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一种用于手术视野调整的人机协作框架:设计与实验验证。

A human-AI collaborative framework for surgical field-of-view adjustment: design and experimental validation.

作者信息

Gao Yuan, Li Zifan, Zhao Jianchang, Li Jinhua, Li Jianmin

机构信息

Key Laboratory of Mechanism Theory and Equipment Design of Ministry of Education, Tianjin University, 135 Yaguan Road, Tianjin, 300350, China.

Institute of Medical Robotics and Intelligent Systems, Tianjin University, No. 2 Huake Fifth Road, Tianjin, 300392, China.

出版信息

J Robot Surg. 2025 Jun 4;19(1):259. doi: 10.1007/s11701-025-02421-2.

Abstract

The goal of robotic endoscope holders is to replace human assistants by enabling optimal field of view (FoV) adjustment while ensuring stable visualization during minimally invasive surgery (MIS). However, existing systems struggle to achieve this goal, relying either on autonomous strategies that fail to interpret the surgical true intent or on detailed commands that increase the surgeon's interaction burden. Drawing inspiration from clinical decision-making processes, we introduce a novel Human-AI collaborative framework for surgical FoV adjustment (HIC-FoV) to address these limitations. This framework requires only concise voice commands from the surgeon, while leveraging AI to interpret the surgical scene and generate intent-aligned FoV adjustments. At the core of HIC-FoV is a novel multi-dimensional weighting mechanism, which evaluates the surgical scene based on directional and spatial congruence with commands, contextual significance, and perceptual confidence to enable efficient FoV optimization. Experiments conducted on peg transfer and simulated cholecystectomy tasks demonstrated that HIC-FoV achieved performance comparable to manual control (completion time: s vs s, ) while significantly reducing surgeon workload (NASA-TLX physical demand: vs , ). Moreover, its stability across varying task complexities and user experience levels allows the robotic endoscope holder to perform on par with an experienced surgical assistant. This work establishes a replicable paradigm for human-AI collaboration in robotic-assisted surgery and holds promising potential for applications in telesurgery.

摘要

机器人内窥镜固定器的目标是通过实现最佳视野(FoV)调整来取代人类助手,同时在微创手术(MIS)期间确保稳定的可视化。然而,现有系统难以实现这一目标,要么依赖于无法解读手术真实意图的自主策略,要么依赖于增加外科医生交互负担的详细指令。从临床决策过程中汲取灵感,我们引入了一种用于手术FoV调整的新型人机协作框架(HIC-FoV)来解决这些局限性。该框架仅需要外科医生发出简洁的语音指令,同时利用人工智能来解读手术场景并生成与意图一致的FoV调整。HIC-FoV的核心是一种新型的多维加权机制,它基于与指令的方向和空间一致性、上下文重要性以及感知置信度来评估手术场景,以实现高效的FoV优化。在插桩转移和模拟胆囊切除任务上进行的实验表明,HIC-FoV实现了与手动控制相当的性能(完成时间: 秒对 秒, ),同时显著减轻了外科医生的工作量(NASA-TLX身体需求: 对 , )。此外,它在不同任务复杂性和用户体验水平上的稳定性使机器人内窥镜固定器能够与经验丰富的手术助手相媲美。这项工作为机器人辅助手术中的人机协作建立了一个可复制的范例,并在远程手术应用中具有广阔的前景。

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