Microstructure Fingerprinting for Heterogeneously Oriented Tissue Microenvironments.

Khoi Minh Huynh, Ye Wu, Sahar Ahmad, Pew-Thian Yap
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Abstract

Most diffusion biophysical models capture basic properties of tissue microstructure, such as diffusivity and anisotropy. More realistic models that relate the diffusion-weighted signal to cell size and membrane permeability often require simplifying assumptions such as short gradient pulse and Gaussian phase distribution, leading to tissue features that are not necessarily quantitative. Here, we propose a method to quantify tissue microstructure without jeopardizing accuracy owing to unrealistic assumptions. Our method utilizes realistic signals simulated from the geometries of cellular microenvironments as fingerprints, which are then employed in a spherical mean estimation framework to disentangle the effects of orientation dispersion from microscopic tissue properties. We demonstrate the efficacy of microstructure fingerprinting in estimating intra-cellular, extra-cellular, and intra-soma volume fractions as well as axon radius, soma radius, and membrane permeability.

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用于异构定向组织微环境的微结构指纹识别技术
大多数扩散生物物理模型都能捕捉组织微观结构的基本特性,如扩散性和各向异性。更现实的模型将扩散加权信号与细胞大小和膜通透性联系起来,往往需要简化假设,如短梯度脉冲和高斯相位分布,从而导致组织特征不一定是定量的。在此,我们提出了一种量化组织微观结构的方法,而不会因为不切实际的假设而影响准确性。我们的方法利用从细胞微环境的几何形状模拟出的真实信号作为指纹,然后将其应用于球面均值估计框架,从而将取向分散的影响与微观组织特性区分开来。我们展示了微观结构指纹法在估算细胞内、细胞外和浆膜内体积分数以及轴突半径、浆膜半径和膜通透性方面的功效。
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