对 fMRI 有效连通性分析中结构方程建模引起的制约因素进行多层次测试:概念验证

G. Marrelec, A. Giron
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引用次数: 0

摘要

在功能磁共振成像(fMRI)中,有效连通性分析旨在推断大脑区域之间的因果影响。此类分析的常用方法是结构方程建模(SEM)。我们在此提出一种新方法来检验给定结构方程模型的有效性。给定一个有向图形式的结构模型,该方法提取模型中区域对之间缺失链接所引起的所有条件独立性约束的集合,并在贝叶斯框架下测试它们的有效性,既可以单独测试(逐个约束),也可以联合测试(例如,收集与给定缺失链接相关的所有约束),还可以全局测试(即与结构模型相关的所有约束)。这种方法有两大优势。首先,它只测试观察数据中可测试的内容,不允许错误的因果解释。其次,它可以分别测试每个约束条件(或每组约束条件),从而量化每个约束条件(或缺失环节)在数据中得到尊重的程度。我们通过模拟研究验证了这一方法,并通过对已发表数据的重新分析说明了这一方法的潜在优势。
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Multilevel testing of constraints induced by structural equation modeling in fMRI effective connectivity analysis: A proof of concept
In functional MRI (fMRI), effective connectivity analysis aims at inferring the causal influences that brain regions exert on one another. A common method for this type of analysis is structural equation modeling (SEM). We here propose a novel method to test the validity of a given model of structural equation. Given a structural model in the form of a directed graph, the method extracts the set of all constraints of conditional independence induced by the absence of links between pairs of regions in the model and tests for their validity in a Bayesian framework, either individually (constraint by constraint), jointly (e.g., by gathering all constraints associated with a given missing link), or globally (i.e., all constraints associated with the structural model). This approach has two main advantages. First, it only tests what is testable from observational data and does allow for false causal interpretation. Second, it makes it possible to test each constraint (or group of constraints) separately and, therefore, quantify in what measure each constraint (or, e..g., missing link) is respected in the data. We validate our approach using a simulation study and illustrate its potential benefits through the reanalysis of published data.
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