Patch-based field-of-view matching in multi-modal images for electroporation-based ablations
Luc Lafitte, R\'emi Giraud, Cornel Zachiu, Mario Ries, Olivier Sutter,, Antoine Petit, Olivier Seror, Clair Poignard, Baudouin Denis de Senneville

TL;DR
This paper introduces a fast patch-based method for aligning the field-of-view in multi-modal 3D medical images, improving registration accuracy when FOVs differ significantly across modalities.
Contribution
A novel patch-based FOV alignment technique combined with a multi-modal similarity metric, enhancing registration robustness in multi-modal medical imaging with varying FOVs.
Findings
Effective in CT to CBCT and MRI to CBCT registration
Handles large FOV differences and artifacts from needle insertions
Computationally efficient for clinical online procedures
Abstract
Various multi-modal imaging sensors are currently involved at different steps of an interventional therapeutic work-flow. Cone beam computed tomography (CBCT), computed tomography (CT) or Magnetic Resonance (MR) images thereby provides complementary functional and/or structural information of the targeted region and organs at risk. Merging this information relies on a correct spatial alignment of the observed anatomy between the acquired images. This can be achieved by the means of multi-modal deformable image registration (DIR), demonstrated to be capable of estimating dense and elastic deformations between images acquired by multiple imaging devices. However, due to the typically different field-of-view (FOV) sampled across the various imaging modalities, such algorithms may severely fail in finding a satisfactory solution. In the current study we propose a new fast method to align…
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