神经成像中的累积序列几何。

ArXiv Pub Date : 2024-09-04
Santiago Coelho, Filip Szczepankiewicz, Els Fieremans, Dmitry S Novikov
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引用次数: 0

摘要

水的扩散使扩散磁共振成像(dMRI)对细胞级组织结构具有微米级的敏感性。精准医疗和定量成像的出现取决于能否揭示 dMRI 的信息内容,并提供其与基础和硬件无关的 "指纹"。在这里,我们揭示了多维 dMRI 信号的几何结构,根据旋转组的不可还原表示对扩散和协方差张量的所有 21 个不变量进行了分类,并将它们与组织特性联系起来。以前研究过的 dMRI 对比度通过 7 个变量表达,而其余 14 个变量则提供了新的补充信息。我们设计了基于二十面体顶点的采集,保证测量次数最少,只需 1-2 分钟就能确定全脑最常用的 3-4 个不变式。通过具有确定对称性的标量不变量图来表示 dMRI 信号,将为大脑病理、发育和衰老的机器学习分类器提供支持,而快速协议将使先进的 dMRI 能够转化为临床实践。
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Geometry of the cumulant series in neuroimaging.

Water diffusion gives rise to micrometer-scale sensitivity of diffusion MRI (dMRI) to cellular-level tissue structure. The advent of precision medicine and quantitative imaging hinges on revealing the information content of dMRI, and providing its parsimonious basis- and hardware-independent "fingerprint". Here we reveal the geometry of a multi-dimensional dMRI signal, classify all 21 invariants of diffusion and covariance tensors in terms of irreducible representations of the group of rotations, and relate them to tissue properties. Previously studied dMRI contrasts are expressed via 7 invariants, while the remaining 14 provide novel complementary information. We design acquisitions based on icosahedral vertices guaranteeing minimal number of measurements to determine 3-4 most used invariants in only 1-2 minutes for the whole brain. Representing dMRI signals via scalar invariant maps with definite symmetries will underpin machine learning classifiers of brain pathology, development, and aging, while fast protocols will enable translation of advanced dMRI into clinical practice.

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