Magnetic Resonance Imaging
Volume 26, Issue 10 , Pages 1398-1405, December 2008

Multivariate analysis of diffusion tensor imaging data improves the detection of microstructural damage in young professional boxers

  • Michael H. Chappell

      Affiliations

    • Department of Physics and Astronomy, University of Canterbury, Christchurch 8020, New Zealand
    • Van der Veer Institute for Parkinson's and Brain Research, Christchurch 8001, New Zealand
    • Corresponding Author InformationCorresponding author. ISB/MR-Senter, St Olavs Hospital, 7006 Trondheim, Norway. Tel.: +47 7386 9553; fax: +47 7386 7708.
  • ,
  • Jennifer A. Brown

      Affiliations

    • Department of Mathematics and Statistics, University of Canterbury, Christchurch 8020, New Zealand
  • ,
  • John C. Dalrymple-Alford

      Affiliations

    • Department of Psychology, University of Canterbury, Christchurch 8020, New Zealand
    • Van der Veer Institute for Parkinson's and Brain Research, Christchurch 8001, New Zealand
  • ,
  • Aziz M. Uluğ

      Affiliations

    • Department of Radiology, Weill Medical College of Cornell University, New York, NY 10021, USA
  • ,
  • Richard Watts

      Affiliations

    • Department of Physics and Astronomy, University of Canterbury, Christchurch 8020, New Zealand
    • Van der Veer Institute for Parkinson's and Brain Research, Christchurch 8001, New Zealand

Received 11 January 2008; received in revised form 11 April 2008; accepted 11 April 2008. published online 28 May 2008.

Abstract 

In this study, we present two different methods of multivariate analysis of voxel-based diffusion tensor imaging (DTI) data, using as an example data derived from 59 professional boxers and 12 age-matched controls. Conventional univariate analysis ignores much of the diffusion information contained in the tensor. Our first multivariate method uses the Hotelling's T2 statistic and the second uses linear discriminant analysis to generate the linear discriminant function at each voxel to form a separability metric. Both multivariate methods confirm the findings from the individual metrics of large-scale changes in the bilateral inferior temporal gyri of the boxers, but they also reveal greater sensitivity as well as identifying major subcortical changes that had not been evident in the univariate analyses. Linear discriminant analysis has the added strength of providing a quantitative measure of the relative contribution of each metric to any differences between the two subject groups. This novel adaptation of statistical and mathematical techniques to neuroimaging analysis is important for two reasons. Clinically, it develops the findings of a previous mild head injury study, and, methodologically, it could equally well be applied to multivariate studies of other pathologies.

Keywords: Multivariate analysis, Voxel-based analysis, Linear discriminant analysis, Diffusion tensor imaging, Separability metric, Mild repetitive head injury, Hotelling's T2 statistic

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PII: S0730-725X(08)00136-7

doi:10.1016/j.mri.2008.04.004

Magnetic Resonance Imaging
Volume 26, Issue 10 , Pages 1398-1405, December 2008