Summary
Background: Similarity measures in medical images do not uniquely determine the correspondence
between two voxels in deformable image registration. Uncertainties in the final computed
deformation exist, questioning the actual physiological consistency of the deformation
between the two images.
Objectives: We developed a deformable image registration method that regularizes the deformation
field in order to model a deformation with physiological properties, relying on vector
calculus based operators as a regularization function.
Method: We implemented a 3D multi-resolution parametric deformable image registration, containing
divergence and curl of the deformation field as regularization terms. Exploiting a
BSpline model, we fit the transformation to optimize histogram-based mutual information
similarity measure. In order to account for compression/expansion, we extract sink/source/circulation
components as irregularities in the warped image and compensate them. The registration
performance was evaluated using Jacobian determinant of the deformation field, inverse-consistency,
landmark errors and residual image difference along with displacement field errors.
Finally, we compare our results to a robust combination of second derivative regularization,
as well as to non-regularized methods.
Results: The implementation was tested on synthetic phantoms and clinical data, leading to
increased image similarity and reduced inverse-consistency errors. The statistical
analysis on clinical cases showed that regularized methods are able to achieve better
image similarity than non regularized methods. Also, divergence/curl regularization
improves anatomical landmark errors compared to second derivative regularization.
Conclusion: The implemented divergence/ curl regularization was successfully tested, leading
to promising results in comparison with competitive regularization methods. Future
work is required to establish parameter tuning and reduce the computational cost.
Keywords
Deformable image registration - divergence and curl - multi-resolution registration
- landmark based evaluation