Mapping Surgeons Hand/Finger Movements to Surgical Tool Motion During Conventional Microsurgery Using Machine Learning

Mohammad Fattahi Sani, R. Ascione, S. Dogramadzi
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引用次数: 2

Abstract

Purpose: Recent developments in robotics and artificial intelligence (AI) have led to significant advances in healthcare technologies enhancing robot-assisted minimally invasive surgery (RAMIS) in some surgical specialties. However, current human–robot interfaces lack intuitive teleoperation and cannot mimic surgeon’s hand/finger sensing required for fine motion micro-surgeries. These limitations make teleoperated robotic surgery not less suitable for, e.g. cardiac surgery and it can be difficult to learn for established surgeons. We report a pilot study showing an intuitive way of recording and mapping surgeon’s gross hand motion and the fine synergic motion during cardiac micro-surgery as a way to enhance future intuitive teleoperation. Methods: We set to develop a prototype system able to train a Deep Neural Network (DNN) by mapping wrist, hand and surgical tool real-time data acquisition (RTDA) inputs during mock-up heart micro-surgery procedures. The trained network was used to estimate the tools poses from refined hand joint angles. Outputs of the network were surgical tool orientation and jaw angle acquired by an optical motion capture system. Results: Based on surgeon’s feedback during mock micro-surgery, the developed wearable system with light-weight sensors for motion tracking did not interfere with the surgery and instrument handling. The wearable motion tracking system used 12 finger/thumb/wrist joint angle sensors to generate meaningful datasets representing inputs of the DNN network with new hand joint angles added as necessary based on comparing the estimated tool poses against measured tool pose. The DNN architecture was optimized for the highest estimation accuracy and the ability to determine the tool pose with the least mean squared error. This novel approach showed that the surgical instrument’s pose, an essential requirement for teleoperation, can be accurately estimated from recorded surgeon’s hand/finger movements with a mean squared error (MSE) less than 0.3%. Conclusion: We have developed a system to capture fine movements of the surgeon’s hand during micro-surgery that could enhance future remote teleoperation of similar surgical tools during micro-surgery. More work is needed to refine this approach and confirm its potential role in teleoperation.
在常规显微外科手术中使用机器学习映射外科医生的手/手指运动到手术工具运动
目的:机器人技术和人工智能(AI)的最新发展导致医疗技术的重大进步,增强了一些外科专业的机器人辅助微创手术(RAMIS)。然而,目前的人机界面缺乏直观的远程操作,无法模仿精细运动微手术所需的外科医生的手/手指感知。这些限制使得远程操作机器人手术不太适合,例如心脏手术,并且对于成熟的外科医生来说很难学习。我们报告了一项初步研究,展示了一种直观的方法来记录和绘制外科医生在心脏显微手术过程中的手部运动和精细的协同运动,以增强未来的直观远程手术。方法:在模拟心脏显微手术过程中,通过绘制手腕、手和手术工具实时数据采集(RTDA)输入来训练深度神经网络(DNN)的原型系统。利用训练好的网络从精细的手关节角度估计刀具姿态。该网络的输出是由光学运动捕捉系统获取的手术工具方向和颌角。结果:根据外科医生在模拟显微手术过程中的反馈,所开发的可穿戴系统具有轻量级的运动跟踪传感器,不影响手术和器械的操作。可穿戴运动跟踪系统使用12个手指/拇指/手腕关节角度传感器来生成有意义的数据集,表示DNN网络的输入,根据估计的工具姿态与测量的工具姿态进行比较,必要时添加新的手部关节角度。DNN体系结构经过优化,具有最高的估计精度和以最小均方误差确定工具姿态的能力。这种新颖的方法表明,手术器械的姿势是远程手术的基本要求,可以从记录的外科医生的手/手指运动中准确地估计出来,均方误差(MSE)小于0.3%。结论:我们开发了一种显微手术中外科医生手部精细动作的捕捉系统,为今后显微手术中类似手术工具的远程操作提供了技术支持。需要做更多的工作来完善这种方法,并确认其在远程操作中的潜在作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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