Institute for Clinical Radiology, University of Munich, Munich, Germany.
Neurobiol Aging. 2012 Mar;33(3):466-78. doi: 10.1016/j.neurobiolaging.2010.04.013. Epub 2010 Jun 11.
Functional magnetic resonance imaging (fMRI) of default mode network (DMN) brain activity during resting is recently gaining attention as a potential noninvasive biomarker to diagnose incipient Alzheimer's disease. The aim of this study was to determine which method of data processing provides highest diagnostic power and to define metrics to further optimize the diagnostic value. fMRI was acquired in 21 healthy subjects, 17 subjects with mild cognitive impairment and 15 patients with Alzheimer's disease (AD) and data evaluated both with volumes of interest (VOI)-based signal time course evaluations and independent component analyses (ICA). The first approach determines the amount of DMN region interconnectivity (as expressed with correlation coefficients); the second method determines the magnitude of DMN coactivation. Apolipoprotein E (ApoE) genotyping was available in 41 of the subjects examined. Diagnostic power (expressed as accuracy) of data of a single DMN region in independent component analyses was 64%, that of a single correlation of time courses between 2 DMN regions was 71%, respectively. With multivariate analyses combining both methods of analysis and data from various regions, accuracy could be increased to 97% (sensitivity 100%, specificity 95%). In nondemented subjects, no significant differences in activity within DMN could be detected comparing ApoE ε4 allele carriers and ApoE ε4 allele noncarriers. However, there were some indications that fMRI might yield useful information given a larger sample. Time course correlation analyses seem to outperform independent component analyses in the identification of patients with Alzheimer's disease. However, multivariate analyses combining both methods of analysis by considering the activity of various parts of the DMN as well as the interconnectivity between these regions are required to achieve optimal and clinically acceptable diagnostic power.
静息状态下默认模式网络(DMN)脑活动的功能磁共振成像(fMRI)最近作为诊断早期阿尔茨海默病的潜在无创生物标志物受到关注。本研究旨在确定哪种数据处理方法提供最高的诊断能力,并定义指标以进一步优化诊断价值。在 21 名健康受试者、17 名轻度认知障碍受试者和 15 名阿尔茨海默病(AD)患者中采集 fMRI 数据,并分别使用基于感兴趣区(VOI)的信号时程评估和独立成分分析(ICA)进行评估。第一种方法确定 DMN 区域内连接的数量(用相关系数表示);第二种方法确定 DMN 共激活的程度。在 41 名被检查的受试者中,载脂蛋白 E(ApoE)基因分型可用。在独立成分分析中,单个 DMN 区域的数据诊断能力(以准确率表示)为 64%,2 个 DMN 区域之间的单个时间序列相关性为 71%。通过结合两种分析方法和来自不同区域的数据进行多变量分析,可以将准确率提高到 97%(灵敏度 100%,特异性 95%)。在非痴呆受试者中,比较 ApoE ε4 等位基因携带者和 ApoE ε4 等位基因非携带者,在 DMN 内的活性方面未发现显著差异。然而,有一些迹象表明,在更大的样本量下,fMRI 可能会提供有用的信息。在识别阿尔茨海默病患者方面,时间序列相关性分析似乎优于独立成分分析。然而,需要通过考虑 DMN 各个部分的活动以及这些区域之间的相互连接来结合两种分析方法进行多变量分析,以实现最佳和临床可接受的诊断能力。