Enabling Technology for Safe Robot-Assisted Retinal Surgery: Early Warning for Unsafe Scleral Force.

Changyan He, Niravkumar Patel, Iulian Iordachita, Marin Kobilarov
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引用次数: 10

Abstract

Retinal microsurgery is technically demanding and requires high surgical skill with very little room for manipulation error. During surgery the tool needs to be inserted into the eyeball while maintaining constant contact with the sclera. Any unexpected manipulation could cause extreme tool-sclera contact force (scleral force) thus damage the sclera. The introduction of robotic assistance could enhance and expand the surgeon's manipulation capabilities during surgery. However, the potential intra-operative danger from surgeon's misoperations remains difficult to detect and prevent by existing robotic systems. Therefore, we propose a method to predict imminent unsafe manipulation in robot-assisted retinal surgery and generate feedback to the surgeon via auditory substitution. The surgeon could then react to the possible unsafe events in advance. This work specifically focuses on minimizing sclera damage using a force-sensing tool calibrated to measure small scleral forces. A recurrent neural network is designed and trained to predict the force safety status up to 500 milliseconds in the future. The system is implemented using an existing "steady hand" eye robot. A vessel following manipulation task is designed and performed on a dry eye phantom to emulate the retinal surgery and to analyze the proposed method. Finally, preliminary validation experiments are performed by five users, the results of which indicate that the proposed early warning system could help to reduce the number of unsafe manipulation events.

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安全机器人辅助视网膜手术的使能技术:不安全巩膜力的早期预警。
视网膜显微手术在技术上要求很高,对手术技巧要求很高,操作失误的余地很小。在手术中,工具需要插入眼球,同时保持与巩膜的持续接触。任何意外的操作都可能造成工具与巩膜的极大接触力(巩膜力),从而损伤巩膜。机器人辅助的引入可以增强和扩展外科医生在手术中的操作能力。然而,现有的机器人系统仍然难以检测和预防外科医生操作失误带来的潜在术中危险。因此,我们提出了一种方法来预测机器人辅助视网膜手术中即将发生的不安全操作,并通过听觉替代向外科医生产生反馈。这样外科医生就可以提前对可能发生的不安全事件做出反应。这项工作特别侧重于使用校准的力传感工具来测量小巩膜力,以最大限度地减少巩膜损伤。设计并训练了一个递归神经网络来预测未来500毫秒的部队安全状态。该系统使用现有的“稳手”眼机器人来实现。设计了一种血管跟随操作任务,并在干眼幻影上进行了模拟视网膜手术和分析所提出的方法。最后,对5个用户进行了初步验证实验,结果表明所提出的预警系统有助于减少不安全操作事件的数量。
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