SVoRT: Iterative Transformer for Slice-to-Volume Registration in Fetal
Brain MRI
- URL: http://arxiv.org/abs/2206.10802v1
- Date: Wed, 22 Jun 2022 01:55:42 GMT
- Title: SVoRT: Iterative Transformer for Slice-to-Volume Registration in Fetal
Brain MRI
- Authors: Junshen Xu, Daniel Moyer, P. Ellen Grant, Polina Golland, Juan Eugenio
Iglesias, Elfar Adalsteinsson
- Abstract summary: We propose a novel slice-to-volume registration method using Transformers trained on synthetically transformed data.
Our model automatically detects the relevance between slices and predicts the transformation of one slice using information from other slices.
Experiments with real-world MRI data are also performed to demonstrate the ability of the proposed model to improve the quality of 3D reconstruction under severe fetal motion.
- Score: 5.023544755441559
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Volumetric reconstruction of fetal brains from multiple stacks of MR slices,
acquired in the presence of almost unpredictable and often severe subject
motion, is a challenging task that is highly sensitive to the initialization of
slice-to-volume transformations. We propose a novel slice-to-volume
registration method using Transformers trained on synthetically transformed
data, which model multiple stacks of MR slices as a sequence. With the
attention mechanism, our model automatically detects the relevance between
slices and predicts the transformation of one slice using information from
other slices. We also estimate the underlying 3D volume to assist
slice-to-volume registration and update the volume and transformations
alternately to improve accuracy. Results on synthetic data show that our method
achieves lower registration error and better reconstruction quality compared
with existing state-of-the-art methods. Experiments with real-world MRI data
are also performed to demonstrate the ability of the proposed model to improve
the quality of 3D reconstruction under severe fetal motion.
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