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使用数字语音助手进行关节活动度评估。

Range of Motion Assessment using a Digital Voice Assistant.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:2577-2580. doi: 10.1109/EMBC48229.2022.9870888.

DOI:10.1109/EMBC48229.2022.9870888
PMID:36085871
Abstract

Range of motion (ROM) is an important indicator of an individual's physical health, and its degradation impacts their ability to perform activities of daily living. The elderly are particularly susceptible to mobility loss due to muscular decline, neuromuscular disorders, sedentary lifestyle, etc. Thus, they must undergo periodic ROM assessments to track their physical well-being and consult doctors for any decline in ROM. An at-home ROM assessment device can assist the elderly to self-perform ROM assessment and facilitate remote monitoring of and compliance to therapy. The pervasive adoption of digital voice assistants (DVAs), that include a monocular camera, offers an opportunity for at-home ROM assessment. This paper proposes using a DVA for ROM measurement by utilizing 2D pose estimation techniques to estimate 3D limb pose for specific exercises. The system employs the MediaPipe library to perform 2D pose estimation and uses the joint coordinates to find the 3D pose of the limb using a 2D projection method. To validate the system, it is first compared with a 3D human model performing various shoulder and elbow exercises in a virtual environment. Next, for further validation, a neurologically intact individual performs the same exercises and the results of the proposed system are compared with the results from a markerless optical motion capture system (Kinect). The Bland-Altman limits of agreement (LOA) are computed and provided for the two sets of comparisons. The results demonstrate the feasibility of the proposed system in providing reliable ROM measurements using a DVA and suggest possible enhancements. Clinical relevance- This paper introduces the concept of ROM measurement using digital voice assistants embedded with a monocular camera.

摘要

活动范围(ROM)是个体身体健康的重要指标,其下降会影响他们进行日常活动的能力。老年人由于肌肉衰退、神经肌肉疾病、久坐不动的生活方式等原因,特别容易出现行动能力丧失的情况。因此,他们必须定期进行 ROM 评估,以跟踪他们的身体健康状况,并在 ROM 下降时咨询医生。家用 ROM 评估设备可以帮助老年人自行进行 ROM 评估,并方便远程监测和治疗依从性。数字语音助手(DVA)的广泛应用,包括一个单目摄像头,为家用 ROM 评估提供了机会。本文提出了一种使用 DVA 进行 ROM 测量的方法,通过使用 2D 姿势估计技术来估计特定运动的 3D 肢体姿势。该系统使用 MediaPipe 库进行 2D 姿势估计,并使用关节坐标通过 2D 投影方法找到肢体的 3D 姿势。为了验证该系统,首先将其与在虚拟环境中执行各种肩部和肘部运动的 3D 人体模型进行比较。接下来,为了进一步验证,一个神经健全的个体执行相同的运动,然后将该系统的结果与无标记光学运动捕捉系统(Kinect)的结果进行比较。计算并提供了这两组比较的 Bland-Altman 协议界限(LOA)。结果表明,使用带有单目摄像头的 DVA 提供可靠的 ROM 测量是可行的,并提出了可能的改进。临床相关性-本文介绍了使用嵌入单目摄像头的数字语音助手进行 ROM 测量的概念。

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