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2010 journal original-research Neuroimage

Evaluation of volume-based and surface-based brain image registration methods

Klein A, Ghosh SS, Avants B, Yeo BT, Fischl B, Ardekani B, Gee JC, Mann JJ, Parsey RV

Identifiers and access

DOI
10.1016/j.neuroimage.2010.01.091
PubMed
20123029
PMC
PMC2862732
Cited by
275

Key findings

Permutation tests across >16,000 registrations of 80 manually labeled brains showed that de-skulling helps volume registration, custom optimal-average templates improve registration over pairwise approaches, and current resampling methods prevent a fair head-to-head comparison of the top volume- and surface-based algorithms.

Abstract

Source: pubmed

Establishing correspondences across brains for the purposes of comparison and group analysis is almost universally done by registering images to one another either directly or via a template. However, there are many registration algorithms to choose from. A recent evaluation of fully automated nonlinear deformation methods applied to brain image registration was restricted to volume-based methods. The present study is the first that directly compares some of the most accurate of these volume registration methods with surface registration methods, as well as the first study to compare registrations of whole-head and brain-only (de-skulled) images. We used permutation tests to compare the overlap or Hausdorff distance performance for more than 16,000 registrations between 80 manually labeled brain images. We compared every combination of volume-based and surface-based labels, registration, and evaluation. Our primary findings are the following: 1. de-skulling aids volume registration methods; 2. custom-made optimal average templates improve registration over direct pairwise registration; and 3. resampling volume labels on surfaces or converting surface labels to volumes introduces distortions that preclude a fair comparison between the highest ranking volume and surface registration methods using present resampling methods. From the results of this study, we recommend constructing a custom template from a limited sample drawn from the same or a similar representative population, using the same algorithm used for registering brains to the template.

Topics

  • neuroimaging-methods

Lab authors

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