Linking microscopy to diffusion MRI with degenerate biophysical models: An application of the Bayesian EstimatioN of CHange (BENCH) framework.

Imaging neuroscience (Cambridge, Mass.) Pub Date : 2025-07-24 eCollection Date: 2025-01-01 DOI:10.1162/IMAG.a.85
Daniel Z L Kor, Hossein Rafipoor, Istvan N Huszar, Adele Smart, Greg Daubney, Saad Jbabdi, Michiel Cottaar, Karla L Miller, Amy F D Howard
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Abstract

Biophysical modelling of diffusion MRI (dMRI) is used to non-invasively estimate microstructural features of tissue, particularly in the brain. However, meaningful description of tissue requires many unknown parameters, resulting in a model that is often ill-posed. The Bayesian EstimatioN of CHange (BENCH) framework was specifically designed to circumvent parameter fitting for ill-conditioned models when one is simply interested in interpreting signal changes related to some variable of interest. To understand the biological underpinning of some observed change in MR signal between different conditions, BENCH predicts which model parameter, or combination of parameters, best explains the observed change, without having to invert the model. BENCH has been previously used to identify which biophysical parameters could explain group-wise dMRI signal differences (e.g., patients vs. controls); here, we adapt BENCH to interpret dMRI signal changes related to continuous variables. We investigate how parameters from the dMRI standard model of white matter, with an additional sphere compartment to represent glial cell bodies, relate to tissue microstructure quantified from histology. We validate BENCH using synthetic dMRI data from numerical simulations. We then apply it to ex-vivo macaque brain data with dMRI and microscopy metrics of glial density, axonal density, and axonal dispersion in the same brain. We found that (i) increases in myelin density are primarily associated with an increased intra-axonal volume fraction and (ii) changes in the orientation dispersion derived from myelin microscopy are linked to variations in the orientation dispersion index. Finally, we found that the dMRI signal is sensitive to changes in glial cell load in the brain white matter, though no single parameter in the extended standard model was able to explain this observed signal change.

将显微镜与扩散MRI与退化生物物理模型联系起来:贝叶斯变化估计(BENCH)框架的应用。
生物物理模型的扩散MRI (dMRI)用于无创估计组织的微观结构特征,特别是在大脑中。然而,有意义的组织描述需要许多未知参数,导致模型往往是病态的。贝叶斯变化估计(BENCH)框架是专门设计的,当人们仅仅对解释与某些感兴趣的变量相关的信号变化感兴趣时,可以规避对病态模型的参数拟合。为了理解在不同条件下观察到的MR信号变化的生物学基础,BENCH预测哪个模型参数或参数组合最能解释观察到的变化,而不必反转模型。BENCH先前已用于确定哪些生物物理参数可以解释组间dMRI信号差异(例如,患者与对照组);在这里,我们采用BENCH来解释与连续变量相关的dMRI信号变化。我们研究了白质的dMRI标准模型的参数如何与组织学量化的组织微观结构相关,该模型带有一个额外的球体室来代表胶质细胞体。我们使用数值模拟的合成dMRI数据验证了BENCH。然后,我们将其应用于离体猕猴的大脑数据,通过dMRI和显微镜测量同一大脑中的神经胶质密度、轴突密度和轴突离散度。我们发现(i)髓磷脂密度的增加主要与轴突内体积分数的增加有关,(ii)髓磷脂显微镜得出的取向弥散的变化与取向弥散指数的变化有关。最后,我们发现dMRI信号对脑白质中胶质细胞负荷的变化很敏感,尽管扩展标准模型中没有单一参数能够解释这种观察到的信号变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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