TL;DR
This paper introduces a data-driven, efficient deformation modeling method for AR-guided surgery that incorporates surgeon prompts, significantly improving accuracy and reliability in dynamic anatomical scenarios.
Contribution
It presents a novel interactive biomechanics algorithm combining data-driven modeling with surgeon prompts to enhance AR surgical navigation accuracy.
Findings
Achieved a mean target registration error of 3.42 mm with the algorithm.
Reduced error to 2.78 mm by incorporating surgeon prompts.
Surpassed state-of-the-art methods in volumetric accuracy.
Abstract
In augmented reality (AR)-guided surgical navigation, preoperative organ models are superimposed onto the patient's intraoperative anatomy to visualize critical structures such as vessels and tumors. Accurate deformation modeling is essential to maintain the reliability of AR overlays by ensuring alignment between preoperative models and the dynamically changing anatomy. Although the finite element method (FEM) offers physically plausible modeling, its high computational cost limits intraoperative applicability. Moreover, existing algorithms often fail to handle large anatomical changes, such as those induced by pneumoperitoneum or ligament dissection, leading to inaccurate anatomical correspondences and compromised AR guidance. To address these challenges, we propose a data-driven biomechanics algorithm that preserves FEM-level accuracy while improving computational efficiency. In…
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