Image registration: Maximum likelihood, minimum entropy and deep learning.

Journal: Medical image analysis
Published Date:

Abstract

In this work, we propose a theoretical framework based on maximum profile likelihood for pairwise and groupwise registration. By an asymptotic analysis, we demonstrate that maximum profile likelihood registration minimizes an upper bound on the joint entropy of the distribution that generates the joint image data. Further, we derive the congealing method for groupwise registration by optimizing the profile likelihood in closed form, and using coordinate ascent, or iterative model refinement. We also describe a method for feature based registration in the same framework and demonstrate it on groupwise tractographic registration. In the second part of the article, we propose an approach to deep metric registration that implements maximum likelihood registration using deep discriminative classifiers. We show further that this approach can be used for maximum profile likelihood registration to discharge the need for well-registered training data, using iterative model refinement. We demonstrate that the method succeeds on a challenging registration problem where the standard mutual information approach does not perform well.

Authors

  • Alireza Sedghi
  • Lauren J O'Donnell
    Brigham and Women's Hospital, Harvard Medical School, Boston, USA.
  • Tina Kapur
    Harvard Medical School, Boston MA, USA.
  • Erik Learned-Miller
    College of Information and Computer Sciences, University of Massachusetts, Amherst, USA.
  • Parvin Mousavi
    Medical Informatics Laboratory, School of Computing, Queen's University, 557 Goodwin Hall, Kingston, ON K7L 2N8, Canada.
  • William M Wells