Atlas-based classification algorithms for identification of informative brain regions in fMRI data
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2020-04Referencia bibliográfica
Published version: Arco, J.E., Díaz-Gutiérrez, P., Ramírez, J. et al. Atlas-Based Classification Algorithms for Identification of Informative Brain Regions in fMRI Data. Neuroinform 18, 219–236 (2020). [https://doi.org/10.1007/s12021-019-09435-w]
Sponsorship
Spanish Ministry of Science and Innovation through grant PSI2016-78236-P; Spanish Ministry of Economy and Competitiveness through grant BES-2014-069609Abstract
Multi-voxel pattern analysis (MVPA) has been successfully applied to neuroimaging data due to its larger sensitivity compared to univariate traditional techniques. Although a Searchlight strategy that locally sweeps all voxels in the brain is the most extended approach to assign functional value to different regions of the brain, this method does not offer information about the directionality of the results and it does not allow studying the combined patterns of more distant voxels.
In the current study, we examined two different alternatives to searchlight. First, an atlas- based local averaging (ABLA, Schrouff et al., 2013a) method, which computes the relevance of each region of an atlas from the weights obtained by a whole-brain analysis. Second, a Multiple-Kernel Learning (MKL, Rakotomamonjy et al., 2008) approach, which combines different brain regions from an atlas to build a classification model. We evaluated their performance in two different scenarios where differential neural activity between conditions was large vs. small, and employed nine different atlases to assess the influence of diverse brain parcellations.
Results show that all methods are able to localize informative regions when differences were large, demonstrating stability in the identification of regions across atlases. Moreover, the sign of the weights reported by these methods provides the sensitivity of multivariate approaches and the directionality of univariate methods. However, in the second context only ABLA localizes informative regions, which indicates that MKL leads to a lower performance when differences between conditions are small. Future studies could improve their results by employing machine learning algorithms to compute individual atlases fit to the brain organization of each participant.