Evaluation of the Rennes Universal Measurement Method (RUMM), an artificial intelligence application for hand joint angle assessment.

Thomas Dutrey, Julien Maximen, Gwenaël Mevel, Mickael Ropars, Thierry Dreano
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Abstract

Although goniometric measurement is considered the gold standard for the measurement of digital range of motion, visual estimation is often employed due to its simplicity despite being inconsistent with recommended guidelines. We evaluated the Rennes Universal Measurement Method, an innovative tool employing artificial intelligence to concurrently analyse hand joint angles based on a single photograph. We found a strong correlation between the goniometric method and the photograph-based approach (Spearman correlation coefficient 0.7). The mean standard error of measurement was -1° (SD 17°). Regarding reproducibility with different photographic angles, an excellent intraclass correlation coefficient of 0.9 was noted. The tool had a processing time of less than 0.1 s per hand, while traditional goniometric methods took 20-30 s per finger. Combining simplicity, high reproducibility and good inter-rater reliability, this is a potentially useful tool that can be used to monitor patient progress in place of traditional goniometry.

评估雷恩通用测量法(RUMM)--一种用于评估手关节角度的人工智能应用。
尽管动态关节角度测量被认为是测量数字运动范围的黄金标准,但由于其简便性,尽管与推荐指南不一致,目测估算仍经常被采用。我们对雷恩通用测量法进行了评估,这是一种采用人工智能的创新工具,可根据单张照片同时分析手部关节角度。我们发现,动态关节角度测量法与基于照片的方法之间存在很强的相关性(斯皮尔曼相关系数为 0.7)。测量的平均标准误差为-1°(SD 17°)。在不同摄影角度下的重现性方面,类内相关系数为 0.9,非常出色。该工具每只手的处理时间不到 0.1 秒,而传统的测角法每根手指需要 20-30 秒。该工具兼具简便性、高度可重复性和良好的评定者间可靠性,是一种潜在的有用工具,可用于替代传统的测角法监测患者的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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