MUSTER: Longitudinal Deformable Registration by Composition of Consecutive Deformations
Longitudinal imaging allows for the study of structural changes over time. One approach to detecting such changes is by non-linear image registration. This study introduces Multi-Session Temporal Registration (MUSTER), a novel method that facilitates longitudinal analysis of changes in extended seri...
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Zusammenfassung: | Longitudinal imaging allows for the study of structural changes over time.
One approach to detecting such changes is by non-linear image registration.
This study introduces Multi-Session Temporal Registration (MUSTER), a novel
method that facilitates longitudinal analysis of changes in extended series of
medical images. MUSTER improves upon conventional pairwise registration by
incorporating more than two imaging sessions to recover longitudinal
deformations. Longitudinal analysis at a voxel-level is challenging due to
effects of a changing image contrast as well as instrumental and environmental
sources of bias between sessions. We show that local normalized
cross-correlation as an image similarity metric leads to biased results and
propose a robust alternative. We test the performance of MUSTER on a synthetic
multi-site, multi-session neuroimaging dataset and show that, in various
scenarios, using MUSTER significantly enhances the estimated deformations
relative to pairwise registration. Additionally, we apply MUSTER on a sample of
older adults from the Alzheimer's Disease Neuroimaging Initiative (ADNI) study.
The results show that MUSTER can effectively identify patterns of
neuro-degeneration from T1-weighted images and that these changes correlate
with changes in cognition, matching the performance of state of the art
segmentation methods. By leveraging GPU acceleration, MUSTER efficiently
handles large datasets, making it feasible also in situations with limited
computational resources. |
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DOI: | 10.48550/arxiv.2412.14671 |