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灰质中的高级扩散成像反映了老年人认知能力的个体差异。

Advanced diffusion imaging in grey matter reflects individual differences in cognitive ability in older adults.

作者信息

Kimbler Adam, Stark Craig El

机构信息

Department of Neurobiology and Behavior, University of California, Irvine, California 92697, United States.

出版信息

bioRxiv. 2025 May 30:2025.05.26.656181. doi: 10.1101/2025.05.26.656181.

Abstract

Diffusion Weighted Imaging is a tool that can non-invasively provide insights into the microstructure of a given brain region. Various advanced techniques exist within the diffusion weighted imaging space that each provide valuable insights into different aspects of microstructure. In the following study, we sought to examine whether the combination of derived diffusion metrics (tensors, neurite orientation dispersion and density imaging (NODDI), and mean apparent propagator (MAP) MRI) in grey-matter regions could reliably predict cognitive performance in older adults, and whether these findings were replicable across datasets. First, we demonstrated that all combinations of diffusion metrics could reliably determine participant characteristics and were significant predictors of age. Second, we found that a combination of Tensor, NODDI, and MAP-MRI metrics within the hippocampus could predict RAVLT performance in older adults above and beyond any combination of two metrics alone. We also found these diffusion metrics were able to reliably predict RAVLT performance, but not Trails B or Digit Symbol Substitution Task performance. We also found that these same combinations of metrics could predict working memory performance, but not memory performance within a region associated with working memory (Brodmann Areas 9 and 46). Taken together, these findings indicate that these diffusion metrics provide valuable information on grey-matter microstructure independent of one another, and that the ability to obtain both NODDI and MAP-MRI based information from multi-shell diffusion scans more than justifies the added length.

摘要

扩散加权成像(Diffusion Weighted Imaging)是一种能够非侵入性地洞察给定脑区微观结构的工具。在扩散加权成像领域存在各种先进技术,每种技术都能为微观结构的不同方面提供有价值的见解。在以下研究中,我们试图检验灰质区域中衍生扩散指标(张量、神经突方向离散度和密度成像(NODDI)以及平均表观传播子(MAP)磁共振成像)的组合是否能够可靠地预测老年人的认知表现,以及这些发现是否能在不同数据集中重复。首先,我们证明扩散指标的所有组合都能可靠地确定参与者特征,并且是年龄的显著预测指标。其次,我们发现海马体内张量、NODDI和MAP磁共振成像指标的组合能够预测老年人的雷伊听觉词语学习测验(RAVLT)表现,其预测能力超过任何仅由两个指标组成的组合。我们还发现这些扩散指标能够可靠地预测RAVLT表现,但不能预测连线测验B或数字符号替换任务的表现。我们还发现这些相同的指标组合能够预测工作记忆表现,但不能预测与工作记忆相关区域(布罗德曼区9和46)内的记忆表现。综上所述,这些发现表明这些扩散指标彼此独立地提供了关于灰质微观结构的有价值信息,并且从多壳层扩散扫描中获取基于NODDI和MAP磁共振成像的信息的能力完全证明了扫描时间增加的合理性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a209/12154933/222585b81794/nihpp-2025.05.26.656181v1-f0001.jpg

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