CVAIApr 10, 2021

Towards Automated and Marker-less Parkinson Disease Assessment: Predicting UPDRS Scores using Sit-stand videos

arXiv:2104.04650v123 citations
Originality Incremental advance
AI Analysis

It addresses the need for automated, marker-less assessment of Parkinson's disease in clinical or home settings, offering incremental improvements over existing video-based methods.

This paper tackles the problem of assessing Parkinson's disease by predicting UPDRS scores from sit-stand videos, achieving F1-scores of 0.75 for bradykinesia and 0.78 for posture instability and gait disorders, outperforming video-based clinician raters.

This paper presents a novel deep learning enabled, video based analysis framework for assessing the Unified Parkinsons Disease Rating Scale (UPDRS) that can be used in the clinic or at home. We report results from comparing the performance of the framework to that of trained clinicians on a population of 32 Parkinsons disease (PD) patients. In-person clinical assessments by trained neurologists are used as the ground truth for training our framework and for comparing the performance. We find that the standard sit-to-stand activity can be used to evaluate the UPDRS sub-scores of bradykinesia (BRADY) and posture instability and gait disorders (PIGD). For BRADY we find F1-scores of 0.75 using our framework compared to 0.50 for the video based rater clinicians, while for PIGD we find 0.78 for the framework and 0.45 for the video based rater clinicians. We believe our proposed framework has potential to provide clinically acceptable end points of PD in greater granularity without imposing burdens on patients and clinicians, which empowers a variety of use cases such as passive tracking of PD progression in spaces such as nursing homes, in-home self-assessment, and enhanced tele-medicine.

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