Elsevier

NeuroImage

Volume 152, 15 May 2017, Pages 450-466
NeuroImage

Towards a comprehensive framework for movement and distortion correction of diffusion MR images: Within volume movement

https://doi.org/10.1016/j.neuroimage.2017.02.085Get rights and content
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Highlights

  • We introduce a method to correct for intra-volume movement into an existing framework for movement and distortion correction.

  • It has been validated on realistic simulated data and on experimental data with deliberate movement.

  • The results indicate that one can reliably reverse the adverse effects of intra-volume movement.

Abstract

Most motion correction methods work by aligning a set of volumes together, or to a volume that represents a reference location. These are based on an implicit assumption that the subject remains motionless during the several seconds it takes to acquire all slices in a volume, and that any movement occurs in the brief moment between acquiring the last slice of one volume and the first slice of the next. This is clearly an approximation that can be more or less good depending on how long it takes to acquire one volume and in how rapidly the subject moves. In this paper we present a method that increases the temporal resolution of the motion correction by modelling movement as a piecewise continous function over time. This intra-volume movement correction is implemented within a previously presented framework that simultaneously estimates distortions, movement and movement-induced signal dropout. We validate the method on highly realistic simulated data containing all of these effects. It is demonstrated that we can estimate the true movement with high accuracy, and that scalar parameters derived from the data, such as fractional anisotropy, are estimated with greater fidelity when data has been corrected for intra-volume movement. Importantly, we also show that the difference in fidelity between data affected by different amounts of movement is much reduced when taking intra-volume movement into account. Additional validation was performed on data from a healthy volunteer scanned when lying still and when performing deliberate movements. We show an increased correspondence between the “still” and the “movement” data when the latter is corrected for intra-volume movement. Finally we demonstrate a big reduction in the telltale signs of intra-volume movement in data acquired on elderly subjects.

Keywords

Diffusion
Movement
Slice-to-volume
Registration
Interpolation

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