Department of Neurology, Mayo Clinic, Rochester, Minnesota, United States of America.
PLoS One. 2012;7(6):e39731. doi: 10.1371/journal.pone.0039731. Epub 2012 Jun 28.
Task-free functional magnetic resonance imaging (TF-fMRI) has great potential for advancing the understanding and treatment of neurologic illness. However, as with all measures of neural activity, variability is a hallmark of intrinsic connectivity networks (ICNs) identified by TF-fMRI. This variability has hampered efforts to define a robust metric of connectivity suitable as a biomarker for neurologic illness. We hypothesized that some of this variability rather than representing noise in the measurement process, is related to a fundamental feature of connectivity within ICNs, which is their non-stationary nature. To test this hypothesis, we used a large (n = 892) population-based sample of older subjects to construct a well characterized atlas of 68 functional regions, which were categorized based on independent component analysis network of origin, anatomical locations, and a functional meta-analysis. These regions were then used to construct dynamic graphical representations of brain connectivity within a sliding time window for each subject. This allowed us to demonstrate the non-stationary nature of the brain's modular organization and assign each region to a "meta-modular" group. Using this grouping, we then compared dwell time in strong sub-network configurations of the default mode network (DMN) between 28 subjects with Alzheimer's dementia and 56 cognitively normal elderly subjects matched 1:2 on age, gender, and education. We found that differences in connectivity we and others have previously observed in Alzheimer's disease can be explained by differences in dwell time in DMN sub-network configurations, rather than steady state connectivity magnitude. DMN dwell time in specific modular configurations may also underlie the TF-fMRI findings that have been described in mild cognitive impairment and cognitively normal subjects who are at risk for Alzheimer's dementia.
任务无扰功能磁共振成像 (TF-fMRI) 在深入了解和治疗神经疾病方面具有巨大潜力。然而,与所有神经活动测量方法一样,TF-fMRI 确定的内在连接网络 (ICN) 的变异性是其特征之一。这种变异性阻碍了定义稳健连接度量标准的努力,该标准可作为神经疾病的生物标志物。我们假设,这种变异性的一部分与其说是测量过程中的噪声,不如说是与 ICN 中连接的基本特征有关,即其非平稳性。为了检验这一假设,我们使用了一个大型(n=892)基于人群的老年受试者样本,构建了一个由 68 个功能区域组成的特征良好的图谱,这些区域是根据独立成分分析网络的起源、解剖位置和功能元分析进行分类的。然后,我们使用这些区域为每个受试者在滑动时间窗口内构建大脑连接的动态图形表示。这使我们能够证明大脑模块化组织的非平稳性,并将每个区域分配到“元模块”组。使用这种分组,我们比较了 28 名阿尔茨海默病患者和 56 名认知正常的老年患者在默认模式网络 (DMN) 强子网结构中的停留时间,这些患者在年龄、性别和教育方面以 1:2 匹配。我们发现,我们和其他人以前在阿尔茨海默病中观察到的连接差异可以用 DMN 子网结构中停留时间的差异来解释,而不是稳态连接幅度的差异。特定模块配置中的 DMN 停留时间可能也是 TF-fMRI 在轻度认知障碍和认知正常但有患阿尔茨海默病风险的受试者中发现的结果的基础。