional information of microscopic structures such as fibers. Thus, it is applicable for evaluation and modification of mathematical models of white matter. Nevertheless, a realistic relation between a fiber model and imaging data does not exist. This work opens a promising avenue for relating DTMRI data to microstructural parameters of white matter. First, we propose a strategy for relating DTMRI and fiber model parameters to evaluate mathematical models in light of real data. The proposed strategy is then applied to evaluate and extend an existing model of white matter based on clinically available DTMRI data. Next, the proposed strategy is used to estimate microstructural characteristics of fiber tracts. We illustrate this approach through its application to approximation of myelin sheath thickness and fraction of volume occupied by fibers. Using sufficiently small imaging voxels, the proposed approach is capable of estimating model parameters with desirable precision.
对脑白质水分子扩散的建模有助于揭示脑组织的微观结构,从而辅助对脑白质疾病的诊断和评估。研究人员已采用细胞水平的数学和力学分析方法对白质中的扩散进行建模。然而,使用宏观真实数据(如扩散张量磁共振成像(DTMRI)数据)来评估这些模型的工作却较少。DTMRI 是一种非侵入性工具,通过测量水分子的随机运动(即扩散)来评估白质的微观结构。它反映了纤维等微观结构的方向信息。因此,它适用于评估和修改白质的纤维模型。然而,纤维模型与成像数据之间并不存在真实的关系。这项工作为将 DTMRI 数据与白质的微观结构参数联系起来开辟了一条有前景的途径。首先,我们提出了一种将 DTMRI 和纤维模型参数联系起来以根据真实数据评估数学模型的策略。然后,将该策略应用于评估和扩展基于临床可用 DTMRI 数据的现有白质模型。接下来,该策略用于估计纤维束的微观结构特征。我们通过应用于髓鞘厚度和纤维体积分数的近似值来演示这种方法。通过使用足够小的成像体素,该方法能够以理想的精度估计模型参数。