Deformable Model-to-Image Registration Toward Augmented Reality-Guided Endovascular Interventions

Journal Article (2024)
Author(s)

Zhen Li (Politecnico di Milano, TU Delft - Medical Instruments & Bio-Inspired Technology)

Letizia Contini (Politecnico di Milano)

Alessandro Maria Ippoliti (Politecnico di Milano)

Elena Bastianelli (Politecnico di Milano)

Federico De Marco (IRCCS Centro Cardiologico Monzino)

J Dankelman (TU Delft - Medical Instruments & Bio-Inspired Technology)

Elena De Momi (Politecnico di Milano)

Research Group
Medical Instruments & Bio-Inspired Technology
DOI related publication
https://doi.org/10.1109/JSEN.2024.3402539
More Info
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Publication Year
2024
Language
English
Research Group
Medical Instruments & Bio-Inspired Technology
Issue number
13
Volume number
24
Pages (from-to)
21750-21761
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Abstract

Endovascular interventions are minimally invasive procedures that utilize the vascular system to access anatomical regions deep within the body. Image-guided assistance provides valuable real-time information about the dynamic state of the vascular environment. However, the reliance on intraoperative 2-D fluoroscopy images limits depth perception, prompting the demand for intraoperative 3-D imaging. Existing image registration methods face difficulties in accurately incorporating tissue deformations compared to the preoperative 3-D model, particularly in a weakly supervised manner. Additionally, reconstructing deformations from 2-D to 3-D space and presenting this intraoperative model visually to clinicians poses further complexities. To address these challenges, this study introduces a novel deformable model-to-image registration framework using deep learning. Furthermore, this research proposes a visualization method through augmented reality to guide endovascular interventions. This study utilized image data collected from nine patients who underwent transcatheter aortic valve implantation (TAVI) procedures. The registration results in 2-D indicate that the proposed deformable model-to-image registration framework achieves a modified dice similarity coefficient (MDSC) value of 0.89±0.02 and a penalization of deformations in spare space (PDSS) value of 0.04±0.01, offering an improvement of 3.5%-98.6% over the state-of-the-art image registration approach. Additionally, the accuracy of registration in 3-D was evaluated using a dataset obtained from an intervention simulator, resulting in a mean absolute error (MAE) of 1.51±1.02 mm within the region of interest. Overall, the study validates the feasibility and accuracy of the proposed weakly supervised deformable model-to-image registration framework, demonstrating its potential to provide intraoperative 3-D imaging as intervention assistance in dynamic vascular environments.