Pillet Ineke, Op de Beeck Hans, Lee Masson Haemy
Laboratory of Biological Psychology, Department of Brain and Cognition, Leuven Brain Institute, KU Leuven, Leuven, Belgium.
Front Neurosci. 2020 Jan 8;13:1348. doi: 10.3389/fnins.2019.01348. eCollection 2019.
The invention of representational similarity analysis [RSA, following multi-voxel pattern analysis (MVPA)] has allowed cognitive neuroscientists to identify the representational structure of multiple brain regions, moving beyond functional localization. By comparing these structures, cognitive neuroscientists can characterize how brain areas form functional networks. Univariate analysis (UNIVAR) and functional connectivity analysis (FCA) are two other popular methods to identify functional networks. Despite their popularity, few studies have examined the relationship between networks from RSA with those from UNIVAR and FCA. Thus, the aim of the current study is to examine the similarities between neural networks derived from RSA with those from UNIVAR and FCA to explore how these methods relate to each other. We analyzed the data of a previously published study with the three methods and compared the results by performing (partial) correlation and multiple regression analysis. Our findings reveal that neural networks resulting from RSA, UNIVAR, and FCA methods are highly similar to each other even after ruling out the effect of anatomical proximity between the network nodes. Nevertheless, the neural network from each method shows unique organization that cannot be explained by any of the other methods. Thus, we conclude that the RSA, UNIVAR and FCA methods provide similar but not identical information on how brain regions are organized in functional networks.
表征相似性分析(RSA,继多体素模式分析(MVPA)之后)的发明使认知神经科学家能够识别多个脑区的表征结构,超越了功能定位。通过比较这些结构,认知神经科学家可以描述脑区如何形成功能网络。单变量分析(UNIVAR)和功能连接分析(FCA)是另外两种用于识别功能网络的常用方法。尽管它们很受欢迎,但很少有研究考察RSA得出的网络与UNIVAR和FCA得出的网络之间的关系。因此,本研究的目的是考察RSA得出的神经网络与UNIVAR和FCA得出的神经网络之间的相似性,以探索这些方法之间的相互关系。我们用这三种方法分析了一项先前发表研究的数据,并通过进行(偏)相关分析和多元回归分析来比较结果。我们的研究结果表明,即使排除了网络节点之间解剖学邻近性的影响,RSA、UNIVAR和FCA方法得出的神经网络彼此之间仍高度相似。然而,每种方法得出的神经网络都显示出独特的组织方式,无法用其他任何方法来解释。因此,我们得出结论,RSA、UNIVAR和FCA方法在脑区如何在功能网络中组织方面提供了相似但并非完全相同的信息。