The Mind Research Network, Albuquerque, New Mexico, USA.
Brain Connect. 2011;1(2):133-45. doi: 10.1089/brain.2011.0015.
A multivariate source-based morphometry (SBM) method for processing fractional anisotropy (FA) data is presented. SBM utilizes independent component analysis (ICA) and decomposes an FA image into spatial maps and loading coefficients. The loading coefficients represent the relative degree each component contributes to a given subject's FA map. We hypothesized that SBM analysis on a large dataset of age- and gender-matched patients with schizophrenia (n=65, ages 18-60 years) and healthy controls (n=102, ages 18-60 years) would show a similar, specific pattern of frontal and temporal group differences as a recent voxel-based morphometry meta-analysis. Two approaches using (a) the loading coefficients obtained from the ICA analysis and, alternatively, (b) the weighted mean FA values obtained from the ICA-defined clusters were compared for group analysis. Six of the 10 selected components had significant group differences with the loading coefficients. Each component was composed of several white matter tracts distributed throughout the brain. Nine of the 10 nonartifactual components had significant group differences with the weighted mean FA values. The weighted mean FA values for each ICA spatial map generally had larger effects sizes relative to the loading coefficients. These networks were consistent with regions identified in previous voxel-based studies of schizophrenia. SBM identified several components that covered disjoint brain regions and multiple white matter tracts that would not have been possible with previous voxel-based univariate techniques. Overall, these results suggest the importance of utilizing multivariate approaches in morphometric studies in schizophrenia.
提出了一种用于处理分数各向异性(FA)数据的多元源基形态计量学(SBM)方法。SBM 利用独立成分分析(ICA)将 FA 图像分解为空间图谱和加载系数。加载系数表示每个成分对给定受试者 FA 图谱的相对贡献程度。我们假设,对一组年龄和性别匹配的精神分裂症患者(n=65,年龄 18-60 岁)和健康对照者(n=102,年龄 18-60 岁)的大型数据集进行 SBM 分析,会显示出与最近的基于体素形态计量学元分析相似的、特定的额颞组间差异模式。使用(a)从 ICA 分析中获得的加载系数和(b)从 ICA 定义的聚类中获得的加权平均 FA 值的两种方法,对组间分析进行了比较。十个选定的成分中的六个有显著的组间差异,这些差异与加载系数有关。每个成分由分布在整个大脑中的几个白质束组成。十个非人工制品成分中的九个有显著的组间差异,这些差异与加权平均 FA 值有关。每个 ICA 空间图谱的加权平均 FA 值通常比加载系数具有更大的效应大小。这些网络与精神分裂症的基于体素研究中确定的区域一致。SBM 确定了几个覆盖不相交脑区和多个白质束的成分,这是以前基于体素的单变量技术不可能实现的。总的来说,这些结果表明在精神分裂症的形态计量学研究中,利用多元方法的重要性。