Kernel-based framework to estimate deformations of pneumothorax lung using relative position of anatomical landmarks
Utako Yamamoto, Megumi Nakao, Masayuki Ohzeki, Junko Tokuno, Toyofumi, Fengshi Chen-Yoshikawa, and Tetsuya Matsuda

TL;DR
This paper introduces a kernel regression-based method to estimate lung deformations during surgery using limited landmarks, improving preoperative planning accuracy for pneumothorax cases.
Contribution
A novel kernel-based framework that estimates lung deformations from few landmarks, addressing challenges of large volume changes in pneumothorax lungs.
Findings
Achieved a vertex positional error of 2.74 mm
Hausdorff distance of 6.11 mm
Dice similarity coefficient of 0.94
Abstract
In video-assisted thoracoscopic surgeries, successful procedures of nodule resection are highly dependent on the precise estimation of lung deformation between the inflated lung in the computed tomography (CT) images during preoperative planning and the deflated lung in the treatment views during surgery. Lungs in the pneumothorax state during surgery have a large volume change from normal lungs, making it difficult to build a mechanical model. The purpose of this study is to develop a deformation estimation method of the 3D surface of a deflated lung from a few partial observations. To estimate deformations for a largely deformed lung, a kernel regression-based solution was introduced. The proposed method used a few landmarks to capture the partial deformation between the 3D surface mesh obtained from preoperative CT and the intraoperative anatomical positions. The deformation for each…
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