Video-Based Automated Assessment of Movement Parameters Consistent with MDS-UPDRS III in Parkinson's Disease
Overview
Authors
Affiliations
Background: Among motor symptoms of Parkinson's disease (PD), including rigidity and resting tremor, bradykinesia is a mandatory feature to define the parkinsonian syndrome. MDS-UPDRS III is the worldwide reference scale to evaluate the parkinsonian motor impairment, especially bradykinesia. However, MDS-UPDRS III is an agent-based score making reproducible measurements and follow-up challenging.
Objective: Using a deep learning approach, we developed a tool to compute an objective score of bradykinesia based on the guidelines of the gold-standard MDS-UPDRS III.
Methods: We adapted and applied two deep learning algorithms to detect a two-dimensional (2D) skeleton of the hand composed of 21 predefined points, and transposed it into a three-dimensional (3D) skeleton for a large database of videos of parkinsonian patients performing MDS-UPDRS III protocols acquired in the Movement Disorder unit of Avicenne University Hospital.
Results: We developed a 2D and 3D automated analysis tool to study the evolution of several key parameters during the protocol repetitions of the MDS-UPDRS III. Scores from 2D automated analysis showed a significant correlation with gold-standard ratings of MDS-UPDRS III, measured with coefficients of determination for the tapping (0.609) and hand movements (0.701) protocols using decision tree algorithms. The individual correlations of the different parameters measured with MDS-UPDRS III scores carry meaningful information and are consistent with MDS-UPDRS III guidelines.
Conclusion: We developed a deep learning-based tool to precisely analyze movement parameters allowing to reliably score bradykinesia for parkinsonian patients in a MDS-UPDRS manner.
Dattola S, Ielo A, Quartarone A, De Cola M Bioengineering (Basel). 2025; 12(1).
PMID: 39851311 PMC: 11759778. DOI: 10.3390/bioengineering12010037.
Deep Brain Stimulation restores information processing in parkinsonian cortical networks.
Piette C, Tin S, Liege A, Bloch-Queyrat C, Degos B, Venance L medRxiv. 2024; .
PMID: 39252923 PMC: 11383511. DOI: 10.1101/2024.08.25.24310748.
Sensor-Based Quantification of MDS-UPDRS III Subitems in Parkinson's Disease Using Machine Learning.
Bremm R, Pavelka L, Garcia M, Mombaerts L, Kruger R, Hertel F Sensors (Basel). 2024; 24(7).
PMID: 38610406 PMC: 11014392. DOI: 10.3390/s24072195.
Yang Y, Ho M, Tai C, Wu R, Kuo M, Tseng Y NPJ Digit Med. 2024; 7(1):31.
PMID: 38332372 PMC: 10853559. DOI: 10.1038/s41746-024-01022-x.
Kim M, Shi Y, Lee J, Salimpour Y, Anderson W, Mills K Brain Commun. 2023; 5(6):fcad337.
PMID: 38130840 PMC: 10733813. DOI: 10.1093/braincomms/fcad337.