Content area

Abstract

Canonical correlation analysis (CCA) has become a key tool for population neuroimaging, allowing investigation of associations between many imaging and non-imaging measurements. As age, sex and other variables are often a source of variability not of direct interest, previous work has used CCA on residuals from a model that removes these effects, then proceeded directly to permutation inference. We show that a simple permutation test, as typically used to identify significant modes of shared variation on such data adjusted for nuisance variables, produces inflated error rates. The reason is that residualisation introduces dependencies among the observations that violate the exchangeability assumption. Even in the absence of nuisance variables, however, a simple permutation test for CCA also leads to excess error rates for all canonical correlations other than the first. The reason is that a simple permutation scheme does not ignore the variability already explained by previous canonical variables. Here we propose solutions for both problems: in the case of nuisance variables, we show that transforming the residuals to a lower dimensional basis where exchangeability holds results in a valid permutation test; for more general cases, with or without nuisance variables, we propose estimating the canonical correlations in a stepwise manner, removing at each iteration the variance already explained, while dealing with different number of variables in both sides. We also discuss how to address the multiplicity of tests, proposing an admissible test that is not conservative, and provide a complete algorithm for permutation inference for CCA.

Details

Title
Permutation inference for canonical correlation analysis
Author
Winkler, Anderson M 1 ; Renaud, Olivier 2 ; Smith, Stephen M 3 ; Nichols, Thomas E 4 

 National Institute of Mental Health (NIMH), National Institutes of Health (NIH), Bethesda, MD, USA 
 Methodology and Data Analysis, Department of Psychology, University of Geneva, Switzerland 
 Wellcome Trust Centre for Integrative Neuroimaging (WIN-FMRIB), University of Oxford, Oxford, UK 
 Big Data Institute, University of Oxford, Oxford, UK 
Publication year
2020
Publication date
Oct 15, 2020
Publisher
Elsevier Limited
ISSN
10538119
e-ISSN
10959572
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2449655374
Copyright
Copyright Elsevier Limited Oct 15, 2020