增强现实
计算机视觉
流离失所(心理学)
点云
软组织
特征(语言学)
重射误差
人工智能
计算机科学
腹腔镜手术
管道(软件)
跟踪(教育)
导航系统
变形(气象学)
补偿(心理学)
位移场
影像引导手术
点(几何)
图像配准
迭代最近点
支持向量机
曲面重建
边界(拓扑)
概率逻辑
医学影像学
领域(数学)
弹道
迭代重建
跟踪系统
视野
坐标系
特征提取
错误检测和纠正
腹腔镜
作者
Enpeng Wang,Yueang Liu,Puxun Tu,Zeike A. Taylor,Xiaojun Chen
标识
DOI:10.1109/tmi.2024.3413537
摘要
Minimally invasive surgery (MIS) remains technically demanding due to the difficulty of tracking hidden critical structures within the moving anatomy of the patient. In this study, we propose a soft tissue deformation tracking augmented reality (AR) navigation pipeline for laparoscopic surgery of the kidneys. The proposed navigation pipeline addresses two main sub-problems: the initial registration and deformation tracking. Our method utilizes preoperative MR or CT data and binocular laparoscopes without any additional interventional hardware. The initial registration is resolved through a probabilistic rigid registration algorithm and elastic compensation based on dense point cloud reconstruction. For deformation tracking, the sparse feature point displacement vector field continuously provides temporal boundary conditions for the biomechanical model. To enhance the accuracy of the displacement vector field, a novel feature points selection strategy based on deep learning is proposed. Moreover, an ex-vivo experimental method for internal structures error assessment is presented. The ex-vivo experiments indicate an external surface reprojection error of 4.07 ± 2.17 mm and a maximum mean absolutely error for internal structures of 2.98 mm. In-vivo experiments indicate mean absolutely error of 3.28 ± 0.40 mm and 1.90 ± 0.24 mm, respectively. The combined qualitative and quantitative findings indicated the potential of our AR-assisted navigation system in improving the clinical application of laparoscopic kidney surgery.
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