1Department of Neurosurgery, Chungbuk National University Hospital, Chungbuk National University College of Medicine, Cheongju, Republic of Korea.
2MEDICALIP Co. Ltd., Seoul, Republic of Korea; and.
Neurosurg Focus. 2021 Aug;51(2):E21. doi: 10.3171/2021.5.FOCUS21184.
OBJECTIVE: With the advancement of 3D modeling techniques and visualization devices, augmented reality (AR)-based navigation (AR navigation) is being developed actively. The authors developed a pilot model of their newly developed inside-out tracking AR navigation system. METHODS: The inside-out AR navigation technique was developed based on the visual inertial odometry (VIO) algorithm. The Quick Response (QR) marker was created and used for the image feature-detection algorithm. Inside-out AR navigation works through the steps of visualization device recognition, marker recognition, AR implementation, and registration within the running environment. A virtual 3D patient model for AR rendering and a 3D-printed patient model for validating registration accuracy were created. Inside-out tracking was used for the registration. The registration accuracy was validated by using intuitive, visualization, and quantitative methods for identifying coordinates by matching errors. Fine-tuning and opacity-adjustment functions were developed. RESULTS: ARKit-based inside-out AR navigation was developed. The fiducial marker of the AR model and those of the 3D-printed patient model were correctly overlapped at all locations without errors. The tumor and anatomical structures of AR navigation and the tumors and structures placed in the intracranial space of the 3D-printed patient model precisely overlapped. The registration accuracy was quantified using coordinates, and the average moving errors of the x-axis and y-axis were 0.52 ± 0.35 and 0.05 ± 0.16 mm, respectively. The gradients from the x-axis and y-axis were 0.35° and 1.02°, respectively. Application of the fine-tuning and opacity-adjustment functions was proven by the videos. CONCLUSIONS: The authors developed a novel inside-out tracking-based AR navigation system and validated its registration accuracy. This technical system could be applied in the novel navigation system for patient-specific neurosurgery.
目的:随着 3D 建模技术和可视化设备的进步,基于增强现实(AR)的导航(AR 导航)正在积极开发中。作者开发了他们新开发的基于内外跟踪的 AR 导航系统的试点模型。
方法:基于视觉惯性里程计(VIO)算法开发了内外 AR 导航技术。创建了快速响应(QR)标记并用于图像特征检测算法。内外 AR 导航通过可视化设备识别、标记识别、AR 实现以及在运行环境中的注册等步骤进行工作。创建了用于 AR 渲染的虚拟 3D 患者模型和用于验证注册准确性的 3D 打印患者模型。使用内外跟踪进行注册。使用直观、可视化和定量方法通过匹配误差来识别坐标,验证了注册准确性。开发了微调和平滑调整功能。
结果:开发了基于 ARKit 的内外 AR 导航。AR 模型的基准标记和 3D 打印患者模型的标记在所有位置均正确重叠,没有错误。AR 导航的肿瘤和解剖结构以及放置在 3D 打印患者模型颅内空间中的肿瘤和结构精确重叠。使用坐标量化了注册准确性,x 轴和 y 轴的平均移动误差分别为 0.52±0.35 和 0.05±0.16mm,x 轴和 y 轴的梯度分别为 0.35°和 1.02°。微调和平滑调整功能的应用通过视频得到了证明。
结论:作者开发了一种新型的基于内外跟踪的 AR 导航系统,并验证了其注册准确性。该技术系统可应用于新型患者特异性神经外科导航系统。
Neurosurg Focus. 2021-8
Int J Comput Assist Radiol Surg. 2024-1
J Clin Neurosci. 2019-12-28
Int J Comput Assist Radiol Surg. 2025-5-23
J Korean Neurosurg Soc. 2025-3
Cancer Pathog Ther. 2023-12-2
World J Surg Oncol. 2024-1-17
Oper Neurosurg (Hagerstown). 2023-12-26
Int J Comput Assist Radiol Surg. 2024-1
Nat Rev Methods Primers. 2023