How to Register a Live onto a Liver ? Partial Matching in the Space of Varifolds
Pierre-Louis Antonsanti, Thomas Benseghir, Vincent Jugnon and, Mario Ghosn, Perrine Chassat, Ir\`ene Kaltenmark, Joan Glaun\`es

TL;DR
This paper introduces a novel partial shape matching method using varifolds within the LDDMM framework, enabling robust multi-modal liver registration between CT and CBCT volumes with improved accuracy and consistency.
Contribution
It proposes an asymmetric dissimilarity measure for partial shape matching that does not rely on correspondences, tailored for medical imaging applications like liver registration.
Findings
Achieved an average surface distance of 2.6mm in liver surface alignment.
Extended deformations to liver volume with an average error of 5.8mm at vessels bifurcations.
Demonstrated robustness in multi-modal registration between CT and CBCT volumes.
Abstract
Partial shapes correspondences is a problem that often occurs in computer vision (occlusion, evolution in time...). In medical imaging, data may come from different modalities and be acquired under different conditions which leads to variations in shapes and topologies. In this paper we use an asymmetric data dissimilarity term applicable to various geometric shapes like sets of curves or surfaces, assessing the embedding of a shape into another one without relying on correspondences. It is designed as a data attachment for the Large Deformation Diffeomorphic Metric Mapping (LDDMM) framework, allowing to compute a meaningful deformation of one shape onto a subset of the other. We refine it in order to control the resulting non-rigid deformations and provide consistent deformations of the shapes along with their ambient space. We show that partial matching can be used for robust…
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Taxonomy
TopicsMedical Image Segmentation Techniques · 3D Shape Modeling and Analysis · Robotics and Sensor-Based Localization
