基于地标定位的支气管镜在呼吸变形情况下的针头插入。

Inbar Fried, Janine Hoelscher, Jason A Akulian, Stephen Pizer, Ron Alterovitz
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引用次数: 0

摘要

支气管镜检查是目前明确诊断肺癌的侵入性最小的方法,在美国,死于肺癌的人数比死于其他癌症的人数都多。要成功诊断肺部可疑结节,需要将支气管镜准确定位到气道中计划的活检部位。这项任务极具挑战性,因为术中肺部会因呼吸运动而变形,气道缺乏光度特征,而且解剖外观具有重复性。在本文中,我们介绍了一种基于摄像头的实时方法,用于根据计划的针插入姿势准确定位支气管镜。我们的方法采用深度学习,考虑了变形,并通过估计相对于解剖地标的姿势克服了全局姿势估计的局限性。具体来说,我们的学习模型将气道壁上的气道分叉视为地标,因为它们具有明显的几何特征,不会随呼吸运动而发生显著变化。我们在一个模拟肺部呼吸运动的数据集中对我们的方法进行了评估。结果表明,我们的方法适用于所有患者,并能准确定位支气管镜,即使在具有挑战性的远端气道中,也能在所有呼吸变形水平下获取临床相关的最小结节。我们的方法能让医生进行更精确的活组织检查,是实现精确自主机器人支气管镜检查的关键基石。
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Landmark Based Bronchoscope Localization for Needle Insertion Under Respiratory Deformation.

Bronchoscopy is currently the least invasive method for definitively diagnosing lung cancer, which kills more people in the United States than any other form of cancer. Successfully diagnosing suspicious lung nodules requires accurate localization of the bronchoscope relative to a planned biopsy site in the airways. This task is challenging because the lung deforms intraoperatively due to respiratory motion, the airways lack photometric features, and the anatomy's appearance is repetitive. In this paper, we introduce a real-time camera-based method for accurately localizing a bronchoscope with respect to a planned needle insertion pose. Our approach uses deep learning and accounts for deformations and overcomes limitations of global pose estimation by estimating pose relative to anatomical landmarks. Specifically, our learned model considers airway bifurcations along the airway wall as landmarks because they are distinct geometric features that do not vary significantly with respiratory motion. We evaluate our method in a simulated dataset of lungs undergoing respiratory motion. The results show that our method generalizes across patients and localizes the bronchoscope with accuracy sufficient to access the smallest clinically-relevant nodules across all levels of respiratory deformation, even in challenging distal airways. Our method could enable physicians to perform more accurate biopsies and serve as a key building block toward accurate autonomous robotic bronchoscopy.

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