Local response function estimation in spherical deconvolution for comprehensive tissue representation using diffusion MRI.

Imaging neuroscience (Cambridge, Mass.) Pub Date : 2025-08-01 eCollection Date: 2025-01-01 DOI:10.1162/IMAG.a.95
Siebe Leysen, Ahmed Radwan, Frederik Maes, Stefan Sunaert, Daan Christiaens
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Abstract

Diffusion MRI (dMRI) plays a crucial role in studying tissue microstructure and fibre orientation. Due to the intricate nature of the dMRI signal, end users require representations that provide a straightforward interpretation. Currently, these representations rely on tissue-average estimations or simplified tissue models and are hence limited in their applicability to pathology. In this study, we propose a novel approach called LoRE-SD-a local response function estimation in spherical deconvolution. LoRE-SD minimises assumptions about tissue microstructure to improve the reconstruction of dMRI data in the presence of pathology. This is achieved by introducing a general signal representation that spans the most common multi-compartment microstructure models used in neuroimaging. Leveraging spherical deconvolution, LoRE-SD provides accurate estimations of the local fibre orientations, allowing tractography in the healthy and pathological brain. We evaluate this approach using simulations and in vivo data from a healthy volunteer and from patients with glioma. Comparing the results quantitatively with the state-of-the-art, we find that LoRE-SD accurately reconstructs fibre orientations across the brain while also significantly improving glioma reconstruction and fibre bundle estimation. Additionally, the tissue representation in LoRE-SD facilitates the generation of various image contrasts, including response function anisotropy and contrasts accentuating intra-axonal, extra-axonal, and free water spaces, which enables a more flexible approach for tractography. In conclusion, LoRE-SD introduces a framework for estimating a data-driven, local representation of tissue microstructure with minimal prior assumptions. This approach provides a new way to represent the human brain, pathology, and other organs using dMRI and opens avenues for defining novel image contrasts, which may benefit tractography.

扩散磁共振成像综合组织表示球面反褶积中的局部响应函数估计。
扩散磁共振成像(dMRI)在研究组织微观结构和纤维取向方面起着至关重要的作用。由于dMRI信号的复杂性,最终用户需要提供直接解释的表示。目前,这些表征依赖于组织平均估计或简化的组织模型,因此在病理学上的适用性有限。在这项研究中,我们提出了一种新的方法,称为lore - sd -一种球面反褶积的局部响应函数估计。LoRE-SD最大限度地减少了对组织微观结构的假设,以改善病理存在下dMRI数据的重建。这是通过引入跨越神经成像中最常见的多室微结构模型的一般信号表示来实现的。利用球形反褶积,LoRE-SD提供了对局部纤维方向的准确估计,允许在健康和病理大脑中进行神经束成像。我们使用模拟和来自健康志愿者和胶质瘤患者的体内数据来评估这种方法。将定量结果与最先进的结果进行比较,我们发现LoRE-SD准确地重建了整个大脑的纤维方向,同时也显著改善了胶质瘤重建和纤维束估计。此外,LoRE-SD中的组织表示有助于生成各种图像对比度,包括响应函数各向异性和突出轴突内、轴突外和自由水空间的对比度,这使得神经束成像方法更加灵活。总之,LoRE-SD引入了一个框架,以最小的先验假设估计数据驱动的组织微观结构的局部表示。这种方法提供了一种使用dMRI来表示人类大脑、病理和其他器官的新方法,并为定义新的图像对比开辟了道路,这可能有利于神经束造影。
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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