深度学习检测脑血管神经外科专家进行微血管吻合术模拟时的手部运动。

IF 1.9 4区 医学 Q3 CLINICAL NEUROLOGY World neurosurgery Pub Date : 2024-09-19 DOI:10.1016/j.wneu.2024.09.069
Thomas J On, Yuan Xu, Jiuxu Chen, Nicolas I Gonzalez-Romo, Oscar Alcantar-Garibay, Jay Bhanushali, Wonhyoung Park, John E Wanebo, Andrew W Grande, Rokuya Tanikawa, Dilantha B Ellegala, Baoxin Li, Marco Santello, Michael T Lawton, Mark C Preul
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引用次数: 0

摘要

目的:深度学习无需物理传感器即可实现精确的手部跟踪,从而可以对手术运动和任务进行无监督的定量评估。我们利用深度学习对经验丰富的脑血管神经外科医生在模拟微血管吻合过程中的手部运动进行了定量评估。我们探索了专家之间手术运动数据的差异程度:深度学习检测系统跟踪了 5 位脑血管神经外科专家每只手上 21 个与数字关节和手腕相对应的地标。对每位外科医生的跟踪数据进行了长短时间间隔分析,以分别检查大运动和微运动。定量算法分别通过计算基线中位地标坐标的平均移动距离和缝合之间的中位时间来评估运动的经济性和流动性:结果:追踪数据与微吻合术视频分析中观察到的特定手术动作相关。根据计算,外科医生 1、2、3、4 和 5 在缝合过程中的运动经济性分别为 19、26、29、27 和 28 个像素。1、2、3、4 和 5 号外科医生在微吻合术中的移动速度分别为 31.96 秒、29.40 秒、28.90 秒、7.37 秒和 47.21 秒:手部追踪数据显示,专家们的动作具有相似性,从基线开始的移动幅度较小,多余动作极少,缝合模式有节奏。数据显示了与每位专家的习惯和技术有关的独特模式。结果表明,手术运动可以与手部运动相关联,并通过数学算法进行评估。我们还证明了基于深度学习的运动检测在加强手术训练方面的可行性和潜力。
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Deep learning detection of hand motion during microvascular anastomosis simulations performed by expert cerebrovascular neurosurgeons.

Objective: Deep learning enables precise hand tracking without the need for physical sensors, allowing for unsupervised quantitative evaluation of surgical motion and tasks. We quantitatively assessed the hand motions of experienced cerebrovascular neurosurgeons during simulated microvascular anastomosis using deep learning. We explored the extent to which surgical motion data differed among experts.

Methods: A deep learning detection system tracked 21 landmarks corresponding to digit joints and the wrist on each hand of 5 expert cerebrovascular neurosurgeons. Tracking data for each surgeon was analyzed over long and short time intervals to examine gross movements and micromovements, respectively. Quantitative algorithms assessed the economy and flow of motion by calculating mean movement distances from the baseline median landmark coordinates and median times between sutures, respectively.

Results: Tracking data correlated with specific surgical actions observed in microanastomosis video analysis. Economy of motion during suturing was calculated as 19, 26, 29, 27, and 28 pixels for surgeons 1, 2, 3, 4, and 5, respectively. Flow of motion during microanastomosis was 31.96, 29.40, 28.90, 7.37, and 47.21 secs for surgeons 1, 2, 3, 4, and 5, respectively.

Conclusions: Hand tracking data showed similarities among experts, with low movements from baseline, minimal excess motion, and rhythmic suturing patterns. The data revealed unique patterns related to each expert's habits and techniques. The results showed that surgical motion can be correlated with hand motion and assessed using mathematical algorithms. We also demonstrated the feasibility and potential of deep learning-based motion detection to enhance surgical training.

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来源期刊
World neurosurgery
World neurosurgery CLINICAL NEUROLOGY-SURGERY
CiteScore
3.90
自引率
15.00%
发文量
1765
审稿时长
47 days
期刊介绍: World Neurosurgery has an open access mirror journal World Neurosurgery: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. The journal''s mission is to: -To provide a first-class international forum and a 2-way conduit for dialogue that is relevant to neurosurgeons and providers who care for neurosurgery patients. The categories of the exchanged information include clinical and basic science, as well as global information that provide social, political, educational, economic, cultural or societal insights and knowledge that are of significance and relevance to worldwide neurosurgery patient care. -To act as a primary intellectual catalyst for the stimulation of creativity, the creation of new knowledge, and the enhancement of quality neurosurgical care worldwide. -To provide a forum for communication that enriches the lives of all neurosurgeons and their colleagues; and, in so doing, enriches the lives of their patients. Topics to be addressed in World Neurosurgery include: EDUCATION, ECONOMICS, RESEARCH, POLITICS, HISTORY, CULTURE, CLINICAL SCIENCE, LABORATORY SCIENCE, TECHNOLOGY, OPERATIVE TECHNIQUES, CLINICAL IMAGES, VIDEOS
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