论文标题

稀疏手术运动学的复发和尖峰建模

Recurrent and Spiking Modeling of Sparse Surgical Kinematics

论文作者

Getty, Neil, Zhao, Zixuan, Gruessner, Stephan, Chen, Liaohai, Xia, Fangfang

论文摘要

机器人辅助的微创手术正在改善外科医生的表现和患者的结果。这项创新也将已经是主观实践的东西变成了可以精确衡量的运动序列。越来越多的研究使用机器学习来分析从外科机器人捕获的视频和运动学数据。在这些研究中,通常在基准数据集上培训模型,以评估代表性的手术任务,以评估外科医生的技能水平。尽管他们表明新手和专家可以准确地进行分类,但尚不清楚机器学习是否可以将高度熟练的外科医生彼此分开,尤其是没有视频数据。在这项研究中,我们探讨了仅使用运动学数据来预测类似技能水平的外科医生的可能性。我们专注于在模拟设备上为技能培训提供的手术练习创建的新数据集。设计了一种简单,有效的编码方案来编码运动学序列,以便它们可以适合边缘学习。我们报告说,仅凭其运动特征,就可以在模拟练习中识别出接近完美分数的手术研究员。此外,我们的模型可以转换为尖峰神经网络,以训练和推断Nengo模拟框架,而准确性没有损失。总体而言,这项研究表明,从稀疏运动功能中构建神经形态模型可能是一种潜在有用的策略,可以识别出在机器人系统上部署芯片的外科医生和手势,以在手术和培训中提供自适应辅助,并具有额外的潜伏期和隐私益处。

Robot-assisted minimally invasive surgery is improving surgeon performance and patient outcomes. This innovation is also turning what has been a subjective practice into motion sequences that can be precisely measured. A growing number of studies have used machine learning to analyze video and kinematic data captured from surgical robots. In these studies, models are typically trained on benchmark datasets for representative surgical tasks to assess surgeon skill levels. While they have shown that novices and experts can be accurately classified, it is not clear whether machine learning can separate highly proficient surgeons from one another, especially without video data. In this study, we explore the possibility of using only kinematic data to predict surgeons of similar skill levels. We focus on a new dataset created from surgical exercises on a simulation device for skill training. A simple, efficient encoding scheme was devised to encode kinematic sequences so that they were amenable to edge learning. We report that it is possible to identify surgical fellows receiving near perfect scores in the simulation exercises based on their motion characteristics alone. Further, our model could be converted to a spiking neural network to train and infer on the Nengo simulation framework with no loss in accuracy. Overall, this study suggests that building neuromorphic models from sparse motion features may be a potentially useful strategy for identifying surgeons and gestures with chips deployed on robotic systems to offer adaptive assistance during surgery and training with additional latency and privacy benefits.

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