Medical Image Analysis
Volume 12, Issue 5 , Pages 626-637, October 2008

Inferring brain variability from diffeomorphic deformations of currents: An integrative approach

  • Stanley Durrleman

      Affiliations

    • Asclepios Team Project, INRIA Sophia Antipolis Méditerranée, 2004 route des Lucioles, 06902 Sophia Antipolis Cedex, France
    • Centre de Mathématique et Leurs Applications, ENS Cachan, 61 avenue du président Wilson, 94235 Cachan Cedex, France
    • Corresponding Author InformationCorresponding author. Address: Asclepios Team Project, INRIA Sophia Antipolis Méditerranée, 2004 route des Lucioles, 06902 Sophia Antipolis Cedex, France. Tel.: +33 4 92 38 75 61; fax: +33 4 92 38 76 69.
  • ,
  • Xavier Pennec

      Affiliations

    • Asclepios Team Project, INRIA Sophia Antipolis Méditerranée, 2004 route des Lucioles, 06902 Sophia Antipolis Cedex, France
  • ,
  • Alain Trouvé

      Affiliations

    • Centre de Mathématique et Leurs Applications, ENS Cachan, 61 avenue du président Wilson, 94235 Cachan Cedex, France
  • ,
  • Paul Thompson

      Affiliations

    • Laboratory of NeuroImaging, Department of Neurology, UCLA School of Medicine, 225E Neuroscience Research Building, Los Angeles, CA, USA
  • ,
  • Nicholas Ayache

      Affiliations

    • Asclepios Team Project, INRIA Sophia Antipolis Méditerranée, 2004 route des Lucioles, 06902 Sophia Antipolis Cedex, France

Received 31 January 2008; received in revised form 11 June 2008; accepted 11 June 2008. published online 24 June 2008.

Abstract 

In the context of computational anatomy, one aims at understanding and modelling the anatomy of the brain and its variations across a population. This geometrical variability is often measured from precisely defined anatomical landmarks such as sulcal lines or meshes of brain structures. This requires (1) to compare geometrical objects without introducing too many non realistic priors and (2) to retrieve the variability of the whole brain from the variability of the landmarks.

We propose, in this paper, to infer a statistical brain model from the consistent integration of variability of sulcal lines. The similarity between two sets of lines is measured by a distance on currents that does not assume any type of point correspondences and it is not sensitive to the sampling of lines. This shape similarity measure is used in a diffeomorphic registrations which retrieves a single deformation of the whole 3D space. This diffeomorphism integrates the variability of all lines in a as spatially consistent manner as possible.

Based on repeated pairwise registrations on a large database, we learn how the mean anatomy varies in a population by computing statistics on diffeomorphisms. Whereas usual methods lead to descriptive measures of variability, such as variability maps or statistical tests, our model is generative: we can simulate new observations according to the learned probability law on deformations. In practice, this variability captured by the model is synthesized in the principal modes of deformations. As a deformation is dense, we can also apply it to other anatomical structures defined in the template space. This is illustrated the action of the principal modes of deformations to a mean cortical surface.

Eventually, our current-based diffeomorphic registration (CDR) approach is carefully compared to a pointwise line correspondences (PLC) method. Variability measures are computed with both methods on the same dataset of sulcal lines. The results suggest that we retrieve more variability with CDR than with PLC, especially in the direction of the lines. Other differences also appear which highlight the different methodological assumptions each method is based on.

Keywords: Computational anatomy, Brain variability, Sulcal lines, Shape statistics, Non-linear registration, Currents, Large deformations, Diffeomorphisms

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PII: S1361-8415(08)00059-5

doi:10.1016/j.media.2008.06.010

Medical Image Analysis
Volume 12, Issue 5 , Pages 626-637, October 2008