Protas Hillary, Ghisays Valentina, Goradia Dhruman D, Bauer Robert, Devadas Vivek, Chen Kewei, Reiman Eric M, Su Yi
Banner Alzheimer's Institute, Phoenix, AZ, United States.
Arizona Alzheimer's Consortium, Phoenix, AZ, United States.
Front Neurosci. 2023 Mar 2;17:1089134. doi: 10.3389/fnins.2023.1089134. eCollection 2023.
Tau PET imaging has emerged as an important tool to detect and monitor tangle burden in vivo in the study of Alzheimer's disease (AD). Previous studies demonstrated the association of tau burden with cognitive decline in probable AD cohorts. This study introduces a novel approach to analyze tau PET data by constructing individualized tau network structure and deriving its graph theory-based measures. We hypothesize that the network- based measures are a measure of the total tau load and the stage through disease.
Using tau PET data from the AD Neuroimaging Initiative from 369 participants, we determine the network measures, global efficiency, global strength, and limbic strength, and compare with two regional measures entorhinal and tau composite SUVR, in the ability to differentiate, cognitively unimpaired (CU), MCI and AD. We also investigate the correlation of these network and regional measures and a measure of memory performance, auditory verbal learning test for long-term recall memory (AVLT-LTM). Finally, we determine the stages based on global efficiency and limbic strength using conditional inference trees and compare with Braak staging.
We demonstrate that the derived network measures are able to differentiate three clinical stages of AD, CU, MCI, and AD. We also demonstrate that these network measures are strongly correlated with memory performance overall. Unlike regional tau measurements, the tau network measures were significantly associated with AVLT-LTM even in cognitively unimpaired individuals. Stages determined from global efficiency and limbic strength, visually resembled Braak staging.
The strong correlations with memory particularly in CU suggest the proposed technique may be used to characterize subtle early tau accumulation. Further investigation is ongoing to examine this technique in a longitudinal setting.
在阿尔茨海默病(AD)研究中,Tau正电子发射断层扫描(PET)成像已成为一种在体内检测和监测缠结负担的重要工具。先前的研究表明,在可能患有AD的队列中,tau负担与认知衰退有关。本研究引入了一种新方法,通过构建个性化的tau网络结构并推导基于图论的测量指标来分析tau PET数据。我们假设基于网络的测量指标是总tau负荷和疾病阶段的一种度量。
使用来自阿尔茨海默病神经影像学计划的369名参与者的tau PET数据,我们确定网络测量指标、全局效率、全局强度和边缘强度,并将其与两种区域测量指标——内嗅皮质和tau复合标准化摄取值比(SUVR)——在区分认知未受损(CU)、轻度认知障碍(MCI)和AD的能力方面进行比较。我们还研究了这些网络和区域测量指标与一种记忆表现测量指标——用于长期回忆记忆的听觉词语学习测试(AVLT-LTM)——之间的相关性。最后,我们使用条件推断树根据全局效率和边缘强度确定阶段,并与Braak分期进行比较。
我们证明,推导得出的网络测量指标能够区分AD、CU、MCI这三个临床阶段。我们还证明,这些网络测量指标总体上与记忆表现密切相关。与区域tau测量不同,即使在认知未受损的个体中,tau网络测量指标也与AVLT-LTM显著相关。根据全局效率和边缘强度确定的阶段在视觉上类似于Braak分期。
特别是在CU中与记忆的强相关性表明,所提出的技术可能用于表征早期细微的tau积累。正在进行进一步研究以在纵向环境中检验该技术。