Artículos de revistas
The impact of functional connectivity changes on support vector machines mapping of fMRI data
Fecha
2008Registro en:
JOURNAL OF NEUROSCIENCE METHODS, v.172, n.1, p.94-104, 2008
0165-0270
10.1016/j.jneumeth.2008.04.008
Autor
SATO, Joao Ricardo
MOURAO-MIRANDA, Janaina
MARTIN, Maria da Graca Morais
AMARO JR., Edson
MORETTIN, Pedro Alberto
BRAMMER, Michael John
Institución
Resumen
Functional magnetic resonance imaging (fMRI) is currently one of the most widely used methods for studying human brain function in vivo. Although many different approaches to fMRI analysis are available, the most widely used methods employ so called ""mass-univariate"" modeling of responses in a voxel-by-voxel fashion to construct activation maps. However, it is well known that many brain processes involve networks of interacting regions and for this reason multivariate analyses might seem to be attractive alternatives to univariate approaches. The current paper focuses on one multivariate application of statistical learning theory: the statistical discrimination maps (SDM) based on support vector machine, and seeks to establish some possible interpretations when the results differ from univariate `approaches. In fact, when there are changes not only on the activation level of two conditions but also on functional connectivity, SDM seems more informative. We addressed this question using both simulations and applications to real data. We have shown that the combined use of univariate approaches and SDM yields significant new insights into brain activations not available using univariate methods alone. In the application to a visual working memory fMRI data, we demonstrated that the interaction among brain regions play a role in SDM`s power to detect discriminative voxels. (C) 2008 Elsevier B.V. All rights reserved.