Dyrba Martin, Mohammadi Reza, Grothe Michel J, Kirste Thomas, Teipel Stefan J
German Center for Neurodegenerative Diseases (DZNE), Rostock, Germany.
Department of Operation Management, Amsterdam Business School, University of Amsterdam, Amsterdam, Netherlands.
Front Aging Neurosci. 2020 Apr 21;12:99. doi: 10.3389/fnagi.2020.00099. eCollection 2020.
Alzheimer's disease (AD) is characterized by a sequence of pathological changes, which are commonly assessed using various brain imaging modalities such as magnetic resonance imaging (MRI) and positron emission tomography (PET). Currently, the most approaches to analyze statistical associations between regions and imaging modalities rely on Pearson correlation or linear regression models. However, these models are prone to spurious correlations arising from uninformative shared variance and multicollinearity. Notably, there are no appropriate multivariate statistical models available that can easily integrate dozens of multicollinear variables derived from such data, being able to utilize the additional information provided from the combination of data sources. Gaussian graphical models (GGMs) can estimate the conditional dependency from given data, which is conceptually expected to closely reflect the underlying causal relationships between various variables. Hence, we applied GGMs to assess multimodal regional brain alterations in AD. We obtained data from = 972 subjects from the Alzheimer's Disease Neuroimaging Initiative. The mean amyloid load (AV45-PET), glucose metabolism (FDG-PET), and gray matter volume (MRI) were calculated for each of the 108 cortical and subcortical brain regions. GGMs were estimated using a Bayesian framework for the combined multimodal data and the resulted conditional dependency networks were compared to classical covariance networks based on Pearson correlation. Additionally, graph-theoretical network statistics were calculated to determine network alterations associated with disease status. The resulting conditional dependency matrices were much sparser (≈10% density) than Pearson correlation matrices (≈50% density). Within imaging modalities, conditional dependency networks yielded clusters connecting anatomically adjacent regions. For the associations between different modalities, only few region-specific connections were detected. Network measures such as small-world coefficient were significantly altered across diagnostic groups, with a biphasic u-shape trajectory, i.e., increased small-world coefficient in early mild cognitive impairment (MCI), similar values in late MCI, and decreased values in AD dementia patients compared to cognitively normal controls. In conclusion, GGMs removed commonly shared variance among multimodal measures of regional brain alterations in MCI and AD, and yielded sparser matrices compared to correlation networks based on the Pearson coefficient. Therefore, GGMs may be used as alternative to thresholding-approaches typically applied to correlation networks to obtain the most informative relations between variables.
阿尔茨海默病(AD)的特征是一系列病理变化,通常使用各种脑成像方式进行评估,如磁共振成像(MRI)和正电子发射断层扫描(PET)。目前,分析区域与成像方式之间统计关联的大多数方法都依赖于皮尔逊相关性或线性回归模型。然而,这些模型容易受到由无信息共享方差和多重共线性引起的虚假相关性的影响。值得注意的是,目前没有合适的多元统计模型能够轻松整合从这些数据中导出的数十个多重共线变量,并利用数据源组合提供的额外信息。高斯图形模型(GGM)可以从给定数据中估计条件依赖性,从概念上讲,这有望紧密反映各种变量之间潜在的因果关系。因此,我们应用GGM来评估AD中多模态区域脑改变。我们从阿尔茨海默病神经成像倡议中获取了972名受试者的数据。计算了108个皮质和皮质下脑区中每个区域的平均淀粉样蛋白负荷(AV45-PET)、葡萄糖代谢(FDG-PET)和灰质体积(MRI)。使用贝叶斯框架对组合的多模态数据估计GGM,并将得到的条件依赖性网络与基于皮尔逊相关性的经典协方差网络进行比较。此外,计算了图论网络统计量以确定与疾病状态相关的网络改变。得到的条件依赖性矩阵比皮尔逊相关性矩阵稀疏得多(密度约为10%)。在成像方式内,条件依赖性网络产生了连接解剖学上相邻区域的簇。对于不同模态之间的关联,仅检测到少数区域特异性连接。小世界系数等网络指标在不同诊断组之间有显著改变,呈双相u形轨迹,即早期轻度认知障碍(MCI)中小世界系数增加,晚期MCI中值相似,与认知正常对照相比,AD痴呆患者的值降低。总之,GGM消除了MCI和AD中区域脑改变的多模态测量之间通常共享的值,并与基于皮尔逊系数的相关性网络相比产生了更稀疏的矩阵。因此,GGM可以用作通常应用于相关性网络的阈值方法的替代方法,以获得变量之间最具信息性的关系。