Data Consistent Deep Rigid MRI Motion Correction
- URL: http://arxiv.org/abs/2301.10365v2
- Date: Thu, 16 Nov 2023 08:39:51 GMT
- Title: Data Consistent Deep Rigid MRI Motion Correction
- Authors: Nalini M. Singh, Neel Dey, Malte Hoffmann, Bruce Fischl, Elfar
Adalsteinsson, Robert Frost, Adrian V. Dalca, Polina Golland
- Abstract summary: Motion artifacts are a pervasive problem in MRI, leading to misdiagnosis or mischaracterization in population-level imaging studies.
Current retrospective rigid intra-slice motion correction techniques jointly optimize estimates of the image and the motion parameters.
In this paper, we use a deep network to reduce the joint image-motion parameter search to a search over rigid motion parameters alone.
- Score: 9.551748050454378
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Motion artifacts are a pervasive problem in MRI, leading to misdiagnosis or
mischaracterization in population-level imaging studies. Current retrospective
rigid intra-slice motion correction techniques jointly optimize estimates of
the image and the motion parameters. In this paper, we use a deep network to
reduce the joint image-motion parameter search to a search over rigid motion
parameters alone. Our network produces a reconstruction as a function of two
inputs: corrupted k-space data and motion parameters. We train the network
using simulated, motion-corrupted k-space data generated with known motion
parameters. At test-time, we estimate unknown motion parameters by minimizing a
data consistency loss between the motion parameters, the network-based image
reconstruction given those parameters, and the acquired measurements.
Intra-slice motion correction experiments on simulated and realistic 2D fast
spin echo brain MRI achieve high reconstruction fidelity while providing the
benefits of explicit data consistency optimization. Our code is publicly
available at https://www.github.com/nalinimsingh/neuroMoCo.
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