Rames Jess D, Tunaboylu Mehmet F, Emanuels Andrew F, Moran Steven L
From the Division of Plastic and Reconstructive Surgery, Mayo Clinic, Rochester, MN.
Department of Orthopedic Surgery, Mayo Clinic, Rochester, MN.
Plast Reconstr Surg Glob Open. 2025 Apr 4;13(4):e6674. doi: 10.1097/GOX.0000000000006674. eCollection 2025 Apr.
Computer vision has emerged as a useful technology that may prove capable of facilitating remote clinical examinations in hand surgery. This study's primary aim is to evaluate the efficacy of computer vision for assessing peripheral motor function and range of motion of the hand for future clinic and telemedicine purposes. Five healthy volunteer subjects (10 hands total) were filmed performing three static hand examinations ("peace sign," "hitchhiker thumb," and "OK sign") as well as apposition. Videos were processed using the proprietary H.AI.ND program based on the MediaPipe API (Google, v0.9.2.1), generating temporal and spatial data for joint angle analysis. The median joint angles determined for each test were compared with their manually derived counterparts to assess accuracy and reliability. The measurements were compared at a population level using Wilcoxon signed rank tests and at the individual video level using interclass correlation analyses. The artificial intelligence-generated angle outputs demonstrated a high level of reliability when compared with manually determined measurements for the 3 clinical positions included in this study. Assessment of compound appositional movement also demonstrated high reliability with time-dependent multijoint evaluation. Goniometric analysis through computer vision applications may provide an easy and reliable alternative for hand evaluation in the normal population for both static and dynamic function. Further study is warranted to evaluate this program's potential role for diagnostic assessment in the diseased population before and after surgical investigation.
计算机视觉已成为一项有用的技术,可能被证明有能力促进手外科的远程临床检查。本研究的主要目的是评估计算机视觉在评估手部外周运动功能和活动范围方面的功效,以用于未来的临床和远程医疗目的。对五名健康志愿者受试者(共10只手)进行拍摄,他们进行了三项静态手部检查(“和平手势”、“搭便车拇指”和“OK手势”)以及对掌动作。使用基于MediaPipe API(谷歌,v0.9.2.1)的专有H.AI.ND程序对视频进行处理,生成用于关节角度分析的时间和空间数据。将每项测试确定的关节角度中位数与其手动得出的对应值进行比较,以评估准确性和可靠性。使用Wilcoxon符号秩检验在总体水平上比较测量值,并使用组内相关分析在个体视频水平上比较测量值。与本研究中包括的3个临床位置的手动测量值相比,人工智能生成的角度输出显示出高度的可靠性。复合对掌运动的评估在时间依赖性多关节评估中也显示出高度的可靠性。通过计算机视觉应用进行测角分析,对于正常人群的手部静态和动态功能评估,可能提供一种简单可靠的替代方法。在手术检查前后,有必要进行进一步研究,以评估该程序在患病群体诊断评估中的潜在作用。