Katanoda Kota, Matsuda Yasumasa, Sugishita Morihiro
Department of Cognitive Neuroscience, Faculty of Medicine, University of Tokyo, 7-3-1 Hongo Bunkyo-ku, Tokyo 113-0033, Japan.
Neuroimage. 2002 Nov;17(3):1415-28. doi: 10.1006/nimg.2002.1209.
The standard method for analyzing functional magnetic resonance imaging (fMRI) data applies the general linear model to the time series of each voxel separately. Such a voxelwise approach, however, does not consider the spatial autocorrelation between neighboring voxels in its model formulation and parameter estimation. We propose a spatio-temporal regression analysis for detecting activation in fMRI data. Its main features are that (1) each voxel has a regression model that involves the time series of the neighboring voxels together with its own, (2) the regression coefficient assigned to the center voxel is estimated so that the time series of these multiple voxels will best fit the model, (3) a generalized least squares (GLS) method was employed instead of the ordinary least squares (OLS) to put intrinsic autocorrelation structures into the model, and (4) the underlying spatial and temporal correlation structures are modeled using a separable model which expresses the combined correlation structures as a product of the two. We evaluated the statistical power of our model in comparison with voxelwise OLS/GLS models and a multivoxel OLS model. Our model's power to detect clustered activation was higher than that of the two voxelwise models and comparable to that of the multivoxel OLS. We examined the usefulness and goodness of fit of our model using real experimental data. Our model successfully detected neural activity in expected brain regions and realized better fit than the other models. These results suggest that our spatio-temporal regression model can serve as a reliable analysis suited for the nature of fMRI data.
分析功能磁共振成像(fMRI)数据的标准方法是将一般线性模型分别应用于每个体素的时间序列。然而,这种基于体素的方法在其模型构建和参数估计中并未考虑相邻体素之间的空间自相关性。我们提出一种用于检测fMRI数据中激活情况的时空回归分析方法。其主要特点包括:(1)每个体素都有一个回归模型,该模型将相邻体素的时间序列与其自身的时间序列结合在一起;(2)对分配给中心体素的回归系数进行估计,以使这些多个体素的时间序列能够最佳拟合该模型;(3)采用广义最小二乘法(GLS)而非普通最小二乘法(OLS),以便将内在自相关结构纳入模型;(4)使用可分离模型对潜在的空间和时间相关结构进行建模,该模型将组合相关结构表示为两者的乘积。我们将我们的模型与基于体素的OLS/GLS模型和多体素OLS模型进行比较,评估了其统计功效。我们模型检测聚类激活的功效高于两个基于体素的模型,与多体素OLS模型相当。我们使用真实实验数据检验了我们模型的实用性和拟合优度。我们的模型成功检测到预期脑区的神经活动,并且比其他模型实现了更好的拟合。这些结果表明,我们的时空回归模型可作为一种适用于fMRI数据特性的可靠分析方法。