Regression models for partially localized fMRI connectivity analyses

Bonnie B. Smith, Yi Zhao, Martin A. Lindquist, Brian Caffo
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Abstract

Background Brain functional connectivity analysis of resting-state functional magnetic resonance imaging (fMRI) data is typically performed in a standardized template space assuming consistency of connections across subjects. Analysis methods can come in the form of one-edge-at-a-time analyses or dimension reduction/decomposition methods. Common to these approaches is an assumption that brain regions are functionally aligned across subjects; however, it is known that this functional alignment assumption is often violated. Methods In this paper, we use subject-level regression models to explain intra-subject variability in connectivity. Covariates can include factors such as geographic distance between two pairs of brain regions, whether the two regions are symmetrically opposite (homotopic), and whether the two regions are members of the same functional network. Additionally, a covariate for each brain region can be included, to account for the possibility that some regions have consistently higher or lower connectivity. This style of analysis allows us to characterize the fraction of variation explained by each type of covariate. Additionally, comparisons across subjects can then be made using the fitted connectivity regression models, offering a more parsimonious alternative to edge-at-a-time approaches. Results We apply our approach to Human Connectome Project data on 268 regions of interest (ROIs), grouped into eight functional networks. We find that a high proportion of variation is explained by region covariates and network membership covariates, while geographic distance and homotopy have high relative importance after adjusting for the number of predictors. We also find that the degree of data repeatability using our connectivity regression model—which uses only partial location information about pairs of ROI's—is comparably as high as the repeatability obtained using full location information. Discussion While our analysis uses data that have been transformed into a common template-space, we also envision the method being useful in multi-atlas registration settings, where subject data remains in its own geometry and templates are warped instead. These results suggest the tantalizing possibility that fMRI connectivity analysis can be performed in subject-space, using less aggressive registration, such as simple affine transformations, multi-atlas subject-space registration, or perhaps even no registration whatsoever.
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部分定位fMRI连通性分析的回归模型
静息状态功能磁共振成像(fMRI)数据的脑功能连通性分析通常在一个标准化的模板空间中进行,假设受试者之间的连接是一致的。分析方法可以是单向分析或降维/分解方法。这些方法的共同点是假设大脑区域在功能上是一致的;然而,众所周知,这种功能一致性假设经常被违反。方法在本文中,我们使用学科水平的回归模型来解释学科内部的连通性变异。协变量可以包括诸如两对大脑区域之间的地理距离,两个区域是否对称相反(同伦)以及两个区域是否属于同一功能网络的成员等因素。此外,每个大脑区域的协变量可以包括在内,以解释某些区域始终具有较高或较低连通性的可能性。这种分析方式使我们能够描述由每种协变量类型解释的变异的比例。此外,可以使用拟合的连通性回归模型进行跨主题的比较,为每次边缘方法提供更节省的替代方案。我们将我们的方法应用于268个感兴趣区域(roi)的人类连接组项目数据,这些区域被分为8个功能网络。我们发现区域协变量和网络隶属度协变量解释了较高比例的变异,而地理距离和同伦在调整预测因子数量后具有较高的相对重要性。我们还发现,使用我们的连通性回归模型(仅使用ROI对的部分位置信息)的数据可重复性程度与使用完整位置信息获得的可重复性相当高。虽然我们的分析使用了转换为公共模板空间的数据,但我们也设想该方法在多地图集注册设置中很有用,其中主题数据保留在其自己的几何形状中,而模板则是扭曲的。这些结果表明了一种诱人的可能性,即fMRI连通性分析可以在主体空间中进行,使用较少的注册,例如简单的仿射变换,多图谱主体空间注册,甚至可能根本不注册。
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