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应用自动无标记配准的增强现实技术于面部整形和重建手术。

Application of augmented reality using automatic markerless registration for facial plastic and reconstructive surgery.

机构信息

Department of Plastic and Reconstructive Surgery, Ulsan University College of Medicine, Asan Medical Center, Seoul, South Korea.

Skia Co, Seoul, South Korea.

出版信息

J Craniomaxillofac Surg. 2024 Feb;52(2):246-251. doi: 10.1016/j.jcms.2023.12.009. Epub 2023 Dec 22.

Abstract

This study aimed to present a novel markerless augmented reality (AR) system using automatic registration based on machine-learning algorithms that visualize the facial region and provide an intraoperative guide for facial plastic and reconstructive surgeries. This study prospectively enrolled 20 patients scheduled for facial plastic and reconstructive surgeries. The AR system visualizes computed tomographic data in three-dimensional (3D) space by aligning with the point clouds captured by a 3D camera. Point cloud registration consists of two stages: the preliminary registration gives an initial estimate of the transformation using landmark detection, followed by the precise registration using Iterative Closest Point algorithms. Computed Tomography (CT) data can be visualized as two-dimensional slice images or 3D images by the AR system. The AR registration error was defined as the cloud-to-cloud distance between the surface data obtained from the CT and 3D camera. The error was calculated in each facial territory, including the upper, middle, and lower face, while patients were awake and orally intubated, respectively. The mean registration errors were 1.490 ± 0.384 mm and 1.948 ± 0.638 mm while patients were awake and orally intubated, respectively. There was a significant difference in the errors in the lower face between patients while they were awake (1.502 ± 0.480 mm) and orally intubated (2.325 ± 0.971 mm) when stratified by facial territories (p = 0.006). The markerless AR can accurately visualize the facial region with a mean overall registration error of 1-2 mm, with a slight increase in the lower face due to errors arising from tube intubation.

摘要

本研究旨在提出一种新的基于机器学习算法的无标记增强现实 (AR) 系统,该系统可自动注册,可视化面部区域,并为面部整形和重建手术提供术中指导。本研究前瞻性纳入 20 例计划行面部整形和重建手术的患者。AR 系统通过与 3D 相机捕获的点云对齐,在三维 (3D) 空间中可视化计算机断层扫描 (CT) 数据。点云注册由两个阶段组成:初步注册使用地标检测给出变换的初始估计,然后使用迭代最近点算法进行精确注册。AR 系统可以将 CT 数据可视化 为二维切片图像或 3D 图像。AR 注册误差被定义为从 CT 和 3D 相机获得的表面数据之间的云对云距离。在患者清醒和经口插管时,分别在每个面部区域(包括上、中、下脸)计算误差。患者清醒和经口插管时的平均注册误差分别为 1.490±0.384mm 和 1.948±0.638mm。清醒和经口插管时患者的下脸误差存在显著差异(p=0.006)。无标记 AR 可以准确地可视化面部区域,总体平均注册误差为 1-2mm,由于插管引起的误差,下脸略有增加。

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