Video-Based Hand Pose Estimation for Remote Assessment of Bradykinesia in Parkinson's Disease

Gabriela T. Acevedo Trebbau, A. Bandini, D. Guarin
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Abstract

There is a growing interest in using pose estimation algorithms for video-based assessment of Bradykinesia in Parkinson's Disease (PD) to facilitate remote disease assessment and monitoring. However, the accuracy of pose estimation algorithms in videos from video streaming services during Telehealth appointments has not been studied. In this study, we used seven off-the-shelf hand pose estimation models to estimate the movement of the thumb and index fingers in videos of the finger-tapping (FT) test recorded from Healthy Controls (HC) and participants with PD and under two different conditions: streaming (videos recorded during a live Zoom meeting) and on-device (videos recorded locally with high-quality cameras). The accuracy and reliability of the models were estimated by comparing the models' output with manual results. Three of the seven models demonstrated good accuracy for on-device recordings, and the accuracy decreased significantly for streaming recordings. We observed a negative correlation between movement speed and the model's accuracy for the streaming recordings. Additionally, we evaluated the reliability of ten movement features related to bradykinesia extracted from video recordings of PD patients performing the FT test. While most of the features demonstrated excellent reliability for on-device recordings, most of the features demonstrated poor to moderate reliability for streaming recordings. Our findings highlight the limitations of pose estimation algorithms when applied to video recordings obtained during Telehealth visits, and demonstrate that on-device recordings can be used for automatic video-assessment of bradykinesia in PD.
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基于视频的手部姿势评估用于帕金森病运动迟缓的远程评估
在帕金森病(PD)运动迟缓的视频评估中使用姿态估计算法以促进远程疾病评估和监测的兴趣越来越大。然而,在远程医疗预约过程中,视频流服务视频的姿态估计算法的准确性尚未得到研究。在这项研究中,我们使用了七个现成的手部姿势估计模型来估计手指敲击(FT)测试视频中拇指和食指的运动,这些视频来自健康对照组(HC)和PD参与者,在两种不同的条件下:流媒体(在实时Zoom会议期间录制的视频)和设备上(用高质量摄像机在本地录制的视频)。通过将模型输出与人工结果进行比较,估计了模型的准确性和可靠性。7种模型中有3种在设备上记录时表现出良好的准确性,而在流媒体记录时准确性明显下降。我们观察到流媒体记录的移动速度和模型的准确性之间呈负相关。此外,我们评估了从PD患者进行FT测试的视频记录中提取的与运动迟缓相关的十个运动特征的可靠性。虽然大多数功能在设备上记录方面表现出出色的可靠性,但大多数功能在流媒体记录方面表现出较差到中等的可靠性。我们的研究结果强调了姿态估计算法在应用于远程医疗访问期间获得的视频记录时的局限性,并证明了设备上的记录可用于PD运动迟缓的自动视频评估。
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