Comparing Regularized Kelvinlet Functions and the Finite Element Method for Registration of Medical Images to Sparse Organ Data
Morgan Ringel, Jon Heiselman, Winona Richey, Ingrid Meszoely, William, Jarnagin, Michael Miga

TL;DR
This paper introduces a registration algorithm using regularized Kelvinlets that significantly reduces computation time while maintaining accuracy comparable to finite element methods, enhancing real-time surgical guidance.
Contribution
The study presents a novel Kelvinlet-based registration method that outperforms finite element models in speed with similar accuracy for soft tissue deformation correction.
Findings
Kelvinlet-based registration reduces computation time compared to finite element methods.
Accuracy of Kelvinlet method is comparable to finite element approach.
Demonstrated effectiveness on liver and breast deformation datasets.
Abstract
Image-guided surgery collocates patient-specific data with the physical environment to facilitate surgical decision making in real-time. Unfortunately, these guidance systems commonly become compromised by intraoperative soft-tissue deformations. Nonrigid image-to-physical registration methods have been proposed to compensate for these deformations, but intraoperative clinical utility requires compatibility of these techniques with data sparsity and temporal constraints in the operating room. While linear elastic finite element models are effective in sparse data scenarios, the computation time for finite element simulation remains a limitation to widespread deployment. This paper proposes a registration algorithm that uses regularized Kelvinlets, which are analytical solutions to linear elasticity in an infinite domain, to overcome these barriers. This algorithm is demonstrated and…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Medical Imaging and Analysis · Medical Image Segmentation Techniques
