Department of Psychiatric Neurophysiology, University Hospital of Psychiatry, University of Bern, Bolligenstrasse 111, 3000, Bern 60, Switzerland,
Brain Topogr. 2013 Oct;26(4):569-80. doi: 10.1007/s10548-013-0280-3. Epub 2013 Mar 19.
Independent component analysis (ICA) or seed based approaches (SBA) in functional magnetic resonance imaging blood oxygenation level dependent (BOLD) data became widely applied tools to identify functionally connected, large scale brain networks. Differences between task conditions as well as specific alterations of the networks in patients as compared to healthy controls were reported. However, BOLD lacks the possibility of quantifying absolute network metabolic activity, which is of particular interest in the case of pathological alterations. In contrast, arterial spin labeling (ASL) techniques allow quantifying absolute cerebral blood flow (CBF) in rest and in task-related conditions. In this study, we explored the ability of identifying networks in ASL data using ICA and to quantify network activity in terms of absolute CBF values. Moreover, we compared the results to SBA and performed a test-retest analysis. Twelve healthy young subjects performed a fingertapping block-design experiment. During the task pseudo-continuous ASL was measured. After CBF quantification the individual datasets were concatenated and subjected to the ICA algorithm. ICA proved capable to identify the somato-motor and the default mode network. Moreover, absolute network CBF within the separate networks during either condition could be quantified. We could demonstrate that using ICA and SBA functional connectivity analysis is feasible and robust in ASL-CBF data. CBF functional connectivity is a novel approach that opens a new strategy to evaluate differences of network activity in terms of absolute network CBF and thus allows quantifying inter-individual differences in the resting state and task-related activations and deactivations.
独立成分分析(ICA)或基于种子的方法(SBA)在功能磁共振成像血氧水平依赖(BOLD)数据中已广泛应用于识别功能连接的大规模脑网络。报告了任务条件之间的差异以及与健康对照相比患者网络的特定改变。然而,BOLD 缺乏量化绝对网络代谢活性的可能性,在病理改变的情况下这是特别感兴趣的。相比之下,动脉自旋标记(ASL)技术允许在休息和任务相关条件下定量绝对脑血流(CBF)。在这项研究中,我们探索了使用 ICA 识别 ASL 数据中网络的能力,并根据绝对 CBF 值量化网络活动。此外,我们将结果与 SBA 进行了比较,并进行了测试-重测分析。12 名健康年轻受试者进行了指尖敲击块设计实验。在任务期间测量了伪连续 ASL。在量化 CBF 后,将各个数据集串联并应用 ICA 算法。ICA 证明能够识别躯体运动和默认模式网络。此外,还可以量化在任何条件下单独网络中的绝对网络 CBF。我们可以证明,在 ASL-CBF 数据中使用 ICA 和 SBA 功能连接分析是可行且稳健的。CBF 功能连接是一种新方法,为评估绝对网络 CBF 方面的网络活动差异开辟了新策略,并允许量化静息状态和任务相关激活和去激活的个体间差异。