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Autonomously Navigating a Surgical Tool Inside the Eye by Learning from Demonstration

机译:通过演示学习自主导航眼内手术工具

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A fundamental challenge in retinal surgery is safely navigating a surgical tool to a desired goal position on the retinal surface while avoiding damage to surrounding tissues, a procedure that typically requires tens-of-microns accuracy. In practice, the surgeon relies on depth-estimation skills to localize the tool-tip with respect to the retina in order to perform the tool-navigation task, which can be prone to human error. To alleviate such uncertainty, prior work has introduced ways to assist the surgeon by estimating the tooltip distance to the retina and providing haptic or auditory feedback. However, automating the tool-navigation task itself remains unsolved and largely unexplored. Such a capability, if reliably automated, could serve as a building block to streamline complex procedures and reduce the chance for tissue damage. Towards this end, we propose to automate the tool-navigation task by learning to mimic expert demonstrations of the task. Specifically, a deep network is trained to imitate expert trajectories toward various locations on the retina based on recorded visual servoing to a given goal specified by the user. The proposed autonomous navigation system is evaluated in simulation and in physical experiments using a silicone eye phantom. We show that the network can reliably navigate a needle surgical tool to various desired locations within 137 µm accuracy in physical experiments and 94 µm in simulation on average, and generalizes well to unseen situations such as in the presence of auxiliary surgical tools, variable eye backgrounds, and brightness conditions.
机译:视网膜手术的一项基本挑战是在避免损伤周围组织的同时,安全地将手术工具导航至视网膜表面上所需的目标位置,该过程通常需要数十微米的精度。在实践中,外科医生依靠深度估计技能来相对于视网膜定位工具提示,以执行工具导航任务,这很容易发生人为错误。为了减轻这种不确定性,先前的工作已经引入了通过估计工具提示到视网膜的距离并提供触觉或听觉反馈来协助外科医生的方法。但是,自动化工具导航任务本身仍未解决,并且在很大程度上尚未探索。如果可靠地实现了自动化,那么这种功能可以作为简化复杂程序并减少组织损伤机会的基础。为此,我们建议通过学习模仿任务的专家演示来使工具导航任务自动化。具体地,基于对用户指定的给定目标的记录的视觉伺服,训练深层网络以模仿朝向视网膜上各个位置的专家轨迹。拟议的自主导航系统在仿真和物理实验中使用硅胶眼影进行了评估。我们表明,该网络可以可靠地将针头外科手术工具导航到物理实验中精度在137 µm范围内,模拟中平均在94 µm范围内的各种所需位置,并且可以很好地推广到看不见的情况,例如在存在辅助手术工具,眼底背景可变的情况下,以及亮度条件。

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