Control-group feature normalization for multivariate pattern analysis of structural MRI data using the support vector machine.

Journal: NeuroImage
Published Date:

Abstract

Normalization of feature vector values is a common practice in machine learning. Generally, each feature value is standardized to the unit hypercube or by normalizing to zero mean and unit variance. Classification decisions based on support vector machines (SVMs) or by other methods are sensitive to the specific normalization used on the features. In the context of multivariate pattern analysis using neuroimaging data, standardization effectively up- and down-weights features based on their individual variability. Since the standard approach uses the entire data set to guide the normalization, it utilizes the total variability of these features. This total variation is inevitably dependent on the amount of marginal separation between groups. Thus, such a normalization may attenuate the separability of the data in high dimensional space. In this work we propose an alternate approach that uses an estimate of the control-group standard deviation to normalize features before training. We study our proposed approach in the context of group classification using structural MRI data. We show that control-based normalization leads to better reproducibility of estimated multivariate disease patterns and improves the classifier performance in many cases.

Authors

  • Kristin A Linn
    Department of Biostatistics and Epidemiology, University of Pennsylvania, Philadelphia, PA, USA. Electronic address: klinn@upenn.edu.
  • Bilwaj Gaonkar
    Center for Biomedical Image Computing and Analytics, United States. Electronic address: bilwaj@gmail.com.
  • Theodore D Satterthwaite
    Department of Psychiatry, University of Pennsylvania School of Medicine, Philadelphia, PA, USA.
  • Jimit Doshi
    Center for Biomedical Image Computing and Analytics (CBICA), University of Pennsylvania, Philadelphia, PA, USA.
  • Christos Davatzikos
    Artificial Intelligence in Biomedical Imaging Laboratory (AIBIL), Center for and Data Science for Integrated Diagnostics (AID), Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
  • Russell T Shinohara
    Artificial Intelligence in Biomedical Imaging Laboratory (AIBIL), Center for and Data Science for Integrated Diagnostics (AID), Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.