CVAug 28, 2023

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

arXiv:2308.14679v18 citationsh-index: 16
Originality Synthesis-oriented
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This work addresses the problem of remote disease monitoring for Parkinson's patients, but it is incremental as it tests existing models on new data without proposing new methods.

The study evaluated the accuracy of off-the-shelf hand pose estimation models for assessing bradykinesia in Parkinson's Disease using video recordings, finding that three models performed well for high-quality on-device recordings but accuracy significantly decreased for streaming recordings, with a negative correlation between movement speed and accuracy.

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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