TY - JOUR
T1 - What do differences between multi-voxel and univariate analysis mean? How subject-, voxel-, and trial-level variance impact fMRI analysis
AU - Davis, Tyler
AU - LaRocque, Karen F.
AU - Mumford, Jeanette A.
AU - Norman, Kenneth A.
AU - Wagner, Anthony D.
AU - Poldrack, Russell A.
N1 - Funding Information:
This work was funded in part by grants from the James S. McDonnell Foundation to RAP, NIH grants MH076932 to ADW and MH069456 to KAN , and NSF GRFP and NSF IGERT 0801700 to KFL.
PY - 2014/8/15
Y1 - 2014/8/15
N2 - Multi-voxel pattern analysis (MVPA) has led to major changes in how fMRI data are analyzed and interpreted. Many studies now report both MVPA results and results from standard univariate voxel-wise analysis, often with the goal of drawing different conclusions from each. Because MVPA results can be sensitive to latent multidimensional representations and processes whereas univariate voxel-wise analysis cannot, one conclusion that is often drawn when MVPA and univariate results differ is that the activation patterns underlying MVPA results contain a multidimensional code. In the current study, we conducted simulations to formally test this assumption. Our findings reveal that MVPA tests are sensitive to the magnitude of voxel-level variability in the effect of a condition within subjects, even when the same linear relationship is coded in all voxels. We also find that MVPA is insensitive to subject-level variability in mean activation across an ROI, which is the primary variance component of interest in many standard univariate tests. Together, these results illustrate that differences between MVPA and univariate tests do not afford conclusions about the nature or dimensionality of the neural code. Instead, targeted tests of the informational content and/or dimensionality of activation patterns are critical for drawing strong conclusions about the representational codes that are indicated by significant MVPA results.
AB - Multi-voxel pattern analysis (MVPA) has led to major changes in how fMRI data are analyzed and interpreted. Many studies now report both MVPA results and results from standard univariate voxel-wise analysis, often with the goal of drawing different conclusions from each. Because MVPA results can be sensitive to latent multidimensional representations and processes whereas univariate voxel-wise analysis cannot, one conclusion that is often drawn when MVPA and univariate results differ is that the activation patterns underlying MVPA results contain a multidimensional code. In the current study, we conducted simulations to formally test this assumption. Our findings reveal that MVPA tests are sensitive to the magnitude of voxel-level variability in the effect of a condition within subjects, even when the same linear relationship is coded in all voxels. We also find that MVPA is insensitive to subject-level variability in mean activation across an ROI, which is the primary variance component of interest in many standard univariate tests. Together, these results illustrate that differences between MVPA and univariate tests do not afford conclusions about the nature or dimensionality of the neural code. Instead, targeted tests of the informational content and/or dimensionality of activation patterns are critical for drawing strong conclusions about the representational codes that are indicated by significant MVPA results.
KW - Dimensionality
KW - Distributed representations
KW - FMRI analysis
KW - MVPA
KW - Voxel-level variability
UR - http://www.scopus.com/inward/record.url?scp=84901370314&partnerID=8YFLogxK
U2 - 10.1016/j.neuroimage.2014.04.037
DO - 10.1016/j.neuroimage.2014.04.037
M3 - Article
C2 - 24768930
AN - SCOPUS:84901370314
SN - 1053-8119
VL - 97
SP - 271
EP - 283
JO - NeuroImage
JF - NeuroImage
ER -