Calhoun V D, Adali T, Pearlson G D, Pekar J J
Division of Psychiatric Neuro-Imaging, Johns Hopkins University, Baltimore, Maryland, USA.
Hum Brain Mapp. 2001 May;13(1):43-53. doi: 10.1002/hbm.1024.
Independent component analysis (ICA) is a technique that attempts to separate data into maximally independent groups. Achieving maximal independence in space or time yields two varieties of ICA meaningful for functional MRI (fMRI) applications: spatial ICA (SICA) and temporal ICA (TICA). SICA has so far dominated the application of ICA to fMRI. The objective of these experiments was to study ICA with two predictable components present and evaluate the importance of the underlying independence assumption in the application of ICA. Four novel visual activation paradigms were designed, each consisting of two spatiotemporal components that were either spatially dependent, temporally dependent, both spatially and temporally dependent, or spatially and temporally uncorrelated, respectively. Simulated data were generated and fMRI data from six subjects were acquired using these paradigms. Data from each paradigm were analyzed with regression analysis in order to determine if the signal was occurring as expected. Spatial and temporal ICA were then applied to these data, with the general result that ICA found components only where expected, e.g., S(T)ICA "failed" (i.e., yielded independent components unrelated to the "self-evident" components) for paradigms that were spatially (temporally) dependent, and "worked" otherwise. Regression analysis proved a useful "check" for these data, however strong hypotheses will not always be available, and a strength of ICA is that it can characterize data without making specific modeling assumptions. We report a careful examination of some of the assumptions behind ICA methodologies, provide examples of when applying ICA would provide difficult-to-interpret results, and offer suggestions for applying ICA to fMRI data especially when more than one task-related component is present in the data.
独立成分分析(ICA)是一种试图将数据分离为最大程度独立组别的技术。在空间或时间上实现最大程度的独立性会产生两种对功能磁共振成像(fMRI)应用有意义的ICA:空间ICA(SICA)和时间ICA(TICA)。到目前为止,SICA在ICA应用于fMRI方面占据主导地位。这些实验的目的是研究存在两个可预测成分时的ICA,并评估ICA应用中潜在独立性假设的重要性。设计了四种新颖的视觉激活范式,每种范式分别由两个时空成分组成,这些成分要么在空间上相关、在时间上相关、在空间和时间上都相关,要么在空间和时间上不相关。生成了模拟数据,并使用这些范式采集了六名受试者的fMRI数据。对每个范式的数据进行回归分析,以确定信号是否如预期那样出现。然后将空间和时间ICA应用于这些数据,总体结果是ICA仅在预期的地方找到成分,例如,对于在空间(时间)上相关的范式,S(T)ICA“失败”(即产生与“显而易见”的成分无关的独立成分),而在其他情况下“成功”。然而,回归分析被证明是对这些数据的一种有用“检验”,但强有力的假设并非总是可用,而ICA的一个优点是它可以在不做特定建模假设的情况下对数据进行特征描述。我们报告了对ICA方法背后一些假设的仔细研究,提供了应用ICA会产生难以解释结果的示例,并针对将ICA应用于fMRI数据提出了建议,特别是当数据中存在多个与任务相关的成分时。