Department of Microsurgery, Orthopaedic Trauma and Hand Surgery, The First Affiliated Hospital, 71068Sun Yat-sen University, Guangzhou, China.
Guangdong Provincial Engineering Laboratory for Soft Tissue Biofabrication, Guangzhou, China.
Sci Prog. 2023 Jan-Mar;106(1):368504231152740. doi: 10.1177/00368504231152740.
Telemedicine support virtual consultations and evaluations in hand surgery for patients in remote areas during the COVID-19 era. However, traditional physical examination is challenging in telemedicine and it is inconvenient to manually measure the hand range of motion (ROM) from images or videos. Here, we propose an automatic method using the hand pose estimation technique, aiming to measure the hand ROM from smartphone images.
Twenty-eight healthy volunteers participated in the study. An eight-hand gestures measurement protocol and the Google MediaPipe Hands were used to analyze images and calculate the ROM automatically. Manual goniometry was also performed according to the guideline of the American Medical Association. The correlation between the automatic and manual methods was analyzed by the intraclass correlation coefficient and Pearson correlation coefficient. The clinical acceptance was testified using Bland-Altman plots.
A total of 32 parameters of each hand were measured by both methods, and 1792 measurement results were compared. The mean difference between automatic and manual methods is -2.21 ± 9.29° in the angle measurement and 0.48 ± 0.48 cm in the distance measurement. The intraclass correlation coefficient of 75% of parameters was higher than 0.75, the Pearson correlation coefficient of 84% of parameters was over 0.6, and 40.6% of parameters reached well-accepted clinical agreements.
The proposed method provides a helpful protocol for automatic hand ROM measurement based on smartphone images and the MediaPipe Hands pose estimation technique. The automatic measurement is acceptable and comparable with existing methods, showing a possible application in the telemedicine examination of hand surgery.
在 COVID-19 时代,远程地区的手部手术患者可通过远程医疗支持进行虚拟咨询和评估。然而,传统的体格检查在远程医疗中具有挑战性,并且从图像或视频中手动测量手部活动范围(ROM)并不方便。在这里,我们提出了一种使用手部姿势估计技术的自动方法,旨在从智能手机图像中测量手部 ROM。
28 名健康志愿者参与了这项研究。采用八手势测量方案和谷歌 MediaPipe Hands 来分析图像并自动计算 ROM。根据美国医学协会的指南,还进行了手动测角。通过组内相关系数和 Pearson 相关系数分析自动和手动方法之间的相关性。使用 Bland-Altman 图测试临床接受度。
两种方法分别测量了每只手的 32 个参数,共比较了 1792 个测量结果。自动和手动方法之间的平均差异在角度测量中为-2.21±9.29°,在距离测量中为 0.48±0.48 cm。75%参数的组内相关系数高于 0.75,84%参数的 Pearson 相关系数超过 0.6,40.6%的参数达到了良好的临床一致性。
所提出的方法为基于智能手机图像和 MediaPipe Hands 姿势估计技术的自动手部 ROM 测量提供了一种有用的方案。自动测量是可接受的,与现有方法具有可比性,在手外科远程医疗检查中具有潜在的应用价值。