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SACHETS: Semi-Autonomous Cognitive Hybrid Emergency Teleoperated Suction

机译:小袋:半自动认知混合动力急诊洞穴式吸力

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Blood suction and irrigation are among the most critical support tasks in robotic-assisted minimally invasive surgery (RMIS). Usually, suction/irrigation tools are controlled by a surgical assistant to maintain a clear view of the surgical field. Thus, the assistant’s contribution to other emergency support tasks is limited. Similarly, when the surgical assistant is not available to perform the blood suction, the leading surgeon must take over this task, which in a complex surgical procedure can result in an unnecessary increment in the cognitive load. To alleviate this problem, we have developed a semi-autonomous robotic suction assistant, which was integrated with a Da Vinci Research Kit (DVRK). At the heart of the algorithm, there is an autonomous control based on a deep learning model to segment and identify the location of blood accumulations. This system provides automatic suction allowing the leading surgeon to focus exclusively on the main task through the control of key instruments of the robot. We conducted a user study to evaluate the user’s workload demands and performance while doing a surgical task under two modalities: (1) autonomous suction action and (2) a surgeon-controlled-suction. Our results indicate that users working with the autonomous system completed the task 161 seconds faster than in the surgeon-controlled-suction modality. Furthermore, the autonomous modality led to a lower percentage of bleeding in the surgical field and workload demands on the users (p-value<0.05). These results show how leveraging state-of-the-art AI algorithms can reduce cognitive demands and enhance performance.
机译:血液吸气和灌溉是机器人辅助微创手术(RMI)中最关键的支持任务之一。通常,吸入/灌溉工具由手术助理控制,以保持外科手术场的清晰视图。因此,助理对其他紧急支持任务的贡献有限。同样,当手术助理不可能进行血液吸入时,前外科医生必须接管这项任务,这在复杂的外科手术中可能导致认知负载中不必要的增量。为了缓解这个问题,我们开发了一个半自动机器人抽吸助理,它与DA Vinci研究套件(DVRK)一体化。在算法的核心,基于深度学习模型的段和识别血液累积的位置存在自主控制。该系统提供自动抽吸,允许领先的外科医生通过控制机器人的关键仪器专注于主要任务。我们进行了用户学习,以评估用户的工作量需求和性能,同时在两种方式下进行手术任务:(1)自主抽吸作用和(2)外科医生控制吸力。我们的结果表明,用户使用自主系统的用户比外科医生控制抽吸方式更快地完成任务161秒。此外,自主模态导致手术场中出血的较低百分比和对用户的工作量需求(P值<0.05)。这些结果表明如何利用最先进的AI算法可以降低认知需求和增强性能。

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