Developmental Imaging, Murdoch Children's Research Institute, Melbourne, Victoria, Australia.
Mary MacKillop Institute for Health Research, Faculty of Health Sciences, Australian Catholic University, Melbourne, Victoria, Australia.
Neuroimage. 2021 Nov 1;241:118417. doi: 10.1016/j.neuroimage.2021.118417. Epub 2021 Jul 21.
Diffusion MRI has provided the neuroimaging community with a powerful tool to acquire in-vivo data sensitive to microstructural features of white matter, up to 3 orders of magnitude smaller than typical voxel sizes. The key to extracting such valuable information lies in complex modelling techniques, which form the link between the rich diffusion MRI data and various metrics related to the microstructural organization. Over time, increasingly advanced techniques have been developed, up to the point where some diffusion MRI models can now provide access to properties specific to individual fibre populations in each voxel in the presence of multiple "crossing" fibre pathways. While highly valuable, such fibre-specific information poses unique challenges for typical image processing pipelines and statistical analysis. In this work, we review the "Fixel-Based Analysis" (FBA) framework, which implements bespoke solutions to this end. It has recently seen a stark increase in adoption for studies of both typical (healthy) populations as well as a wide range of clinical populations. We describe the main concepts related to Fixel-Based Analyses, as well as the methods and specific steps involved in a state-of-the-art FBA pipeline, with a focus on providing researchers with practical advice on how to interpret results. We also include an overview of the scope of all current FBA studies, categorized across a broad range of neuro-scientific domains, listing key design choices and summarizing their main results and conclusions. Finally, we critically discuss several aspects and challenges involved with the FBA framework, and outline some directions and future opportunities.
扩散 MRI 为神经影像学领域提供了一种强大的工具,可获取对大脑白质微观结构特征敏感的活体数据,其敏感程度可达典型体素大小的 3 个数量级。提取这些有价值信息的关键在于复杂的建模技术,这些技术是将丰富的扩散 MRI 数据与各种与微观结构组织相关的指标联系起来的桥梁。随着时间的推移,已经开发出越来越先进的技术,甚至有些扩散 MRI 模型现在可以在存在多个“交叉”纤维路径的情况下,提供每个体素中特定于单个纤维群体的属性。虽然这种纤维特异性信息非常有价值,但它为典型的图像处理流水线和统计分析带来了独特的挑战。在这项工作中,我们回顾了“基于体素的分析”(Fixel-Based Analysis,FBA)框架,该框架为此目的实施了定制的解决方案。它最近在研究典型(健康)人群以及广泛的临床人群方面的应用显著增加。我们描述了基于体素的分析的主要概念,以及在最先进的 FBA 流水线中涉及的方法和具体步骤,重点是为研究人员提供有关如何解释结果的实用建议。我们还概述了所有当前 FBA 研究的范围,这些研究分为广泛的神经科学领域,列出了关键的设计选择,并总结了它们的主要结果和结论。最后,我们批判性地讨论了 FBA 框架所涉及的几个方面和挑战,并概述了一些方向和未来的机会。