Residual Aligner Network
- URL: http://arxiv.org/abs/2203.04290v1
- Date: Mon, 7 Mar 2022 22:48:43 GMT
- Title: Residual Aligner Network
- Authors: Jian-Qing Zheng, Ziyang Wang, Baoru Huang, Ngee Han Lim, Bartlomiej W.
Papiez
- Abstract summary: Motion-Aware (MA) structure captures different motions in a region.
New network achieves results which were indistinguishable from the best-ranked networks.
- Score: 8.542808644281433
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Image registration is important for medical imaging, the estimation of the
spatial transformation between different images. Many previous studies have
used learning-based methods for coarse-to-fine registration to efficiently
perform 3D image registration. The coarse-to-fine approach, however, is limited
when dealing with the different motions of nearby objects. Here we propose a
novel Motion-Aware (MA) structure that captures the different motions in a
region. The MA structure incorporates a novel Residual Aligner (RA) module
which predicts the multi-head displacement field used to disentangle the
different motions of multiple neighbouring objects. Compared with other deep
learning methods, the network based on the MA structure and RA module achieve
one of the most accurate unsupervised inter-subject registration on the 9
organs of assorted sizes in abdominal CT scans, with the highest-ranked
registration of the veins (Dice Similarity Coefficient / Average surface
distance: 62\%/4.9mm for the vena cava and 34\%/7.9mm for the portal and
splenic vein), with a half-sized structure and more efficient computation.
Applied to the segmentation of lungs in chest CT scans, the new network
achieves results which were indistinguishable from the best-ranked networks
(94\%/3.0mm). Additionally, the theorem on predicted motion pattern and the
design of MA structure are validated by further analysis.
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