Authors
Joao M Monteiro,
Anil Rao,
John Ashburner,
Janaina Mourão-Miranda,
Janaina Mourão-Miranda,
Publication date
2015
Publisher
IEEE
Total citations
Description
Unsupervised learning approaches, such as Sparse Partial Least Squares (SPLS), may provide useful insights into the brain mechanisms by finding relationships between two sets of variables (i.e. Views) from the same subjects. The algorithm outputs two sets of paired weight vectors, where each pair expresses an "effect" between both views. However, each effect can be described by a different number of variables. In this paper, we propose a novel approach to find multivariate associations between combinations of clinical/behavioural variables and brain voxels/regions which provides an unique solution with different levels of sparsity per weight vector pair. The effects described by the weight vector pairs are ranked by how much data covariance they explain. The proposed method was able to find statistically significant effects or relationships in a dementia dataset between clinical/demographic information and …