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Task Analysis, Modeling, And Automatic Identification Of Elemental Tasks In Robot-Assisted Laparoscopic Surgery

机译:机器人辅助腹腔镜手术中任务分析,建模和自动识别元素任务

摘要

Robotic microsurgery provides many advantages for surgical operations, including tremor filtration, an increase in dexterity, and smaller incisions. There is a growing need for a task analyses on robotic laparoscopic operations to understand better the tasks involved in robotic microsurgery cases. A few research groups have conducted task observations to help systems automatically identify surgeon skill based on task execution. Their gesture analyses, however, lacked depth and their class libraries were composed of ambiguous groupings of gestures that did not share contextual similarities.A Hierarchical Task Analysis was performed on a four-throw suturing task using a robotic microsurgical platform. Three skill levels were studied: attending surgeons, residents, and naïve participants. From this task analysis, a subtask library was created. The Hierarchical Task Analysis subtask library, a computer system was created that accurately identified surgeon subtasks based on surgeon hand gestures. An automatic classifier was trained on the subtasks identified during the Hierarchical Task Analysis of a four-throw suturing task and the motion signature recorded during task performance. Using principal component analysis and a J48 decision tree classifier, an average individual classification accuracy of 94.56% was achieved.This research lays the foundation for accurate and meaningful autonomous computer assistance in a surgical arena by creating a gesture library from a detailed Hierarchical Task Analysis. The results of this research will improve the surgeon-robot interface and enhance surgery performance. The classes used will eliminate human machine miscommunication by using an understandable and structured class library based on a Hierarchical Task Analysis. By enabling a robot to understand surgeon actions, intelligent contextual-based assistance could be provide to the surgeon by the robot.Limitations of this research included the small participant sample size used for this research which resulted in high subtask execution variability. Future work will include a larger participant population to address this limitation. Additionally, a Hidden Markov Model will be incorporated into the classification process to help increase the classification accuracy. Finally, a closer investigation of vestigial techniques will be conducted to study the effect of past learned laparoscopic techniques, which are no longer necessary in the robotic-assisted laparoscopic surgery arena.
机译:机器人显微外科手术为手术操作提供了许多优势,包括震颤过滤,灵活性提高和切口更小。越来越需要对机器人腹腔镜手术进行任务分析,以更好地了解机器人显微外科手术案例中涉及的任务。一些研究小组进行了任务观察,以帮助系统根据任务执行情况自动识别外科医生技能。然而,他们的手势分析缺乏深度,并且他们的类库由不共享上下文相似性的歧义手势组成。使用机器人显微外科手术平台对四次缝合任务执行了分层任务分析。研究了三个技能级别:主治医师,住院医师和纯朴的参与者。通过此任务分析,创建了一个子任务库。创建了“分层任务分析”子任务库,该计算机系统基于外科医生的手势准确识别了外科医生的子任务。对自动分类器进行了训练,以解决四人缝合任务的分层任务分析中识别出的子任务,以及在任务执行期间记录的运动签名。使用主成分分析和J48决策树分类器,平均个体分类准确率达到94.56%。这项研究通过从详细的分层任务分析中创建手势库,为外科手术舞台上准确而有意义的自主计算机辅助奠定了基础。这项研究的结果将改善外科医生与机器人的界面并提高手术性能。通过使用基于层次任务分析的可理解且结构化的类库,所使用的类将消除人机沟通障碍。通过使机器人能够理解外科医生的动作,该机器人可以为外科医生提供基于情境的智能帮助。该研究的局限性包括用于该研究的参与者样本量较小,导致子任务执行的可变性较高。未来的工作将包括更多的参与者以解决这一限制。此外,将隐马尔可夫模型纳入分类过程,以帮助提高分类准确性。最后,将对遗迹技术进行更深入的研究,以研究过去学到的腹腔镜技术的效果,而在机器人辅助的腹腔镜手术领域中不再需要这些技术。

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    Golenberg Lavie Pinchas;

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  • 年度 2010
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