Rombouts Serge A R B, Damoiseaux Jessica S, Goekoop Rutger, Barkhof Frederik, Scheltens Philip, Smith Stephen M, Beckmann Christian F
Department of Physics & Medical Technology, Alzheimer Center, VU University Medical Center, Amsterdam, The Netherlands.
Hum Brain Mapp. 2009 Jan;30(1):256-66. doi: 10.1002/hbm.20505.
FMRI research in Alzheimer's disease (AD) and mild cognitive impairment (MCI) typically is aimed at determining regional changes in brain function, most commonly by creating a model of the expected BOLD-response and estimating its magnitude using a general linear model (GLM) analysis. This crucially depends on the suitability of the temporal assumptions of the model and on assumptions about normality of group distributions. Exploratory data analysis techniques such as independent component analysis (ICA) do not depend on these assumptions and are able to detect unknown, yet structured spatiotemporal processes in neuroimaging data. Tensorial probabilistic ICA (T-PICA) is a model free technique that can be used for analyzing multiple subjects and groups, extracting signals of interest (components) in the spatial, temporal, and also subject domain of FMRI data. We applied T-PICA and model-based GLM to study FMRI signal during face encoding in 18 AD, 28 MCI patients, and 41 healthy elderly controls. T-PICA showed activation in regions associated with motor, visual, and cognitive processing, and deactivation in the default mode network. Six networks showed a significantly decreased response in patients. For two networks the T-PICA technique was significantly more sensitive to detect group differences than the standard model-based technique. We conclude that T-PICA is a promising tool to identify and detect differences in (de)activated brain networks in elderly controls and dementia patients. The technique is more sensitive than the commonly applied model-based method. Consistent with other research, we show that networks of activation and deactivation show decreased reactivity in dementia.
针对阿尔茨海默病(AD)和轻度认知障碍(MCI)的功能磁共振成像(fMRI)研究通常旨在确定脑功能的区域变化,最常见的方法是创建预期血氧水平依赖(BOLD)反应的模型,并使用一般线性模型(GLM)分析来估计其幅度。这关键取决于模型时间假设的适用性以及关于组分布正态性的假设。诸如独立成分分析(ICA)等探索性数据分析技术不依赖于这些假设,并且能够检测神经成像数据中未知但有结构的时空过程。张量概率ICA(T-PICA)是一种无模型技术,可用于分析多个受试者和组,在fMRI数据的空间、时间以及受试者域中提取感兴趣的信号(成分)。我们应用T-PICA和基于模型的GLM来研究18名AD患者、28名MCI患者和41名健康老年对照在面部编码过程中的fMRI信号。T-PICA显示与运动、视觉和认知处理相关区域的激活,以及默认模式网络的失活。六个网络在患者中显示出显著降低的反应。对于两个网络,T-PICA技术在检测组间差异方面比基于标准模型的技术显著更敏感。我们得出结论,T-PICA是一种有前景的工具,可用于识别和检测老年对照和痴呆患者中(去)激活脑网络的差异。该技术比常用的基于模型的方法更敏感。与其他研究一致,我们表明激活和失活网络在痴呆中显示出反应性降低。